Compare commits
290 Commits
zavrazhnov
...
verina_dar
| Author | SHA1 | Date | |
|---|---|---|---|
|
|
cc1802b4f0 | ||
| a8c58683dd | |||
| b3e1e38eeb | |||
| 6de7179b7d | |||
| c0ead13d82 | |||
| 357f26d992 | |||
| f2f5d16974 | |||
| cab38b4f27 | |||
| c813e16f55 | |||
| 9142e612f8 | |||
| 7c92d143e0 | |||
| 52431a867c | |||
| 666a34b483 | |||
| 57bb7a90cd | |||
| da2b5dacb8 | |||
| 0acf59f77f | |||
| 40f7706378 | |||
| 2881070bf0 | |||
| 02422f4eff | |||
| 831912d692 | |||
| 70c0f7a0e1 | |||
| 8592ba88a4 | |||
| 4973adb1f2 | |||
| 388c9e64cf | |||
| 1f8bc49d17 | |||
| d4dbce9b09 | |||
| 931d8de854 | |||
| ec42e21a1d | |||
| 02147c3d5f | |||
| d388cd8442 | |||
| 7f45d87074 | |||
| fe77447993 | |||
| 9ce5af1aea | |||
| 278b85e66a | |||
| 2885277f6c | |||
| 58b1009367 | |||
| 9755697671 | |||
| d6bdc5893a | |||
| 28056f94bd | |||
| 1aef95a6d9 | |||
| 95519adc5a | |||
| 5746fc2084 | |||
|
|
c92f833265 | ||
|
|
1d2c86f568 | ||
|
|
b27537157a | ||
| ee70ec67ba | |||
| dde432a16b | |||
| def334a1f4 | |||
| f6a9dc6a74 | |||
| d8ea68139d | |||
| 37d75cda32 | |||
| 2383a997b1 | |||
| e8ff2392da | |||
| de79db46c0 | |||
| 82829a15a2 | |||
| c9fa1b2d60 | |||
| d5cd684a98 | |||
| a9af6c3c37 | |||
| e1bba9b13c | |||
| aa543e057e | |||
| 72b717d7ae | |||
| 3007207ade | |||
| 4838c6dbeb | |||
| 4949686542 | |||
| 4f16492ad7 | |||
| 565b4f171f | |||
| a87330830b | |||
| a8f3b6c692 | |||
| ce7cfa4365 | |||
|
|
a492e2a6df | ||
| 462c0ea3e0 | |||
| 4eb8cfabd1 | |||
| e65543a5fc | |||
|
|
f0e16a20d4 | ||
| 08ed6413b9 | |||
| 1f35af8f8f | |||
|
|
63198665cc | ||
| 10761e96bb | |||
| f61aea2ee2 | |||
| be664b513c | |||
| 5d250948b5 | |||
|
|
c344eb7300 | ||
| 8a51aacfb2 | |||
| 017623e084 | |||
| 09b9bfc730 | |||
| fee881b4b4 | |||
| 7bd06eb002 | |||
| 13a2641aa2 | |||
| 5e0058b82e | |||
| faeeecf1ef | |||
| dab82f11ee | |||
| 55b79c339e | |||
|
|
0e5a5ad282 | ||
| a9e95110c1 | |||
| 0fa8db9c5d | |||
| e8a3914840 | |||
| 63c40e202e | |||
| b8af0044a0 | |||
| b26c54a7e4 | |||
| 9e6286a3a4 | |||
| 4a6bb8139e | |||
| 8b9050cce3 | |||
| 3e08abf42b | |||
| c6d41e1157 | |||
| 6a9310501a | |||
| bed476a27b | |||
| 2607c0dbfd | |||
| be253bf939 | |||
| 9ab1a0f1ca | |||
| 8bd93ee83e | |||
| 1fddfd2362 | |||
| 994129b8a9 | |||
| 79b5e5bb12 | |||
| 08aa85abbc | |||
| de50a5f08d | |||
| c37eca50a6 | |||
| 2906d3886f | |||
| e034d93062 | |||
| d19941c6ec | |||
| 2a51665e61 | |||
| 879a1c5730 | |||
|
|
78bec04c10 | ||
| c212c98a90 | |||
|
|
25acce2c79 | ||
|
|
db918284b5 | ||
| 71cad406c2 | |||
| a076fd78ae | |||
| 124f682c8b | |||
| 8834f99ecf | |||
| dd0d45ef93 | |||
| c7060e6719 | |||
|
|
23bc64c816 | ||
|
|
be1b6a74ae | ||
|
|
32821e551a | ||
|
|
231aa0d062 | ||
|
|
0f61b37f8b | ||
|
|
3a68c16a44 | ||
|
|
481361b7e0 | ||
| 0c414d7ab4 | |||
| d61b7c24f2 | |||
| b5fa7754bb | |||
| d575910860 | |||
| 5894881f24 | |||
| 92ec657bcd | |||
| 346241253f | |||
|
|
ed5c549a0b | ||
| 65b47c7d0e | |||
| f7af263316 | |||
| c45de91019 | |||
| 4fad5585c1 | |||
| c9d485daca | |||
|
|
1638a80b4a | ||
| 6a9602359c | |||
| cee99b90a5 | |||
| bb7b8e6ac0 | |||
| 18ea7ee729 | |||
| 200d8dee7e | |||
| 4e1980e638 | |||
| a43eb72079 | |||
|
|
464b437c69 | ||
| 0b422e70f9 | |||
| b0accdaf06 | |||
| 145b7336b8 | |||
| bea977d84c | |||
|
|
1e03e8b1d2 | ||
| ad5ed23a4c | |||
|
|
1e1a73de10 | ||
|
|
226dd4efe9 | ||
|
|
c0217ad0d3 | ||
|
|
caab9f2f8b | ||
|
|
d2580ffa9e | ||
| a98d914e7c | |||
| a4985e4d76 | |||
| 3bb04b059b | |||
| a9e1145b0e | |||
| f44ba0d0a2 | |||
| ccf3bfb561 | |||
| 4f349a1d49 | |||
| f8075403a3 | |||
| c20695af79 | |||
| 33dba33cc4 | |||
| 41e0e8598f | |||
| 53a25975f9 | |||
| 5e00a83340 | |||
| 2239c15572 | |||
| 07333219ed | |||
| 5891b16f9d | |||
| 81874f0f84 | |||
| ce6105bee6 | |||
| ca3b734361 | |||
| 2f1d67dc8f | |||
| b9ec1fd145 | |||
| f84f7abaa9 | |||
| 5445cef67d | |||
| b967af636c | |||
| ad60c6221e | |||
|
|
8942f824d5 | ||
| 106e02f76b | |||
| 81479f5221 | |||
|
|
abd650a641 | ||
| 15936c6996 | |||
|
|
c03b5e3a94 | ||
| 16db685d3d | |||
| 84fe84a15a | |||
| 406315ddf7 | |||
| d592186245 | |||
| 1f70bc7eb8 | |||
| 7ccd400417 | |||
|
|
c15ab42cd4 | ||
| 5eb35fe26d | |||
|
|
ef485bf514 | ||
|
|
3a868e5545 | ||
| fc2fe74052 | |||
| 35826f2461 | |||
| 7781a379c3 | |||
| adca415462 | |||
| 9613109f32 | |||
| d4d25953d2 | |||
| d09383f064 | |||
| f1ccc12524 | |||
| 0446928927 | |||
| 1dffe857da | |||
| 19ed166e7b | |||
| 1a4d9cb435 | |||
| bac437629a | |||
| a062f64611 | |||
| 04862f1077 | |||
| ae4894e12d | |||
| 7fe16431a8 | |||
| 0c0bbab9e5 | |||
| 72507eb3af | |||
| 516c7aea4f | |||
| 7674b6f48a | |||
|
|
39f0867f3c | ||
|
|
2acd2f9b5b | ||
|
|
5865c2147c | ||
|
|
b6ab40cae3 | ||
| fd951127b0 | |||
|
|
d4e65b3373 | ||
|
|
b855fc2dd4 | ||
|
|
2065c480df | ||
| 7ce7f86d4b | |||
| 5992dba12c | |||
| 4e17d37a32 | |||
| 78422060f3 | |||
| d0fbf61dc0 | |||
| 4daf833167 | |||
| 964a9042fa | |||
| 5a2ec3e827 | |||
|
|
8c47411bf1 | ||
|
|
401a5454ee | ||
|
|
a847058d44 | ||
|
|
de0b7d831a | ||
| eeb3c15730 | |||
| bbb46d3cd1 | |||
| 88b0909ebf | |||
|
|
fcfd628305 | ||
|
|
b239521f36 | ||
| 4747d4f1db | |||
|
|
b049265089 | ||
| dfc7f8c06f | |||
| 71887f8076 | |||
| ae454ae9ef | |||
| 5d8a090a38 | |||
| 06116369e5 | |||
| 6ad79769f3 | |||
|
|
fc35bc8158 | ||
|
|
059d5b0b12 | ||
|
|
c943260db9 | ||
|
|
cfc34f0e10 | ||
|
|
d30caee3db | ||
|
|
0b83c390f5 | ||
|
|
8a288f0abf | ||
|
|
3543ab5163 | ||
|
|
9bf1c4845a | ||
| 46de7c113c | |||
| d26e2f5535 | |||
| 63e5a3a708 | |||
|
|
453d40504e | ||
| e36a729776 | |||
| bbd6aea496 | |||
| 8ee5b74e58 | |||
| 27e65004fa | |||
| 9c5a45feed | |||
| efa81f50bf | |||
|
|
f11ba4d365 | ||
|
|
94a76f47d8 | ||
| 9a7b986e00 | |||
|
|
16b36dce9b | ||
|
|
0d865a6160 |
141
.gitignore
vendored
Normal file
@@ -0,0 +1,141 @@
|
||||
### Python template
|
||||
# Byte-compiled / optimized / DLL files
|
||||
__pycache__/
|
||||
*.py[cod]
|
||||
*$py.class
|
||||
|
||||
# C extensions
|
||||
*.so
|
||||
|
||||
# Distribution / packaging
|
||||
.Python
|
||||
build/
|
||||
develop-eggs/
|
||||
dist/
|
||||
downloads/
|
||||
eggs/
|
||||
.eggs/
|
||||
lib/
|
||||
lib64/
|
||||
parts/
|
||||
sdist/
|
||||
var/
|
||||
wheels/
|
||||
share/python-wheels/
|
||||
*.egg-info/
|
||||
.installed.cfg
|
||||
*.egg
|
||||
MANIFEST
|
||||
|
||||
# PyInstaller
|
||||
# Usually these files are written by a python script from a template
|
||||
# before PyInstaller builds the exe, so as to inject date/other infos into it.
|
||||
*.manifest
|
||||
*.spec
|
||||
|
||||
# Installer logs
|
||||
pip-log.txt
|
||||
pip-delete-this-directory.txt
|
||||
|
||||
# Unit test / coverage reports
|
||||
htmlcov/
|
||||
.tox/
|
||||
.nox/
|
||||
.coverage
|
||||
.coverage.*
|
||||
.cache
|
||||
nosetests.xml
|
||||
coverage.xml
|
||||
*.cover
|
||||
*.py,cover
|
||||
.hypothesis/
|
||||
.pytest_cache/
|
||||
cover/
|
||||
|
||||
# Translations
|
||||
*.mo
|
||||
*.pot
|
||||
|
||||
# Django stuff:
|
||||
*.log
|
||||
local_settings.py
|
||||
db.sqlite3
|
||||
db.sqlite3-journal
|
||||
|
||||
# Flask stuff:
|
||||
instance/
|
||||
.webassets-cache
|
||||
|
||||
# Scrapy stuff:
|
||||
.scrapy
|
||||
|
||||
# Sphinx documentation
|
||||
docs/_build/
|
||||
|
||||
# PyBuilder
|
||||
.pybuilder/
|
||||
target/
|
||||
|
||||
# Jupyter Notebook
|
||||
.ipynb_checkpoints
|
||||
|
||||
# IPython
|
||||
profile_default/
|
||||
ipython_config.py
|
||||
|
||||
# pyenv
|
||||
# For a library or package, you might want to ignore these files since the code is
|
||||
# intended to run in multiple environments; otherwise, check them in:
|
||||
# .python-version
|
||||
|
||||
# pipenv
|
||||
# According to pypa/pipenv#598, it is recommended to include Pipfile.lock in version control.
|
||||
# However, in case of collaboration, if having platform-specific dependencies or dependencies
|
||||
# having no cross-platform support, pipenv may install dependencies that don't work, or not
|
||||
# install all needed dependencies.
|
||||
#Pipfile.lock
|
||||
|
||||
# PEP 582; used by e.g. github.com/David-OConnor/pyflow
|
||||
__pypackages__/
|
||||
|
||||
# Celery stuff
|
||||
celerybeat-schedule
|
||||
celerybeat.pid
|
||||
|
||||
# SageMath parsed files
|
||||
*.sage.py
|
||||
|
||||
# Environments
|
||||
.env
|
||||
.venv
|
||||
env/
|
||||
venv/
|
||||
ENV/
|
||||
env.bak/
|
||||
venv.bak/
|
||||
|
||||
# Spyder project settings
|
||||
.spyderproject
|
||||
.spyproject
|
||||
|
||||
# Rope project settings
|
||||
.ropeproject
|
||||
|
||||
# mkdocs documentation
|
||||
/site
|
||||
|
||||
# mypy
|
||||
.mypy_cache/
|
||||
.dmypy.json
|
||||
dmypy.json
|
||||
|
||||
# Pyre type checker
|
||||
.pyre/
|
||||
|
||||
# pytype static type analyzer
|
||||
.pytype/
|
||||
|
||||
# Cython debug symbols
|
||||
cython_debug/
|
||||
|
||||
.idea
|
||||
3
.idea/.gitignore
generated
vendored
Normal file
@@ -0,0 +1,3 @@
|
||||
# Default ignored files
|
||||
/shelf/
|
||||
/workspace.xml
|
||||
10
.idea/IIS_2023_1.iml
generated
Normal file
@@ -0,0 +1,10 @@
|
||||
<?xml version="1.0" encoding="UTF-8"?>
|
||||
<module type="PYTHON_MODULE" version="4">
|
||||
<component name="NewModuleRootManager">
|
||||
<content url="file://$MODULE_DIR$">
|
||||
<excludeFolder url="file://$MODULE_DIR$/venv" />
|
||||
</content>
|
||||
<orderEntry type="jdk" jdkName="Python 3.9 (PyCharmProjects)" jdkType="Python SDK" />
|
||||
<orderEntry type="sourceFolder" forTests="false" />
|
||||
</component>
|
||||
</module>
|
||||
7
.idea/discord.xml
generated
Normal file
@@ -0,0 +1,7 @@
|
||||
<?xml version="1.0" encoding="UTF-8"?>
|
||||
<project version="4">
|
||||
<component name="DiscordProjectSettings">
|
||||
<option name="show" value="ASK" />
|
||||
<option name="description" value="" />
|
||||
</component>
|
||||
</project>
|
||||
6
.idea/inspectionProfiles/profiles_settings.xml
generated
Normal file
@@ -0,0 +1,6 @@
|
||||
<component name="InspectionProjectProfileManager">
|
||||
<settings>
|
||||
<option name="USE_PROJECT_PROFILE" value="false" />
|
||||
<version value="1.0" />
|
||||
</settings>
|
||||
</component>
|
||||
10
.idea/misc.xml
generated
Normal file
@@ -0,0 +1,10 @@
|
||||
<?xml version="1.0" encoding="UTF-8"?>
|
||||
<project version="4">
|
||||
<component name="Black">
|
||||
<option name="sdkName" value="Python 3.9 (PyCharmProjects)" />
|
||||
</component>
|
||||
<component name="ProjectRootManager" version="2" project-jdk-name="Python 3.9 (PyCharmProjects)" project-jdk-type="Python SDK" />
|
||||
<component name="PyCharmProfessionalAdvertiser">
|
||||
<option name="shown" value="true" />
|
||||
</component>
|
||||
</project>
|
||||
8
.idea/modules.xml
generated
Normal file
@@ -0,0 +1,8 @@
|
||||
<?xml version="1.0" encoding="UTF-8"?>
|
||||
<project version="4">
|
||||
<component name="ProjectModuleManager">
|
||||
<modules>
|
||||
<module fileurl="file://$PROJECT_DIR$/.idea/IIS_2023_1.iml" filepath="$PROJECT_DIR$/.idea/IIS_2023_1.iml" />
|
||||
</modules>
|
||||
</component>
|
||||
</project>
|
||||
6
.idea/vcs.xml
generated
Normal file
@@ -0,0 +1,6 @@
|
||||
<?xml version="1.0" encoding="UTF-8"?>
|
||||
<project version="4">
|
||||
<component name="VcsDirectoryMappings">
|
||||
<mapping directory="$PROJECT_DIR$" vcs="Git" />
|
||||
</component>
|
||||
</project>
|
||||
187
.idea/workspace.xml
generated
Normal file
@@ -0,0 +1,187 @@
|
||||
<?xml version="1.0" encoding="UTF-8"?>
|
||||
<project version="4">
|
||||
<component name="AutoImportSettings">
|
||||
<option name="autoReloadType" value="SELECTIVE" />
|
||||
</component>
|
||||
<component name="ChangeListManager">
|
||||
<list default="true" id="0ceb130e-88da-4a20-aad6-17f5ab4226ac" name="Changes" comment="">
|
||||
<change beforePath="$PROJECT_DIR$/.idea/IIS_2023_1.iml" beforeDir="false" afterPath="$PROJECT_DIR$/.idea/IIS_2023_1.iml" afterDir="false" />
|
||||
<change beforePath="$PROJECT_DIR$/.idea/misc.xml" beforeDir="false" afterPath="$PROJECT_DIR$/.idea/misc.xml" afterDir="false" />
|
||||
<change beforePath="$PROJECT_DIR$/.idea/workspace.xml" beforeDir="false" afterPath="$PROJECT_DIR$/.idea/workspace.xml" afterDir="false" />
|
||||
</list>
|
||||
<option name="SHOW_DIALOG" value="false" />
|
||||
<option name="HIGHLIGHT_CONFLICTS" value="true" />
|
||||
<option name="HIGHLIGHT_NON_ACTIVE_CHANGELIST" value="false" />
|
||||
<option name="LAST_RESOLUTION" value="IGNORE" />
|
||||
</component>
|
||||
<component name="FileTemplateManagerImpl">
|
||||
<option name="RECENT_TEMPLATES">
|
||||
<list>
|
||||
<option value="Python Script" />
|
||||
</list>
|
||||
</option>
|
||||
</component>
|
||||
<component name="Git.Settings">
|
||||
<option name="RECENT_BRANCH_BY_REPOSITORY">
|
||||
<map>
|
||||
<entry key="$PROJECT_DIR$" value="main" />
|
||||
</map>
|
||||
</option>
|
||||
<option name="RECENT_GIT_ROOT_PATH" value="$PROJECT_DIR$" />
|
||||
</component>
|
||||
<component name="MarkdownSettingsMigration">
|
||||
<option name="stateVersion" value="1" />
|
||||
</component>
|
||||
<component name="ProjectColorInfo">{
|
||||
"associatedIndex": 2
|
||||
}</component>
|
||||
<component name="ProjectId" id="2VlZqWiOX68aCf0o2y0AtYJWURS" />
|
||||
<component name="ProjectLevelVcsManager">
|
||||
<ConfirmationsSetting value="1" id="Add" />
|
||||
</component>
|
||||
<component name="ProjectViewState">
|
||||
<option name="hideEmptyMiddlePackages" value="true" />
|
||||
<option name="showLibraryContents" value="true" />
|
||||
</component>
|
||||
<component name="PropertiesComponent">{
|
||||
"keyToString": {
|
||||
"RunOnceActivity.OpenProjectViewOnStart": "true",
|
||||
"RunOnceActivity.ShowReadmeOnStart": "true",
|
||||
"WebServerToolWindowFactoryState": "false",
|
||||
"git-widget-placeholder": "senkin__alexander__lab__1",
|
||||
"last_opened_file_path": "D:/ulstukek/Course4/IIS/labs",
|
||||
"node.js.detected.package.eslint": "true",
|
||||
"node.js.detected.package.tslint": "true",
|
||||
"node.js.selected.package.eslint": "(autodetect)",
|
||||
"node.js.selected.package.tslint": "(autodetect)",
|
||||
"nodejs_package_manager_path": "npm",
|
||||
"settings.editor.selected.configurable": "reference.settings.ide.settings.new.ui",
|
||||
"vue.rearranger.settings.migration": "true"
|
||||
}
|
||||
}</component>
|
||||
<component name="RecentsManager">
|
||||
<key name="CopyFile.RECENT_KEYS">
|
||||
<recent name="D:\ulstukek\Course4\IIS\IISLabs\IIS_2023_1\zavrazhnova_svetlana_lab_3" />
|
||||
<recent name="D:\ulstukek\Course4\IIS\IISLabs\IIS_2023_1\zavrazhnova_svetlana_lab_1" />
|
||||
</key>
|
||||
</component>
|
||||
<component name="RunManager">
|
||||
<configuration name="zavrazhnova_svetlana_lab3_2" type="PythonConfigurationType" factoryName="Python" temporary="true" nameIsGenerated="true">
|
||||
<module name="IIS_2023_1" />
|
||||
<option name="INTERPRETER_OPTIONS" value="" />
|
||||
<option name="PARENT_ENVS" value="true" />
|
||||
<envs>
|
||||
<env name="PYTHONUNBUFFERED" value="1" />
|
||||
</envs>
|
||||
<option name="SDK_HOME" value="" />
|
||||
<option name="WORKING_DIRECTORY" value="$PROJECT_DIR$/zavrazhnova_svetlana_lab_3" />
|
||||
<option name="IS_MODULE_SDK" value="true" />
|
||||
<option name="ADD_CONTENT_ROOTS" value="true" />
|
||||
<option name="ADD_SOURCE_ROOTS" value="true" />
|
||||
<EXTENSION ID="PythonCoverageRunConfigurationExtension" runner="coverage.py" />
|
||||
<option name="SCRIPT_NAME" value="$PROJECT_DIR$/zavrazhnova_svetlana_lab_3/zavrazhnova_svetlana_lab3_2.py" />
|
||||
<option name="PARAMETERS" value="" />
|
||||
<option name="SHOW_COMMAND_LINE" value="false" />
|
||||
<option name="EMULATE_TERMINAL" value="false" />
|
||||
<option name="MODULE_MODE" value="false" />
|
||||
<option name="REDIRECT_INPUT" value="false" />
|
||||
<option name="INPUT_FILE" value="" />
|
||||
<method v="2" />
|
||||
</configuration>
|
||||
<configuration name="zavrazhnova_svetlana_lab_2" type="PythonConfigurationType" factoryName="Python" temporary="true" nameIsGenerated="true">
|
||||
<module name="IIS_2023_1" />
|
||||
<option name="INTERPRETER_OPTIONS" value="" />
|
||||
<option name="PARENT_ENVS" value="true" />
|
||||
<envs>
|
||||
<env name="PYTHONUNBUFFERED" value="1" />
|
||||
</envs>
|
||||
<option name="SDK_HOME" value="" />
|
||||
<option name="WORKING_DIRECTORY" value="$PROJECT_DIR$/zavrazhnova_svetlana_lab_2" />
|
||||
<option name="IS_MODULE_SDK" value="true" />
|
||||
<option name="ADD_CONTENT_ROOTS" value="true" />
|
||||
<option name="ADD_SOURCE_ROOTS" value="true" />
|
||||
<EXTENSION ID="PythonCoverageRunConfigurationExtension" runner="coverage.py" />
|
||||
<option name="SCRIPT_NAME" value="$PROJECT_DIR$/zavrazhnova_svetlana_lab_2/zavrazhnova_svetlana_lab_2.py" />
|
||||
<option name="PARAMETERS" value="" />
|
||||
<option name="SHOW_COMMAND_LINE" value="false" />
|
||||
<option name="EMULATE_TERMINAL" value="false" />
|
||||
<option name="MODULE_MODE" value="false" />
|
||||
<option name="REDIRECT_INPUT" value="false" />
|
||||
<option name="INPUT_FILE" value="" />
|
||||
<method v="2" />
|
||||
</configuration>
|
||||
<configuration name="zavrazhnova_svetlana_lab_3_1" type="PythonConfigurationType" factoryName="Python" temporary="true" nameIsGenerated="true">
|
||||
<module name="IIS_2023_1" />
|
||||
<option name="INTERPRETER_OPTIONS" value="" />
|
||||
<option name="PARENT_ENVS" value="true" />
|
||||
<envs>
|
||||
<env name="PYTHONUNBUFFERED" value="1" />
|
||||
</envs>
|
||||
<option name="SDK_HOME" value="" />
|
||||
<option name="WORKING_DIRECTORY" value="$PROJECT_DIR$/zavrazhnova_svetlana_lab_3" />
|
||||
<option name="IS_MODULE_SDK" value="true" />
|
||||
<option name="ADD_CONTENT_ROOTS" value="true" />
|
||||
<option name="ADD_SOURCE_ROOTS" value="true" />
|
||||
<EXTENSION ID="PythonCoverageRunConfigurationExtension" runner="coverage.py" />
|
||||
<option name="SCRIPT_NAME" value="$PROJECT_DIR$/zavrazhnova_svetlana_lab_3/zavrazhnova_svetlana_lab_3_1.py" />
|
||||
<option name="PARAMETERS" value="" />
|
||||
<option name="SHOW_COMMAND_LINE" value="false" />
|
||||
<option name="EMULATE_TERMINAL" value="false" />
|
||||
<option name="MODULE_MODE" value="false" />
|
||||
<option name="REDIRECT_INPUT" value="false" />
|
||||
<option name="INPUT_FILE" value="" />
|
||||
<method v="2" />
|
||||
</configuration>
|
||||
<recent_temporary>
|
||||
<list>
|
||||
<item itemvalue="Python.zavrazhnova_svetlana_lab_3_1" />
|
||||
<item itemvalue="Python.zavrazhnova_svetlana_lab_2" />
|
||||
<item itemvalue="Python.zavrazhnova_svetlana_lab3_2" />
|
||||
<item itemvalue="Python.zavrazhnova_svetlana_lab3_2" />
|
||||
<item itemvalue="Python.zavrazhnova_svetlana_lab_3_1" />
|
||||
</list>
|
||||
</recent_temporary>
|
||||
</component>
|
||||
<component name="SpellCheckerSettings" RuntimeDictionaries="0" Folders="0" CustomDictionaries="0" DefaultDictionary="application-level" UseSingleDictionary="true" transferred="true" />
|
||||
<component name="TaskManager">
|
||||
<task active="true" id="Default" summary="Default task">
|
||||
<changelist id="0ceb130e-88da-4a20-aad6-17f5ab4226ac" name="Changes" comment="" />
|
||||
<created>1695412818437</created>
|
||||
<option name="number" value="Default" />
|
||||
<option name="presentableId" value="Default" />
|
||||
<updated>1695412818437</updated>
|
||||
<workItem from="1697735437405" duration="1706000" />
|
||||
<workItem from="1697740229646" duration="3802000" />
|
||||
</task>
|
||||
<servers />
|
||||
</component>
|
||||
<component name="TypeScriptGeneratedFilesManager">
|
||||
<option name="version" value="3" />
|
||||
</component>
|
||||
<component name="Vcs.Log.Tabs.Properties">
|
||||
<option name="TAB_STATES">
|
||||
<map>
|
||||
<entry key="MAIN">
|
||||
<value>
|
||||
<State>
|
||||
<option name="FILTERS">
|
||||
<map>
|
||||
<entry key="branch">
|
||||
<value>
|
||||
<list>
|
||||
<option value="HEAD" />
|
||||
</list>
|
||||
</value>
|
||||
</entry>
|
||||
</map>
|
||||
</option>
|
||||
</State>
|
||||
</value>
|
||||
</entry>
|
||||
</map>
|
||||
</option>
|
||||
</component>
|
||||
<component name="com.intellij.coverage.CoverageDataManagerImpl">
|
||||
<SUITE FILE_PATH="coverage/PyCharmProjects$senkin_alexander_lab_1.coverage" NAME="senkin_alexander_lab_1 Coverage Results" MODIFIED="1697744262965" SOURCE_PROVIDER="com.intellij.coverage.DefaultCoverageFileProvider" RUNNER="coverage.py" COVERAGE_BY_TEST_ENABLED="true" COVERAGE_TRACING_ENABLED="false" WORKING_DIRECTORY="$PROJECT_DIR$/senkin_alexander_lab_1" />
|
||||
</component>
|
||||
</project>
|
||||
47
abanin_daniil_lab_1/README.md
Normal file
@@ -0,0 +1,47 @@
|
||||
## Лабораторная работа №1
|
||||
|
||||
### Работа с типовыми наборами данных и различными моделями
|
||||
|
||||
### ПИбд-41 Абанин Даниил
|
||||
|
||||
### Как запустить лабораторную работу:
|
||||
|
||||
* установить python, numpy, matplotlib, sklearn
|
||||
* запустить проект (стартовая точка класс lab1)
|
||||
|
||||
### Какие технологии использовались:
|
||||
|
||||
* Язык программирования `Python`,
|
||||
* Библиотеки numpy, matplotlib, sklearn
|
||||
* Среда разработки `PyCharm`
|
||||
|
||||
### Что делает лабораторная работа:
|
||||
|
||||
* Программа гененерирует данные с make_moonsmake_moons (noise=0.3, random_state=rs)
|
||||
* Сравнивает три типа моделей: инейная, полиномиальная, гребневая полиномиальная регрессии
|
||||
|
||||
### Примеры работы:
|
||||
|
||||
#### Результаты:
|
||||
MAE - средняя абсолютная ошибка, измеряет среднюю абсолютную разницу между прогнозируемыми значениями модели и фактическими значениями целевой переменной
|
||||
MSE - средняя квадратическая ошибка, измеряет среднюю квадратичную разницу между прогнозируемыми значениями модели и фактическими значениями целевой переменной
|
||||
|
||||
Чем меньше значения показателей, тем лучше модель справляется с предсказанием
|
||||
|
||||
Линейная регрессия
|
||||
MAE 0.2959889435199454
|
||||
MSE 0.13997968555679302
|
||||
|
||||
Полиномиальная регрессия
|
||||
MAE 0.21662135861071705
|
||||
MSE 0.08198825629271855
|
||||
|
||||
Гребневая полиномиальная регрессия
|
||||
MAE 0.2102788716636562
|
||||
MSE 0.07440133949387796
|
||||
|
||||
Лучший результат показала модель **Гребневая полиномиальная регрессия**
|
||||
|
||||

|
||||

|
||||

|
||||
BIN
abanin_daniil_lab_1/greb_reg.jpg
Normal file
|
After Width: | Height: | Size: 59 KiB |
66
abanin_daniil_lab_1/lab1.py
Normal file
@@ -0,0 +1,66 @@
|
||||
from matplotlib import pyplot as plt
|
||||
from matplotlib.colors import ListedColormap
|
||||
from sklearn.linear_model import LinearRegression, Ridge
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.pipeline import Pipeline
|
||||
from sklearn.preprocessing import PolynomialFeatures
|
||||
from sklearn.datasets import make_moons
|
||||
from sklearn import metrics
|
||||
|
||||
cm_bright = ListedColormap(['#8B0000', '#FF0000'])
|
||||
cm_bright1 = ListedColormap(['#FF4500', '#FFA500'])
|
||||
|
||||
|
||||
def create_moons():
|
||||
x, y = make_moons(noise=0.3, random_state=0)
|
||||
X_train, X_test, y_train, y_test = train_test_split(x, y, test_size=.4, random_state=42)
|
||||
|
||||
linear_regretion(X_train, X_test, y_train, y_test)
|
||||
polynomial_regretion(X_train, X_test, y_train, y_test)
|
||||
ridge_regretion(X_train, X_test, y_train, y_test)
|
||||
|
||||
|
||||
def linear_regretion(x_train, x_test, y_train, y_test):
|
||||
model = LinearRegression().fit(x_train, y_train)
|
||||
y_predict = model.intercept_ + model.coef_ * x_test
|
||||
plt.title('Линейная регрессия')
|
||||
print('Линейная регрессия')
|
||||
plt.scatter(x_train[:, 0], x_train[:, 1], c=y_train, cmap=cm_bright)
|
||||
plt.scatter(x_test[:, 0], x_test[:, 1], c=y_test, cmap=cm_bright1, alpha=0.7)
|
||||
plt.plot(x_test, y_predict, color='red')
|
||||
print('MAE', metrics.mean_absolute_error(y_test, y_predict[:, 1]))
|
||||
print('MSE', metrics.mean_squared_error(y_test, y_predict[:, 1]))
|
||||
plt.show()
|
||||
|
||||
|
||||
def polynomial_regretion(x_train, x_test, y_train, y_test):
|
||||
polynomial_features = PolynomialFeatures(degree=3)
|
||||
X_polynomial = polynomial_features.fit_transform(x_train, y_train)
|
||||
base_model = LinearRegression()
|
||||
base_model.fit(X_polynomial, y_train)
|
||||
y_predict = base_model.predict(X_polynomial)
|
||||
plt.title('Полиномиальная регрессия')
|
||||
plt.scatter(x_train[:, 0], x_train[:, 1], c=y_train, cmap=cm_bright)
|
||||
plt.scatter(x_test[:, 0], x_test[:, 1], c=y_test, cmap=cm_bright1, alpha=0.7)
|
||||
plt.plot(x_train, y_predict, color='blue')
|
||||
plt.show()
|
||||
print('Полиномиальная регрессия')
|
||||
print('MAE', metrics.mean_absolute_error(y_train, y_predict))
|
||||
print('MSE', metrics.mean_squared_error(y_train, y_predict))
|
||||
|
||||
|
||||
def ridge_regretion(X_train, X_test, y_train, y_test):
|
||||
model = Pipeline([('poly', PolynomialFeatures(degree=3)), ('ridge', Ridge(alpha=1.0))])
|
||||
model.fit(X_train, y_train)
|
||||
y_predict = model.predict(X_test)
|
||||
plt.title('Гребневая полиномиальная регрессия')
|
||||
plt.scatter(X_train[:, 0], X_train[:, 1], c=y_train, cmap=cm_bright)
|
||||
plt.scatter(X_test[:, 0], X_test[:, 1], c=y_test, cmap=cm_bright1, alpha=0.7)
|
||||
plt.plot(X_test, y_predict, color='blue')
|
||||
plt.show()
|
||||
print('Гребневая полиномиальная регрессия')
|
||||
print('MAE', metrics.mean_absolute_error(y_test, y_predict))
|
||||
print('MSE', metrics.mean_squared_error(y_test, y_predict))
|
||||
|
||||
|
||||
create_moons()
|
||||
BIN
abanin_daniil_lab_1/lin_reg.jpg
Normal file
|
After Width: | Height: | Size: 30 KiB |
BIN
abanin_daniil_lab_1/pol_reg.jpg
Normal file
|
After Width: | Height: | Size: 63 KiB |
41
abanin_daniil_lab_2/README.md
Normal file
@@ -0,0 +1,41 @@
|
||||
## Лабораторная работа №2
|
||||
|
||||
### Ранжирование признаков
|
||||
|
||||
## ПИбд-41 Абанин Даниил
|
||||
|
||||
### Как запустить лабораторную работу:
|
||||
|
||||
* установить python, numpy, matplotlib, sklearn
|
||||
* запустить проект (стартовая точка lab2)
|
||||
|
||||
### Какие технологии использовались:
|
||||
|
||||
* Язык программирования `Python`, библиотеки numpy, matplotlib, sklearn
|
||||
* Среда разработки `PyCharm`
|
||||
|
||||
### Что делает лабораторная работа:
|
||||
|
||||
* Генерирует данные и обучает такие модели, как: LinearRegression, RandomizedLasso, Recursive Feature Elimination (RFE)
|
||||
* Производиться ранжирование признаков с помощью моделей LinearRegression, RandomizedLasso, Recursive Feature Elimination (RFE)
|
||||
* Отображение получившихся результатов: 4 самых важных признака по среднему значению, значения признаков для каждой модели
|
||||
|
||||
|
||||
### 4 самых важных признака по среднему значению
|
||||
* Параметр - x4, значение - 0.56
|
||||
* Параметр - x1, значение - 0.45
|
||||
* Параметр - x2, значение - 0.33
|
||||
* Параметр - x9, значение - 0.33
|
||||
|
||||
####Linear Regression
|
||||
[('x1', 1.0), ('x4', 0.69), ('x2', 0.61), ('x11', 0.59), ('x3', 0.51), ('x13', 0.48), ('x5', 0.19), ('x12', 0.19), ('x14', 0.12), ('x8', 0.03), ('x6', 0.02), ('x10', 0.01), ('x7', 0.0), ('x9', 0.0)]
|
||||
|
||||
####Recursive Feature Elimination
|
||||
[('x9', 1.0), ('x7', 0.86), ('x10', 0.71), ('x6', 0.57), ('x8', 0.43), ('x14', 0.29), ('x12', 0.14), ('x1', 0.0), ('x2', 0.0), ('x3', 0.0), ('x4', 0.0), ('x5', 0.0), ('x11', 0.0), ('x13', 0.0)]
|
||||
|
||||
####Randomize Lasso
|
||||
[('x4', 1.0), ('x2', 0.37), ('x1', 0.36), ('x5', 0.32), ('x6', 0.02), ('x8', 0.02), ('x3', 0.01), ('x7', 0.0), ('x9', 0.0), ('x10', 0.0), ('x11', 0.0), ('x12', 0.0), ('x13', 0.0), ('x14', 0.0)]
|
||||
|
||||
#### Результаты:
|
||||
|
||||

|
||||
76
abanin_daniil_lab_2/RadomizedLasso.py
Normal file
@@ -0,0 +1,76 @@
|
||||
from sklearn.utils import check_X_y, check_random_state
|
||||
from sklearn.linear_model import Lasso
|
||||
from scipy.sparse import issparse
|
||||
from scipy import sparse
|
||||
|
||||
|
||||
def _rescale_data(x, weights):
|
||||
if issparse(x):
|
||||
size = weights.shape[0]
|
||||
weight_dia = sparse.dia_matrix((1 - weights, 0), (size, size))
|
||||
x_rescaled = x * weight_dia
|
||||
else:
|
||||
x_rescaled = x * (1 - weights)
|
||||
|
||||
return x_rescaled
|
||||
|
||||
|
||||
class RandomizedLasso(Lasso):
|
||||
"""
|
||||
Randomized version of scikit-learns Lasso class.
|
||||
|
||||
Randomized LASSO is a generalization of the LASSO. The LASSO penalises
|
||||
the absolute value of the coefficients with a penalty term proportional
|
||||
to `alpha`, but the randomized LASSO changes the penalty to a randomly
|
||||
chosen value in the range `[alpha, alpha/weakness]`.
|
||||
|
||||
Parameters
|
||||
----------
|
||||
weakness : float
|
||||
Weakness value for randomized LASSO. Must be in (0, 1].
|
||||
|
||||
See also
|
||||
--------
|
||||
sklearn.linear_model.LogisticRegression : learns logistic regression models
|
||||
using the same algorithm.
|
||||
"""
|
||||
def __init__(self, weakness=0.5, alpha=1.0, fit_intercept=True,
|
||||
precompute=False, copy_X=True, max_iter=1000,
|
||||
tol=1e-4, warm_start=False, positive=False,
|
||||
random_state=None, selection='cyclic'):
|
||||
self.weakness = weakness
|
||||
super(RandomizedLasso, self).__init__(
|
||||
alpha=alpha, fit_intercept=fit_intercept, precompute=precompute, copy_X=copy_X,
|
||||
max_iter=max_iter, tol=tol, warm_start=warm_start,
|
||||
positive=positive, random_state=random_state,
|
||||
selection=selection)
|
||||
|
||||
def fit(self, X, y):
|
||||
"""Fit the model according to the given training data.
|
||||
|
||||
Parameters
|
||||
----------
|
||||
X : {array-like, sparse matrix}, shape = [n_samples, n_features]
|
||||
The training input samples.
|
||||
|
||||
y : array-like, shape = [n_samples]
|
||||
The target values.
|
||||
"""
|
||||
if not isinstance(self.weakness, float) or not (0.0 < self.weakness <= 1.0):
|
||||
raise ValueError('weakness should be a float in (0, 1], got %s' % self.weakness)
|
||||
|
||||
X, y = check_X_y(X, y, accept_sparse=True)
|
||||
|
||||
n_features = X.shape[1]
|
||||
weakness = 1. - self.weakness
|
||||
random_state = check_random_state(self.random_state)
|
||||
|
||||
weights = weakness * random_state.randint(0, 1 + 1, size=(n_features,))
|
||||
|
||||
# TODO: I am afraid this will do double normalization if set to true
|
||||
#X, y, _, _ = _preprocess_data(X, y, self.fit_intercept, normalize=self.normalize, copy=False,
|
||||
# sample_weight=None, return_mean=False)
|
||||
|
||||
# TODO: Check if this is a problem if it happens before standardization
|
||||
X_rescaled = _rescale_data(X, weights)
|
||||
return super(RandomizedLasso, self).fit(X_rescaled, y)
|
||||
BIN
abanin_daniil_lab_2/__pycache__/RadomizedLasso.cpython-39.pyc
Normal file
81
abanin_daniil_lab_2/lab2.py
Normal file
@@ -0,0 +1,81 @@
|
||||
from matplotlib import pyplot as plt
|
||||
from sklearn.linear_model import LinearRegression
|
||||
from RadomizedLasso import RandomizedLasso
|
||||
from sklearn.feature_selection import RFE
|
||||
from sklearn.preprocessing import MinMaxScaler
|
||||
import numpy as np
|
||||
|
||||
names = ["x%s" % i for i in range(1, 15)]
|
||||
|
||||
|
||||
def start_point():
|
||||
X,Y = generation_data()
|
||||
# Линейная модель
|
||||
lr = LinearRegression()
|
||||
lr.fit(X, Y)
|
||||
# Рекурсивное сокращение признаков
|
||||
rfe = RFE(lr)
|
||||
rfe.fit(X, Y)
|
||||
# Случайное Лассо
|
||||
randomized_lasso = RandomizedLasso(alpha=.01)
|
||||
randomized_lasso.fit(X, Y)
|
||||
|
||||
ranks = {"Linear Regression": rank_to_dict(lr.coef_), "Recursive Feature Elimination": rank_to_dict(rfe.ranking_),
|
||||
"Randomize Lasso": rank_to_dict(randomized_lasso.coef_)}
|
||||
|
||||
get_estimation(ranks)
|
||||
print_sorted_data(ranks)
|
||||
|
||||
|
||||
def generation_data():
|
||||
np.random.seed(0)
|
||||
size = 750
|
||||
X = np.random.uniform(0, 1, (size, 14))
|
||||
Y = (10 * np.sin(np.pi * X[:, 0] * X[:, 1]) + 20 * (X[:, 2] - .5) ** 2 +
|
||||
10 * X[:, 3] + 5 * X[:, 4] ** 5 + np.random.normal(0, 1))
|
||||
X[:, 10:] = X[:, :4] + np.random.normal(0, .025, (size, 4))
|
||||
return X, Y
|
||||
|
||||
|
||||
def rank_to_dict(ranks):
|
||||
ranks = np.abs(ranks)
|
||||
minmax = MinMaxScaler()
|
||||
ranks = minmax.fit_transform(np.array(ranks).reshape(14, 1)).ravel()
|
||||
ranks = map(lambda x: round(x, 2), ranks)
|
||||
return dict(zip(names, ranks))
|
||||
|
||||
|
||||
def get_estimation(ranks: {}):
|
||||
mean = {}
|
||||
#«Бежим» по списку ranks
|
||||
for key, value in ranks.items():
|
||||
for item in value.items():
|
||||
if(item[0] not in mean):
|
||||
mean[item[0]] = 0
|
||||
mean[item[0]] += item[1]
|
||||
|
||||
for key, value in mean.items():
|
||||
res = value/len(ranks)
|
||||
mean[key] = round(res, 2)
|
||||
|
||||
mean_sorted = sorted(mean.items(), key=lambda item: item[1], reverse=True)
|
||||
print("Средние значения")
|
||||
print(mean_sorted)
|
||||
|
||||
|
||||
print("4 самых важных признака по среднему значению")
|
||||
for item in mean_sorted[:4]:
|
||||
print('Параметр - {0}, значение - {1}'.format(item[0], item[1]))
|
||||
|
||||
|
||||
|
||||
def print_sorted_data(ranks: {}):
|
||||
print()
|
||||
for key, value in ranks.items():
|
||||
ranks[key] = sorted(value.items(), key=lambda item: item[1], reverse=True)
|
||||
for key, value in ranks.items():
|
||||
print(key)
|
||||
print(value)
|
||||
|
||||
|
||||
start_point()
|
||||
BIN
abanin_daniil_lab_2/result.png
Normal file
|
After Width: | Height: | Size: 178 KiB |
27
abanin_daniil_lab_3/README.md
Normal file
@@ -0,0 +1,27 @@
|
||||
## Лабораторная работа №3
|
||||
|
||||
### Деревья решений
|
||||
|
||||
## Cтудент группы ПИбд-41 Абанин Даниил
|
||||
|
||||
### Как запустить лабораторную работу:
|
||||
|
||||
* установить python, numpy, matplotlib, sklearn
|
||||
* запустить проект (lab3)
|
||||
|
||||
### Какие технологии использовались:
|
||||
|
||||
* Язык программирования `Python`, библиотеки numpy, matplotlib, sklearn
|
||||
* Среда разработки `PyCharm`
|
||||
|
||||
### Что делает лабораторная работа:
|
||||
|
||||
* Выполняет ранжирование признаков для регрессионной модели
|
||||
* По данным "Eligibility Prediction for Loan" решает задачу классификации (с помощью дерева решений), в которой необходимо выявить риски выдачи кредита и определить его статус (выдан или отказ). В качестве исходных данных используются три признака: Credit_History - соответствие кредитной истории стандартам банка, ApplicantIncome - доход заявителя, LoanAmount - сумма кредита.
|
||||
|
||||
### Примеры работы:
|
||||
|
||||
#### Результаты:
|
||||
* Наиболее важным параметром при выдачи кредита оказался доход заявителя - ApplicantIncome, затем LoanAmount - сумма выдаваемого кредита
|
||||
|
||||

|
||||
33
abanin_daniil_lab_3/lab3.py
Normal file
@@ -0,0 +1,33 @@
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.tree import DecisionTreeClassifier
|
||||
import pandas as pd
|
||||
import numpy as np
|
||||
|
||||
pd.options.mode.chained_assignment = None
|
||||
|
||||
FILE_PATH = "loan.csv"
|
||||
REQUIRED_COLUMNS = ['Credit_History', 'LoanAmount', 'ApplicantIncome']
|
||||
TARGET_COLUMN = 'Loan_Status'
|
||||
|
||||
|
||||
def print_classifier_info(feature_importance):
|
||||
feature_names = REQUIRED_COLUMNS
|
||||
embarked_score = feature_importance[-3:].sum()
|
||||
scores = np.append(feature_importance[:2], embarked_score)
|
||||
scores = map(lambda score: round(score, 2), scores)
|
||||
print(dict(zip(feature_names, scores)))
|
||||
|
||||
|
||||
if __name__ == '__main__':
|
||||
data = pd.read_csv(FILE_PATH)
|
||||
|
||||
X = data[REQUIRED_COLUMNS]
|
||||
y = data[TARGET_COLUMN]
|
||||
|
||||
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=42)
|
||||
|
||||
classifier_tree = DecisionTreeClassifier(random_state=42)
|
||||
classifier_tree.fit(X_train, y_train)
|
||||
|
||||
print_classifier_info(classifier_tree.feature_importances_)
|
||||
print("Оценка качества (задача классификации) - ", classifier_tree.score(X_test, y_test))
|
||||
615
abanin_daniil_lab_3/loan.csv
Normal file
@@ -0,0 +1,615 @@
|
||||
Loan_ID,Gender,Married,Dependents,Education,Self_Employed,ApplicantIncome,CoapplicantIncome,LoanAmount,Loan_Amount_Term,Credit_History,Property_Area,Loan_Status
|
||||
LP001002,Male,No,0,1,No,5849,0.0,360.0,1.0,0,Y,0.0
|
||||
LP001003,Male,Yes,1,1,No,4583,1508.0,128.0,360.0,1,Rural,0.0
|
||||
LP001005,Male,Yes,0,1,Yes,3000,0.0,66.0,360.0,1,Urban,1.0
|
||||
LP001006,Male,Yes,0,0,No,2583,2358.0,120.0,360.0,1,Urban,1.0
|
||||
LP001008,Male,No,0,1,No,6000,0.0,141.0,360.0,1,Urban,1.0
|
||||
LP001011,Male,Yes,2,1,Yes,5417,4196.0,267.0,360.0,1,Urban,1.0
|
||||
LP001013,Male,Yes,0,0,No,2333,1516.0,95.0,360.0,1,Urban,1.0
|
||||
LP001014,Male,Yes,3+,1,No,3036,2504.0,158.0,360.0,0,Semiurban,0.0
|
||||
LP001018,Male,Yes,2,1,No,4006,1526.0,168.0,360.0,1,Urban,1.0
|
||||
LP001020,Male,Yes,1,1,No,12841,10968.0,349.0,360.0,1,Semiurban,0.0
|
||||
LP001024,Male,Yes,2,1,No,3200,700.0,70.0,360.0,1,Urban,1.0
|
||||
LP001027,Male,Yes,2,1,,2500,1840.0,109.0,360.0,1,Urban,1.0
|
||||
LP001028,Male,Yes,2,1,No,3073,8106.0,200.0,360.0,1,Urban,1.0
|
||||
LP001029,Male,No,0,1,No,1853,2840.0,114.0,360.0,1,Rural,0.0
|
||||
LP001030,Male,Yes,2,1,No,1299,1086.0,17.0,120.0,1,Urban,1.0
|
||||
LP001032,Male,No,0,1,No,4950,0.0,125.0,360.0,1,Urban,1.0
|
||||
LP001034,Male,No,1,0,No,3596,0.0,100.0,240.0,0,Urban,1.0
|
||||
LP001036,Female,No,0,1,No,3510,0.0,76.0,360.0,0,Urban,0.0
|
||||
LP001038,Male,Yes,0,0,No,4887,0.0,133.0,360.0,1,Rural,0.0
|
||||
LP001041,Male,Yes,0,1,,2600,3500.0,115.0,,1,Urban,1.0
|
||||
LP001043,Male,Yes,0,0,No,7660,0.0,104.0,360.0,0,Urban,0.0
|
||||
LP001046,Male,Yes,1,1,No,5955,5625.0,315.0,360.0,1,Urban,1.0
|
||||
LP001047,Male,Yes,0,0,No,2600,1911.0,116.0,360.0,0,Semiurban,0.0
|
||||
LP001050,,Yes,2,0,No,3365,1917.0,112.0,360.0,0,Rural,0.0
|
||||
LP001052,Male,Yes,1,1,,3717,2925.0,151.0,360.0,0,Semiurban,0.0
|
||||
LP001066,Male,Yes,0,1,Yes,9560,0.0,191.0,360.0,1,Semiurban,1.0
|
||||
LP001068,Male,Yes,0,1,No,2799,2253.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001073,Male,Yes,2,0,No,4226,1040.0,110.0,360.0,1,Urban,1.0
|
||||
LP001086,Male,No,0,0,No,1442,0.0,35.0,360.0,1,Urban,0.0
|
||||
LP001087,Female,No,2,1,,3750,2083.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001091,Male,Yes,1,1,,4166,3369.0,201.0,360.0,0,Urban,0.0
|
||||
LP001095,Male,No,0,1,No,3167,0.0,74.0,360.0,1,Urban,0.0
|
||||
LP001097,Male,No,1,1,Yes,4692,0.0,106.0,360.0,1,Rural,0.0
|
||||
LP001098,Male,Yes,0,1,No,3500,1667.0,114.0,360.0,1,Semiurban,1.0
|
||||
LP001100,Male,No,3+,1,No,12500,3000.0,320.0,360.0,1,Rural,0.0
|
||||
LP001106,Male,Yes,0,1,No,2275,2067.0,0.0,360.0,1,Urban,1.0
|
||||
LP001109,Male,Yes,0,1,No,1828,1330.0,100.0,,0,Urban,0.0
|
||||
LP001112,Female,Yes,0,1,No,3667,1459.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001114,Male,No,0,1,No,4166,7210.0,184.0,360.0,1,Urban,1.0
|
||||
LP001116,Male,No,0,0,No,3748,1668.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP001119,Male,No,0,1,No,3600,0.0,80.0,360.0,1,Urban,0.0
|
||||
LP001120,Male,No,0,1,No,1800,1213.0,47.0,360.0,1,Urban,1.0
|
||||
LP001123,Male,Yes,0,1,No,2400,0.0,75.0,360.0,0,Urban,1.0
|
||||
LP001131,Male,Yes,0,1,No,3941,2336.0,134.0,360.0,1,Semiurban,1.0
|
||||
LP001136,Male,Yes,0,0,Yes,4695,0.0,96.0,,1,Urban,1.0
|
||||
LP001137,Female,No,0,1,No,3410,0.0,88.0,,1,Urban,1.0
|
||||
LP001138,Male,Yes,1,1,No,5649,0.0,44.0,360.0,1,Urban,1.0
|
||||
LP001144,Male,Yes,0,1,No,5821,0.0,144.0,360.0,1,Urban,1.0
|
||||
LP001146,Female,Yes,0,1,No,2645,3440.0,120.0,360.0,0,Urban,0.0
|
||||
LP001151,Female,No,0,1,No,4000,2275.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001155,Female,Yes,0,0,No,1928,1644.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001157,Female,No,0,1,No,3086,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001164,Female,No,0,1,No,4230,0.0,112.0,360.0,1,Semiurban,0.0
|
||||
LP001179,Male,Yes,2,1,No,4616,0.0,134.0,360.0,1,Urban,0.0
|
||||
LP001186,Female,Yes,1,1,Yes,11500,0.0,286.0,360.0,0,Urban,0.0
|
||||
LP001194,Male,Yes,2,1,No,2708,1167.0,97.0,360.0,1,Semiurban,1.0
|
||||
LP001195,Male,Yes,0,1,No,2132,1591.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP001197,Male,Yes,0,1,No,3366,2200.0,135.0,360.0,1,Rural,0.0
|
||||
LP001198,Male,Yes,1,1,No,8080,2250.0,180.0,360.0,1,Urban,1.0
|
||||
LP001199,Male,Yes,2,0,No,3357,2859.0,144.0,360.0,1,Urban,1.0
|
||||
LP001205,Male,Yes,0,1,No,2500,3796.0,120.0,360.0,1,Urban,1.0
|
||||
LP001206,Male,Yes,3+,1,No,3029,0.0,99.0,360.0,1,Urban,1.0
|
||||
LP001207,Male,Yes,0,0,Yes,2609,3449.0,165.0,180.0,0,Rural,0.0
|
||||
LP001213,Male,Yes,1,1,No,4945,0.0,0.0,360.0,0,Rural,0.0
|
||||
LP001222,Female,No,0,1,No,4166,0.0,116.0,360.0,0,Semiurban,0.0
|
||||
LP001225,Male,Yes,0,1,No,5726,4595.0,258.0,360.0,1,Semiurban,0.0
|
||||
LP001228,Male,No,0,0,No,3200,2254.0,126.0,180.0,0,Urban,0.0
|
||||
LP001233,Male,Yes,1,1,No,10750,0.0,312.0,360.0,1,Urban,1.0
|
||||
LP001238,Male,Yes,3+,0,Yes,7100,0.0,125.0,60.0,1,Urban,1.0
|
||||
LP001241,Female,No,0,1,No,4300,0.0,136.0,360.0,0,Semiurban,0.0
|
||||
LP001243,Male,Yes,0,1,No,3208,3066.0,172.0,360.0,1,Urban,1.0
|
||||
LP001245,Male,Yes,2,0,Yes,1875,1875.0,97.0,360.0,1,Semiurban,1.0
|
||||
LP001248,Male,No,0,1,No,3500,0.0,81.0,300.0,1,Semiurban,1.0
|
||||
LP001250,Male,Yes,3+,0,No,4755,0.0,95.0,,0,Semiurban,0.0
|
||||
LP001253,Male,Yes,3+,1,Yes,5266,1774.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP001255,Male,No,0,1,No,3750,0.0,113.0,480.0,1,Urban,0.0
|
||||
LP001256,Male,No,0,1,No,3750,4750.0,176.0,360.0,1,Urban,0.0
|
||||
LP001259,Male,Yes,1,1,Yes,1000,3022.0,110.0,360.0,1,Urban,0.0
|
||||
LP001263,Male,Yes,3+,1,No,3167,4000.0,180.0,300.0,0,Semiurban,0.0
|
||||
LP001264,Male,Yes,3+,0,Yes,3333,2166.0,130.0,360.0,0,Semiurban,1.0
|
||||
LP001265,Female,No,0,1,No,3846,0.0,111.0,360.0,1,Semiurban,1.0
|
||||
LP001266,Male,Yes,1,1,Yes,2395,0.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001267,Female,Yes,2,1,No,1378,1881.0,167.0,360.0,1,Urban,0.0
|
||||
LP001273,Male,Yes,0,1,No,6000,2250.0,265.0,360.0,0,Semiurban,0.0
|
||||
LP001275,Male,Yes,1,1,No,3988,0.0,50.0,240.0,1,Urban,1.0
|
||||
LP001279,Male,No,0,1,No,2366,2531.0,136.0,360.0,1,Semiurban,1.0
|
||||
LP001280,Male,Yes,2,0,No,3333,2000.0,99.0,360.0,0,Semiurban,1.0
|
||||
LP001282,Male,Yes,0,1,No,2500,2118.0,104.0,360.0,1,Semiurban,1.0
|
||||
LP001289,Male,No,0,1,No,8566,0.0,210.0,360.0,1,Urban,1.0
|
||||
LP001310,Male,Yes,0,1,No,5695,4167.0,175.0,360.0,1,Semiurban,1.0
|
||||
LP001316,Male,Yes,0,1,No,2958,2900.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001318,Male,Yes,2,1,No,6250,5654.0,188.0,180.0,1,Semiurban,1.0
|
||||
LP001319,Male,Yes,2,0,No,3273,1820.0,81.0,360.0,1,Urban,1.0
|
||||
LP001322,Male,No,0,1,No,4133,0.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001325,Male,No,0,0,No,3620,0.0,25.0,120.0,1,Semiurban,1.0
|
||||
LP001326,Male,No,0,1,,6782,0.0,0.0,360.0,0,Urban,0.0
|
||||
LP001327,Female,Yes,0,1,No,2484,2302.0,137.0,360.0,1,Semiurban,1.0
|
||||
LP001333,Male,Yes,0,1,No,1977,997.0,50.0,360.0,1,Semiurban,1.0
|
||||
LP001334,Male,Yes,0,0,No,4188,0.0,115.0,180.0,1,Semiurban,1.0
|
||||
LP001343,Male,Yes,0,1,No,1759,3541.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001345,Male,Yes,2,0,No,4288,3263.0,133.0,180.0,1,Urban,1.0
|
||||
LP001349,Male,No,0,1,No,4843,3806.0,151.0,360.0,1,Semiurban,1.0
|
||||
LP001350,Male,Yes,,1,No,13650,0.0,0.0,360.0,1,Urban,1.0
|
||||
LP001356,Male,Yes,0,1,No,4652,3583.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001357,Male,,,1,No,3816,754.0,160.0,360.0,1,Urban,1.0
|
||||
LP001367,Male,Yes,1,1,No,3052,1030.0,100.0,360.0,1,Urban,1.0
|
||||
LP001369,Male,Yes,2,1,No,11417,1126.0,225.0,360.0,1,Urban,1.0
|
||||
LP001370,Male,No,0,0,,7333,0.0,120.0,360.0,1,Rural,0.0
|
||||
LP001379,Male,Yes,2,1,No,3800,3600.0,216.0,360.0,0,Urban,0.0
|
||||
LP001384,Male,Yes,3+,0,No,2071,754.0,94.0,480.0,1,Semiurban,1.0
|
||||
LP001385,Male,No,0,1,No,5316,0.0,136.0,360.0,1,Urban,1.0
|
||||
LP001387,Female,Yes,0,1,,2929,2333.0,139.0,360.0,1,Semiurban,1.0
|
||||
LP001391,Male,Yes,0,0,No,3572,4114.0,152.0,,0,Rural,0.0
|
||||
LP001392,Female,No,1,1,Yes,7451,0.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001398,Male,No,0,1,,5050,0.0,118.0,360.0,1,Semiurban,1.0
|
||||
LP001401,Male,Yes,1,1,No,14583,0.0,185.0,180.0,1,Rural,1.0
|
||||
LP001404,Female,Yes,0,1,No,3167,2283.0,154.0,360.0,1,Semiurban,1.0
|
||||
LP001405,Male,Yes,1,1,No,2214,1398.0,85.0,360.0,0,Urban,1.0
|
||||
LP001421,Male,Yes,0,1,No,5568,2142.0,175.0,360.0,1,Rural,0.0
|
||||
LP001422,Female,No,0,1,No,10408,0.0,259.0,360.0,1,Urban,1.0
|
||||
LP001426,Male,Yes,,1,No,5667,2667.0,180.0,360.0,1,Rural,1.0
|
||||
LP001430,Female,No,0,1,No,4166,0.0,44.0,360.0,1,Semiurban,1.0
|
||||
LP001431,Female,No,0,1,No,2137,8980.0,137.0,360.0,0,Semiurban,1.0
|
||||
LP001432,Male,Yes,2,1,No,2957,0.0,81.0,360.0,1,Semiurban,1.0
|
||||
LP001439,Male,Yes,0,0,No,4300,2014.0,194.0,360.0,1,Rural,1.0
|
||||
LP001443,Female,No,0,1,No,3692,0.0,93.0,360.0,0,Rural,1.0
|
||||
LP001448,,Yes,3+,1,No,23803,0.0,370.0,360.0,1,Rural,1.0
|
||||
LP001449,Male,No,0,1,No,3865,1640.0,0.0,360.0,1,Rural,1.0
|
||||
LP001451,Male,Yes,1,1,Yes,10513,3850.0,160.0,180.0,0,Urban,0.0
|
||||
LP001465,Male,Yes,0,1,No,6080,2569.0,182.0,360.0,0,Rural,0.0
|
||||
LP001469,Male,No,0,1,Yes,20166,0.0,650.0,480.0,0,Urban,1.0
|
||||
LP001473,Male,No,0,1,No,2014,1929.0,74.0,360.0,1,Urban,1.0
|
||||
LP001478,Male,No,0,1,No,2718,0.0,70.0,360.0,1,Semiurban,1.0
|
||||
LP001482,Male,Yes,0,1,Yes,3459,0.0,25.0,120.0,1,Semiurban,1.0
|
||||
LP001487,Male,No,0,1,No,4895,0.0,102.0,360.0,1,Semiurban,1.0
|
||||
LP001488,Male,Yes,3+,1,No,4000,7750.0,290.0,360.0,1,Semiurban,0.0
|
||||
LP001489,Female,Yes,0,1,No,4583,0.0,84.0,360.0,1,Rural,0.0
|
||||
LP001491,Male,Yes,2,1,Yes,3316,3500.0,88.0,360.0,1,Urban,1.0
|
||||
LP001492,Male,No,0,1,No,14999,0.0,242.0,360.0,0,Semiurban,0.0
|
||||
LP001493,Male,Yes,2,0,No,4200,1430.0,129.0,360.0,1,Rural,0.0
|
||||
LP001497,Male,Yes,2,1,No,5042,2083.0,185.0,360.0,1,Rural,0.0
|
||||
LP001498,Male,No,0,1,No,5417,0.0,168.0,360.0,1,Urban,1.0
|
||||
LP001504,Male,No,0,1,Yes,6950,0.0,175.0,180.0,1,Semiurban,1.0
|
||||
LP001507,Male,Yes,0,1,No,2698,2034.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001508,Male,Yes,2,1,No,11757,0.0,187.0,180.0,1,Urban,1.0
|
||||
LP001514,Female,Yes,0,1,No,2330,4486.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001516,Female,Yes,2,1,No,14866,0.0,70.0,360.0,1,Urban,1.0
|
||||
LP001518,Male,Yes,1,1,No,1538,1425.0,30.0,360.0,1,Urban,1.0
|
||||
LP001519,Female,No,0,1,No,10000,1666.0,225.0,360.0,1,Rural,0.0
|
||||
LP001520,Male,Yes,0,1,No,4860,830.0,125.0,360.0,1,Semiurban,1.0
|
||||
LP001528,Male,No,0,1,No,6277,0.0,118.0,360.0,0,Rural,0.0
|
||||
LP001529,Male,Yes,0,1,Yes,2577,3750.0,152.0,360.0,1,Rural,1.0
|
||||
LP001531,Male,No,0,1,No,9166,0.0,244.0,360.0,1,Urban,0.0
|
||||
LP001532,Male,Yes,2,0,No,2281,0.0,113.0,360.0,1,Rural,0.0
|
||||
LP001535,Male,No,0,1,No,3254,0.0,50.0,360.0,1,Urban,1.0
|
||||
LP001536,Male,Yes,3+,1,No,39999,0.0,600.0,180.0,0,Semiurban,1.0
|
||||
LP001541,Male,Yes,1,1,No,6000,0.0,160.0,360.0,0,Rural,1.0
|
||||
LP001543,Male,Yes,1,1,No,9538,0.0,187.0,360.0,1,Urban,1.0
|
||||
LP001546,Male,No,0,1,,2980,2083.0,120.0,360.0,1,Rural,1.0
|
||||
LP001552,Male,Yes,0,1,No,4583,5625.0,255.0,360.0,1,Semiurban,1.0
|
||||
LP001560,Male,Yes,0,0,No,1863,1041.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP001562,Male,Yes,0,1,No,7933,0.0,275.0,360.0,1,Urban,0.0
|
||||
LP001565,Male,Yes,1,1,No,3089,1280.0,121.0,360.0,0,Semiurban,0.0
|
||||
LP001570,Male,Yes,2,1,No,4167,1447.0,158.0,360.0,1,Rural,1.0
|
||||
LP001572,Male,Yes,0,1,No,9323,0.0,75.0,180.0,1,Urban,1.0
|
||||
LP001574,Male,Yes,0,1,No,3707,3166.0,182.0,,1,Rural,1.0
|
||||
LP001577,Female,Yes,0,1,No,4583,0.0,112.0,360.0,1,Rural,0.0
|
||||
LP001578,Male,Yes,0,1,No,2439,3333.0,129.0,360.0,1,Rural,1.0
|
||||
LP001579,Male,No,0,1,No,2237,0.0,63.0,480.0,0,Semiurban,0.0
|
||||
LP001580,Male,Yes,2,1,No,8000,0.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP001581,Male,Yes,0,0,,1820,1769.0,95.0,360.0,1,Rural,1.0
|
||||
LP001585,,Yes,3+,1,No,51763,0.0,700.0,300.0,1,Urban,1.0
|
||||
LP001586,Male,Yes,3+,0,No,3522,0.0,81.0,180.0,1,Rural,0.0
|
||||
LP001594,Male,Yes,0,1,No,5708,5625.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP001603,Male,Yes,0,0,Yes,4344,736.0,87.0,360.0,1,Semiurban,0.0
|
||||
LP001606,Male,Yes,0,1,No,3497,1964.0,116.0,360.0,1,Rural,1.0
|
||||
LP001608,Male,Yes,2,1,No,2045,1619.0,101.0,360.0,1,Rural,1.0
|
||||
LP001610,Male,Yes,3+,1,No,5516,11300.0,495.0,360.0,0,Semiurban,0.0
|
||||
LP001616,Male,Yes,1,1,No,3750,0.0,116.0,360.0,1,Semiurban,1.0
|
||||
LP001630,Male,No,0,0,No,2333,1451.0,102.0,480.0,0,Urban,0.0
|
||||
LP001633,Male,Yes,1,1,No,6400,7250.0,180.0,360.0,0,Urban,0.0
|
||||
LP001634,Male,No,0,1,No,1916,5063.0,67.0,360.0,0,Rural,0.0
|
||||
LP001636,Male,Yes,0,1,No,4600,0.0,73.0,180.0,1,Semiurban,1.0
|
||||
LP001637,Male,Yes,1,1,No,33846,0.0,260.0,360.0,1,Semiurban,0.0
|
||||
LP001639,Female,Yes,0,1,No,3625,0.0,108.0,360.0,1,Semiurban,1.0
|
||||
LP001640,Male,Yes,0,1,Yes,39147,4750.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001641,Male,Yes,1,1,Yes,2178,0.0,66.0,300.0,0,Rural,0.0
|
||||
LP001643,Male,Yes,0,1,No,2383,2138.0,58.0,360.0,0,Rural,1.0
|
||||
LP001644,,Yes,0,1,Yes,674,5296.0,168.0,360.0,1,Rural,1.0
|
||||
LP001647,Male,Yes,0,1,No,9328,0.0,188.0,180.0,1,Rural,1.0
|
||||
LP001653,Male,No,0,0,No,4885,0.0,48.0,360.0,1,Rural,1.0
|
||||
LP001656,Male,No,0,1,No,12000,0.0,164.0,360.0,1,Semiurban,0.0
|
||||
LP001657,Male,Yes,0,0,No,6033,0.0,160.0,360.0,1,Urban,0.0
|
||||
LP001658,Male,No,0,1,No,3858,0.0,76.0,360.0,1,Semiurban,1.0
|
||||
LP001664,Male,No,0,1,No,4191,0.0,120.0,360.0,1,Rural,1.0
|
||||
LP001665,Male,Yes,1,1,No,3125,2583.0,170.0,360.0,1,Semiurban,0.0
|
||||
LP001666,Male,No,0,1,No,8333,3750.0,187.0,360.0,1,Rural,1.0
|
||||
LP001669,Female,No,0,0,No,1907,2365.0,120.0,,1,Urban,1.0
|
||||
LP001671,Female,Yes,0,1,No,3416,2816.0,113.0,360.0,0,Semiurban,1.0
|
||||
LP001673,Male,No,0,1,Yes,11000,0.0,83.0,360.0,1,Urban,0.0
|
||||
LP001674,Male,Yes,1,0,No,2600,2500.0,90.0,360.0,1,Semiurban,1.0
|
||||
LP001677,Male,No,2,1,No,4923,0.0,166.0,360.0,0,Semiurban,1.0
|
||||
LP001682,Male,Yes,3+,0,No,3992,0.0,0.0,180.0,1,Urban,0.0
|
||||
LP001688,Male,Yes,1,0,No,3500,1083.0,135.0,360.0,1,Urban,1.0
|
||||
LP001691,Male,Yes,2,0,No,3917,0.0,124.0,360.0,1,Semiurban,1.0
|
||||
LP001692,Female,No,0,0,No,4408,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001693,Female,No,0,1,No,3244,0.0,80.0,360.0,1,Urban,1.0
|
||||
LP001698,Male,No,0,0,No,3975,2531.0,55.0,360.0,1,Rural,1.0
|
||||
LP001699,Male,No,0,1,No,2479,0.0,59.0,360.0,1,Urban,1.0
|
||||
LP001702,Male,No,0,1,No,3418,0.0,127.0,360.0,1,Semiurban,0.0
|
||||
LP001708,Female,No,0,1,No,10000,0.0,214.0,360.0,1,Semiurban,0.0
|
||||
LP001711,Male,Yes,3+,1,No,3430,1250.0,128.0,360.0,0,Semiurban,0.0
|
||||
LP001713,Male,Yes,1,1,Yes,7787,0.0,240.0,360.0,1,Urban,1.0
|
||||
LP001715,Male,Yes,3+,0,Yes,5703,0.0,130.0,360.0,1,Rural,1.0
|
||||
LP001716,Male,Yes,0,1,No,3173,3021.0,137.0,360.0,1,Urban,1.0
|
||||
LP001720,Male,Yes,3+,0,No,3850,983.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001722,Male,Yes,0,1,No,150,1800.0,135.0,360.0,1,Rural,0.0
|
||||
LP001726,Male,Yes,0,1,No,3727,1775.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001732,Male,Yes,2,1,,5000,0.0,72.0,360.0,0,Semiurban,0.0
|
||||
LP001734,Female,Yes,2,1,No,4283,2383.0,127.0,360.0,0,Semiurban,1.0
|
||||
LP001736,Male,Yes,0,1,No,2221,0.0,60.0,360.0,0,Urban,0.0
|
||||
LP001743,Male,Yes,2,1,No,4009,1717.0,116.0,360.0,1,Semiurban,1.0
|
||||
LP001744,Male,No,0,1,No,2971,2791.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001749,Male,Yes,0,1,No,7578,1010.0,175.0,,1,Semiurban,1.0
|
||||
LP001750,Male,Yes,0,1,No,6250,0.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP001751,Male,Yes,0,1,No,3250,0.0,170.0,360.0,1,Rural,0.0
|
||||
LP001754,Male,Yes,,0,Yes,4735,0.0,138.0,360.0,1,Urban,0.0
|
||||
LP001758,Male,Yes,2,1,No,6250,1695.0,210.0,360.0,1,Semiurban,1.0
|
||||
LP001760,Male,,,1,No,4758,0.0,158.0,480.0,1,Semiurban,1.0
|
||||
LP001761,Male,No,0,1,Yes,6400,0.0,200.0,360.0,1,Rural,1.0
|
||||
LP001765,Male,Yes,1,1,No,2491,2054.0,104.0,360.0,1,Semiurban,1.0
|
||||
LP001768,Male,Yes,0,1,,3716,0.0,42.0,180.0,1,Rural,1.0
|
||||
LP001770,Male,No,0,0,No,3189,2598.0,120.0,,1,Rural,1.0
|
||||
LP001776,Female,No,0,1,No,8333,0.0,280.0,360.0,1,Semiurban,1.0
|
||||
LP001778,Male,Yes,1,1,No,3155,1779.0,140.0,360.0,1,Semiurban,1.0
|
||||
LP001784,Male,Yes,1,1,No,5500,1260.0,170.0,360.0,1,Rural,1.0
|
||||
LP001786,Male,Yes,0,1,,5746,0.0,255.0,360.0,0,Urban,0.0
|
||||
LP001788,Female,No,0,1,Yes,3463,0.0,122.0,360.0,0,Urban,1.0
|
||||
LP001790,Female,No,1,1,No,3812,0.0,112.0,360.0,1,Rural,1.0
|
||||
LP001792,Male,Yes,1,1,No,3315,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP001798,Male,Yes,2,1,No,5819,5000.0,120.0,360.0,1,Rural,1.0
|
||||
LP001800,Male,Yes,1,0,No,2510,1983.0,140.0,180.0,1,Urban,0.0
|
||||
LP001806,Male,No,0,1,No,2965,5701.0,155.0,60.0,1,Urban,1.0
|
||||
LP001807,Male,Yes,2,1,Yes,6250,1300.0,108.0,360.0,1,Rural,1.0
|
||||
LP001811,Male,Yes,0,0,No,3406,4417.0,123.0,360.0,1,Semiurban,1.0
|
||||
LP001813,Male,No,0,1,Yes,6050,4333.0,120.0,180.0,1,Urban,0.0
|
||||
LP001814,Male,Yes,2,1,No,9703,0.0,112.0,360.0,1,Urban,1.0
|
||||
LP001819,Male,Yes,1,0,No,6608,0.0,137.0,180.0,1,Urban,1.0
|
||||
LP001824,Male,Yes,1,1,No,2882,1843.0,123.0,480.0,1,Semiurban,1.0
|
||||
LP001825,Male,Yes,0,1,No,1809,1868.0,90.0,360.0,1,Urban,1.0
|
||||
LP001835,Male,Yes,0,0,No,1668,3890.0,201.0,360.0,0,Semiurban,0.0
|
||||
LP001836,Female,No,2,1,No,3427,0.0,138.0,360.0,1,Urban,0.0
|
||||
LP001841,Male,No,0,0,Yes,2583,2167.0,104.0,360.0,1,Rural,1.0
|
||||
LP001843,Male,Yes,1,0,No,2661,7101.0,279.0,180.0,1,Semiurban,1.0
|
||||
LP001844,Male,No,0,1,Yes,16250,0.0,192.0,360.0,0,Urban,0.0
|
||||
LP001846,Female,No,3+,1,No,3083,0.0,255.0,360.0,1,Rural,1.0
|
||||
LP001849,Male,No,0,0,No,6045,0.0,115.0,360.0,0,Rural,0.0
|
||||
LP001854,Male,Yes,3+,1,No,5250,0.0,94.0,360.0,1,Urban,0.0
|
||||
LP001859,Male,Yes,0,1,No,14683,2100.0,304.0,360.0,1,Rural,0.0
|
||||
LP001864,Male,Yes,3+,0,No,4931,0.0,128.0,360.0,0,Semiurban,0.0
|
||||
LP001865,Male,Yes,1,1,No,6083,4250.0,330.0,360.0,0,Urban,1.0
|
||||
LP001868,Male,No,0,1,No,2060,2209.0,134.0,360.0,1,Semiurban,1.0
|
||||
LP001870,Female,No,1,1,No,3481,0.0,155.0,36.0,1,Semiurban,0.0
|
||||
LP001871,Female,No,0,1,No,7200,0.0,120.0,360.0,1,Rural,1.0
|
||||
LP001872,Male,No,0,1,Yes,5166,0.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP001875,Male,No,0,1,No,4095,3447.0,151.0,360.0,1,Rural,1.0
|
||||
LP001877,Male,Yes,2,1,No,4708,1387.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP001882,Male,Yes,3+,1,No,4333,1811.0,160.0,360.0,0,Urban,1.0
|
||||
LP001883,Female,No,0,1,,3418,0.0,135.0,360.0,1,Rural,0.0
|
||||
LP001884,Female,No,1,1,No,2876,1560.0,90.0,360.0,1,Urban,1.0
|
||||
LP001888,Female,No,0,1,No,3237,0.0,30.0,360.0,1,Urban,1.0
|
||||
LP001891,Male,Yes,0,1,No,11146,0.0,136.0,360.0,1,Urban,1.0
|
||||
LP001892,Male,No,0,1,No,2833,1857.0,126.0,360.0,1,Rural,1.0
|
||||
LP001894,Male,Yes,0,1,No,2620,2223.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP001896,Male,Yes,2,1,No,3900,0.0,90.0,360.0,1,Semiurban,1.0
|
||||
LP001900,Male,Yes,1,1,No,2750,1842.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP001903,Male,Yes,0,1,No,3993,3274.0,207.0,360.0,1,Semiurban,1.0
|
||||
LP001904,Male,Yes,0,1,No,3103,1300.0,80.0,360.0,1,Urban,1.0
|
||||
LP001907,Male,Yes,0,1,No,14583,0.0,436.0,360.0,1,Semiurban,1.0
|
||||
LP001908,Female,Yes,0,0,No,4100,0.0,124.0,360.0,0,Rural,1.0
|
||||
LP001910,Male,No,1,0,Yes,4053,2426.0,158.0,360.0,0,Urban,0.0
|
||||
LP001914,Male,Yes,0,1,No,3927,800.0,112.0,360.0,1,Semiurban,1.0
|
||||
LP001915,Male,Yes,2,1,No,2301,985.7999878,78.0,180.0,1,Urban,1.0
|
||||
LP001917,Female,No,0,1,No,1811,1666.0,54.0,360.0,1,Urban,1.0
|
||||
LP001922,Male,Yes,0,1,No,20667,0.0,0.0,360.0,1,Rural,0.0
|
||||
LP001924,Male,No,0,1,No,3158,3053.0,89.0,360.0,1,Rural,1.0
|
||||
LP001925,Female,No,0,1,Yes,2600,1717.0,99.0,300.0,1,Semiurban,0.0
|
||||
LP001926,Male,Yes,0,1,No,3704,2000.0,120.0,360.0,1,Rural,1.0
|
||||
LP001931,Female,No,0,1,No,4124,0.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP001935,Male,No,0,1,No,9508,0.0,187.0,360.0,1,Rural,1.0
|
||||
LP001936,Male,Yes,0,1,No,3075,2416.0,139.0,360.0,1,Rural,1.0
|
||||
LP001938,Male,Yes,2,1,No,4400,0.0,127.0,360.0,0,Semiurban,0.0
|
||||
LP001940,Male,Yes,2,1,No,3153,1560.0,134.0,360.0,1,Urban,1.0
|
||||
LP001945,Female,No,,1,No,5417,0.0,143.0,480.0,0,Urban,0.0
|
||||
LP001947,Male,Yes,0,1,No,2383,3334.0,172.0,360.0,1,Semiurban,1.0
|
||||
LP001949,Male,Yes,3+,1,,4416,1250.0,110.0,360.0,1,Urban,1.0
|
||||
LP001953,Male,Yes,1,1,No,6875,0.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP001954,Female,Yes,1,1,No,4666,0.0,135.0,360.0,1,Urban,1.0
|
||||
LP001955,Female,No,0,1,No,5000,2541.0,151.0,480.0,1,Rural,0.0
|
||||
LP001963,Male,Yes,1,1,No,2014,2925.0,113.0,360.0,1,Urban,0.0
|
||||
LP001964,Male,Yes,0,0,No,1800,2934.0,93.0,360.0,0,Urban,0.0
|
||||
LP001972,Male,Yes,,0,No,2875,1750.0,105.0,360.0,1,Semiurban,1.0
|
||||
LP001974,Female,No,0,1,No,5000,0.0,132.0,360.0,1,Rural,1.0
|
||||
LP001977,Male,Yes,1,1,No,1625,1803.0,96.0,360.0,1,Urban,1.0
|
||||
LP001978,Male,No,0,1,No,4000,2500.0,140.0,360.0,1,Rural,1.0
|
||||
LP001990,Male,No,0,0,No,2000,0.0,0.0,360.0,1,Urban,0.0
|
||||
LP001993,Female,No,0,1,No,3762,1666.0,135.0,360.0,1,Rural,1.0
|
||||
LP001994,Female,No,0,1,No,2400,1863.0,104.0,360.0,0,Urban,0.0
|
||||
LP001996,Male,No,0,1,No,20233,0.0,480.0,360.0,1,Rural,0.0
|
||||
LP001998,Male,Yes,2,0,No,7667,0.0,185.0,360.0,0,Rural,1.0
|
||||
LP002002,Female,No,0,1,No,2917,0.0,84.0,360.0,1,Semiurban,1.0
|
||||
LP002004,Male,No,0,0,No,2927,2405.0,111.0,360.0,1,Semiurban,1.0
|
||||
LP002006,Female,No,0,1,No,2507,0.0,56.0,360.0,1,Rural,1.0
|
||||
LP002008,Male,Yes,2,1,Yes,5746,0.0,144.0,84.0,0,Rural,1.0
|
||||
LP002024,,Yes,0,1,No,2473,1843.0,159.0,360.0,1,Rural,0.0
|
||||
LP002031,Male,Yes,1,0,No,3399,1640.0,111.0,180.0,1,Urban,1.0
|
||||
LP002035,Male,Yes,2,1,No,3717,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP002036,Male,Yes,0,1,No,2058,2134.0,88.0,360.0,0,Urban,1.0
|
||||
LP002043,Female,No,1,1,No,3541,0.0,112.0,360.0,0,Semiurban,1.0
|
||||
LP002050,Male,Yes,1,1,Yes,10000,0.0,155.0,360.0,1,Rural,0.0
|
||||
LP002051,Male,Yes,0,1,No,2400,2167.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP002053,Male,Yes,3+,1,No,4342,189.0,124.0,360.0,1,Semiurban,1.0
|
||||
LP002054,Male,Yes,2,0,No,3601,1590.0,0.0,360.0,1,Rural,1.0
|
||||
LP002055,Female,No,0,1,No,3166,2985.0,132.0,360.0,0,Rural,1.0
|
||||
LP002065,Male,Yes,3+,1,No,15000,0.0,300.0,360.0,1,Rural,1.0
|
||||
LP002067,Male,Yes,1,1,Yes,8666,4983.0,376.0,360.0,0,Rural,0.0
|
||||
LP002068,Male,No,0,1,No,4917,0.0,130.0,360.0,0,Rural,1.0
|
||||
LP002082,Male,Yes,0,1,Yes,5818,2160.0,184.0,360.0,1,Semiurban,1.0
|
||||
LP002086,Female,Yes,0,1,No,4333,2451.0,110.0,360.0,1,Urban,0.0
|
||||
LP002087,Female,No,0,1,No,2500,0.0,67.0,360.0,1,Urban,1.0
|
||||
LP002097,Male,No,1,1,No,4384,1793.0,117.0,360.0,1,Urban,1.0
|
||||
LP002098,Male,No,0,1,No,2935,0.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP002100,Male,No,,1,No,2833,0.0,71.0,360.0,1,Urban,1.0
|
||||
LP002101,Male,Yes,0,1,,63337,0.0,490.0,180.0,1,Urban,1.0
|
||||
LP002103,,Yes,1,1,Yes,9833,1833.0,182.0,180.0,1,Urban,1.0
|
||||
LP002106,Male,Yes,,1,Yes,5503,4490.0,70.0,,1,Semiurban,1.0
|
||||
LP002110,Male,Yes,1,1,,5250,688.0,160.0,360.0,1,Rural,1.0
|
||||
LP002112,Male,Yes,2,1,Yes,2500,4600.0,176.0,360.0,1,Rural,1.0
|
||||
LP002113,Female,No,3+,0,No,1830,0.0,0.0,360.0,0,Urban,0.0
|
||||
LP002114,Female,No,0,1,No,4160,0.0,71.0,360.0,1,Semiurban,1.0
|
||||
LP002115,Male,Yes,3+,0,No,2647,1587.0,173.0,360.0,1,Rural,0.0
|
||||
LP002116,Female,No,0,1,No,2378,0.0,46.0,360.0,1,Rural,0.0
|
||||
LP002119,Male,Yes,1,0,No,4554,1229.0,158.0,360.0,1,Urban,1.0
|
||||
LP002126,Male,Yes,3+,0,No,3173,0.0,74.0,360.0,1,Semiurban,1.0
|
||||
LP002128,Male,Yes,2,1,,2583,2330.0,125.0,360.0,1,Rural,1.0
|
||||
LP002129,Male,Yes,0,1,No,2499,2458.0,160.0,360.0,1,Semiurban,1.0
|
||||
LP002130,Male,Yes,,0,No,3523,3230.0,152.0,360.0,0,Rural,0.0
|
||||
LP002131,Male,Yes,2,0,No,3083,2168.0,126.0,360.0,1,Urban,1.0
|
||||
LP002137,Male,Yes,0,1,No,6333,4583.0,259.0,360.0,0,Semiurban,1.0
|
||||
LP002138,Male,Yes,0,1,No,2625,6250.0,187.0,360.0,1,Rural,1.0
|
||||
LP002139,Male,Yes,0,1,No,9083,0.0,228.0,360.0,1,Semiurban,1.0
|
||||
LP002140,Male,No,0,1,No,8750,4167.0,308.0,360.0,1,Rural,0.0
|
||||
LP002141,Male,Yes,3+,1,No,2666,2083.0,95.0,360.0,1,Rural,1.0
|
||||
LP002142,Female,Yes,0,1,Yes,5500,0.0,105.0,360.0,0,Rural,0.0
|
||||
LP002143,Female,Yes,0,1,No,2423,505.0,130.0,360.0,1,Semiurban,1.0
|
||||
LP002144,Female,No,,1,No,3813,0.0,116.0,180.0,1,Urban,1.0
|
||||
LP002149,Male,Yes,2,1,No,8333,3167.0,165.0,360.0,1,Rural,1.0
|
||||
LP002151,Male,Yes,1,1,No,3875,0.0,67.0,360.0,1,Urban,0.0
|
||||
LP002158,Male,Yes,0,0,No,3000,1666.0,100.0,480.0,0,Urban,0.0
|
||||
LP002160,Male,Yes,3+,1,No,5167,3167.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP002161,Female,No,1,1,No,4723,0.0,81.0,360.0,1,Semiurban,0.0
|
||||
LP002170,Male,Yes,2,1,No,5000,3667.0,236.0,360.0,1,Semiurban,1.0
|
||||
LP002175,Male,Yes,0,1,No,4750,2333.0,130.0,360.0,1,Urban,1.0
|
||||
LP002178,Male,Yes,0,1,No,3013,3033.0,95.0,300.0,0,Urban,1.0
|
||||
LP002180,Male,No,0,1,Yes,6822,0.0,141.0,360.0,1,Rural,1.0
|
||||
LP002181,Male,No,0,0,No,6216,0.0,133.0,360.0,1,Rural,0.0
|
||||
LP002187,Male,No,0,1,No,2500,0.0,96.0,480.0,1,Semiurban,0.0
|
||||
LP002188,Male,No,0,1,No,5124,0.0,124.0,,0,Rural,0.0
|
||||
LP002190,Male,Yes,1,1,No,6325,0.0,175.0,360.0,1,Semiurban,1.0
|
||||
LP002191,Male,Yes,0,1,No,19730,5266.0,570.0,360.0,1,Rural,0.0
|
||||
LP002194,Female,No,0,1,Yes,15759,0.0,55.0,360.0,1,Semiurban,1.0
|
||||
LP002197,Male,Yes,2,1,No,5185,0.0,155.0,360.0,1,Semiurban,1.0
|
||||
LP002201,Male,Yes,2,1,Yes,9323,7873.0,380.0,300.0,1,Rural,1.0
|
||||
LP002205,Male,No,1,1,No,3062,1987.0,111.0,180.0,0,Urban,0.0
|
||||
LP002209,Female,No,0,1,,2764,1459.0,110.0,360.0,1,Urban,1.0
|
||||
LP002211,Male,Yes,0,1,No,4817,923.0,120.0,180.0,1,Urban,1.0
|
||||
LP002219,Male,Yes,3+,1,No,8750,4996.0,130.0,360.0,1,Rural,1.0
|
||||
LP002223,Male,Yes,0,1,No,4310,0.0,130.0,360.0,0,Semiurban,1.0
|
||||
LP002224,Male,No,0,1,No,3069,0.0,71.0,480.0,1,Urban,0.0
|
||||
LP002225,Male,Yes,2,1,No,5391,0.0,130.0,360.0,1,Urban,1.0
|
||||
LP002226,Male,Yes,0,1,,3333,2500.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP002229,Male,No,0,1,No,5941,4232.0,296.0,360.0,1,Semiurban,1.0
|
||||
LP002231,Female,No,0,1,No,6000,0.0,156.0,360.0,1,Urban,1.0
|
||||
LP002234,Male,No,0,1,Yes,7167,0.0,128.0,360.0,1,Urban,1.0
|
||||
LP002236,Male,Yes,2,1,No,4566,0.0,100.0,360.0,1,Urban,0.0
|
||||
LP002237,Male,No,1,1,,3667,0.0,113.0,180.0,1,Urban,1.0
|
||||
LP002239,Male,No,0,0,No,2346,1600.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002243,Male,Yes,0,0,No,3010,3136.0,0.0,360.0,0,Urban,0.0
|
||||
LP002244,Male,Yes,0,1,No,2333,2417.0,136.0,360.0,1,Urban,1.0
|
||||
LP002250,Male,Yes,0,1,No,5488,0.0,125.0,360.0,1,Rural,1.0
|
||||
LP002255,Male,No,3+,1,No,9167,0.0,185.0,360.0,1,Rural,1.0
|
||||
LP002262,Male,Yes,3+,1,No,9504,0.0,275.0,360.0,1,Rural,1.0
|
||||
LP002263,Male,Yes,0,1,No,2583,2115.0,120.0,360.0,0,Urban,1.0
|
||||
LP002265,Male,Yes,2,0,No,1993,1625.0,113.0,180.0,1,Semiurban,1.0
|
||||
LP002266,Male,Yes,2,1,No,3100,1400.0,113.0,360.0,1,Urban,1.0
|
||||
LP002272,Male,Yes,2,1,No,3276,484.0,135.0,360.0,0,Semiurban,1.0
|
||||
LP002277,Female,No,0,1,No,3180,0.0,71.0,360.0,0,Urban,0.0
|
||||
LP002281,Male,Yes,0,1,No,3033,1459.0,95.0,360.0,1,Urban,1.0
|
||||
LP002284,Male,No,0,0,No,3902,1666.0,109.0,360.0,1,Rural,1.0
|
||||
LP002287,Female,No,0,1,No,1500,1800.0,103.0,360.0,0,Semiurban,0.0
|
||||
LP002288,Male,Yes,2,0,No,2889,0.0,45.0,180.0,0,Urban,0.0
|
||||
LP002296,Male,No,0,0,No,2755,0.0,65.0,300.0,1,Rural,0.0
|
||||
LP002297,Male,No,0,1,No,2500,20000.0,103.0,360.0,1,Semiurban,1.0
|
||||
LP002300,Female,No,0,0,No,1963,0.0,53.0,360.0,1,Semiurban,1.0
|
||||
LP002301,Female,No,0,1,Yes,7441,0.0,194.0,360.0,1,Rural,0.0
|
||||
LP002305,Female,No,0,1,No,4547,0.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP002308,Male,Yes,0,0,No,2167,2400.0,115.0,360.0,1,Urban,1.0
|
||||
LP002314,Female,No,0,0,No,2213,0.0,66.0,360.0,1,Rural,1.0
|
||||
LP002315,Male,Yes,1,1,No,8300,0.0,152.0,300.0,0,Semiurban,0.0
|
||||
LP002317,Male,Yes,3+,1,No,81000,0.0,360.0,360.0,0,Rural,0.0
|
||||
LP002318,Female,No,1,0,Yes,3867,0.0,62.0,360.0,1,Semiurban,0.0
|
||||
LP002319,Male,Yes,0,1,,6256,0.0,160.0,360.0,0,Urban,1.0
|
||||
LP002328,Male,Yes,0,0,No,6096,0.0,218.0,360.0,0,Rural,0.0
|
||||
LP002332,Male,Yes,0,0,No,2253,2033.0,110.0,360.0,1,Rural,1.0
|
||||
LP002335,Female,Yes,0,0,No,2149,3237.0,178.0,360.0,0,Semiurban,0.0
|
||||
LP002337,Female,No,0,1,No,2995,0.0,60.0,360.0,1,Urban,1.0
|
||||
LP002341,Female,No,1,1,No,2600,0.0,160.0,360.0,1,Urban,0.0
|
||||
LP002342,Male,Yes,2,1,Yes,1600,20000.0,239.0,360.0,1,Urban,0.0
|
||||
LP002345,Male,Yes,0,1,No,1025,2773.0,112.0,360.0,1,Rural,1.0
|
||||
LP002347,Male,Yes,0,1,No,3246,1417.0,138.0,360.0,1,Semiurban,1.0
|
||||
LP002348,Male,Yes,0,1,No,5829,0.0,138.0,360.0,1,Rural,1.0
|
||||
LP002357,Female,No,0,0,No,2720,0.0,80.0,,0,Urban,0.0
|
||||
LP002361,Male,Yes,0,1,No,1820,1719.0,100.0,360.0,1,Urban,1.0
|
||||
LP002362,Male,Yes,1,1,No,7250,1667.0,110.0,,0,Urban,0.0
|
||||
LP002364,Male,Yes,0,1,No,14880,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP002366,Male,Yes,0,1,No,2666,4300.0,121.0,360.0,1,Rural,1.0
|
||||
LP002367,Female,No,1,0,No,4606,0.0,81.0,360.0,1,Rural,0.0
|
||||
LP002368,Male,Yes,2,1,No,5935,0.0,133.0,360.0,1,Semiurban,1.0
|
||||
LP002369,Male,Yes,0,1,No,2920,16.12000084,87.0,360.0,1,Rural,1.0
|
||||
LP002370,Male,No,0,0,No,2717,0.0,60.0,180.0,1,Urban,1.0
|
||||
LP002377,Female,No,1,1,Yes,8624,0.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP002379,Male,No,0,1,No,6500,0.0,105.0,360.0,0,Rural,0.0
|
||||
LP002386,Male,No,0,1,,12876,0.0,405.0,360.0,1,Semiurban,1.0
|
||||
LP002387,Male,Yes,0,1,No,2425,2340.0,143.0,360.0,1,Semiurban,1.0
|
||||
LP002390,Male,No,0,1,No,3750,0.0,100.0,360.0,1,Urban,1.0
|
||||
LP002393,Female,,,1,No,10047,0.0,0.0,240.0,1,Semiurban,1.0
|
||||
LP002398,Male,No,0,1,No,1926,1851.0,50.0,360.0,1,Semiurban,1.0
|
||||
LP002401,Male,Yes,0,1,No,2213,1125.0,0.0,360.0,1,Urban,1.0
|
||||
LP002403,Male,No,0,1,Yes,10416,0.0,187.0,360.0,0,Urban,0.0
|
||||
LP002407,Female,Yes,0,0,Yes,7142,0.0,138.0,360.0,1,Rural,1.0
|
||||
LP002408,Male,No,0,1,No,3660,5064.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP002409,Male,Yes,0,1,No,7901,1833.0,180.0,360.0,1,Rural,1.0
|
||||
LP002418,Male,No,3+,0,No,4707,1993.0,148.0,360.0,1,Semiurban,1.0
|
||||
LP002422,Male,No,1,1,No,37719,0.0,152.0,360.0,1,Semiurban,1.0
|
||||
LP002424,Male,Yes,0,1,No,7333,8333.0,175.0,300.0,0,Rural,1.0
|
||||
LP002429,Male,Yes,1,1,Yes,3466,1210.0,130.0,360.0,1,Rural,1.0
|
||||
LP002434,Male,Yes,2,0,No,4652,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002435,Male,Yes,0,1,,3539,1376.0,55.0,360.0,1,Rural,0.0
|
||||
LP002443,Male,Yes,2,1,No,3340,1710.0,150.0,360.0,0,Rural,0.0
|
||||
LP002444,Male,No,1,0,Yes,2769,1542.0,190.0,360.0,0,Semiurban,0.0
|
||||
LP002446,Male,Yes,2,0,No,2309,1255.0,125.0,360.0,0,Rural,0.0
|
||||
LP002447,Male,Yes,2,0,No,1958,1456.0,60.0,300.0,0,Urban,1.0
|
||||
LP002448,Male,Yes,0,1,No,3948,1733.0,149.0,360.0,0,Rural,0.0
|
||||
LP002449,Male,Yes,0,1,No,2483,2466.0,90.0,180.0,0,Rural,1.0
|
||||
LP002453,Male,No,0,1,Yes,7085,0.0,84.0,360.0,1,Semiurban,1.0
|
||||
LP002455,Male,Yes,2,1,No,3859,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP002459,Male,Yes,0,1,No,4301,0.0,118.0,360.0,1,Urban,1.0
|
||||
LP002467,Male,Yes,0,1,No,3708,2569.0,173.0,360.0,1,Urban,0.0
|
||||
LP002472,Male,No,2,1,No,4354,0.0,136.0,360.0,1,Rural,1.0
|
||||
LP002473,Male,Yes,0,1,No,8334,0.0,160.0,360.0,1,Semiurban,0.0
|
||||
LP002478,,Yes,0,1,Yes,2083,4083.0,160.0,360.0,0,Semiurban,1.0
|
||||
LP002484,Male,Yes,3+,1,No,7740,0.0,128.0,180.0,1,Urban,1.0
|
||||
LP002487,Male,Yes,0,1,No,3015,2188.0,153.0,360.0,1,Rural,1.0
|
||||
LP002489,Female,No,1,0,,5191,0.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002493,Male,No,0,1,No,4166,0.0,98.0,360.0,0,Semiurban,0.0
|
||||
LP002494,Male,No,0,1,No,6000,0.0,140.0,360.0,1,Rural,1.0
|
||||
LP002500,Male,Yes,3+,0,No,2947,1664.0,70.0,180.0,0,Urban,0.0
|
||||
LP002501,,Yes,0,1,No,16692,0.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP002502,Female,Yes,2,0,,210,2917.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP002505,Male,Yes,0,1,No,4333,2451.0,110.0,360.0,1,Urban,0.0
|
||||
LP002515,Male,Yes,1,1,Yes,3450,2079.0,162.0,360.0,1,Semiurban,1.0
|
||||
LP002517,Male,Yes,1,0,No,2653,1500.0,113.0,180.0,0,Rural,0.0
|
||||
LP002519,Male,Yes,3+,1,No,4691,0.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP002522,Female,No,0,1,Yes,2500,0.0,93.0,360.0,0,Urban,1.0
|
||||
LP002524,Male,No,2,1,No,5532,4648.0,162.0,360.0,1,Rural,1.0
|
||||
LP002527,Male,Yes,2,1,Yes,16525,1014.0,150.0,360.0,1,Rural,1.0
|
||||
LP002529,Male,Yes,2,1,No,6700,1750.0,230.0,300.0,1,Semiurban,1.0
|
||||
LP002530,,Yes,2,1,No,2873,1872.0,132.0,360.0,0,Semiurban,0.0
|
||||
LP002531,Male,Yes,1,1,Yes,16667,2250.0,86.0,360.0,1,Semiurban,1.0
|
||||
LP002533,Male,Yes,2,1,No,2947,1603.0,0.0,360.0,1,Urban,0.0
|
||||
LP002534,Female,No,0,0,No,4350,0.0,154.0,360.0,1,Rural,1.0
|
||||
LP002536,Male,Yes,3+,0,No,3095,0.0,113.0,360.0,1,Rural,1.0
|
||||
LP002537,Male,Yes,0,1,No,2083,3150.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP002541,Male,Yes,0,1,No,10833,0.0,234.0,360.0,1,Semiurban,1.0
|
||||
LP002543,Male,Yes,2,1,No,8333,0.0,246.0,360.0,1,Semiurban,1.0
|
||||
LP002544,Male,Yes,1,0,No,1958,2436.0,131.0,360.0,1,Rural,1.0
|
||||
LP002545,Male,No,2,1,No,3547,0.0,80.0,360.0,0,Rural,0.0
|
||||
LP002547,Male,Yes,1,1,No,18333,0.0,500.0,360.0,1,Urban,0.0
|
||||
LP002555,Male,Yes,2,1,Yes,4583,2083.0,160.0,360.0,1,Semiurban,1.0
|
||||
LP002556,Male,No,0,1,No,2435,0.0,75.0,360.0,1,Urban,0.0
|
||||
LP002560,Male,No,0,0,No,2699,2785.0,96.0,360.0,0,Semiurban,1.0
|
||||
LP002562,Male,Yes,1,0,No,5333,1131.0,186.0,360.0,0,Urban,1.0
|
||||
LP002571,Male,No,0,0,No,3691,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002582,Female,No,0,0,Yes,17263,0.0,225.0,360.0,1,Semiurban,1.0
|
||||
LP002585,Male,Yes,0,1,No,3597,2157.0,119.0,360.0,0,Rural,0.0
|
||||
LP002586,Female,Yes,1,1,No,3326,913.0,105.0,84.0,1,Semiurban,1.0
|
||||
LP002587,Male,Yes,0,0,No,2600,1700.0,107.0,360.0,1,Rural,1.0
|
||||
LP002588,Male,Yes,0,1,No,4625,2857.0,111.0,12.0,0,Urban,1.0
|
||||
LP002600,Male,Yes,1,1,Yes,2895,0.0,95.0,360.0,1,Semiurban,1.0
|
||||
LP002602,Male,No,0,1,No,6283,4416.0,209.0,360.0,0,Rural,0.0
|
||||
LP002603,Female,No,0,1,No,645,3683.0,113.0,480.0,1,Rural,1.0
|
||||
LP002606,Female,No,0,1,No,3159,0.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP002615,Male,Yes,2,1,No,4865,5624.0,208.0,360.0,1,Semiurban,1.0
|
||||
LP002618,Male,Yes,1,0,No,4050,5302.0,138.0,360.0,0,Rural,0.0
|
||||
LP002619,Male,Yes,0,0,No,3814,1483.0,124.0,300.0,1,Semiurban,1.0
|
||||
LP002622,Male,Yes,2,1,No,3510,4416.0,243.0,360.0,1,Rural,1.0
|
||||
LP002624,Male,Yes,0,1,No,20833,6667.0,480.0,360.0,0,Urban,1.0
|
||||
LP002625,,No,0,1,No,3583,0.0,96.0,360.0,1,Urban,0.0
|
||||
LP002626,Male,Yes,0,1,Yes,2479,3013.0,188.0,360.0,1,Urban,1.0
|
||||
LP002634,Female,No,1,1,No,13262,0.0,40.0,360.0,1,Urban,1.0
|
||||
LP002637,Male,No,0,0,No,3598,1287.0,100.0,360.0,1,Rural,0.0
|
||||
LP002640,Male,Yes,1,1,No,6065,2004.0,250.0,360.0,1,Semiurban,1.0
|
||||
LP002643,Male,Yes,2,1,No,3283,2035.0,148.0,360.0,1,Urban,1.0
|
||||
LP002648,Male,Yes,0,1,No,2130,6666.0,70.0,180.0,1,Semiurban,0.0
|
||||
LP002652,Male,No,0,1,No,5815,3666.0,311.0,360.0,1,Rural,0.0
|
||||
LP002659,Male,Yes,3+,1,No,3466,3428.0,150.0,360.0,1,Rural,1.0
|
||||
LP002670,Female,Yes,2,1,No,2031,1632.0,113.0,480.0,1,Semiurban,1.0
|
||||
LP002682,Male,Yes,,0,No,3074,1800.0,123.0,360.0,0,Semiurban,0.0
|
||||
LP002683,Male,No,0,1,No,4683,1915.0,185.0,360.0,1,Semiurban,0.0
|
||||
LP002684,Female,No,0,0,No,3400,0.0,95.0,360.0,1,Rural,0.0
|
||||
LP002689,Male,Yes,2,0,No,2192,1742.0,45.0,360.0,1,Semiurban,1.0
|
||||
LP002690,Male,No,0,1,No,2500,0.0,55.0,360.0,1,Semiurban,1.0
|
||||
LP002692,Male,Yes,3+,1,Yes,5677,1424.0,100.0,360.0,1,Rural,1.0
|
||||
LP002693,Male,Yes,2,1,Yes,7948,7166.0,480.0,360.0,1,Rural,1.0
|
||||
LP002697,Male,No,0,1,No,4680,2087.0,0.0,360.0,1,Semiurban,0.0
|
||||
LP002699,Male,Yes,2,1,Yes,17500,0.0,400.0,360.0,1,Rural,1.0
|
||||
LP002705,Male,Yes,0,1,No,3775,0.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP002706,Male,Yes,1,0,No,5285,1430.0,161.0,360.0,0,Semiurban,1.0
|
||||
LP002714,Male,No,1,0,No,2679,1302.0,94.0,360.0,1,Semiurban,1.0
|
||||
LP002716,Male,No,0,0,No,6783,0.0,130.0,360.0,1,Semiurban,1.0
|
||||
LP002717,Male,Yes,0,1,No,1025,5500.0,216.0,360.0,0,Rural,1.0
|
||||
LP002720,Male,Yes,3+,1,No,4281,0.0,100.0,360.0,1,Urban,1.0
|
||||
LP002723,Male,No,2,1,No,3588,0.0,110.0,360.0,0,Rural,0.0
|
||||
LP002729,Male,No,1,1,No,11250,0.0,196.0,360.0,0,Semiurban,0.0
|
||||
LP002731,Female,No,0,0,Yes,18165,0.0,125.0,360.0,1,Urban,1.0
|
||||
LP002732,Male,No,0,0,,2550,2042.0,126.0,360.0,1,Rural,1.0
|
||||
LP002734,Male,Yes,0,1,No,6133,3906.0,324.0,360.0,1,Urban,1.0
|
||||
LP002738,Male,No,2,1,No,3617,0.0,107.0,360.0,1,Semiurban,1.0
|
||||
LP002739,Male,Yes,0,0,No,2917,536.0,66.0,360.0,1,Rural,0.0
|
||||
LP002740,Male,Yes,3+,1,No,6417,0.0,157.0,180.0,1,Rural,1.0
|
||||
LP002741,Female,Yes,1,1,No,4608,2845.0,140.0,180.0,1,Semiurban,1.0
|
||||
LP002743,Female,No,0,1,No,2138,0.0,99.0,360.0,0,Semiurban,0.0
|
||||
LP002753,Female,No,1,1,,3652,0.0,95.0,360.0,1,Semiurban,1.0
|
||||
LP002755,Male,Yes,1,0,No,2239,2524.0,128.0,360.0,1,Urban,1.0
|
||||
LP002757,Female,Yes,0,0,No,3017,663.0,102.0,360.0,0,Semiurban,1.0
|
||||
LP002767,Male,Yes,0,1,No,2768,1950.0,155.0,360.0,1,Rural,1.0
|
||||
LP002768,Male,No,0,0,No,3358,0.0,80.0,36.0,1,Semiurban,0.0
|
||||
LP002772,Male,No,0,1,No,2526,1783.0,145.0,360.0,1,Rural,1.0
|
||||
LP002776,Female,No,0,1,No,5000,0.0,103.0,360.0,0,Semiurban,0.0
|
||||
LP002777,Male,Yes,0,1,No,2785,2016.0,110.0,360.0,1,Rural,1.0
|
||||
LP002778,Male,Yes,2,1,Yes,6633,0.0,0.0,360.0,0,Rural,0.0
|
||||
LP002784,Male,Yes,1,0,No,2492,2375.0,0.0,360.0,1,Rural,1.0
|
||||
LP002785,Male,Yes,1,1,No,3333,3250.0,158.0,360.0,1,Urban,1.0
|
||||
LP002788,Male,Yes,0,0,No,2454,2333.0,181.0,360.0,0,Urban,0.0
|
||||
LP002789,Male,Yes,0,1,No,3593,4266.0,132.0,180.0,0,Rural,0.0
|
||||
LP002792,Male,Yes,1,1,No,5468,1032.0,26.0,360.0,1,Semiurban,1.0
|
||||
LP002794,Female,No,0,1,No,2667,1625.0,84.0,360.0,0,Urban,1.0
|
||||
LP002795,Male,Yes,3+,1,Yes,10139,0.0,260.0,360.0,1,Semiurban,1.0
|
||||
LP002798,Male,Yes,0,1,No,3887,2669.0,162.0,360.0,1,Semiurban,1.0
|
||||
LP002804,Female,Yes,0,1,No,4180,2306.0,182.0,360.0,1,Semiurban,1.0
|
||||
LP002807,Male,Yes,2,0,No,3675,242.0,108.0,360.0,1,Semiurban,1.0
|
||||
LP002813,Female,Yes,1,1,Yes,19484,0.0,600.0,360.0,1,Semiurban,1.0
|
||||
LP002820,Male,Yes,0,1,No,5923,2054.0,211.0,360.0,1,Rural,1.0
|
||||
LP002821,Male,No,0,0,Yes,5800,0.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002832,Male,Yes,2,1,No,8799,0.0,258.0,360.0,0,Urban,0.0
|
||||
LP002833,Male,Yes,0,0,No,4467,0.0,120.0,360.0,0,Rural,1.0
|
||||
LP002836,Male,No,0,1,No,3333,0.0,70.0,360.0,1,Urban,1.0
|
||||
LP002837,Male,Yes,3+,1,No,3400,2500.0,123.0,360.0,0,Rural,0.0
|
||||
LP002840,Female,No,0,1,No,2378,0.0,9.0,360.0,1,Urban,0.0
|
||||
LP002841,Male,Yes,0,1,No,3166,2064.0,104.0,360.0,0,Urban,0.0
|
||||
LP002842,Male,Yes,1,1,No,3417,1750.0,186.0,360.0,1,Urban,1.0
|
||||
LP002847,Male,Yes,,1,No,5116,1451.0,165.0,360.0,0,Urban,0.0
|
||||
LP002855,Male,Yes,2,1,No,16666,0.0,275.0,360.0,1,Urban,1.0
|
||||
LP002862,Male,Yes,2,0,No,6125,1625.0,187.0,480.0,1,Semiurban,0.0
|
||||
LP002863,Male,Yes,3+,1,No,6406,0.0,150.0,360.0,1,Semiurban,0.0
|
||||
LP002868,Male,Yes,2,1,No,3159,461.0,108.0,84.0,1,Urban,1.0
|
||||
LP002872,,Yes,0,1,No,3087,2210.0,136.0,360.0,0,Semiurban,0.0
|
||||
LP002874,Male,No,0,1,No,3229,2739.0,110.0,360.0,1,Urban,1.0
|
||||
LP002877,Male,Yes,1,1,No,1782,2232.0,107.0,360.0,1,Rural,1.0
|
||||
LP002888,Male,No,0,1,,3182,2917.0,161.0,360.0,1,Urban,1.0
|
||||
LP002892,Male,Yes,2,1,No,6540,0.0,205.0,360.0,1,Semiurban,1.0
|
||||
LP002893,Male,No,0,1,No,1836,33837.0,90.0,360.0,1,Urban,0.0
|
||||
LP002894,Female,Yes,0,1,No,3166,0.0,36.0,360.0,1,Semiurban,1.0
|
||||
LP002898,Male,Yes,1,1,No,1880,0.0,61.0,360.0,0,Rural,0.0
|
||||
LP002911,Male,Yes,1,1,No,2787,1917.0,146.0,360.0,0,Rural,0.0
|
||||
LP002912,Male,Yes,1,1,No,4283,3000.0,172.0,84.0,1,Rural,0.0
|
||||
LP002916,Male,Yes,0,1,No,2297,1522.0,104.0,360.0,1,Urban,1.0
|
||||
LP002917,Female,No,0,0,No,2165,0.0,70.0,360.0,1,Semiurban,1.0
|
||||
LP002925,,No,0,1,No,4750,0.0,94.0,360.0,1,Semiurban,1.0
|
||||
LP002926,Male,Yes,2,1,Yes,2726,0.0,106.0,360.0,0,Semiurban,0.0
|
||||
LP002928,Male,Yes,0,1,No,3000,3416.0,56.0,180.0,1,Semiurban,1.0
|
||||
LP002931,Male,Yes,2,1,Yes,6000,0.0,205.0,240.0,1,Semiurban,0.0
|
||||
LP002933,,No,3+,1,Yes,9357,0.0,292.0,360.0,1,Semiurban,1.0
|
||||
LP002936,Male,Yes,0,1,No,3859,3300.0,142.0,180.0,1,Rural,1.0
|
||||
LP002938,Male,Yes,0,1,Yes,16120,0.0,260.0,360.0,1,Urban,1.0
|
||||
LP002940,Male,No,0,0,No,3833,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002941,Male,Yes,2,0,Yes,6383,1000.0,187.0,360.0,1,Rural,0.0
|
||||
LP002943,Male,No,,1,No,2987,0.0,88.0,360.0,0,Semiurban,0.0
|
||||
LP002945,Male,Yes,0,1,Yes,9963,0.0,180.0,360.0,1,Rural,1.0
|
||||
LP002948,Male,Yes,2,1,No,5780,0.0,192.0,360.0,1,Urban,1.0
|
||||
LP002949,Female,No,3+,1,,416,41667.0,350.0,180.0,0,Urban,0.0
|
||||
LP002950,Male,Yes,0,0,,2894,2792.0,155.0,360.0,1,Rural,1.0
|
||||
LP002953,Male,Yes,3+,1,No,5703,0.0,128.0,360.0,1,Urban,1.0
|
||||
LP002958,Male,No,0,1,No,3676,4301.0,172.0,360.0,1,Rural,1.0
|
||||
LP002959,Female,Yes,1,1,No,12000,0.0,496.0,360.0,1,Semiurban,1.0
|
||||
LP002960,Male,Yes,0,0,No,2400,3800.0,0.0,180.0,1,Urban,0.0
|
||||
LP002961,Male,Yes,1,1,No,3400,2500.0,173.0,360.0,1,Semiurban,1.0
|
||||
LP002964,Male,Yes,2,0,No,3987,1411.0,157.0,360.0,1,Rural,1.0
|
||||
LP002974,Male,Yes,0,1,No,3232,1950.0,108.0,360.0,1,Rural,1.0
|
||||
LP002978,Female,No,0,1,No,2900,0.0,71.0,360.0,1,Rural,1.0
|
||||
LP002979,Male,Yes,3+,1,No,4106,0.0,40.0,180.0,1,Rural,1.0
|
||||
LP002983,Male,Yes,1,1,No,8072,240.0,253.0,360.0,1,Urban,1.0
|
||||
LP002984,Male,Yes,2,1,No,7583,0.0,187.0,360.0,1,Urban,1.0
|
||||
LP002990,Female,No,0,1,Yes,4583,0.0,133.0,360.0,0,Semiurban,0.0
|
||||
|
BIN
abanin_daniil_lab_3/result.png
Normal file
|
After Width: | Height: | Size: 27 KiB |
26
abanin_daniil_lab_4/README.md
Normal file
@@ -0,0 +1,26 @@
|
||||
## Лабораторная работа №4
|
||||
|
||||
### Ранжирование признаков
|
||||
|
||||
## ПИбд-41 Абанин Даниил
|
||||
|
||||
### Как запустить лабораторную работу:
|
||||
|
||||
* установить python, pandas, matplotlib, scipy
|
||||
* запустить проект (стартовая точка lab4)
|
||||
|
||||
### Какие технологии использовались:
|
||||
|
||||
* Язык программирования `Python`, библиотеки pandas, matplotlib, scipy
|
||||
* Среда разработки `PyCharm`
|
||||
|
||||
### Что делает лабораторная работа:
|
||||
Программа читает данные из csv файла. На основе имеющейся информации кластеризует заявителей на различные группы по риску выдачи кредита.
|
||||
При кластеризации используются такие признаки, как: ApplicantIncome - доход заявителя, LoanAmount - сумма займа в тысячах, Credit_History -
|
||||
статус кредитной истории заявителя (соответствие рекомендациям), Self_Employed - самозанятость (Да/Нет), Education - наличие образования
|
||||
|
||||
### Тест
|
||||
|
||||

|
||||
|
||||
По результатам кластеризации дендрограммой видно, что было проведено эффективное разбиение данных. На диаграмме показаны различные группы заявителей по рискам выдачи кредита
|
||||
23
abanin_daniil_lab_4/lab4.py
Normal file
@@ -0,0 +1,23 @@
|
||||
from scipy.cluster import hierarchy
|
||||
import pandas as pd
|
||||
from matplotlib import pyplot as plt
|
||||
|
||||
|
||||
def start():
|
||||
data = pd.read_csv('loan.csv')
|
||||
x = data[['ApplicantIncome', 'LoanAmount', 'Credit_History', 'Self_Employed', 'Education']]
|
||||
plt.figure(1, figsize=(16, 9))
|
||||
plt.title('Дендрограмма кластеризации заявителей')
|
||||
|
||||
hierarchy.dendrogram(hierarchy.linkage(x, method='single'),
|
||||
truncate_mode='lastp',
|
||||
p=20,
|
||||
orientation='top',
|
||||
leaf_rotation=90,
|
||||
leaf_font_size=8,
|
||||
show_contracted=True)
|
||||
|
||||
plt.show()
|
||||
|
||||
|
||||
start()
|
||||
615
abanin_daniil_lab_4/loan.csv
Normal file
@@ -0,0 +1,615 @@
|
||||
Loan_ID,Gender,Married,Dependents,Education,Self_Employed,ApplicantIncome,CoapplicantIncome,LoanAmount,Loan_Amount_Term,Credit_History,Property_Area,Loan_Status
|
||||
LP001002,Male,No,0,1,0.0,5849,0.0,360.0,1.0,0,Y,0.0
|
||||
LP001003,Male,Yes,1,1,0.0,4583,1508.0,128.0,360.0,1,Rural,0.0
|
||||
LP001005,Male,Yes,0,1,1.0,3000,0.0,66.0,360.0,1,Urban,1.0
|
||||
LP001006,Male,Yes,0,0,0.0,2583,2358.0,120.0,360.0,1,Urban,1.0
|
||||
LP001008,Male,No,0,1,0.0,6000,0.0,141.0,360.0,1,Urban,1.0
|
||||
LP001011,Male,Yes,2,1,1.0,5417,4196.0,267.0,360.0,1,Urban,1.0
|
||||
LP001013,Male,Yes,0,0,0.0,2333,1516.0,95.0,360.0,1,Urban,1.0
|
||||
LP001014,Male,Yes,3+,1,0.0,3036,2504.0,158.0,360.0,0,Semiurban,0.0
|
||||
LP001018,Male,Yes,2,1,0.0,4006,1526.0,168.0,360.0,1,Urban,1.0
|
||||
LP001020,Male,Yes,1,1,0.0,12841,10968.0,349.0,360.0,1,Semiurban,0.0
|
||||
LP001024,Male,Yes,2,1,0.0,3200,700.0,70.0,360.0,1,Urban,1.0
|
||||
LP001027,Male,Yes,2,1,0.0,2500,1840.0,109.0,360.0,1,Urban,1.0
|
||||
LP001028,Male,Yes,2,1,0.0,3073,8106.0,200.0,360.0,1,Urban,1.0
|
||||
LP001029,Male,No,0,1,0.0,1853,2840.0,114.0,360.0,1,Rural,0.0
|
||||
LP001030,Male,Yes,2,1,0.0,1299,1086.0,17.0,120.0,1,Urban,1.0
|
||||
LP001032,Male,No,0,1,0.0,4950,0.0,125.0,360.0,1,Urban,1.0
|
||||
LP001034,Male,No,1,0,0.0,3596,0.0,100.0,240.0,0,Urban,1.0
|
||||
LP001036,Female,No,0,1,0.0,3510,0.0,76.0,360.0,0,Urban,0.0
|
||||
LP001038,Male,Yes,0,0,0.0,4887,0.0,133.0,360.0,1,Rural,0.0
|
||||
LP001041,Male,Yes,0,1,0.0,2600,3500.0,115.0,,1,Urban,1.0
|
||||
LP001043,Male,Yes,0,0,0.0,7660,0.0,104.0,360.0,0,Urban,0.0
|
||||
LP001046,Male,Yes,1,1,0.0,5955,5625.0,315.0,360.0,1,Urban,1.0
|
||||
LP001047,Male,Yes,0,0,0.0,2600,1911.0,116.0,360.0,0,Semiurban,0.0
|
||||
LP001050,,Yes,2,0,0.0,3365,1917.0,112.0,360.0,0,Rural,0.0
|
||||
LP001052,Male,Yes,1,1,0.0,3717,2925.0,151.0,360.0,0,Semiurban,0.0
|
||||
LP001066,Male,Yes,0,1,1.0,9560,0.0,191.0,360.0,1,Semiurban,1.0
|
||||
LP001068,Male,Yes,0,1,0.0,2799,2253.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001073,Male,Yes,2,0,0.0,4226,1040.0,110.0,360.0,1,Urban,1.0
|
||||
LP001086,Male,No,0,0,0.0,1442,0.0,35.0,360.0,1,Urban,0.0
|
||||
LP001087,Female,No,2,1,0.0,3750,2083.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001091,Male,Yes,1,1,0.0,4166,3369.0,201.0,360.0,0,Urban,0.0
|
||||
LP001095,Male,No,0,1,0.0,3167,0.0,74.0,360.0,1,Urban,0.0
|
||||
LP001097,Male,No,1,1,1.0,4692,0.0,106.0,360.0,1,Rural,0.0
|
||||
LP001098,Male,Yes,0,1,0.0,3500,1667.0,114.0,360.0,1,Semiurban,1.0
|
||||
LP001100,Male,No,3+,1,0.0,12500,3000.0,320.0,360.0,1,Rural,0.0
|
||||
LP001106,Male,Yes,0,1,0.0,2275,2067.0,0.0,360.0,1,Urban,1.0
|
||||
LP001109,Male,Yes,0,1,0.0,1828,1330.0,100.0,,0,Urban,0.0
|
||||
LP001112,Female,Yes,0,1,0.0,3667,1459.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001114,Male,No,0,1,0.0,4166,7210.0,184.0,360.0,1,Urban,1.0
|
||||
LP001116,Male,No,0,0,0.0,3748,1668.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP001119,Male,No,0,1,0.0,3600,0.0,80.0,360.0,1,Urban,0.0
|
||||
LP001120,Male,No,0,1,0.0,1800,1213.0,47.0,360.0,1,Urban,1.0
|
||||
LP001123,Male,Yes,0,1,0.0,2400,0.0,75.0,360.0,0,Urban,1.0
|
||||
LP001131,Male,Yes,0,1,0.0,3941,2336.0,134.0,360.0,1,Semiurban,1.0
|
||||
LP001136,Male,Yes,0,0,1.0,4695,0.0,96.0,,1,Urban,1.0
|
||||
LP001137,Female,No,0,1,0.0,3410,0.0,88.0,,1,Urban,1.0
|
||||
LP001138,Male,Yes,1,1,0.0,5649,0.0,44.0,360.0,1,Urban,1.0
|
||||
LP001144,Male,Yes,0,1,0.0,5821,0.0,144.0,360.0,1,Urban,1.0
|
||||
LP001146,Female,Yes,0,1,0.0,2645,3440.0,120.0,360.0,0,Urban,0.0
|
||||
LP001151,Female,No,0,1,0.0,4000,2275.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001155,Female,Yes,0,0,0.0,1928,1644.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001157,Female,No,0,1,0.0,3086,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001164,Female,No,0,1,0.0,4230,0.0,112.0,360.0,1,Semiurban,0.0
|
||||
LP001179,Male,Yes,2,1,0.0,4616,0.0,134.0,360.0,1,Urban,0.0
|
||||
LP001186,Female,Yes,1,1,1.0,11500,0.0,286.0,360.0,0,Urban,0.0
|
||||
LP001194,Male,Yes,2,1,0.0,2708,1167.0,97.0,360.0,1,Semiurban,1.0
|
||||
LP001195,Male,Yes,0,1,0.0,2132,1591.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP001197,Male,Yes,0,1,0.0,3366,2200.0,135.0,360.0,1,Rural,0.0
|
||||
LP001198,Male,Yes,1,1,0.0,8080,2250.0,180.0,360.0,1,Urban,1.0
|
||||
LP001199,Male,Yes,2,0,0.0,3357,2859.0,144.0,360.0,1,Urban,1.0
|
||||
LP001205,Male,Yes,0,1,0.0,2500,3796.0,120.0,360.0,1,Urban,1.0
|
||||
LP001206,Male,Yes,3+,1,0.0,3029,0.0,99.0,360.0,1,Urban,1.0
|
||||
LP001207,Male,Yes,0,0,1.0,2609,3449.0,165.0,180.0,0,Rural,0.0
|
||||
LP001213,Male,Yes,1,1,0.0,4945,0.0,0.0,360.0,0,Rural,0.0
|
||||
LP001222,Female,No,0,1,0.0,4166,0.0,116.0,360.0,0,Semiurban,0.0
|
||||
LP001225,Male,Yes,0,1,0.0,5726,4595.0,258.0,360.0,1,Semiurban,0.0
|
||||
LP001228,Male,No,0,0,0.0,3200,2254.0,126.0,180.0,0,Urban,0.0
|
||||
LP001233,Male,Yes,1,1,0.0,10750,0.0,312.0,360.0,1,Urban,1.0
|
||||
LP001238,Male,Yes,3+,0,1.0,7100,0.0,125.0,60.0,1,Urban,1.0
|
||||
LP001241,Female,No,0,1,0.0,4300,0.0,136.0,360.0,0,Semiurban,0.0
|
||||
LP001243,Male,Yes,0,1,0.0,3208,3066.0,172.0,360.0,1,Urban,1.0
|
||||
LP001245,Male,Yes,2,0,1.0,1875,1875.0,97.0,360.0,1,Semiurban,1.0
|
||||
LP001248,Male,No,0,1,0.0,3500,0.0,81.0,300.0,1,Semiurban,1.0
|
||||
LP001250,Male,Yes,3+,0,0.0,4755,0.0,95.0,,0,Semiurban,0.0
|
||||
LP001253,Male,Yes,3+,1,1.0,5266,1774.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP001255,Male,No,0,1,0.0,3750,0.0,113.0,480.0,1,Urban,0.0
|
||||
LP001256,Male,No,0,1,0.0,3750,4750.0,176.0,360.0,1,Urban,0.0
|
||||
LP001259,Male,Yes,1,1,1.0,1000,3022.0,110.0,360.0,1,Urban,0.0
|
||||
LP001263,Male,Yes,3+,1,0.0,3167,4000.0,180.0,300.0,0,Semiurban,0.0
|
||||
LP001264,Male,Yes,3+,0,1.0,3333,2166.0,130.0,360.0,0,Semiurban,1.0
|
||||
LP001265,Female,No,0,1,0.0,3846,0.0,111.0,360.0,1,Semiurban,1.0
|
||||
LP001266,Male,Yes,1,1,1.0,2395,0.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001267,Female,Yes,2,1,0.0,1378,1881.0,167.0,360.0,1,Urban,0.0
|
||||
LP001273,Male,Yes,0,1,0.0,6000,2250.0,265.0,360.0,0,Semiurban,0.0
|
||||
LP001275,Male,Yes,1,1,0.0,3988,0.0,50.0,240.0,1,Urban,1.0
|
||||
LP001279,Male,No,0,1,0.0,2366,2531.0,136.0,360.0,1,Semiurban,1.0
|
||||
LP001280,Male,Yes,2,0,0.0,3333,2000.0,99.0,360.0,0,Semiurban,1.0
|
||||
LP001282,Male,Yes,0,1,0.0,2500,2118.0,104.0,360.0,1,Semiurban,1.0
|
||||
LP001289,Male,No,0,1,0.0,8566,0.0,210.0,360.0,1,Urban,1.0
|
||||
LP001310,Male,Yes,0,1,0.0,5695,4167.0,175.0,360.0,1,Semiurban,1.0
|
||||
LP001316,Male,Yes,0,1,0.0,2958,2900.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001318,Male,Yes,2,1,0.0,6250,5654.0,188.0,180.0,1,Semiurban,1.0
|
||||
LP001319,Male,Yes,2,0,0.0,3273,1820.0,81.0,360.0,1,Urban,1.0
|
||||
LP001322,Male,No,0,1,0.0,4133,0.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001325,Male,No,0,0,0.0,3620,0.0,25.0,120.0,1,Semiurban,1.0
|
||||
LP001326,Male,No,0,1,0.0,6782,0.0,0.0,360.0,0,Urban,0.0
|
||||
LP001327,Female,Yes,0,1,0.0,2484,2302.0,137.0,360.0,1,Semiurban,1.0
|
||||
LP001333,Male,Yes,0,1,0.0,1977,997.0,50.0,360.0,1,Semiurban,1.0
|
||||
LP001334,Male,Yes,0,0,0.0,4188,0.0,115.0,180.0,1,Semiurban,1.0
|
||||
LP001343,Male,Yes,0,1,0.0,1759,3541.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001345,Male,Yes,2,0,0.0,4288,3263.0,133.0,180.0,1,Urban,1.0
|
||||
LP001349,Male,No,0,1,0.0,4843,3806.0,151.0,360.0,1,Semiurban,1.0
|
||||
LP001350,Male,Yes,,1,0.0,13650,0.0,0.0,360.0,1,Urban,1.0
|
||||
LP001356,Male,Yes,0,1,0.0,4652,3583.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001357,Male,,,1,0.0,3816,754.0,160.0,360.0,1,Urban,1.0
|
||||
LP001367,Male,Yes,1,1,0.0,3052,1030.0,100.0,360.0,1,Urban,1.0
|
||||
LP001369,Male,Yes,2,1,0.0,11417,1126.0,225.0,360.0,1,Urban,1.0
|
||||
LP001370,Male,No,0,0,0.0,7333,0.0,120.0,360.0,1,Rural,0.0
|
||||
LP001379,Male,Yes,2,1,0.0,3800,3600.0,216.0,360.0,0,Urban,0.0
|
||||
LP001384,Male,Yes,3+,0,0.0,2071,754.0,94.0,480.0,1,Semiurban,1.0
|
||||
LP001385,Male,No,0,1,0.0,5316,0.0,136.0,360.0,1,Urban,1.0
|
||||
LP001387,Female,Yes,0,1,0.0,2929,2333.0,139.0,360.0,1,Semiurban,1.0
|
||||
LP001391,Male,Yes,0,0,0.0,3572,4114.0,152.0,,0,Rural,0.0
|
||||
LP001392,Female,No,1,1,1.0,7451,0.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001398,Male,No,0,1,0.0,5050,0.0,118.0,360.0,1,Semiurban,1.0
|
||||
LP001401,Male,Yes,1,1,0.0,14583,0.0,185.0,180.0,1,Rural,1.0
|
||||
LP001404,Female,Yes,0,1,0.0,3167,2283.0,154.0,360.0,1,Semiurban,1.0
|
||||
LP001405,Male,Yes,1,1,0.0,2214,1398.0,85.0,360.0,0,Urban,1.0
|
||||
LP001421,Male,Yes,0,1,0.0,5568,2142.0,175.0,360.0,1,Rural,0.0
|
||||
LP001422,Female,No,0,1,0.0,10408,0.0,259.0,360.0,1,Urban,1.0
|
||||
LP001426,Male,Yes,,1,0.0,5667,2667.0,180.0,360.0,1,Rural,1.0
|
||||
LP001430,Female,No,0,1,0.0,4166,0.0,44.0,360.0,1,Semiurban,1.0
|
||||
LP001431,Female,No,0,1,0.0,2137,8980.0,137.0,360.0,0,Semiurban,1.0
|
||||
LP001432,Male,Yes,2,1,0.0,2957,0.0,81.0,360.0,1,Semiurban,1.0
|
||||
LP001439,Male,Yes,0,0,0.0,4300,2014.0,194.0,360.0,1,Rural,1.0
|
||||
LP001443,Female,No,0,1,0.0,3692,0.0,93.0,360.0,0,Rural,1.0
|
||||
LP001448,,Yes,3+,1,0.0,23803,0.0,370.0,360.0,1,Rural,1.0
|
||||
LP001449,Male,No,0,1,0.0,3865,1640.0,0.0,360.0,1,Rural,1.0
|
||||
LP001451,Male,Yes,1,1,1.0,10513,3850.0,160.0,180.0,0,Urban,0.0
|
||||
LP001465,Male,Yes,0,1,0.0,6080,2569.0,182.0,360.0,0,Rural,0.0
|
||||
LP001469,Male,No,0,1,1.0,20166,0.0,650.0,480.0,0,Urban,1.0
|
||||
LP001473,Male,No,0,1,0.0,2014,1929.0,74.0,360.0,1,Urban,1.0
|
||||
LP001478,Male,No,0,1,0.0,2718,0.0,70.0,360.0,1,Semiurban,1.0
|
||||
LP001482,Male,Yes,0,1,1.0,3459,0.0,25.0,120.0,1,Semiurban,1.0
|
||||
LP001487,Male,No,0,1,0.0,4895,0.0,102.0,360.0,1,Semiurban,1.0
|
||||
LP001488,Male,Yes,3+,1,0.0,4000,7750.0,290.0,360.0,1,Semiurban,0.0
|
||||
LP001489,Female,Yes,0,1,0.0,4583,0.0,84.0,360.0,1,Rural,0.0
|
||||
LP001491,Male,Yes,2,1,1.0,3316,3500.0,88.0,360.0,1,Urban,1.0
|
||||
LP001492,Male,No,0,1,0.0,14999,0.0,242.0,360.0,0,Semiurban,0.0
|
||||
LP001493,Male,Yes,2,0,0.0,4200,1430.0,129.0,360.0,1,Rural,0.0
|
||||
LP001497,Male,Yes,2,1,0.0,5042,2083.0,185.0,360.0,1,Rural,0.0
|
||||
LP001498,Male,No,0,1,0.0,5417,0.0,168.0,360.0,1,Urban,1.0
|
||||
LP001504,Male,No,0,1,1.0,6950,0.0,175.0,180.0,1,Semiurban,1.0
|
||||
LP001507,Male,Yes,0,1,0.0,2698,2034.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001508,Male,Yes,2,1,0.0,11757,0.0,187.0,180.0,1,Urban,1.0
|
||||
LP001514,Female,Yes,0,1,0.0,2330,4486.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001516,Female,Yes,2,1,0.0,14866,0.0,70.0,360.0,1,Urban,1.0
|
||||
LP001518,Male,Yes,1,1,0.0,1538,1425.0,30.0,360.0,1,Urban,1.0
|
||||
LP001519,Female,No,0,1,0.0,10000,1666.0,225.0,360.0,1,Rural,0.0
|
||||
LP001520,Male,Yes,0,1,0.0,4860,830.0,125.0,360.0,1,Semiurban,1.0
|
||||
LP001528,Male,No,0,1,0.0,6277,0.0,118.0,360.0,0,Rural,0.0
|
||||
LP001529,Male,Yes,0,1,1.0,2577,3750.0,152.0,360.0,1,Rural,1.0
|
||||
LP001531,Male,No,0,1,0.0,9166,0.0,244.0,360.0,1,Urban,0.0
|
||||
LP001532,Male,Yes,2,0,0.0,2281,0.0,113.0,360.0,1,Rural,0.0
|
||||
LP001535,Male,No,0,1,0.0,3254,0.0,50.0,360.0,1,Urban,1.0
|
||||
LP001536,Male,Yes,3+,1,0.0,39999,0.0,600.0,180.0,0,Semiurban,1.0
|
||||
LP001541,Male,Yes,1,1,0.0,6000,0.0,160.0,360.0,0,Rural,1.0
|
||||
LP001543,Male,Yes,1,1,0.0,9538,0.0,187.0,360.0,1,Urban,1.0
|
||||
LP001546,Male,No,0,1,0.0,2980,2083.0,120.0,360.0,1,Rural,1.0
|
||||
LP001552,Male,Yes,0,1,0.0,4583,5625.0,255.0,360.0,1,Semiurban,1.0
|
||||
LP001560,Male,Yes,0,0,0.0,1863,1041.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP001562,Male,Yes,0,1,0.0,7933,0.0,275.0,360.0,1,Urban,0.0
|
||||
LP001565,Male,Yes,1,1,0.0,3089,1280.0,121.0,360.0,0,Semiurban,0.0
|
||||
LP001570,Male,Yes,2,1,0.0,4167,1447.0,158.0,360.0,1,Rural,1.0
|
||||
LP001572,Male,Yes,0,1,0.0,9323,0.0,75.0,180.0,1,Urban,1.0
|
||||
LP001574,Male,Yes,0,1,0.0,3707,3166.0,182.0,,1,Rural,1.0
|
||||
LP001577,Female,Yes,0,1,0.0,4583,0.0,112.0,360.0,1,Rural,0.0
|
||||
LP001578,Male,Yes,0,1,0.0,2439,3333.0,129.0,360.0,1,Rural,1.0
|
||||
LP001579,Male,No,0,1,0.0,2237,0.0,63.0,480.0,0,Semiurban,0.0
|
||||
LP001580,Male,Yes,2,1,0.0,8000,0.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP001581,Male,Yes,0,0,0.0,1820,1769.0,95.0,360.0,1,Rural,1.0
|
||||
LP001585,,Yes,3+,1,0.0,51763,0.0,700.0,300.0,1,Urban,1.0
|
||||
LP001586,Male,Yes,3+,0,0.0,3522,0.0,81.0,180.0,1,Rural,0.0
|
||||
LP001594,Male,Yes,0,1,0.0,5708,5625.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP001603,Male,Yes,0,0,1.0,4344,736.0,87.0,360.0,1,Semiurban,0.0
|
||||
LP001606,Male,Yes,0,1,0.0,3497,1964.0,116.0,360.0,1,Rural,1.0
|
||||
LP001608,Male,Yes,2,1,0.0,2045,1619.0,101.0,360.0,1,Rural,1.0
|
||||
LP001610,Male,Yes,3+,1,0.0,5516,11300.0,495.0,360.0,0,Semiurban,0.0
|
||||
LP001616,Male,Yes,1,1,0.0,3750,0.0,116.0,360.0,1,Semiurban,1.0
|
||||
LP001630,Male,No,0,0,0.0,2333,1451.0,102.0,480.0,0,Urban,0.0
|
||||
LP001633,Male,Yes,1,1,0.0,6400,7250.0,180.0,360.0,0,Urban,0.0
|
||||
LP001634,Male,No,0,1,0.0,1916,5063.0,67.0,360.0,0,Rural,0.0
|
||||
LP001636,Male,Yes,0,1,0.0,4600,0.0,73.0,180.0,1,Semiurban,1.0
|
||||
LP001637,Male,Yes,1,1,0.0,33846,0.0,260.0,360.0,1,Semiurban,0.0
|
||||
LP001639,Female,Yes,0,1,0.0,3625,0.0,108.0,360.0,1,Semiurban,1.0
|
||||
LP001640,Male,Yes,0,1,1.0,39147,4750.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001641,Male,Yes,1,1,1.0,2178,0.0,66.0,300.0,0,Rural,0.0
|
||||
LP001643,Male,Yes,0,1,0.0,2383,2138.0,58.0,360.0,0,Rural,1.0
|
||||
LP001644,,Yes,0,1,1.0,674,5296.0,168.0,360.0,1,Rural,1.0
|
||||
LP001647,Male,Yes,0,1,0.0,9328,0.0,188.0,180.0,1,Rural,1.0
|
||||
LP001653,Male,No,0,0,0.0,4885,0.0,48.0,360.0,1,Rural,1.0
|
||||
LP001656,Male,No,0,1,0.0,12000,0.0,164.0,360.0,1,Semiurban,0.0
|
||||
LP001657,Male,Yes,0,0,0.0,6033,0.0,160.0,360.0,1,Urban,0.0
|
||||
LP001658,Male,No,0,1,0.0,3858,0.0,76.0,360.0,1,Semiurban,1.0
|
||||
LP001664,Male,No,0,1,0.0,4191,0.0,120.0,360.0,1,Rural,1.0
|
||||
LP001665,Male,Yes,1,1,0.0,3125,2583.0,170.0,360.0,1,Semiurban,0.0
|
||||
LP001666,Male,No,0,1,0.0,8333,3750.0,187.0,360.0,1,Rural,1.0
|
||||
LP001669,Female,No,0,0,0.0,1907,2365.0,120.0,,1,Urban,1.0
|
||||
LP001671,Female,Yes,0,1,0.0,3416,2816.0,113.0,360.0,0,Semiurban,1.0
|
||||
LP001673,Male,No,0,1,1.0,11000,0.0,83.0,360.0,1,Urban,0.0
|
||||
LP001674,Male,Yes,1,0,0.0,2600,2500.0,90.0,360.0,1,Semiurban,1.0
|
||||
LP001677,Male,No,2,1,0.0,4923,0.0,166.0,360.0,0,Semiurban,1.0
|
||||
LP001682,Male,Yes,3+,0,0.0,3992,0.0,0.0,180.0,1,Urban,0.0
|
||||
LP001688,Male,Yes,1,0,0.0,3500,1083.0,135.0,360.0,1,Urban,1.0
|
||||
LP001691,Male,Yes,2,0,0.0,3917,0.0,124.0,360.0,1,Semiurban,1.0
|
||||
LP001692,Female,No,0,0,0.0,4408,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001693,Female,No,0,1,0.0,3244,0.0,80.0,360.0,1,Urban,1.0
|
||||
LP001698,Male,No,0,0,0.0,3975,2531.0,55.0,360.0,1,Rural,1.0
|
||||
LP001699,Male,No,0,1,0.0,2479,0.0,59.0,360.0,1,Urban,1.0
|
||||
LP001702,Male,No,0,1,0.0,3418,0.0,127.0,360.0,1,Semiurban,0.0
|
||||
LP001708,Female,No,0,1,0.0,10000,0.0,214.0,360.0,1,Semiurban,0.0
|
||||
LP001711,Male,Yes,3+,1,0.0,3430,1250.0,128.0,360.0,0,Semiurban,0.0
|
||||
LP001713,Male,Yes,1,1,1.0,7787,0.0,240.0,360.0,1,Urban,1.0
|
||||
LP001715,Male,Yes,3+,0,1.0,5703,0.0,130.0,360.0,1,Rural,1.0
|
||||
LP001716,Male,Yes,0,1,0.0,3173,3021.0,137.0,360.0,1,Urban,1.0
|
||||
LP001720,Male,Yes,3+,0,0.0,3850,983.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001722,Male,Yes,0,1,0.0,150,1800.0,135.0,360.0,1,Rural,0.0
|
||||
LP001726,Male,Yes,0,1,0.0,3727,1775.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001732,Male,Yes,2,1,0.0,5000,0.0,72.0,360.0,0,Semiurban,0.0
|
||||
LP001734,Female,Yes,2,1,0.0,4283,2383.0,127.0,360.0,0,Semiurban,1.0
|
||||
LP001736,Male,Yes,0,1,0.0,2221,0.0,60.0,360.0,0,Urban,0.0
|
||||
LP001743,Male,Yes,2,1,0.0,4009,1717.0,116.0,360.0,1,Semiurban,1.0
|
||||
LP001744,Male,No,0,1,0.0,2971,2791.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001749,Male,Yes,0,1,0.0,7578,1010.0,175.0,,1,Semiurban,1.0
|
||||
LP001750,Male,Yes,0,1,0.0,6250,0.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP001751,Male,Yes,0,1,0.0,3250,0.0,170.0,360.0,1,Rural,0.0
|
||||
LP001754,Male,Yes,,0,1.0,4735,0.0,138.0,360.0,1,Urban,0.0
|
||||
LP001758,Male,Yes,2,1,0.0,6250,1695.0,210.0,360.0,1,Semiurban,1.0
|
||||
LP001760,Male,,,1,0.0,4758,0.0,158.0,480.0,1,Semiurban,1.0
|
||||
LP001761,Male,No,0,1,1.0,6400,0.0,200.0,360.0,1,Rural,1.0
|
||||
LP001765,Male,Yes,1,1,0.0,2491,2054.0,104.0,360.0,1,Semiurban,1.0
|
||||
LP001768,Male,Yes,0,1,0.0,3716,0.0,42.0,180.0,1,Rural,1.0
|
||||
LP001770,Male,No,0,0,0.0,3189,2598.0,120.0,,1,Rural,1.0
|
||||
LP001776,Female,No,0,1,0.0,8333,0.0,280.0,360.0,1,Semiurban,1.0
|
||||
LP001778,Male,Yes,1,1,0.0,3155,1779.0,140.0,360.0,1,Semiurban,1.0
|
||||
LP001784,Male,Yes,1,1,0.0,5500,1260.0,170.0,360.0,1,Rural,1.0
|
||||
LP001786,Male,Yes,0,1,0.0,5746,0.0,255.0,360.0,0,Urban,0.0
|
||||
LP001788,Female,No,0,1,1.0,3463,0.0,122.0,360.0,0,Urban,1.0
|
||||
LP001790,Female,No,1,1,0.0,3812,0.0,112.0,360.0,1,Rural,1.0
|
||||
LP001792,Male,Yes,1,1,0.0,3315,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP001798,Male,Yes,2,1,0.0,5819,5000.0,120.0,360.0,1,Rural,1.0
|
||||
LP001800,Male,Yes,1,0,0.0,2510,1983.0,140.0,180.0,1,Urban,0.0
|
||||
LP001806,Male,No,0,1,0.0,2965,5701.0,155.0,60.0,1,Urban,1.0
|
||||
LP001807,Male,Yes,2,1,1.0,6250,1300.0,108.0,360.0,1,Rural,1.0
|
||||
LP001811,Male,Yes,0,0,0.0,3406,4417.0,123.0,360.0,1,Semiurban,1.0
|
||||
LP001813,Male,No,0,1,1.0,6050,4333.0,120.0,180.0,1,Urban,0.0
|
||||
LP001814,Male,Yes,2,1,0.0,9703,0.0,112.0,360.0,1,Urban,1.0
|
||||
LP001819,Male,Yes,1,0,0.0,6608,0.0,137.0,180.0,1,Urban,1.0
|
||||
LP001824,Male,Yes,1,1,0.0,2882,1843.0,123.0,480.0,1,Semiurban,1.0
|
||||
LP001825,Male,Yes,0,1,0.0,1809,1868.0,90.0,360.0,1,Urban,1.0
|
||||
LP001835,Male,Yes,0,0,0.0,1668,3890.0,201.0,360.0,0,Semiurban,0.0
|
||||
LP001836,Female,No,2,1,0.0,3427,0.0,138.0,360.0,1,Urban,0.0
|
||||
LP001841,Male,No,0,0,1.0,2583,2167.0,104.0,360.0,1,Rural,1.0
|
||||
LP001843,Male,Yes,1,0,0.0,2661,7101.0,279.0,180.0,1,Semiurban,1.0
|
||||
LP001844,Male,No,0,1,1.0,16250,0.0,192.0,360.0,0,Urban,0.0
|
||||
LP001846,Female,No,3+,1,0.0,3083,0.0,255.0,360.0,1,Rural,1.0
|
||||
LP001849,Male,No,0,0,0.0,6045,0.0,115.0,360.0,0,Rural,0.0
|
||||
LP001854,Male,Yes,3+,1,0.0,5250,0.0,94.0,360.0,1,Urban,0.0
|
||||
LP001859,Male,Yes,0,1,0.0,14683,2100.0,304.0,360.0,1,Rural,0.0
|
||||
LP001864,Male,Yes,3+,0,0.0,4931,0.0,128.0,360.0,0,Semiurban,0.0
|
||||
LP001865,Male,Yes,1,1,0.0,6083,4250.0,330.0,360.0,0,Urban,1.0
|
||||
LP001868,Male,No,0,1,0.0,2060,2209.0,134.0,360.0,1,Semiurban,1.0
|
||||
LP001870,Female,No,1,1,0.0,3481,0.0,155.0,36.0,1,Semiurban,0.0
|
||||
LP001871,Female,No,0,1,0.0,7200,0.0,120.0,360.0,1,Rural,1.0
|
||||
LP001872,Male,No,0,1,1.0,5166,0.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP001875,Male,No,0,1,0.0,4095,3447.0,151.0,360.0,1,Rural,1.0
|
||||
LP001877,Male,Yes,2,1,0.0,4708,1387.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP001882,Male,Yes,3+,1,0.0,4333,1811.0,160.0,360.0,0,Urban,1.0
|
||||
LP001883,Female,No,0,1,0.0,3418,0.0,135.0,360.0,1,Rural,0.0
|
||||
LP001884,Female,No,1,1,0.0,2876,1560.0,90.0,360.0,1,Urban,1.0
|
||||
LP001888,Female,No,0,1,0.0,3237,0.0,30.0,360.0,1,Urban,1.0
|
||||
LP001891,Male,Yes,0,1,0.0,11146,0.0,136.0,360.0,1,Urban,1.0
|
||||
LP001892,Male,No,0,1,0.0,2833,1857.0,126.0,360.0,1,Rural,1.0
|
||||
LP001894,Male,Yes,0,1,0.0,2620,2223.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP001896,Male,Yes,2,1,0.0,3900,0.0,90.0,360.0,1,Semiurban,1.0
|
||||
LP001900,Male,Yes,1,1,0.0,2750,1842.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP001903,Male,Yes,0,1,0.0,3993,3274.0,207.0,360.0,1,Semiurban,1.0
|
||||
LP001904,Male,Yes,0,1,0.0,3103,1300.0,80.0,360.0,1,Urban,1.0
|
||||
LP001907,Male,Yes,0,1,0.0,14583,0.0,436.0,360.0,1,Semiurban,1.0
|
||||
LP001908,Female,Yes,0,0,0.0,4100,0.0,124.0,360.0,0,Rural,1.0
|
||||
LP001910,Male,No,1,0,1.0,4053,2426.0,158.0,360.0,0,Urban,0.0
|
||||
LP001914,Male,Yes,0,1,0.0,3927,800.0,112.0,360.0,1,Semiurban,1.0
|
||||
LP001915,Male,Yes,2,1,0.0,2301,985.7999878,78.0,180.0,1,Urban,1.0
|
||||
LP001917,Female,No,0,1,0.0,1811,1666.0,54.0,360.0,1,Urban,1.0
|
||||
LP001922,Male,Yes,0,1,0.0,20667,0.0,0.0,360.0,1,Rural,0.0
|
||||
LP001924,Male,No,0,1,0.0,3158,3053.0,89.0,360.0,1,Rural,1.0
|
||||
LP001925,Female,No,0,1,1.0,2600,1717.0,99.0,300.0,1,Semiurban,0.0
|
||||
LP001926,Male,Yes,0,1,0.0,3704,2000.0,120.0,360.0,1,Rural,1.0
|
||||
LP001931,Female,No,0,1,0.0,4124,0.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP001935,Male,No,0,1,0.0,9508,0.0,187.0,360.0,1,Rural,1.0
|
||||
LP001936,Male,Yes,0,1,0.0,3075,2416.0,139.0,360.0,1,Rural,1.0
|
||||
LP001938,Male,Yes,2,1,0.0,4400,0.0,127.0,360.0,0,Semiurban,0.0
|
||||
LP001940,Male,Yes,2,1,0.0,3153,1560.0,134.0,360.0,1,Urban,1.0
|
||||
LP001945,Female,No,,1,0.0,5417,0.0,143.0,480.0,0,Urban,0.0
|
||||
LP001947,Male,Yes,0,1,0.0,2383,3334.0,172.0,360.0,1,Semiurban,1.0
|
||||
LP001949,Male,Yes,3+,1,0.0,4416,1250.0,110.0,360.0,1,Urban,1.0
|
||||
LP001953,Male,Yes,1,1,0.0,6875,0.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP001954,Female,Yes,1,1,0.0,4666,0.0,135.0,360.0,1,Urban,1.0
|
||||
LP001955,Female,No,0,1,0.0,5000,2541.0,151.0,480.0,1,Rural,0.0
|
||||
LP001963,Male,Yes,1,1,0.0,2014,2925.0,113.0,360.0,1,Urban,0.0
|
||||
LP001964,Male,Yes,0,0,0.0,1800,2934.0,93.0,360.0,0,Urban,0.0
|
||||
LP001972,Male,Yes,,0,0.0,2875,1750.0,105.0,360.0,1,Semiurban,1.0
|
||||
LP001974,Female,No,0,1,0.0,5000,0.0,132.0,360.0,1,Rural,1.0
|
||||
LP001977,Male,Yes,1,1,0.0,1625,1803.0,96.0,360.0,1,Urban,1.0
|
||||
LP001978,Male,No,0,1,0.0,4000,2500.0,140.0,360.0,1,Rural,1.0
|
||||
LP001990,Male,No,0,0,0.0,2000,0.0,0.0,360.0,1,Urban,0.0
|
||||
LP001993,Female,No,0,1,0.0,3762,1666.0,135.0,360.0,1,Rural,1.0
|
||||
LP001994,Female,No,0,1,0.0,2400,1863.0,104.0,360.0,0,Urban,0.0
|
||||
LP001996,Male,No,0,1,0.0,20233,0.0,480.0,360.0,1,Rural,0.0
|
||||
LP001998,Male,Yes,2,0,0.0,7667,0.0,185.0,360.0,0,Rural,1.0
|
||||
LP002002,Female,No,0,1,0.0,2917,0.0,84.0,360.0,1,Semiurban,1.0
|
||||
LP002004,Male,No,0,0,0.0,2927,2405.0,111.0,360.0,1,Semiurban,1.0
|
||||
LP002006,Female,No,0,1,0.0,2507,0.0,56.0,360.0,1,Rural,1.0
|
||||
LP002008,Male,Yes,2,1,1.0,5746,0.0,144.0,84.0,0,Rural,1.0
|
||||
LP002024,,Yes,0,1,0.0,2473,1843.0,159.0,360.0,1,Rural,0.0
|
||||
LP002031,Male,Yes,1,0,0.0,3399,1640.0,111.0,180.0,1,Urban,1.0
|
||||
LP002035,Male,Yes,2,1,0.0,3717,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP002036,Male,Yes,0,1,0.0,2058,2134.0,88.0,360.0,0,Urban,1.0
|
||||
LP002043,Female,No,1,1,0.0,3541,0.0,112.0,360.0,0,Semiurban,1.0
|
||||
LP002050,Male,Yes,1,1,1.0,10000,0.0,155.0,360.0,1,Rural,0.0
|
||||
LP002051,Male,Yes,0,1,0.0,2400,2167.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP002053,Male,Yes,3+,1,0.0,4342,189.0,124.0,360.0,1,Semiurban,1.0
|
||||
LP002054,Male,Yes,2,0,0.0,3601,1590.0,0.0,360.0,1,Rural,1.0
|
||||
LP002055,Female,No,0,1,0.0,3166,2985.0,132.0,360.0,0,Rural,1.0
|
||||
LP002065,Male,Yes,3+,1,0.0,15000,0.0,300.0,360.0,1,Rural,1.0
|
||||
LP002067,Male,Yes,1,1,1.0,8666,4983.0,376.0,360.0,0,Rural,0.0
|
||||
LP002068,Male,No,0,1,0.0,4917,0.0,130.0,360.0,0,Rural,1.0
|
||||
LP002082,Male,Yes,0,1,1.0,5818,2160.0,184.0,360.0,1,Semiurban,1.0
|
||||
LP002086,Female,Yes,0,1,0.0,4333,2451.0,110.0,360.0,1,Urban,0.0
|
||||
LP002087,Female,No,0,1,0.0,2500,0.0,67.0,360.0,1,Urban,1.0
|
||||
LP002097,Male,No,1,1,0.0,4384,1793.0,117.0,360.0,1,Urban,1.0
|
||||
LP002098,Male,No,0,1,0.0,2935,0.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP002100,Male,No,,1,0.0,2833,0.0,71.0,360.0,1,Urban,1.0
|
||||
LP002101,Male,Yes,0,1,0.0,63337,0.0,490.0,180.0,1,Urban,1.0
|
||||
LP002103,,Yes,1,1,1.0,9833,1833.0,182.0,180.0,1,Urban,1.0
|
||||
LP002106,Male,Yes,,1,1.0,5503,4490.0,70.0,,1,Semiurban,1.0
|
||||
LP002110,Male,Yes,1,1,0.0,5250,688.0,160.0,360.0,1,Rural,1.0
|
||||
LP002112,Male,Yes,2,1,1.0,2500,4600.0,176.0,360.0,1,Rural,1.0
|
||||
LP002113,Female,No,3+,0,0.0,1830,0.0,0.0,360.0,0,Urban,0.0
|
||||
LP002114,Female,No,0,1,0.0,4160,0.0,71.0,360.0,1,Semiurban,1.0
|
||||
LP002115,Male,Yes,3+,0,0.0,2647,1587.0,173.0,360.0,1,Rural,0.0
|
||||
LP002116,Female,No,0,1,0.0,2378,0.0,46.0,360.0,1,Rural,0.0
|
||||
LP002119,Male,Yes,1,0,0.0,4554,1229.0,158.0,360.0,1,Urban,1.0
|
||||
LP002126,Male,Yes,3+,0,0.0,3173,0.0,74.0,360.0,1,Semiurban,1.0
|
||||
LP002128,Male,Yes,2,1,0.0,2583,2330.0,125.0,360.0,1,Rural,1.0
|
||||
LP002129,Male,Yes,0,1,0.0,2499,2458.0,160.0,360.0,1,Semiurban,1.0
|
||||
LP002130,Male,Yes,,0,0.0,3523,3230.0,152.0,360.0,0,Rural,0.0
|
||||
LP002131,Male,Yes,2,0,0.0,3083,2168.0,126.0,360.0,1,Urban,1.0
|
||||
LP002137,Male,Yes,0,1,0.0,6333,4583.0,259.0,360.0,0,Semiurban,1.0
|
||||
LP002138,Male,Yes,0,1,0.0,2625,6250.0,187.0,360.0,1,Rural,1.0
|
||||
LP002139,Male,Yes,0,1,0.0,9083,0.0,228.0,360.0,1,Semiurban,1.0
|
||||
LP002140,Male,No,0,1,0.0,8750,4167.0,308.0,360.0,1,Rural,0.0
|
||||
LP002141,Male,Yes,3+,1,0.0,2666,2083.0,95.0,360.0,1,Rural,1.0
|
||||
LP002142,Female,Yes,0,1,1.0,5500,0.0,105.0,360.0,0,Rural,0.0
|
||||
LP002143,Female,Yes,0,1,0.0,2423,505.0,130.0,360.0,1,Semiurban,1.0
|
||||
LP002144,Female,No,,1,0.0,3813,0.0,116.0,180.0,1,Urban,1.0
|
||||
LP002149,Male,Yes,2,1,0.0,8333,3167.0,165.0,360.0,1,Rural,1.0
|
||||
LP002151,Male,Yes,1,1,0.0,3875,0.0,67.0,360.0,1,Urban,0.0
|
||||
LP002158,Male,Yes,0,0,0.0,3000,1666.0,100.0,480.0,0,Urban,0.0
|
||||
LP002160,Male,Yes,3+,1,0.0,5167,3167.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP002161,Female,No,1,1,0.0,4723,0.0,81.0,360.0,1,Semiurban,0.0
|
||||
LP002170,Male,Yes,2,1,0.0,5000,3667.0,236.0,360.0,1,Semiurban,1.0
|
||||
LP002175,Male,Yes,0,1,0.0,4750,2333.0,130.0,360.0,1,Urban,1.0
|
||||
LP002178,Male,Yes,0,1,0.0,3013,3033.0,95.0,300.0,0,Urban,1.0
|
||||
LP002180,Male,No,0,1,1.0,6822,0.0,141.0,360.0,1,Rural,1.0
|
||||
LP002181,Male,No,0,0,0.0,6216,0.0,133.0,360.0,1,Rural,0.0
|
||||
LP002187,Male,No,0,1,0.0,2500,0.0,96.0,480.0,1,Semiurban,0.0
|
||||
LP002188,Male,No,0,1,0.0,5124,0.0,124.0,,0,Rural,0.0
|
||||
LP002190,Male,Yes,1,1,0.0,6325,0.0,175.0,360.0,1,Semiurban,1.0
|
||||
LP002191,Male,Yes,0,1,0.0,19730,5266.0,570.0,360.0,1,Rural,0.0
|
||||
LP002194,Female,No,0,1,1.0,15759,0.0,55.0,360.0,1,Semiurban,1.0
|
||||
LP002197,Male,Yes,2,1,0.0,5185,0.0,155.0,360.0,1,Semiurban,1.0
|
||||
LP002201,Male,Yes,2,1,1.0,9323,7873.0,380.0,300.0,1,Rural,1.0
|
||||
LP002205,Male,No,1,1,0.0,3062,1987.0,111.0,180.0,0,Urban,0.0
|
||||
LP002209,Female,No,0,1,0.0,2764,1459.0,110.0,360.0,1,Urban,1.0
|
||||
LP002211,Male,Yes,0,1,0.0,4817,923.0,120.0,180.0,1,Urban,1.0
|
||||
LP002219,Male,Yes,3+,1,0.0,8750,4996.0,130.0,360.0,1,Rural,1.0
|
||||
LP002223,Male,Yes,0,1,0.0,4310,0.0,130.0,360.0,0,Semiurban,1.0
|
||||
LP002224,Male,No,0,1,0.0,3069,0.0,71.0,480.0,1,Urban,0.0
|
||||
LP002225,Male,Yes,2,1,0.0,5391,0.0,130.0,360.0,1,Urban,1.0
|
||||
LP002226,Male,Yes,0,1,0.0,3333,2500.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP002229,Male,No,0,1,0.0,5941,4232.0,296.0,360.0,1,Semiurban,1.0
|
||||
LP002231,Female,No,0,1,0.0,6000,0.0,156.0,360.0,1,Urban,1.0
|
||||
LP002234,Male,No,0,1,1.0,7167,0.0,128.0,360.0,1,Urban,1.0
|
||||
LP002236,Male,Yes,2,1,0.0,4566,0.0,100.0,360.0,1,Urban,0.0
|
||||
LP002237,Male,No,1,1,0.0,3667,0.0,113.0,180.0,1,Urban,1.0
|
||||
LP002239,Male,No,0,0,0.0,2346,1600.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002243,Male,Yes,0,0,0.0,3010,3136.0,0.0,360.0,0,Urban,0.0
|
||||
LP002244,Male,Yes,0,1,0.0,2333,2417.0,136.0,360.0,1,Urban,1.0
|
||||
LP002250,Male,Yes,0,1,0.0,5488,0.0,125.0,360.0,1,Rural,1.0
|
||||
LP002255,Male,No,3+,1,0.0,9167,0.0,185.0,360.0,1,Rural,1.0
|
||||
LP002262,Male,Yes,3+,1,0.0,9504,0.0,275.0,360.0,1,Rural,1.0
|
||||
LP002263,Male,Yes,0,1,0.0,2583,2115.0,120.0,360.0,0,Urban,1.0
|
||||
LP002265,Male,Yes,2,0,0.0,1993,1625.0,113.0,180.0,1,Semiurban,1.0
|
||||
LP002266,Male,Yes,2,1,0.0,3100,1400.0,113.0,360.0,1,Urban,1.0
|
||||
LP002272,Male,Yes,2,1,0.0,3276,484.0,135.0,360.0,0,Semiurban,1.0
|
||||
LP002277,Female,No,0,1,0.0,3180,0.0,71.0,360.0,0,Urban,0.0
|
||||
LP002281,Male,Yes,0,1,0.0,3033,1459.0,95.0,360.0,1,Urban,1.0
|
||||
LP002284,Male,No,0,0,0.0,3902,1666.0,109.0,360.0,1,Rural,1.0
|
||||
LP002287,Female,No,0,1,0.0,1500,1800.0,103.0,360.0,0,Semiurban,0.0
|
||||
LP002288,Male,Yes,2,0,0.0,2889,0.0,45.0,180.0,0,Urban,0.0
|
||||
LP002296,Male,No,0,0,0.0,2755,0.0,65.0,300.0,1,Rural,0.0
|
||||
LP002297,Male,No,0,1,0.0,2500,20000.0,103.0,360.0,1,Semiurban,1.0
|
||||
LP002300,Female,No,0,0,0.0,1963,0.0,53.0,360.0,1,Semiurban,1.0
|
||||
LP002301,Female,No,0,1,1.0,7441,0.0,194.0,360.0,1,Rural,0.0
|
||||
LP002305,Female,No,0,1,0.0,4547,0.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP002308,Male,Yes,0,0,0.0,2167,2400.0,115.0,360.0,1,Urban,1.0
|
||||
LP002314,Female,No,0,0,0.0,2213,0.0,66.0,360.0,1,Rural,1.0
|
||||
LP002315,Male,Yes,1,1,0.0,8300,0.0,152.0,300.0,0,Semiurban,0.0
|
||||
LP002317,Male,Yes,3+,1,0.0,81000,0.0,360.0,360.0,0,Rural,0.0
|
||||
LP002318,Female,No,1,0,1.0,3867,0.0,62.0,360.0,1,Semiurban,0.0
|
||||
LP002319,Male,Yes,0,1,0.0,6256,0.0,160.0,360.0,0,Urban,1.0
|
||||
LP002328,Male,Yes,0,0,0.0,6096,0.0,218.0,360.0,0,Rural,0.0
|
||||
LP002332,Male,Yes,0,0,0.0,2253,2033.0,110.0,360.0,1,Rural,1.0
|
||||
LP002335,Female,Yes,0,0,0.0,2149,3237.0,178.0,360.0,0,Semiurban,0.0
|
||||
LP002337,Female,No,0,1,0.0,2995,0.0,60.0,360.0,1,Urban,1.0
|
||||
LP002341,Female,No,1,1,0.0,2600,0.0,160.0,360.0,1,Urban,0.0
|
||||
LP002342,Male,Yes,2,1,1.0,1600,20000.0,239.0,360.0,1,Urban,0.0
|
||||
LP002345,Male,Yes,0,1,0.0,1025,2773.0,112.0,360.0,1,Rural,1.0
|
||||
LP002347,Male,Yes,0,1,0.0,3246,1417.0,138.0,360.0,1,Semiurban,1.0
|
||||
LP002348,Male,Yes,0,1,0.0,5829,0.0,138.0,360.0,1,Rural,1.0
|
||||
LP002357,Female,No,0,0,0.0,2720,0.0,80.0,,0,Urban,0.0
|
||||
LP002361,Male,Yes,0,1,0.0,1820,1719.0,100.0,360.0,1,Urban,1.0
|
||||
LP002362,Male,Yes,1,1,0.0,7250,1667.0,110.0,,0,Urban,0.0
|
||||
LP002364,Male,Yes,0,1,0.0,14880,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP002366,Male,Yes,0,1,0.0,2666,4300.0,121.0,360.0,1,Rural,1.0
|
||||
LP002367,Female,No,1,0,0.0,4606,0.0,81.0,360.0,1,Rural,0.0
|
||||
LP002368,Male,Yes,2,1,0.0,5935,0.0,133.0,360.0,1,Semiurban,1.0
|
||||
LP002369,Male,Yes,0,1,0.0,2920,16.12000084,87.0,360.0,1,Rural,1.0
|
||||
LP002370,Male,No,0,0,0.0,2717,0.0,60.0,180.0,1,Urban,1.0
|
||||
LP002377,Female,No,1,1,1.0,8624,0.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP002379,Male,No,0,1,0.0,6500,0.0,105.0,360.0,0,Rural,0.0
|
||||
LP002386,Male,No,0,1,0.0,12876,0.0,405.0,360.0,1,Semiurban,1.0
|
||||
LP002387,Male,Yes,0,1,0.0,2425,2340.0,143.0,360.0,1,Semiurban,1.0
|
||||
LP002390,Male,No,0,1,0.0,3750,0.0,100.0,360.0,1,Urban,1.0
|
||||
LP002393,Female,,,1,0.0,10047,0.0,0.0,240.0,1,Semiurban,1.0
|
||||
LP002398,Male,No,0,1,0.0,1926,1851.0,50.0,360.0,1,Semiurban,1.0
|
||||
LP002401,Male,Yes,0,1,0.0,2213,1125.0,0.0,360.0,1,Urban,1.0
|
||||
LP002403,Male,No,0,1,1.0,10416,0.0,187.0,360.0,0,Urban,0.0
|
||||
LP002407,Female,Yes,0,0,1.0,7142,0.0,138.0,360.0,1,Rural,1.0
|
||||
LP002408,Male,No,0,1,0.0,3660,5064.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP002409,Male,Yes,0,1,0.0,7901,1833.0,180.0,360.0,1,Rural,1.0
|
||||
LP002418,Male,No,3+,0,0.0,4707,1993.0,148.0,360.0,1,Semiurban,1.0
|
||||
LP002422,Male,No,1,1,0.0,37719,0.0,152.0,360.0,1,Semiurban,1.0
|
||||
LP002424,Male,Yes,0,1,0.0,7333,8333.0,175.0,300.0,0,Rural,1.0
|
||||
LP002429,Male,Yes,1,1,1.0,3466,1210.0,130.0,360.0,1,Rural,1.0
|
||||
LP002434,Male,Yes,2,0,0.0,4652,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002435,Male,Yes,0,1,0.0,3539,1376.0,55.0,360.0,1,Rural,0.0
|
||||
LP002443,Male,Yes,2,1,0.0,3340,1710.0,150.0,360.0,0,Rural,0.0
|
||||
LP002444,Male,No,1,0,1.0,2769,1542.0,190.0,360.0,0,Semiurban,0.0
|
||||
LP002446,Male,Yes,2,0,0.0,2309,1255.0,125.0,360.0,0,Rural,0.0
|
||||
LP002447,Male,Yes,2,0,0.0,1958,1456.0,60.0,300.0,0,Urban,1.0
|
||||
LP002448,Male,Yes,0,1,0.0,3948,1733.0,149.0,360.0,0,Rural,0.0
|
||||
LP002449,Male,Yes,0,1,0.0,2483,2466.0,90.0,180.0,0,Rural,1.0
|
||||
LP002453,Male,No,0,1,1.0,7085,0.0,84.0,360.0,1,Semiurban,1.0
|
||||
LP002455,Male,Yes,2,1,0.0,3859,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP002459,Male,Yes,0,1,0.0,4301,0.0,118.0,360.0,1,Urban,1.0
|
||||
LP002467,Male,Yes,0,1,0.0,3708,2569.0,173.0,360.0,1,Urban,0.0
|
||||
LP002472,Male,No,2,1,0.0,4354,0.0,136.0,360.0,1,Rural,1.0
|
||||
LP002473,Male,Yes,0,1,0.0,8334,0.0,160.0,360.0,1,Semiurban,0.0
|
||||
LP002478,,Yes,0,1,1.0,2083,4083.0,160.0,360.0,0,Semiurban,1.0
|
||||
LP002484,Male,Yes,3+,1,0.0,7740,0.0,128.0,180.0,1,Urban,1.0
|
||||
LP002487,Male,Yes,0,1,0.0,3015,2188.0,153.0,360.0,1,Rural,1.0
|
||||
LP002489,Female,No,1,0,0.0,5191,0.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002493,Male,No,0,1,0.0,4166,0.0,98.0,360.0,0,Semiurban,0.0
|
||||
LP002494,Male,No,0,1,0.0,6000,0.0,140.0,360.0,1,Rural,1.0
|
||||
LP002500,Male,Yes,3+,0,0.0,2947,1664.0,70.0,180.0,0,Urban,0.0
|
||||
LP002501,,Yes,0,1,0.0,16692,0.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP002502,Female,Yes,2,0,0.0,210,2917.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP002505,Male,Yes,0,1,0.0,4333,2451.0,110.0,360.0,1,Urban,0.0
|
||||
LP002515,Male,Yes,1,1,1.0,3450,2079.0,162.0,360.0,1,Semiurban,1.0
|
||||
LP002517,Male,Yes,1,0,0.0,2653,1500.0,113.0,180.0,0,Rural,0.0
|
||||
LP002519,Male,Yes,3+,1,0.0,4691,0.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP002522,Female,No,0,1,1.0,2500,0.0,93.0,360.0,0,Urban,1.0
|
||||
LP002524,Male,No,2,1,0.0,5532,4648.0,162.0,360.0,1,Rural,1.0
|
||||
LP002527,Male,Yes,2,1,1.0,16525,1014.0,150.0,360.0,1,Rural,1.0
|
||||
LP002529,Male,Yes,2,1,0.0,6700,1750.0,230.0,300.0,1,Semiurban,1.0
|
||||
LP002530,,Yes,2,1,0.0,2873,1872.0,132.0,360.0,0,Semiurban,0.0
|
||||
LP002531,Male,Yes,1,1,1.0,16667,2250.0,86.0,360.0,1,Semiurban,1.0
|
||||
LP002533,Male,Yes,2,1,0.0,2947,1603.0,0.0,360.0,1,Urban,0.0
|
||||
LP002534,Female,No,0,0,0.0,4350,0.0,154.0,360.0,1,Rural,1.0
|
||||
LP002536,Male,Yes,3+,0,0.0,3095,0.0,113.0,360.0,1,Rural,1.0
|
||||
LP002537,Male,Yes,0,1,0.0,2083,3150.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP002541,Male,Yes,0,1,0.0,10833,0.0,234.0,360.0,1,Semiurban,1.0
|
||||
LP002543,Male,Yes,2,1,0.0,8333,0.0,246.0,360.0,1,Semiurban,1.0
|
||||
LP002544,Male,Yes,1,0,0.0,1958,2436.0,131.0,360.0,1,Rural,1.0
|
||||
LP002545,Male,No,2,1,0.0,3547,0.0,80.0,360.0,0,Rural,0.0
|
||||
LP002547,Male,Yes,1,1,0.0,18333,0.0,500.0,360.0,1,Urban,0.0
|
||||
LP002555,Male,Yes,2,1,1.0,4583,2083.0,160.0,360.0,1,Semiurban,1.0
|
||||
LP002556,Male,No,0,1,0.0,2435,0.0,75.0,360.0,1,Urban,0.0
|
||||
LP002560,Male,No,0,0,0.0,2699,2785.0,96.0,360.0,0,Semiurban,1.0
|
||||
LP002562,Male,Yes,1,0,0.0,5333,1131.0,186.0,360.0,0,Urban,1.0
|
||||
LP002571,Male,No,0,0,0.0,3691,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002582,Female,No,0,0,1.0,17263,0.0,225.0,360.0,1,Semiurban,1.0
|
||||
LP002585,Male,Yes,0,1,0.0,3597,2157.0,119.0,360.0,0,Rural,0.0
|
||||
LP002586,Female,Yes,1,1,0.0,3326,913.0,105.0,84.0,1,Semiurban,1.0
|
||||
LP002587,Male,Yes,0,0,0.0,2600,1700.0,107.0,360.0,1,Rural,1.0
|
||||
LP002588,Male,Yes,0,1,0.0,4625,2857.0,111.0,12.0,0,Urban,1.0
|
||||
LP002600,Male,Yes,1,1,1.0,2895,0.0,95.0,360.0,1,Semiurban,1.0
|
||||
LP002602,Male,No,0,1,0.0,6283,4416.0,209.0,360.0,0,Rural,0.0
|
||||
LP002603,Female,No,0,1,0.0,645,3683.0,113.0,480.0,1,Rural,1.0
|
||||
LP002606,Female,No,0,1,0.0,3159,0.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP002615,Male,Yes,2,1,0.0,4865,5624.0,208.0,360.0,1,Semiurban,1.0
|
||||
LP002618,Male,Yes,1,0,0.0,4050,5302.0,138.0,360.0,0,Rural,0.0
|
||||
LP002619,Male,Yes,0,0,0.0,3814,1483.0,124.0,300.0,1,Semiurban,1.0
|
||||
LP002622,Male,Yes,2,1,0.0,3510,4416.0,243.0,360.0,1,Rural,1.0
|
||||
LP002624,Male,Yes,0,1,0.0,20833,6667.0,480.0,360.0,0,Urban,1.0
|
||||
LP002625,,No,0,1,0.0,3583,0.0,96.0,360.0,1,Urban,0.0
|
||||
LP002626,Male,Yes,0,1,1.0,2479,3013.0,188.0,360.0,1,Urban,1.0
|
||||
LP002634,Female,No,1,1,0.0,13262,0.0,40.0,360.0,1,Urban,1.0
|
||||
LP002637,Male,No,0,0,0.0,3598,1287.0,100.0,360.0,1,Rural,0.0
|
||||
LP002640,Male,Yes,1,1,0.0,6065,2004.0,250.0,360.0,1,Semiurban,1.0
|
||||
LP002643,Male,Yes,2,1,0.0,3283,2035.0,148.0,360.0,1,Urban,1.0
|
||||
LP002648,Male,Yes,0,1,0.0,2130,6666.0,70.0,180.0,1,Semiurban,0.0
|
||||
LP002652,Male,No,0,1,0.0,5815,3666.0,311.0,360.0,1,Rural,0.0
|
||||
LP002659,Male,Yes,3+,1,0.0,3466,3428.0,150.0,360.0,1,Rural,1.0
|
||||
LP002670,Female,Yes,2,1,0.0,2031,1632.0,113.0,480.0,1,Semiurban,1.0
|
||||
LP002682,Male,Yes,,0,0.0,3074,1800.0,123.0,360.0,0,Semiurban,0.0
|
||||
LP002683,Male,No,0,1,0.0,4683,1915.0,185.0,360.0,1,Semiurban,0.0
|
||||
LP002684,Female,No,0,0,0.0,3400,0.0,95.0,360.0,1,Rural,0.0
|
||||
LP002689,Male,Yes,2,0,0.0,2192,1742.0,45.0,360.0,1,Semiurban,1.0
|
||||
LP002690,Male,No,0,1,0.0,2500,0.0,55.0,360.0,1,Semiurban,1.0
|
||||
LP002692,Male,Yes,3+,1,1.0,5677,1424.0,100.0,360.0,1,Rural,1.0
|
||||
LP002693,Male,Yes,2,1,1.0,7948,7166.0,480.0,360.0,1,Rural,1.0
|
||||
LP002697,Male,No,0,1,0.0,4680,2087.0,0.0,360.0,1,Semiurban,0.0
|
||||
LP002699,Male,Yes,2,1,1.0,17500,0.0,400.0,360.0,1,Rural,1.0
|
||||
LP002705,Male,Yes,0,1,0.0,3775,0.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP002706,Male,Yes,1,0,0.0,5285,1430.0,161.0,360.0,0,Semiurban,1.0
|
||||
LP002714,Male,No,1,0,0.0,2679,1302.0,94.0,360.0,1,Semiurban,1.0
|
||||
LP002716,Male,No,0,0,0.0,6783,0.0,130.0,360.0,1,Semiurban,1.0
|
||||
LP002717,Male,Yes,0,1,0.0,1025,5500.0,216.0,360.0,0,Rural,1.0
|
||||
LP002720,Male,Yes,3+,1,0.0,4281,0.0,100.0,360.0,1,Urban,1.0
|
||||
LP002723,Male,No,2,1,0.0,3588,0.0,110.0,360.0,0,Rural,0.0
|
||||
LP002729,Male,No,1,1,0.0,11250,0.0,196.0,360.0,0,Semiurban,0.0
|
||||
LP002731,Female,No,0,0,1.0,18165,0.0,125.0,360.0,1,Urban,1.0
|
||||
LP002732,Male,No,0,0,0.0,2550,2042.0,126.0,360.0,1,Rural,1.0
|
||||
LP002734,Male,Yes,0,1,0.0,6133,3906.0,324.0,360.0,1,Urban,1.0
|
||||
LP002738,Male,No,2,1,0.0,3617,0.0,107.0,360.0,1,Semiurban,1.0
|
||||
LP002739,Male,Yes,0,0,0.0,2917,536.0,66.0,360.0,1,Rural,0.0
|
||||
LP002740,Male,Yes,3+,1,0.0,6417,0.0,157.0,180.0,1,Rural,1.0
|
||||
LP002741,Female,Yes,1,1,0.0,4608,2845.0,140.0,180.0,1,Semiurban,1.0
|
||||
LP002743,Female,No,0,1,0.0,2138,0.0,99.0,360.0,0,Semiurban,0.0
|
||||
LP002753,Female,No,1,1,0.0,3652,0.0,95.0,360.0,1,Semiurban,1.0
|
||||
LP002755,Male,Yes,1,0,0.0,2239,2524.0,128.0,360.0,1,Urban,1.0
|
||||
LP002757,Female,Yes,0,0,0.0,3017,663.0,102.0,360.0,0,Semiurban,1.0
|
||||
LP002767,Male,Yes,0,1,0.0,2768,1950.0,155.0,360.0,1,Rural,1.0
|
||||
LP002768,Male,No,0,0,0.0,3358,0.0,80.0,36.0,1,Semiurban,0.0
|
||||
LP002772,Male,No,0,1,0.0,2526,1783.0,145.0,360.0,1,Rural,1.0
|
||||
LP002776,Female,No,0,1,0.0,5000,0.0,103.0,360.0,0,Semiurban,0.0
|
||||
LP002777,Male,Yes,0,1,0.0,2785,2016.0,110.0,360.0,1,Rural,1.0
|
||||
LP002778,Male,Yes,2,1,1.0,6633,0.0,0.0,360.0,0,Rural,0.0
|
||||
LP002784,Male,Yes,1,0,0.0,2492,2375.0,0.0,360.0,1,Rural,1.0
|
||||
LP002785,Male,Yes,1,1,0.0,3333,3250.0,158.0,360.0,1,Urban,1.0
|
||||
LP002788,Male,Yes,0,0,0.0,2454,2333.0,181.0,360.0,0,Urban,0.0
|
||||
LP002789,Male,Yes,0,1,0.0,3593,4266.0,132.0,180.0,0,Rural,0.0
|
||||
LP002792,Male,Yes,1,1,0.0,5468,1032.0,26.0,360.0,1,Semiurban,1.0
|
||||
LP002794,Female,No,0,1,0.0,2667,1625.0,84.0,360.0,0,Urban,1.0
|
||||
LP002795,Male,Yes,3+,1,1.0,10139,0.0,260.0,360.0,1,Semiurban,1.0
|
||||
LP002798,Male,Yes,0,1,0.0,3887,2669.0,162.0,360.0,1,Semiurban,1.0
|
||||
LP002804,Female,Yes,0,1,0.0,4180,2306.0,182.0,360.0,1,Semiurban,1.0
|
||||
LP002807,Male,Yes,2,0,0.0,3675,242.0,108.0,360.0,1,Semiurban,1.0
|
||||
LP002813,Female,Yes,1,1,1.0,19484,0.0,600.0,360.0,1,Semiurban,1.0
|
||||
LP002820,Male,Yes,0,1,0.0,5923,2054.0,211.0,360.0,1,Rural,1.0
|
||||
LP002821,Male,No,0,0,1.0,5800,0.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002832,Male,Yes,2,1,0.0,8799,0.0,258.0,360.0,0,Urban,0.0
|
||||
LP002833,Male,Yes,0,0,0.0,4467,0.0,120.0,360.0,0,Rural,1.0
|
||||
LP002836,Male,No,0,1,0.0,3333,0.0,70.0,360.0,1,Urban,1.0
|
||||
LP002837,Male,Yes,3+,1,0.0,3400,2500.0,123.0,360.0,0,Rural,0.0
|
||||
LP002840,Female,No,0,1,0.0,2378,0.0,9.0,360.0,1,Urban,0.0
|
||||
LP002841,Male,Yes,0,1,0.0,3166,2064.0,104.0,360.0,0,Urban,0.0
|
||||
LP002842,Male,Yes,1,1,0.0,3417,1750.0,186.0,360.0,1,Urban,1.0
|
||||
LP002847,Male,Yes,,1,0.0,5116,1451.0,165.0,360.0,0,Urban,0.0
|
||||
LP002855,Male,Yes,2,1,0.0,16666,0.0,275.0,360.0,1,Urban,1.0
|
||||
LP002862,Male,Yes,2,0,0.0,6125,1625.0,187.0,480.0,1,Semiurban,0.0
|
||||
LP002863,Male,Yes,3+,1,0.0,6406,0.0,150.0,360.0,1,Semiurban,0.0
|
||||
LP002868,Male,Yes,2,1,0.0,3159,461.0,108.0,84.0,1,Urban,1.0
|
||||
LP002872,,Yes,0,1,0.0,3087,2210.0,136.0,360.0,0,Semiurban,0.0
|
||||
LP002874,Male,No,0,1,0.0,3229,2739.0,110.0,360.0,1,Urban,1.0
|
||||
LP002877,Male,Yes,1,1,0.0,1782,2232.0,107.0,360.0,1,Rural,1.0
|
||||
LP002888,Male,No,0,1,0.0,3182,2917.0,161.0,360.0,1,Urban,1.0
|
||||
LP002892,Male,Yes,2,1,0.0,6540,0.0,205.0,360.0,1,Semiurban,1.0
|
||||
LP002893,Male,No,0,1,0.0,1836,33837.0,90.0,360.0,1,Urban,0.0
|
||||
LP002894,Female,Yes,0,1,0.0,3166,0.0,36.0,360.0,1,Semiurban,1.0
|
||||
LP002898,Male,Yes,1,1,0.0,1880,0.0,61.0,360.0,0,Rural,0.0
|
||||
LP002911,Male,Yes,1,1,0.0,2787,1917.0,146.0,360.0,0,Rural,0.0
|
||||
LP002912,Male,Yes,1,1,0.0,4283,3000.0,172.0,84.0,1,Rural,0.0
|
||||
LP002916,Male,Yes,0,1,0.0,2297,1522.0,104.0,360.0,1,Urban,1.0
|
||||
LP002917,Female,No,0,0,0.0,2165,0.0,70.0,360.0,1,Semiurban,1.0
|
||||
LP002925,,No,0,1,0.0,4750,0.0,94.0,360.0,1,Semiurban,1.0
|
||||
LP002926,Male,Yes,2,1,1.0,2726,0.0,106.0,360.0,0,Semiurban,0.0
|
||||
LP002928,Male,Yes,0,1,0.0,3000,3416.0,56.0,180.0,1,Semiurban,1.0
|
||||
LP002931,Male,Yes,2,1,1.0,6000,0.0,205.0,240.0,1,Semiurban,0.0
|
||||
LP002933,,No,3+,1,1.0,9357,0.0,292.0,360.0,1,Semiurban,1.0
|
||||
LP002936,Male,Yes,0,1,0.0,3859,3300.0,142.0,180.0,1,Rural,1.0
|
||||
LP002938,Male,Yes,0,1,1.0,16120,0.0,260.0,360.0,1,Urban,1.0
|
||||
LP002940,Male,No,0,0,0.0,3833,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002941,Male,Yes,2,0,1.0,6383,1000.0,187.0,360.0,1,Rural,0.0
|
||||
LP002943,Male,No,,1,0.0,2987,0.0,88.0,360.0,0,Semiurban,0.0
|
||||
LP002945,Male,Yes,0,1,1.0,9963,0.0,180.0,360.0,1,Rural,1.0
|
||||
LP002948,Male,Yes,2,1,0.0,5780,0.0,192.0,360.0,1,Urban,1.0
|
||||
LP002949,Female,No,3+,1,0.0,416,41667.0,350.0,180.0,0,Urban,0.0
|
||||
LP002950,Male,Yes,0,0,0.0,2894,2792.0,155.0,360.0,1,Rural,1.0
|
||||
LP002953,Male,Yes,3+,1,0.0,5703,0.0,128.0,360.0,1,Urban,1.0
|
||||
LP002958,Male,No,0,1,0.0,3676,4301.0,172.0,360.0,1,Rural,1.0
|
||||
LP002959,Female,Yes,1,1,0.0,12000,0.0,496.0,360.0,1,Semiurban,1.0
|
||||
LP002960,Male,Yes,0,0,0.0,2400,3800.0,0.0,180.0,1,Urban,0.0
|
||||
LP002961,Male,Yes,1,1,0.0,3400,2500.0,173.0,360.0,1,Semiurban,1.0
|
||||
LP002964,Male,Yes,2,0,0.0,3987,1411.0,157.0,360.0,1,Rural,1.0
|
||||
LP002974,Male,Yes,0,1,0.0,3232,1950.0,108.0,360.0,1,Rural,1.0
|
||||
LP002978,Female,No,0,1,0.0,2900,0.0,71.0,360.0,1,Rural,1.0
|
||||
LP002979,Male,Yes,3+,1,0.0,4106,0.0,40.0,180.0,1,Rural,1.0
|
||||
LP002983,Male,Yes,1,1,0.0,8072,240.0,253.0,360.0,1,Urban,1.0
|
||||
LP002984,Male,Yes,2,1,0.0,7583,0.0,187.0,360.0,1,Urban,1.0
|
||||
LP002990,Female,No,0,1,1.0,4583,0.0,133.0,360.0,0,Semiurban,0.0
|
||||
|
BIN
abanin_daniil_lab_4/result.png
Normal file
|
After Width: | Height: | Size: 92 KiB |
38
abanin_daniil_lab_5/README.md
Normal file
@@ -0,0 +1,38 @@
|
||||
## Лабораторная работа №5
|
||||
|
||||
### Ранжирование признаков
|
||||
|
||||
## ПИбд-41 Абанин Даниил
|
||||
|
||||
### Как запустить лабораторную работу:
|
||||
|
||||
* установить python, pandas, matplotlib, sklearn
|
||||
* запустить проект (стартовая точка lab4)
|
||||
|
||||
### Какие технологии использовались:
|
||||
|
||||
* Язык программирования `Python`, библиотеки pandas, matplotlib, sklearn
|
||||
* Среда разработки `PyCharm`
|
||||
|
||||
### Что делает лабораторная работа:
|
||||
Программа решает задачу регрессии, используя полиномиальную регрессию.
|
||||
Цель - предсказать сумму займа (LoanAmount), используя имеющиеся признаки: ApplicantIncome - доход заявителя, Credit_History - статус соответствия кредитной истории стандартам банка,
|
||||
Education - наличие образования, Married - заявитель женат/замужем (Да/Нет), Self_Employed - самозанятый (Да/Нет)
|
||||
|
||||
### Тест
|
||||
Зелёные маркеры на графике - тестовые результаты
|
||||
Красные маркеры на графике - предсказанные результаты
|
||||
|
||||
При небольшом объёме тестовых данных, алгоритм показывает неплохие результаты обучения
|
||||
|
||||

|
||||
|
||||

|
||||
|
||||
Но при увеличении объёма данных, алгоритм теряет свою эффективность
|
||||
|
||||

|
||||
|
||||

|
||||
|
||||
Вывод: На малых объёмах данных алгоритм показывает свою эффективность. Но при большем объём стоит использовать другие методы для данного набора информации
|
||||
BIN
abanin_daniil_lab_5/grade_1.png
Normal file
|
After Width: | Height: | Size: 13 KiB |
BIN
abanin_daniil_lab_5/grade_2.png
Normal file
|
After Width: | Height: | Size: 10 KiB |
33
abanin_daniil_lab_5/lab5.py
Normal file
@@ -0,0 +1,33 @@
|
||||
from matplotlib import pyplot as plt
|
||||
from sklearn import metrics
|
||||
from sklearn.linear_model import LinearRegression
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.preprocessing import PolynomialFeatures
|
||||
from sklearn.pipeline import Pipeline
|
||||
import pandas as pd
|
||||
|
||||
|
||||
def start():
|
||||
data = pd.read_csv('loan.csv')
|
||||
x = data[['ApplicantIncome', 'Credit_History', 'Education', 'Married', 'Self_Employed']]
|
||||
y = data[['LoanAmount']]
|
||||
|
||||
x_train, x_test, y_train, y_test = train_test_split(x, y, test_size=0.1, random_state=42)
|
||||
|
||||
poly = Pipeline([('poly', PolynomialFeatures(degree=3)),
|
||||
('linear', LinearRegression())])
|
||||
poly.fit(x_train, y_train)
|
||||
|
||||
y_predicted = poly.predict(x_test)
|
||||
|
||||
print('Оценка обучения:')
|
||||
print(metrics.r2_score(y_test, y_predicted))
|
||||
|
||||
plt.figure(1, figsize=(16, 9))
|
||||
plt.title('Сравнение результатов обучения')
|
||||
plt.scatter(x=[i for i in range(len(x_test))], y=y_test, c='green', s=5)
|
||||
plt.scatter(x=[i for i in range(len(x_test))], y=y_predicted, c='red', s=5)
|
||||
plt.show()
|
||||
|
||||
|
||||
start()
|
||||
615
abanin_daniil_lab_5/loan.csv
Normal file
@@ -0,0 +1,615 @@
|
||||
Loan_ID,Gender,Married,Dependents,Education,Self_Employed,ApplicantIncome,CoapplicantIncome,LoanAmount,Loan_Amount_Term,Credit_History,Property_Area,Loan_Status
|
||||
LP001002,Male,0.0,0,1,0.0,5849,0.0,360.0,1.0,0,Y,0.0
|
||||
LP001003,Male,1.0,1,1,0.0,4583,1508.0,128.0,360.0,1,Rural,0.0
|
||||
LP001005,Male,1.0,0,1,1.0,3000,0.0,66.0,360.0,1,Urban,1.0
|
||||
LP001006,Male,1.0,0,0,0.0,2583,2358.0,120.0,360.0,1,Urban,1.0
|
||||
LP001008,Male,0.0,0,1,0.0,6000,0.0,141.0,360.0,1,Urban,1.0
|
||||
LP001011,Male,1.0,2,1,1.0,5417,4196.0,267.0,360.0,1,Urban,1.0
|
||||
LP001013,Male,1.0,0,0,0.0,2333,1516.0,95.0,360.0,1,Urban,1.0
|
||||
LP001014,Male,1.0,3+,1,0.0,3036,2504.0,158.0,360.0,0,Semiurban,0.0
|
||||
LP001018,Male,1.0,2,1,0.0,4006,1526.0,168.0,360.0,1,Urban,1.0
|
||||
LP001020,Male,1.0,1,1,0.0,12841,10968.0,349.0,360.0,1,Semiurban,0.0
|
||||
LP001024,Male,1.0,2,1,0.0,3200,700.0,70.0,360.0,1,Urban,1.0
|
||||
LP001027,Male,1.0,2,1,0.0,2500,1840.0,109.0,360.0,1,Urban,1.0
|
||||
LP001028,Male,1.0,2,1,0.0,3073,8106.0,200.0,360.0,1,Urban,1.0
|
||||
LP001029,Male,0.0,0,1,0.0,1853,2840.0,114.0,360.0,1,Rural,0.0
|
||||
LP001030,Male,1.0,2,1,0.0,1299,1086.0,17.0,120.0,1,Urban,1.0
|
||||
LP001032,Male,0.0,0,1,0.0,4950,0.0,125.0,360.0,1,Urban,1.0
|
||||
LP001034,Male,0.0,1,0,0.0,3596,0.0,100.0,240.0,0,Urban,1.0
|
||||
LP001036,Female,0.0,0,1,0.0,3510,0.0,76.0,360.0,0,Urban,0.0
|
||||
LP001038,Male,1.0,0,0,0.0,4887,0.0,133.0,360.0,1,Rural,0.0
|
||||
LP001041,Male,1.0,0,1,0.0,2600,3500.0,115.0,,1,Urban,1.0
|
||||
LP001043,Male,1.0,0,0,0.0,7660,0.0,104.0,360.0,0,Urban,0.0
|
||||
LP001046,Male,1.0,1,1,0.0,5955,5625.0,315.0,360.0,1,Urban,1.0
|
||||
LP001047,Male,1.0,0,0,0.0,2600,1911.0,116.0,360.0,0,Semiurban,0.0
|
||||
LP001050,,1.0,2,0,0.0,3365,1917.0,112.0,360.0,0,Rural,0.0
|
||||
LP001052,Male,1.0,1,1,0.0,3717,2925.0,151.0,360.0,0,Semiurban,0.0
|
||||
LP001066,Male,1.0,0,1,1.0,9560,0.0,191.0,360.0,1,Semiurban,1.0
|
||||
LP001068,Male,1.0,0,1,0.0,2799,2253.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001073,Male,1.0,2,0,0.0,4226,1040.0,110.0,360.0,1,Urban,1.0
|
||||
LP001086,Male,0.0,0,0,0.0,1442,0.0,35.0,360.0,1,Urban,0.0
|
||||
LP001087,Female,0.0,2,1,0.0,3750,2083.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001091,Male,1.0,1,1,0.0,4166,3369.0,201.0,360.0,0,Urban,0.0
|
||||
LP001095,Male,0.0,0,1,0.0,3167,0.0,74.0,360.0,1,Urban,0.0
|
||||
LP001097,Male,0.0,1,1,1.0,4692,0.0,106.0,360.0,1,Rural,0.0
|
||||
LP001098,Male,1.0,0,1,0.0,3500,1667.0,114.0,360.0,1,Semiurban,1.0
|
||||
LP001100,Male,0.0,3+,1,0.0,12500,3000.0,320.0,360.0,1,Rural,0.0
|
||||
LP001106,Male,1.0,0,1,0.0,2275,2067.0,0.0,360.0,1,Urban,1.0
|
||||
LP001109,Male,1.0,0,1,0.0,1828,1330.0,100.0,,0,Urban,0.0
|
||||
LP001112,Female,1.0,0,1,0.0,3667,1459.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001114,Male,0.0,0,1,0.0,4166,7210.0,184.0,360.0,1,Urban,1.0
|
||||
LP001116,Male,0.0,0,0,0.0,3748,1668.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP001119,Male,0.0,0,1,0.0,3600,0.0,80.0,360.0,1,Urban,0.0
|
||||
LP001120,Male,0.0,0,1,0.0,1800,1213.0,47.0,360.0,1,Urban,1.0
|
||||
LP001123,Male,1.0,0,1,0.0,2400,0.0,75.0,360.0,0,Urban,1.0
|
||||
LP001131,Male,1.0,0,1,0.0,3941,2336.0,134.0,360.0,1,Semiurban,1.0
|
||||
LP001136,Male,1.0,0,0,1.0,4695,0.0,96.0,,1,Urban,1.0
|
||||
LP001137,Female,0.0,0,1,0.0,3410,0.0,88.0,,1,Urban,1.0
|
||||
LP001138,Male,1.0,1,1,0.0,5649,0.0,44.0,360.0,1,Urban,1.0
|
||||
LP001144,Male,1.0,0,1,0.0,5821,0.0,144.0,360.0,1,Urban,1.0
|
||||
LP001146,Female,1.0,0,1,0.0,2645,3440.0,120.0,360.0,0,Urban,0.0
|
||||
LP001151,Female,0.0,0,1,0.0,4000,2275.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001155,Female,1.0,0,0,0.0,1928,1644.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001157,Female,0.0,0,1,0.0,3086,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001164,Female,0.0,0,1,0.0,4230,0.0,112.0,360.0,1,Semiurban,0.0
|
||||
LP001179,Male,1.0,2,1,0.0,4616,0.0,134.0,360.0,1,Urban,0.0
|
||||
LP001186,Female,1.0,1,1,1.0,11500,0.0,286.0,360.0,0,Urban,0.0
|
||||
LP001194,Male,1.0,2,1,0.0,2708,1167.0,97.0,360.0,1,Semiurban,1.0
|
||||
LP001195,Male,1.0,0,1,0.0,2132,1591.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP001197,Male,1.0,0,1,0.0,3366,2200.0,135.0,360.0,1,Rural,0.0
|
||||
LP001198,Male,1.0,1,1,0.0,8080,2250.0,180.0,360.0,1,Urban,1.0
|
||||
LP001199,Male,1.0,2,0,0.0,3357,2859.0,144.0,360.0,1,Urban,1.0
|
||||
LP001205,Male,1.0,0,1,0.0,2500,3796.0,120.0,360.0,1,Urban,1.0
|
||||
LP001206,Male,1.0,3+,1,0.0,3029,0.0,99.0,360.0,1,Urban,1.0
|
||||
LP001207,Male,1.0,0,0,1.0,2609,3449.0,165.0,180.0,0,Rural,0.0
|
||||
LP001213,Male,1.0,1,1,0.0,4945,0.0,0.0,360.0,0,Rural,0.0
|
||||
LP001222,Female,0.0,0,1,0.0,4166,0.0,116.0,360.0,0,Semiurban,0.0
|
||||
LP001225,Male,1.0,0,1,0.0,5726,4595.0,258.0,360.0,1,Semiurban,0.0
|
||||
LP001228,Male,0.0,0,0,0.0,3200,2254.0,126.0,180.0,0,Urban,0.0
|
||||
LP001233,Male,1.0,1,1,0.0,10750,0.0,312.0,360.0,1,Urban,1.0
|
||||
LP001238,Male,1.0,3+,0,1.0,7100,0.0,125.0,60.0,1,Urban,1.0
|
||||
LP001241,Female,0.0,0,1,0.0,4300,0.0,136.0,360.0,0,Semiurban,0.0
|
||||
LP001243,Male,1.0,0,1,0.0,3208,3066.0,172.0,360.0,1,Urban,1.0
|
||||
LP001245,Male,1.0,2,0,1.0,1875,1875.0,97.0,360.0,1,Semiurban,1.0
|
||||
LP001248,Male,0.0,0,1,0.0,3500,0.0,81.0,300.0,1,Semiurban,1.0
|
||||
LP001250,Male,1.0,3+,0,0.0,4755,0.0,95.0,,0,Semiurban,0.0
|
||||
LP001253,Male,1.0,3+,1,1.0,5266,1774.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP001255,Male,0.0,0,1,0.0,3750,0.0,113.0,480.0,1,Urban,0.0
|
||||
LP001256,Male,0.0,0,1,0.0,3750,4750.0,176.0,360.0,1,Urban,0.0
|
||||
LP001259,Male,1.0,1,1,1.0,1000,3022.0,110.0,360.0,1,Urban,0.0
|
||||
LP001263,Male,1.0,3+,1,0.0,3167,4000.0,180.0,300.0,0,Semiurban,0.0
|
||||
LP001264,Male,1.0,3+,0,1.0,3333,2166.0,130.0,360.0,0,Semiurban,1.0
|
||||
LP001265,Female,0.0,0,1,0.0,3846,0.0,111.0,360.0,1,Semiurban,1.0
|
||||
LP001266,Male,1.0,1,1,1.0,2395,0.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001267,Female,1.0,2,1,0.0,1378,1881.0,167.0,360.0,1,Urban,0.0
|
||||
LP001273,Male,1.0,0,1,0.0,6000,2250.0,265.0,360.0,0,Semiurban,0.0
|
||||
LP001275,Male,1.0,1,1,0.0,3988,0.0,50.0,240.0,1,Urban,1.0
|
||||
LP001279,Male,0.0,0,1,0.0,2366,2531.0,136.0,360.0,1,Semiurban,1.0
|
||||
LP001280,Male,1.0,2,0,0.0,3333,2000.0,99.0,360.0,0,Semiurban,1.0
|
||||
LP001282,Male,1.0,0,1,0.0,2500,2118.0,104.0,360.0,1,Semiurban,1.0
|
||||
LP001289,Male,0.0,0,1,0.0,8566,0.0,210.0,360.0,1,Urban,1.0
|
||||
LP001310,Male,1.0,0,1,0.0,5695,4167.0,175.0,360.0,1,Semiurban,1.0
|
||||
LP001316,Male,1.0,0,1,0.0,2958,2900.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001318,Male,1.0,2,1,0.0,6250,5654.0,188.0,180.0,1,Semiurban,1.0
|
||||
LP001319,Male,1.0,2,0,0.0,3273,1820.0,81.0,360.0,1,Urban,1.0
|
||||
LP001322,Male,0.0,0,1,0.0,4133,0.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001325,Male,0.0,0,0,0.0,3620,0.0,25.0,120.0,1,Semiurban,1.0
|
||||
LP001326,Male,0.0,0,1,0.0,6782,0.0,0.0,360.0,0,Urban,0.0
|
||||
LP001327,Female,1.0,0,1,0.0,2484,2302.0,137.0,360.0,1,Semiurban,1.0
|
||||
LP001333,Male,1.0,0,1,0.0,1977,997.0,50.0,360.0,1,Semiurban,1.0
|
||||
LP001334,Male,1.0,0,0,0.0,4188,0.0,115.0,180.0,1,Semiurban,1.0
|
||||
LP001343,Male,1.0,0,1,0.0,1759,3541.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001345,Male,1.0,2,0,0.0,4288,3263.0,133.0,180.0,1,Urban,1.0
|
||||
LP001349,Male,0.0,0,1,0.0,4843,3806.0,151.0,360.0,1,Semiurban,1.0
|
||||
LP001350,Male,1.0,,1,0.0,13650,0.0,0.0,360.0,1,Urban,1.0
|
||||
LP001356,Male,1.0,0,1,0.0,4652,3583.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001357,Male,0.0,,1,0.0,3816,754.0,160.0,360.0,1,Urban,1.0
|
||||
LP001367,Male,1.0,1,1,0.0,3052,1030.0,100.0,360.0,1,Urban,1.0
|
||||
LP001369,Male,1.0,2,1,0.0,11417,1126.0,225.0,360.0,1,Urban,1.0
|
||||
LP001370,Male,0.0,0,0,0.0,7333,0.0,120.0,360.0,1,Rural,0.0
|
||||
LP001379,Male,1.0,2,1,0.0,3800,3600.0,216.0,360.0,0,Urban,0.0
|
||||
LP001384,Male,1.0,3+,0,0.0,2071,754.0,94.0,480.0,1,Semiurban,1.0
|
||||
LP001385,Male,0.0,0,1,0.0,5316,0.0,136.0,360.0,1,Urban,1.0
|
||||
LP001387,Female,1.0,0,1,0.0,2929,2333.0,139.0,360.0,1,Semiurban,1.0
|
||||
LP001391,Male,1.0,0,0,0.0,3572,4114.0,152.0,,0,Rural,0.0
|
||||
LP001392,Female,0.0,1,1,1.0,7451,0.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001398,Male,0.0,0,1,0.0,5050,0.0,118.0,360.0,1,Semiurban,1.0
|
||||
LP001401,Male,1.0,1,1,0.0,14583,0.0,185.0,180.0,1,Rural,1.0
|
||||
LP001404,Female,1.0,0,1,0.0,3167,2283.0,154.0,360.0,1,Semiurban,1.0
|
||||
LP001405,Male,1.0,1,1,0.0,2214,1398.0,85.0,360.0,0,Urban,1.0
|
||||
LP001421,Male,1.0,0,1,0.0,5568,2142.0,175.0,360.0,1,Rural,0.0
|
||||
LP001422,Female,0.0,0,1,0.0,10408,0.0,259.0,360.0,1,Urban,1.0
|
||||
LP001426,Male,1.0,,1,0.0,5667,2667.0,180.0,360.0,1,Rural,1.0
|
||||
LP001430,Female,0.0,0,1,0.0,4166,0.0,44.0,360.0,1,Semiurban,1.0
|
||||
LP001431,Female,0.0,0,1,0.0,2137,8980.0,137.0,360.0,0,Semiurban,1.0
|
||||
LP001432,Male,1.0,2,1,0.0,2957,0.0,81.0,360.0,1,Semiurban,1.0
|
||||
LP001439,Male,1.0,0,0,0.0,4300,2014.0,194.0,360.0,1,Rural,1.0
|
||||
LP001443,Female,0.0,0,1,0.0,3692,0.0,93.0,360.0,0,Rural,1.0
|
||||
LP001448,,1.0,3+,1,0.0,23803,0.0,370.0,360.0,1,Rural,1.0
|
||||
LP001449,Male,0.0,0,1,0.0,3865,1640.0,0.0,360.0,1,Rural,1.0
|
||||
LP001451,Male,1.0,1,1,1.0,10513,3850.0,160.0,180.0,0,Urban,0.0
|
||||
LP001465,Male,1.0,0,1,0.0,6080,2569.0,182.0,360.0,0,Rural,0.0
|
||||
LP001469,Male,0.0,0,1,1.0,20166,0.0,650.0,480.0,0,Urban,1.0
|
||||
LP001473,Male,0.0,0,1,0.0,2014,1929.0,74.0,360.0,1,Urban,1.0
|
||||
LP001478,Male,0.0,0,1,0.0,2718,0.0,70.0,360.0,1,Semiurban,1.0
|
||||
LP001482,Male,1.0,0,1,1.0,3459,0.0,25.0,120.0,1,Semiurban,1.0
|
||||
LP001487,Male,0.0,0,1,0.0,4895,0.0,102.0,360.0,1,Semiurban,1.0
|
||||
LP001488,Male,1.0,3+,1,0.0,4000,7750.0,290.0,360.0,1,Semiurban,0.0
|
||||
LP001489,Female,1.0,0,1,0.0,4583,0.0,84.0,360.0,1,Rural,0.0
|
||||
LP001491,Male,1.0,2,1,1.0,3316,3500.0,88.0,360.0,1,Urban,1.0
|
||||
LP001492,Male,0.0,0,1,0.0,14999,0.0,242.0,360.0,0,Semiurban,0.0
|
||||
LP001493,Male,1.0,2,0,0.0,4200,1430.0,129.0,360.0,1,Rural,0.0
|
||||
LP001497,Male,1.0,2,1,0.0,5042,2083.0,185.0,360.0,1,Rural,0.0
|
||||
LP001498,Male,0.0,0,1,0.0,5417,0.0,168.0,360.0,1,Urban,1.0
|
||||
LP001504,Male,0.0,0,1,1.0,6950,0.0,175.0,180.0,1,Semiurban,1.0
|
||||
LP001507,Male,1.0,0,1,0.0,2698,2034.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001508,Male,1.0,2,1,0.0,11757,0.0,187.0,180.0,1,Urban,1.0
|
||||
LP001514,Female,1.0,0,1,0.0,2330,4486.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001516,Female,1.0,2,1,0.0,14866,0.0,70.0,360.0,1,Urban,1.0
|
||||
LP001518,Male,1.0,1,1,0.0,1538,1425.0,30.0,360.0,1,Urban,1.0
|
||||
LP001519,Female,0.0,0,1,0.0,10000,1666.0,225.0,360.0,1,Rural,0.0
|
||||
LP001520,Male,1.0,0,1,0.0,4860,830.0,125.0,360.0,1,Semiurban,1.0
|
||||
LP001528,Male,0.0,0,1,0.0,6277,0.0,118.0,360.0,0,Rural,0.0
|
||||
LP001529,Male,1.0,0,1,1.0,2577,3750.0,152.0,360.0,1,Rural,1.0
|
||||
LP001531,Male,0.0,0,1,0.0,9166,0.0,244.0,360.0,1,Urban,0.0
|
||||
LP001532,Male,1.0,2,0,0.0,2281,0.0,113.0,360.0,1,Rural,0.0
|
||||
LP001535,Male,0.0,0,1,0.0,3254,0.0,50.0,360.0,1,Urban,1.0
|
||||
LP001536,Male,1.0,3+,1,0.0,39999,0.0,600.0,180.0,0,Semiurban,1.0
|
||||
LP001541,Male,1.0,1,1,0.0,6000,0.0,160.0,360.0,0,Rural,1.0
|
||||
LP001543,Male,1.0,1,1,0.0,9538,0.0,187.0,360.0,1,Urban,1.0
|
||||
LP001546,Male,0.0,0,1,0.0,2980,2083.0,120.0,360.0,1,Rural,1.0
|
||||
LP001552,Male,1.0,0,1,0.0,4583,5625.0,255.0,360.0,1,Semiurban,1.0
|
||||
LP001560,Male,1.0,0,0,0.0,1863,1041.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP001562,Male,1.0,0,1,0.0,7933,0.0,275.0,360.0,1,Urban,0.0
|
||||
LP001565,Male,1.0,1,1,0.0,3089,1280.0,121.0,360.0,0,Semiurban,0.0
|
||||
LP001570,Male,1.0,2,1,0.0,4167,1447.0,158.0,360.0,1,Rural,1.0
|
||||
LP001572,Male,1.0,0,1,0.0,9323,0.0,75.0,180.0,1,Urban,1.0
|
||||
LP001574,Male,1.0,0,1,0.0,3707,3166.0,182.0,,1,Rural,1.0
|
||||
LP001577,Female,1.0,0,1,0.0,4583,0.0,112.0,360.0,1,Rural,0.0
|
||||
LP001578,Male,1.0,0,1,0.0,2439,3333.0,129.0,360.0,1,Rural,1.0
|
||||
LP001579,Male,0.0,0,1,0.0,2237,0.0,63.0,480.0,0,Semiurban,0.0
|
||||
LP001580,Male,1.0,2,1,0.0,8000,0.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP001581,Male,1.0,0,0,0.0,1820,1769.0,95.0,360.0,1,Rural,1.0
|
||||
LP001585,,1.0,3+,1,0.0,51763,0.0,700.0,300.0,1,Urban,1.0
|
||||
LP001586,Male,1.0,3+,0,0.0,3522,0.0,81.0,180.0,1,Rural,0.0
|
||||
LP001594,Male,1.0,0,1,0.0,5708,5625.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP001603,Male,1.0,0,0,1.0,4344,736.0,87.0,360.0,1,Semiurban,0.0
|
||||
LP001606,Male,1.0,0,1,0.0,3497,1964.0,116.0,360.0,1,Rural,1.0
|
||||
LP001608,Male,1.0,2,1,0.0,2045,1619.0,101.0,360.0,1,Rural,1.0
|
||||
LP001610,Male,1.0,3+,1,0.0,5516,11300.0,495.0,360.0,0,Semiurban,0.0
|
||||
LP001616,Male,1.0,1,1,0.0,3750,0.0,116.0,360.0,1,Semiurban,1.0
|
||||
LP001630,Male,0.0,0,0,0.0,2333,1451.0,102.0,480.0,0,Urban,0.0
|
||||
LP001633,Male,1.0,1,1,0.0,6400,7250.0,180.0,360.0,0,Urban,0.0
|
||||
LP001634,Male,0.0,0,1,0.0,1916,5063.0,67.0,360.0,0,Rural,0.0
|
||||
LP001636,Male,1.0,0,1,0.0,4600,0.0,73.0,180.0,1,Semiurban,1.0
|
||||
LP001637,Male,1.0,1,1,0.0,33846,0.0,260.0,360.0,1,Semiurban,0.0
|
||||
LP001639,Female,1.0,0,1,0.0,3625,0.0,108.0,360.0,1,Semiurban,1.0
|
||||
LP001640,Male,1.0,0,1,1.0,39147,4750.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001641,Male,1.0,1,1,1.0,2178,0.0,66.0,300.0,0,Rural,0.0
|
||||
LP001643,Male,1.0,0,1,0.0,2383,2138.0,58.0,360.0,0,Rural,1.0
|
||||
LP001644,,1.0,0,1,1.0,674,5296.0,168.0,360.0,1,Rural,1.0
|
||||
LP001647,Male,1.0,0,1,0.0,9328,0.0,188.0,180.0,1,Rural,1.0
|
||||
LP001653,Male,0.0,0,0,0.0,4885,0.0,48.0,360.0,1,Rural,1.0
|
||||
LP001656,Male,0.0,0,1,0.0,12000,0.0,164.0,360.0,1,Semiurban,0.0
|
||||
LP001657,Male,1.0,0,0,0.0,6033,0.0,160.0,360.0,1,Urban,0.0
|
||||
LP001658,Male,0.0,0,1,0.0,3858,0.0,76.0,360.0,1,Semiurban,1.0
|
||||
LP001664,Male,0.0,0,1,0.0,4191,0.0,120.0,360.0,1,Rural,1.0
|
||||
LP001665,Male,1.0,1,1,0.0,3125,2583.0,170.0,360.0,1,Semiurban,0.0
|
||||
LP001666,Male,0.0,0,1,0.0,8333,3750.0,187.0,360.0,1,Rural,1.0
|
||||
LP001669,Female,0.0,0,0,0.0,1907,2365.0,120.0,,1,Urban,1.0
|
||||
LP001671,Female,1.0,0,1,0.0,3416,2816.0,113.0,360.0,0,Semiurban,1.0
|
||||
LP001673,Male,0.0,0,1,1.0,11000,0.0,83.0,360.0,1,Urban,0.0
|
||||
LP001674,Male,1.0,1,0,0.0,2600,2500.0,90.0,360.0,1,Semiurban,1.0
|
||||
LP001677,Male,0.0,2,1,0.0,4923,0.0,166.0,360.0,0,Semiurban,1.0
|
||||
LP001682,Male,1.0,3+,0,0.0,3992,0.0,0.0,180.0,1,Urban,0.0
|
||||
LP001688,Male,1.0,1,0,0.0,3500,1083.0,135.0,360.0,1,Urban,1.0
|
||||
LP001691,Male,1.0,2,0,0.0,3917,0.0,124.0,360.0,1,Semiurban,1.0
|
||||
LP001692,Female,0.0,0,0,0.0,4408,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001693,Female,0.0,0,1,0.0,3244,0.0,80.0,360.0,1,Urban,1.0
|
||||
LP001698,Male,0.0,0,0,0.0,3975,2531.0,55.0,360.0,1,Rural,1.0
|
||||
LP001699,Male,0.0,0,1,0.0,2479,0.0,59.0,360.0,1,Urban,1.0
|
||||
LP001702,Male,0.0,0,1,0.0,3418,0.0,127.0,360.0,1,Semiurban,0.0
|
||||
LP001708,Female,0.0,0,1,0.0,10000,0.0,214.0,360.0,1,Semiurban,0.0
|
||||
LP001711,Male,1.0,3+,1,0.0,3430,1250.0,128.0,360.0,0,Semiurban,0.0
|
||||
LP001713,Male,1.0,1,1,1.0,7787,0.0,240.0,360.0,1,Urban,1.0
|
||||
LP001715,Male,1.0,3+,0,1.0,5703,0.0,130.0,360.0,1,Rural,1.0
|
||||
LP001716,Male,1.0,0,1,0.0,3173,3021.0,137.0,360.0,1,Urban,1.0
|
||||
LP001720,Male,1.0,3+,0,0.0,3850,983.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001722,Male,1.0,0,1,0.0,150,1800.0,135.0,360.0,1,Rural,0.0
|
||||
LP001726,Male,1.0,0,1,0.0,3727,1775.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001732,Male,1.0,2,1,0.0,5000,0.0,72.0,360.0,0,Semiurban,0.0
|
||||
LP001734,Female,1.0,2,1,0.0,4283,2383.0,127.0,360.0,0,Semiurban,1.0
|
||||
LP001736,Male,1.0,0,1,0.0,2221,0.0,60.0,360.0,0,Urban,0.0
|
||||
LP001743,Male,1.0,2,1,0.0,4009,1717.0,116.0,360.0,1,Semiurban,1.0
|
||||
LP001744,Male,0.0,0,1,0.0,2971,2791.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001749,Male,1.0,0,1,0.0,7578,1010.0,175.0,,1,Semiurban,1.0
|
||||
LP001750,Male,1.0,0,1,0.0,6250,0.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP001751,Male,1.0,0,1,0.0,3250,0.0,170.0,360.0,1,Rural,0.0
|
||||
LP001754,Male,1.0,,0,1.0,4735,0.0,138.0,360.0,1,Urban,0.0
|
||||
LP001758,Male,1.0,2,1,0.0,6250,1695.0,210.0,360.0,1,Semiurban,1.0
|
||||
LP001760,Male,0.0,,1,0.0,4758,0.0,158.0,480.0,1,Semiurban,1.0
|
||||
LP001761,Male,0.0,0,1,1.0,6400,0.0,200.0,360.0,1,Rural,1.0
|
||||
LP001765,Male,1.0,1,1,0.0,2491,2054.0,104.0,360.0,1,Semiurban,1.0
|
||||
LP001768,Male,1.0,0,1,0.0,3716,0.0,42.0,180.0,1,Rural,1.0
|
||||
LP001770,Male,0.0,0,0,0.0,3189,2598.0,120.0,,1,Rural,1.0
|
||||
LP001776,Female,0.0,0,1,0.0,8333,0.0,280.0,360.0,1,Semiurban,1.0
|
||||
LP001778,Male,1.0,1,1,0.0,3155,1779.0,140.0,360.0,1,Semiurban,1.0
|
||||
LP001784,Male,1.0,1,1,0.0,5500,1260.0,170.0,360.0,1,Rural,1.0
|
||||
LP001786,Male,1.0,0,1,0.0,5746,0.0,255.0,360.0,0,Urban,0.0
|
||||
LP001788,Female,0.0,0,1,1.0,3463,0.0,122.0,360.0,0,Urban,1.0
|
||||
LP001790,Female,0.0,1,1,0.0,3812,0.0,112.0,360.0,1,Rural,1.0
|
||||
LP001792,Male,1.0,1,1,0.0,3315,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP001798,Male,1.0,2,1,0.0,5819,5000.0,120.0,360.0,1,Rural,1.0
|
||||
LP001800,Male,1.0,1,0,0.0,2510,1983.0,140.0,180.0,1,Urban,0.0
|
||||
LP001806,Male,0.0,0,1,0.0,2965,5701.0,155.0,60.0,1,Urban,1.0
|
||||
LP001807,Male,1.0,2,1,1.0,6250,1300.0,108.0,360.0,1,Rural,1.0
|
||||
LP001811,Male,1.0,0,0,0.0,3406,4417.0,123.0,360.0,1,Semiurban,1.0
|
||||
LP001813,Male,0.0,0,1,1.0,6050,4333.0,120.0,180.0,1,Urban,0.0
|
||||
LP001814,Male,1.0,2,1,0.0,9703,0.0,112.0,360.0,1,Urban,1.0
|
||||
LP001819,Male,1.0,1,0,0.0,6608,0.0,137.0,180.0,1,Urban,1.0
|
||||
LP001824,Male,1.0,1,1,0.0,2882,1843.0,123.0,480.0,1,Semiurban,1.0
|
||||
LP001825,Male,1.0,0,1,0.0,1809,1868.0,90.0,360.0,1,Urban,1.0
|
||||
LP001835,Male,1.0,0,0,0.0,1668,3890.0,201.0,360.0,0,Semiurban,0.0
|
||||
LP001836,Female,0.0,2,1,0.0,3427,0.0,138.0,360.0,1,Urban,0.0
|
||||
LP001841,Male,0.0,0,0,1.0,2583,2167.0,104.0,360.0,1,Rural,1.0
|
||||
LP001843,Male,1.0,1,0,0.0,2661,7101.0,279.0,180.0,1,Semiurban,1.0
|
||||
LP001844,Male,0.0,0,1,1.0,16250,0.0,192.0,360.0,0,Urban,0.0
|
||||
LP001846,Female,0.0,3+,1,0.0,3083,0.0,255.0,360.0,1,Rural,1.0
|
||||
LP001849,Male,0.0,0,0,0.0,6045,0.0,115.0,360.0,0,Rural,0.0
|
||||
LP001854,Male,1.0,3+,1,0.0,5250,0.0,94.0,360.0,1,Urban,0.0
|
||||
LP001859,Male,1.0,0,1,0.0,14683,2100.0,304.0,360.0,1,Rural,0.0
|
||||
LP001864,Male,1.0,3+,0,0.0,4931,0.0,128.0,360.0,0,Semiurban,0.0
|
||||
LP001865,Male,1.0,1,1,0.0,6083,4250.0,330.0,360.0,0,Urban,1.0
|
||||
LP001868,Male,0.0,0,1,0.0,2060,2209.0,134.0,360.0,1,Semiurban,1.0
|
||||
LP001870,Female,0.0,1,1,0.0,3481,0.0,155.0,36.0,1,Semiurban,0.0
|
||||
LP001871,Female,0.0,0,1,0.0,7200,0.0,120.0,360.0,1,Rural,1.0
|
||||
LP001872,Male,0.0,0,1,1.0,5166,0.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP001875,Male,0.0,0,1,0.0,4095,3447.0,151.0,360.0,1,Rural,1.0
|
||||
LP001877,Male,1.0,2,1,0.0,4708,1387.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP001882,Male,1.0,3+,1,0.0,4333,1811.0,160.0,360.0,0,Urban,1.0
|
||||
LP001883,Female,0.0,0,1,0.0,3418,0.0,135.0,360.0,1,Rural,0.0
|
||||
LP001884,Female,0.0,1,1,0.0,2876,1560.0,90.0,360.0,1,Urban,1.0
|
||||
LP001888,Female,0.0,0,1,0.0,3237,0.0,30.0,360.0,1,Urban,1.0
|
||||
LP001891,Male,1.0,0,1,0.0,11146,0.0,136.0,360.0,1,Urban,1.0
|
||||
LP001892,Male,0.0,0,1,0.0,2833,1857.0,126.0,360.0,1,Rural,1.0
|
||||
LP001894,Male,1.0,0,1,0.0,2620,2223.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP001896,Male,1.0,2,1,0.0,3900,0.0,90.0,360.0,1,Semiurban,1.0
|
||||
LP001900,Male,1.0,1,1,0.0,2750,1842.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP001903,Male,1.0,0,1,0.0,3993,3274.0,207.0,360.0,1,Semiurban,1.0
|
||||
LP001904,Male,1.0,0,1,0.0,3103,1300.0,80.0,360.0,1,Urban,1.0
|
||||
LP001907,Male,1.0,0,1,0.0,14583,0.0,436.0,360.0,1,Semiurban,1.0
|
||||
LP001908,Female,1.0,0,0,0.0,4100,0.0,124.0,360.0,0,Rural,1.0
|
||||
LP001910,Male,0.0,1,0,1.0,4053,2426.0,158.0,360.0,0,Urban,0.0
|
||||
LP001914,Male,1.0,0,1,0.0,3927,800.0,112.0,360.0,1,Semiurban,1.0
|
||||
LP001915,Male,1.0,2,1,0.0,2301,985.7999878,78.0,180.0,1,Urban,1.0
|
||||
LP001917,Female,0.0,0,1,0.0,1811,1666.0,54.0,360.0,1,Urban,1.0
|
||||
LP001922,Male,1.0,0,1,0.0,20667,0.0,0.0,360.0,1,Rural,0.0
|
||||
LP001924,Male,0.0,0,1,0.0,3158,3053.0,89.0,360.0,1,Rural,1.0
|
||||
LP001925,Female,0.0,0,1,1.0,2600,1717.0,99.0,300.0,1,Semiurban,0.0
|
||||
LP001926,Male,1.0,0,1,0.0,3704,2000.0,120.0,360.0,1,Rural,1.0
|
||||
LP001931,Female,0.0,0,1,0.0,4124,0.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP001935,Male,0.0,0,1,0.0,9508,0.0,187.0,360.0,1,Rural,1.0
|
||||
LP001936,Male,1.0,0,1,0.0,3075,2416.0,139.0,360.0,1,Rural,1.0
|
||||
LP001938,Male,1.0,2,1,0.0,4400,0.0,127.0,360.0,0,Semiurban,0.0
|
||||
LP001940,Male,1.0,2,1,0.0,3153,1560.0,134.0,360.0,1,Urban,1.0
|
||||
LP001945,Female,0.0,,1,0.0,5417,0.0,143.0,480.0,0,Urban,0.0
|
||||
LP001947,Male,1.0,0,1,0.0,2383,3334.0,172.0,360.0,1,Semiurban,1.0
|
||||
LP001949,Male,1.0,3+,1,0.0,4416,1250.0,110.0,360.0,1,Urban,1.0
|
||||
LP001953,Male,1.0,1,1,0.0,6875,0.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP001954,Female,1.0,1,1,0.0,4666,0.0,135.0,360.0,1,Urban,1.0
|
||||
LP001955,Female,0.0,0,1,0.0,5000,2541.0,151.0,480.0,1,Rural,0.0
|
||||
LP001963,Male,1.0,1,1,0.0,2014,2925.0,113.0,360.0,1,Urban,0.0
|
||||
LP001964,Male,1.0,0,0,0.0,1800,2934.0,93.0,360.0,0,Urban,0.0
|
||||
LP001972,Male,1.0,,0,0.0,2875,1750.0,105.0,360.0,1,Semiurban,1.0
|
||||
LP001974,Female,0.0,0,1,0.0,5000,0.0,132.0,360.0,1,Rural,1.0
|
||||
LP001977,Male,1.0,1,1,0.0,1625,1803.0,96.0,360.0,1,Urban,1.0
|
||||
LP001978,Male,0.0,0,1,0.0,4000,2500.0,140.0,360.0,1,Rural,1.0
|
||||
LP001990,Male,0.0,0,0,0.0,2000,0.0,0.0,360.0,1,Urban,0.0
|
||||
LP001993,Female,0.0,0,1,0.0,3762,1666.0,135.0,360.0,1,Rural,1.0
|
||||
LP001994,Female,0.0,0,1,0.0,2400,1863.0,104.0,360.0,0,Urban,0.0
|
||||
LP001996,Male,0.0,0,1,0.0,20233,0.0,480.0,360.0,1,Rural,0.0
|
||||
LP001998,Male,1.0,2,0,0.0,7667,0.0,185.0,360.0,0,Rural,1.0
|
||||
LP002002,Female,0.0,0,1,0.0,2917,0.0,84.0,360.0,1,Semiurban,1.0
|
||||
LP002004,Male,0.0,0,0,0.0,2927,2405.0,111.0,360.0,1,Semiurban,1.0
|
||||
LP002006,Female,0.0,0,1,0.0,2507,0.0,56.0,360.0,1,Rural,1.0
|
||||
LP002008,Male,1.0,2,1,1.0,5746,0.0,144.0,84.0,0,Rural,1.0
|
||||
LP002024,,1.0,0,1,0.0,2473,1843.0,159.0,360.0,1,Rural,0.0
|
||||
LP002031,Male,1.0,1,0,0.0,3399,1640.0,111.0,180.0,1,Urban,1.0
|
||||
LP002035,Male,1.0,2,1,0.0,3717,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP002036,Male,1.0,0,1,0.0,2058,2134.0,88.0,360.0,0,Urban,1.0
|
||||
LP002043,Female,0.0,1,1,0.0,3541,0.0,112.0,360.0,0,Semiurban,1.0
|
||||
LP002050,Male,1.0,1,1,1.0,10000,0.0,155.0,360.0,1,Rural,0.0
|
||||
LP002051,Male,1.0,0,1,0.0,2400,2167.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP002053,Male,1.0,3+,1,0.0,4342,189.0,124.0,360.0,1,Semiurban,1.0
|
||||
LP002054,Male,1.0,2,0,0.0,3601,1590.0,0.0,360.0,1,Rural,1.0
|
||||
LP002055,Female,0.0,0,1,0.0,3166,2985.0,132.0,360.0,0,Rural,1.0
|
||||
LP002065,Male,1.0,3+,1,0.0,15000,0.0,300.0,360.0,1,Rural,1.0
|
||||
LP002067,Male,1.0,1,1,1.0,8666,4983.0,376.0,360.0,0,Rural,0.0
|
||||
LP002068,Male,0.0,0,1,0.0,4917,0.0,130.0,360.0,0,Rural,1.0
|
||||
LP002082,Male,1.0,0,1,1.0,5818,2160.0,184.0,360.0,1,Semiurban,1.0
|
||||
LP002086,Female,1.0,0,1,0.0,4333,2451.0,110.0,360.0,1,Urban,0.0
|
||||
LP002087,Female,0.0,0,1,0.0,2500,0.0,67.0,360.0,1,Urban,1.0
|
||||
LP002097,Male,0.0,1,1,0.0,4384,1793.0,117.0,360.0,1,Urban,1.0
|
||||
LP002098,Male,0.0,0,1,0.0,2935,0.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP002100,Male,0.0,,1,0.0,2833,0.0,71.0,360.0,1,Urban,1.0
|
||||
LP002101,Male,1.0,0,1,0.0,63337,0.0,490.0,180.0,1,Urban,1.0
|
||||
LP002103,,1.0,1,1,1.0,9833,1833.0,182.0,180.0,1,Urban,1.0
|
||||
LP002106,Male,1.0,,1,1.0,5503,4490.0,70.0,,1,Semiurban,1.0
|
||||
LP002110,Male,1.0,1,1,0.0,5250,688.0,160.0,360.0,1,Rural,1.0
|
||||
LP002112,Male,1.0,2,1,1.0,2500,4600.0,176.0,360.0,1,Rural,1.0
|
||||
LP002113,Female,0.0,3+,0,0.0,1830,0.0,0.0,360.0,0,Urban,0.0
|
||||
LP002114,Female,0.0,0,1,0.0,4160,0.0,71.0,360.0,1,Semiurban,1.0
|
||||
LP002115,Male,1.0,3+,0,0.0,2647,1587.0,173.0,360.0,1,Rural,0.0
|
||||
LP002116,Female,0.0,0,1,0.0,2378,0.0,46.0,360.0,1,Rural,0.0
|
||||
LP002119,Male,1.0,1,0,0.0,4554,1229.0,158.0,360.0,1,Urban,1.0
|
||||
LP002126,Male,1.0,3+,0,0.0,3173,0.0,74.0,360.0,1,Semiurban,1.0
|
||||
LP002128,Male,1.0,2,1,0.0,2583,2330.0,125.0,360.0,1,Rural,1.0
|
||||
LP002129,Male,1.0,0,1,0.0,2499,2458.0,160.0,360.0,1,Semiurban,1.0
|
||||
LP002130,Male,1.0,,0,0.0,3523,3230.0,152.0,360.0,0,Rural,0.0
|
||||
LP002131,Male,1.0,2,0,0.0,3083,2168.0,126.0,360.0,1,Urban,1.0
|
||||
LP002137,Male,1.0,0,1,0.0,6333,4583.0,259.0,360.0,0,Semiurban,1.0
|
||||
LP002138,Male,1.0,0,1,0.0,2625,6250.0,187.0,360.0,1,Rural,1.0
|
||||
LP002139,Male,1.0,0,1,0.0,9083,0.0,228.0,360.0,1,Semiurban,1.0
|
||||
LP002140,Male,0.0,0,1,0.0,8750,4167.0,308.0,360.0,1,Rural,0.0
|
||||
LP002141,Male,1.0,3+,1,0.0,2666,2083.0,95.0,360.0,1,Rural,1.0
|
||||
LP002142,Female,1.0,0,1,1.0,5500,0.0,105.0,360.0,0,Rural,0.0
|
||||
LP002143,Female,1.0,0,1,0.0,2423,505.0,130.0,360.0,1,Semiurban,1.0
|
||||
LP002144,Female,0.0,,1,0.0,3813,0.0,116.0,180.0,1,Urban,1.0
|
||||
LP002149,Male,1.0,2,1,0.0,8333,3167.0,165.0,360.0,1,Rural,1.0
|
||||
LP002151,Male,1.0,1,1,0.0,3875,0.0,67.0,360.0,1,Urban,0.0
|
||||
LP002158,Male,1.0,0,0,0.0,3000,1666.0,100.0,480.0,0,Urban,0.0
|
||||
LP002160,Male,1.0,3+,1,0.0,5167,3167.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP002161,Female,0.0,1,1,0.0,4723,0.0,81.0,360.0,1,Semiurban,0.0
|
||||
LP002170,Male,1.0,2,1,0.0,5000,3667.0,236.0,360.0,1,Semiurban,1.0
|
||||
LP002175,Male,1.0,0,1,0.0,4750,2333.0,130.0,360.0,1,Urban,1.0
|
||||
LP002178,Male,1.0,0,1,0.0,3013,3033.0,95.0,300.0,0,Urban,1.0
|
||||
LP002180,Male,0.0,0,1,1.0,6822,0.0,141.0,360.0,1,Rural,1.0
|
||||
LP002181,Male,0.0,0,0,0.0,6216,0.0,133.0,360.0,1,Rural,0.0
|
||||
LP002187,Male,0.0,0,1,0.0,2500,0.0,96.0,480.0,1,Semiurban,0.0
|
||||
LP002188,Male,0.0,0,1,0.0,5124,0.0,124.0,,0,Rural,0.0
|
||||
LP002190,Male,1.0,1,1,0.0,6325,0.0,175.0,360.0,1,Semiurban,1.0
|
||||
LP002191,Male,1.0,0,1,0.0,19730,5266.0,570.0,360.0,1,Rural,0.0
|
||||
LP002194,Female,0.0,0,1,1.0,15759,0.0,55.0,360.0,1,Semiurban,1.0
|
||||
LP002197,Male,1.0,2,1,0.0,5185,0.0,155.0,360.0,1,Semiurban,1.0
|
||||
LP002201,Male,1.0,2,1,1.0,9323,7873.0,380.0,300.0,1,Rural,1.0
|
||||
LP002205,Male,0.0,1,1,0.0,3062,1987.0,111.0,180.0,0,Urban,0.0
|
||||
LP002209,Female,0.0,0,1,0.0,2764,1459.0,110.0,360.0,1,Urban,1.0
|
||||
LP002211,Male,1.0,0,1,0.0,4817,923.0,120.0,180.0,1,Urban,1.0
|
||||
LP002219,Male,1.0,3+,1,0.0,8750,4996.0,130.0,360.0,1,Rural,1.0
|
||||
LP002223,Male,1.0,0,1,0.0,4310,0.0,130.0,360.0,0,Semiurban,1.0
|
||||
LP002224,Male,0.0,0,1,0.0,3069,0.0,71.0,480.0,1,Urban,0.0
|
||||
LP002225,Male,1.0,2,1,0.0,5391,0.0,130.0,360.0,1,Urban,1.0
|
||||
LP002226,Male,1.0,0,1,0.0,3333,2500.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP002229,Male,0.0,0,1,0.0,5941,4232.0,296.0,360.0,1,Semiurban,1.0
|
||||
LP002231,Female,0.0,0,1,0.0,6000,0.0,156.0,360.0,1,Urban,1.0
|
||||
LP002234,Male,0.0,0,1,1.0,7167,0.0,128.0,360.0,1,Urban,1.0
|
||||
LP002236,Male,1.0,2,1,0.0,4566,0.0,100.0,360.0,1,Urban,0.0
|
||||
LP002237,Male,0.0,1,1,0.0,3667,0.0,113.0,180.0,1,Urban,1.0
|
||||
LP002239,Male,0.0,0,0,0.0,2346,1600.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002243,Male,1.0,0,0,0.0,3010,3136.0,0.0,360.0,0,Urban,0.0
|
||||
LP002244,Male,1.0,0,1,0.0,2333,2417.0,136.0,360.0,1,Urban,1.0
|
||||
LP002250,Male,1.0,0,1,0.0,5488,0.0,125.0,360.0,1,Rural,1.0
|
||||
LP002255,Male,0.0,3+,1,0.0,9167,0.0,185.0,360.0,1,Rural,1.0
|
||||
LP002262,Male,1.0,3+,1,0.0,9504,0.0,275.0,360.0,1,Rural,1.0
|
||||
LP002263,Male,1.0,0,1,0.0,2583,2115.0,120.0,360.0,0,Urban,1.0
|
||||
LP002265,Male,1.0,2,0,0.0,1993,1625.0,113.0,180.0,1,Semiurban,1.0
|
||||
LP002266,Male,1.0,2,1,0.0,3100,1400.0,113.0,360.0,1,Urban,1.0
|
||||
LP002272,Male,1.0,2,1,0.0,3276,484.0,135.0,360.0,0,Semiurban,1.0
|
||||
LP002277,Female,0.0,0,1,0.0,3180,0.0,71.0,360.0,0,Urban,0.0
|
||||
LP002281,Male,1.0,0,1,0.0,3033,1459.0,95.0,360.0,1,Urban,1.0
|
||||
LP002284,Male,0.0,0,0,0.0,3902,1666.0,109.0,360.0,1,Rural,1.0
|
||||
LP002287,Female,0.0,0,1,0.0,1500,1800.0,103.0,360.0,0,Semiurban,0.0
|
||||
LP002288,Male,1.0,2,0,0.0,2889,0.0,45.0,180.0,0,Urban,0.0
|
||||
LP002296,Male,0.0,0,0,0.0,2755,0.0,65.0,300.0,1,Rural,0.0
|
||||
LP002297,Male,0.0,0,1,0.0,2500,20000.0,103.0,360.0,1,Semiurban,1.0
|
||||
LP002300,Female,0.0,0,0,0.0,1963,0.0,53.0,360.0,1,Semiurban,1.0
|
||||
LP002301,Female,0.0,0,1,1.0,7441,0.0,194.0,360.0,1,Rural,0.0
|
||||
LP002305,Female,0.0,0,1,0.0,4547,0.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP002308,Male,1.0,0,0,0.0,2167,2400.0,115.0,360.0,1,Urban,1.0
|
||||
LP002314,Female,0.0,0,0,0.0,2213,0.0,66.0,360.0,1,Rural,1.0
|
||||
LP002315,Male,1.0,1,1,0.0,8300,0.0,152.0,300.0,0,Semiurban,0.0
|
||||
LP002317,Male,1.0,3+,1,0.0,81000,0.0,360.0,360.0,0,Rural,0.0
|
||||
LP002318,Female,0.0,1,0,1.0,3867,0.0,62.0,360.0,1,Semiurban,0.0
|
||||
LP002319,Male,1.0,0,1,0.0,6256,0.0,160.0,360.0,0,Urban,1.0
|
||||
LP002328,Male,1.0,0,0,0.0,6096,0.0,218.0,360.0,0,Rural,0.0
|
||||
LP002332,Male,1.0,0,0,0.0,2253,2033.0,110.0,360.0,1,Rural,1.0
|
||||
LP002335,Female,1.0,0,0,0.0,2149,3237.0,178.0,360.0,0,Semiurban,0.0
|
||||
LP002337,Female,0.0,0,1,0.0,2995,0.0,60.0,360.0,1,Urban,1.0
|
||||
LP002341,Female,0.0,1,1,0.0,2600,0.0,160.0,360.0,1,Urban,0.0
|
||||
LP002342,Male,1.0,2,1,1.0,1600,20000.0,239.0,360.0,1,Urban,0.0
|
||||
LP002345,Male,1.0,0,1,0.0,1025,2773.0,112.0,360.0,1,Rural,1.0
|
||||
LP002347,Male,1.0,0,1,0.0,3246,1417.0,138.0,360.0,1,Semiurban,1.0
|
||||
LP002348,Male,1.0,0,1,0.0,5829,0.0,138.0,360.0,1,Rural,1.0
|
||||
LP002357,Female,0.0,0,0,0.0,2720,0.0,80.0,,0,Urban,0.0
|
||||
LP002361,Male,1.0,0,1,0.0,1820,1719.0,100.0,360.0,1,Urban,1.0
|
||||
LP002362,Male,1.0,1,1,0.0,7250,1667.0,110.0,,0,Urban,0.0
|
||||
LP002364,Male,1.0,0,1,0.0,14880,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP002366,Male,1.0,0,1,0.0,2666,4300.0,121.0,360.0,1,Rural,1.0
|
||||
LP002367,Female,0.0,1,0,0.0,4606,0.0,81.0,360.0,1,Rural,0.0
|
||||
LP002368,Male,1.0,2,1,0.0,5935,0.0,133.0,360.0,1,Semiurban,1.0
|
||||
LP002369,Male,1.0,0,1,0.0,2920,16.12000084,87.0,360.0,1,Rural,1.0
|
||||
LP002370,Male,0.0,0,0,0.0,2717,0.0,60.0,180.0,1,Urban,1.0
|
||||
LP002377,Female,0.0,1,1,1.0,8624,0.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP002379,Male,0.0,0,1,0.0,6500,0.0,105.0,360.0,0,Rural,0.0
|
||||
LP002386,Male,0.0,0,1,0.0,12876,0.0,405.0,360.0,1,Semiurban,1.0
|
||||
LP002387,Male,1.0,0,1,0.0,2425,2340.0,143.0,360.0,1,Semiurban,1.0
|
||||
LP002390,Male,0.0,0,1,0.0,3750,0.0,100.0,360.0,1,Urban,1.0
|
||||
LP002393,Female,0.0,,1,0.0,10047,0.0,0.0,240.0,1,Semiurban,1.0
|
||||
LP002398,Male,0.0,0,1,0.0,1926,1851.0,50.0,360.0,1,Semiurban,1.0
|
||||
LP002401,Male,1.0,0,1,0.0,2213,1125.0,0.0,360.0,1,Urban,1.0
|
||||
LP002403,Male,0.0,0,1,1.0,10416,0.0,187.0,360.0,0,Urban,0.0
|
||||
LP002407,Female,1.0,0,0,1.0,7142,0.0,138.0,360.0,1,Rural,1.0
|
||||
LP002408,Male,0.0,0,1,0.0,3660,5064.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP002409,Male,1.0,0,1,0.0,7901,1833.0,180.0,360.0,1,Rural,1.0
|
||||
LP002418,Male,0.0,3+,0,0.0,4707,1993.0,148.0,360.0,1,Semiurban,1.0
|
||||
LP002422,Male,0.0,1,1,0.0,37719,0.0,152.0,360.0,1,Semiurban,1.0
|
||||
LP002424,Male,1.0,0,1,0.0,7333,8333.0,175.0,300.0,0,Rural,1.0
|
||||
LP002429,Male,1.0,1,1,1.0,3466,1210.0,130.0,360.0,1,Rural,1.0
|
||||
LP002434,Male,1.0,2,0,0.0,4652,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002435,Male,1.0,0,1,0.0,3539,1376.0,55.0,360.0,1,Rural,0.0
|
||||
LP002443,Male,1.0,2,1,0.0,3340,1710.0,150.0,360.0,0,Rural,0.0
|
||||
LP002444,Male,0.0,1,0,1.0,2769,1542.0,190.0,360.0,0,Semiurban,0.0
|
||||
LP002446,Male,1.0,2,0,0.0,2309,1255.0,125.0,360.0,0,Rural,0.0
|
||||
LP002447,Male,1.0,2,0,0.0,1958,1456.0,60.0,300.0,0,Urban,1.0
|
||||
LP002448,Male,1.0,0,1,0.0,3948,1733.0,149.0,360.0,0,Rural,0.0
|
||||
LP002449,Male,1.0,0,1,0.0,2483,2466.0,90.0,180.0,0,Rural,1.0
|
||||
LP002453,Male,0.0,0,1,1.0,7085,0.0,84.0,360.0,1,Semiurban,1.0
|
||||
LP002455,Male,1.0,2,1,0.0,3859,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP002459,Male,1.0,0,1,0.0,4301,0.0,118.0,360.0,1,Urban,1.0
|
||||
LP002467,Male,1.0,0,1,0.0,3708,2569.0,173.0,360.0,1,Urban,0.0
|
||||
LP002472,Male,0.0,2,1,0.0,4354,0.0,136.0,360.0,1,Rural,1.0
|
||||
LP002473,Male,1.0,0,1,0.0,8334,0.0,160.0,360.0,1,Semiurban,0.0
|
||||
LP002478,,1.0,0,1,1.0,2083,4083.0,160.0,360.0,0,Semiurban,1.0
|
||||
LP002484,Male,1.0,3+,1,0.0,7740,0.0,128.0,180.0,1,Urban,1.0
|
||||
LP002487,Male,1.0,0,1,0.0,3015,2188.0,153.0,360.0,1,Rural,1.0
|
||||
LP002489,Female,0.0,1,0,0.0,5191,0.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002493,Male,0.0,0,1,0.0,4166,0.0,98.0,360.0,0,Semiurban,0.0
|
||||
LP002494,Male,0.0,0,1,0.0,6000,0.0,140.0,360.0,1,Rural,1.0
|
||||
LP002500,Male,1.0,3+,0,0.0,2947,1664.0,70.0,180.0,0,Urban,0.0
|
||||
LP002501,,1.0,0,1,0.0,16692,0.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP002502,Female,1.0,2,0,0.0,210,2917.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP002505,Male,1.0,0,1,0.0,4333,2451.0,110.0,360.0,1,Urban,0.0
|
||||
LP002515,Male,1.0,1,1,1.0,3450,2079.0,162.0,360.0,1,Semiurban,1.0
|
||||
LP002517,Male,1.0,1,0,0.0,2653,1500.0,113.0,180.0,0,Rural,0.0
|
||||
LP002519,Male,1.0,3+,1,0.0,4691,0.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP002522,Female,0.0,0,1,1.0,2500,0.0,93.0,360.0,0,Urban,1.0
|
||||
LP002524,Male,0.0,2,1,0.0,5532,4648.0,162.0,360.0,1,Rural,1.0
|
||||
LP002527,Male,1.0,2,1,1.0,16525,1014.0,150.0,360.0,1,Rural,1.0
|
||||
LP002529,Male,1.0,2,1,0.0,6700,1750.0,230.0,300.0,1,Semiurban,1.0
|
||||
LP002530,,1.0,2,1,0.0,2873,1872.0,132.0,360.0,0,Semiurban,0.0
|
||||
LP002531,Male,1.0,1,1,1.0,16667,2250.0,86.0,360.0,1,Semiurban,1.0
|
||||
LP002533,Male,1.0,2,1,0.0,2947,1603.0,0.0,360.0,1,Urban,0.0
|
||||
LP002534,Female,0.0,0,0,0.0,4350,0.0,154.0,360.0,1,Rural,1.0
|
||||
LP002536,Male,1.0,3+,0,0.0,3095,0.0,113.0,360.0,1,Rural,1.0
|
||||
LP002537,Male,1.0,0,1,0.0,2083,3150.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP002541,Male,1.0,0,1,0.0,10833,0.0,234.0,360.0,1,Semiurban,1.0
|
||||
LP002543,Male,1.0,2,1,0.0,8333,0.0,246.0,360.0,1,Semiurban,1.0
|
||||
LP002544,Male,1.0,1,0,0.0,1958,2436.0,131.0,360.0,1,Rural,1.0
|
||||
LP002545,Male,0.0,2,1,0.0,3547,0.0,80.0,360.0,0,Rural,0.0
|
||||
LP002547,Male,1.0,1,1,0.0,18333,0.0,500.0,360.0,1,Urban,0.0
|
||||
LP002555,Male,1.0,2,1,1.0,4583,2083.0,160.0,360.0,1,Semiurban,1.0
|
||||
LP002556,Male,0.0,0,1,0.0,2435,0.0,75.0,360.0,1,Urban,0.0
|
||||
LP002560,Male,0.0,0,0,0.0,2699,2785.0,96.0,360.0,0,Semiurban,1.0
|
||||
LP002562,Male,1.0,1,0,0.0,5333,1131.0,186.0,360.0,0,Urban,1.0
|
||||
LP002571,Male,0.0,0,0,0.0,3691,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002582,Female,0.0,0,0,1.0,17263,0.0,225.0,360.0,1,Semiurban,1.0
|
||||
LP002585,Male,1.0,0,1,0.0,3597,2157.0,119.0,360.0,0,Rural,0.0
|
||||
LP002586,Female,1.0,1,1,0.0,3326,913.0,105.0,84.0,1,Semiurban,1.0
|
||||
LP002587,Male,1.0,0,0,0.0,2600,1700.0,107.0,360.0,1,Rural,1.0
|
||||
LP002588,Male,1.0,0,1,0.0,4625,2857.0,111.0,12.0,0,Urban,1.0
|
||||
LP002600,Male,1.0,1,1,1.0,2895,0.0,95.0,360.0,1,Semiurban,1.0
|
||||
LP002602,Male,0.0,0,1,0.0,6283,4416.0,209.0,360.0,0,Rural,0.0
|
||||
LP002603,Female,0.0,0,1,0.0,645,3683.0,113.0,480.0,1,Rural,1.0
|
||||
LP002606,Female,0.0,0,1,0.0,3159,0.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP002615,Male,1.0,2,1,0.0,4865,5624.0,208.0,360.0,1,Semiurban,1.0
|
||||
LP002618,Male,1.0,1,0,0.0,4050,5302.0,138.0,360.0,0,Rural,0.0
|
||||
LP002619,Male,1.0,0,0,0.0,3814,1483.0,124.0,300.0,1,Semiurban,1.0
|
||||
LP002622,Male,1.0,2,1,0.0,3510,4416.0,243.0,360.0,1,Rural,1.0
|
||||
LP002624,Male,1.0,0,1,0.0,20833,6667.0,480.0,360.0,0,Urban,1.0
|
||||
LP002625,,0.0,0,1,0.0,3583,0.0,96.0,360.0,1,Urban,0.0
|
||||
LP002626,Male,1.0,0,1,1.0,2479,3013.0,188.0,360.0,1,Urban,1.0
|
||||
LP002634,Female,0.0,1,1,0.0,13262,0.0,40.0,360.0,1,Urban,1.0
|
||||
LP002637,Male,0.0,0,0,0.0,3598,1287.0,100.0,360.0,1,Rural,0.0
|
||||
LP002640,Male,1.0,1,1,0.0,6065,2004.0,250.0,360.0,1,Semiurban,1.0
|
||||
LP002643,Male,1.0,2,1,0.0,3283,2035.0,148.0,360.0,1,Urban,1.0
|
||||
LP002648,Male,1.0,0,1,0.0,2130,6666.0,70.0,180.0,1,Semiurban,0.0
|
||||
LP002652,Male,0.0,0,1,0.0,5815,3666.0,311.0,360.0,1,Rural,0.0
|
||||
LP002659,Male,1.0,3+,1,0.0,3466,3428.0,150.0,360.0,1,Rural,1.0
|
||||
LP002670,Female,1.0,2,1,0.0,2031,1632.0,113.0,480.0,1,Semiurban,1.0
|
||||
LP002682,Male,1.0,,0,0.0,3074,1800.0,123.0,360.0,0,Semiurban,0.0
|
||||
LP002683,Male,0.0,0,1,0.0,4683,1915.0,185.0,360.0,1,Semiurban,0.0
|
||||
LP002684,Female,0.0,0,0,0.0,3400,0.0,95.0,360.0,1,Rural,0.0
|
||||
LP002689,Male,1.0,2,0,0.0,2192,1742.0,45.0,360.0,1,Semiurban,1.0
|
||||
LP002690,Male,0.0,0,1,0.0,2500,0.0,55.0,360.0,1,Semiurban,1.0
|
||||
LP002692,Male,1.0,3+,1,1.0,5677,1424.0,100.0,360.0,1,Rural,1.0
|
||||
LP002693,Male,1.0,2,1,1.0,7948,7166.0,480.0,360.0,1,Rural,1.0
|
||||
LP002697,Male,0.0,0,1,0.0,4680,2087.0,0.0,360.0,1,Semiurban,0.0
|
||||
LP002699,Male,1.0,2,1,1.0,17500,0.0,400.0,360.0,1,Rural,1.0
|
||||
LP002705,Male,1.0,0,1,0.0,3775,0.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP002706,Male,1.0,1,0,0.0,5285,1430.0,161.0,360.0,0,Semiurban,1.0
|
||||
LP002714,Male,0.0,1,0,0.0,2679,1302.0,94.0,360.0,1,Semiurban,1.0
|
||||
LP002716,Male,0.0,0,0,0.0,6783,0.0,130.0,360.0,1,Semiurban,1.0
|
||||
LP002717,Male,1.0,0,1,0.0,1025,5500.0,216.0,360.0,0,Rural,1.0
|
||||
LP002720,Male,1.0,3+,1,0.0,4281,0.0,100.0,360.0,1,Urban,1.0
|
||||
LP002723,Male,0.0,2,1,0.0,3588,0.0,110.0,360.0,0,Rural,0.0
|
||||
LP002729,Male,0.0,1,1,0.0,11250,0.0,196.0,360.0,0,Semiurban,0.0
|
||||
LP002731,Female,0.0,0,0,1.0,18165,0.0,125.0,360.0,1,Urban,1.0
|
||||
LP002732,Male,0.0,0,0,0.0,2550,2042.0,126.0,360.0,1,Rural,1.0
|
||||
LP002734,Male,1.0,0,1,0.0,6133,3906.0,324.0,360.0,1,Urban,1.0
|
||||
LP002738,Male,0.0,2,1,0.0,3617,0.0,107.0,360.0,1,Semiurban,1.0
|
||||
LP002739,Male,1.0,0,0,0.0,2917,536.0,66.0,360.0,1,Rural,0.0
|
||||
LP002740,Male,1.0,3+,1,0.0,6417,0.0,157.0,180.0,1,Rural,1.0
|
||||
LP002741,Female,1.0,1,1,0.0,4608,2845.0,140.0,180.0,1,Semiurban,1.0
|
||||
LP002743,Female,0.0,0,1,0.0,2138,0.0,99.0,360.0,0,Semiurban,0.0
|
||||
LP002753,Female,0.0,1,1,0.0,3652,0.0,95.0,360.0,1,Semiurban,1.0
|
||||
LP002755,Male,1.0,1,0,0.0,2239,2524.0,128.0,360.0,1,Urban,1.0
|
||||
LP002757,Female,1.0,0,0,0.0,3017,663.0,102.0,360.0,0,Semiurban,1.0
|
||||
LP002767,Male,1.0,0,1,0.0,2768,1950.0,155.0,360.0,1,Rural,1.0
|
||||
LP002768,Male,0.0,0,0,0.0,3358,0.0,80.0,36.0,1,Semiurban,0.0
|
||||
LP002772,Male,0.0,0,1,0.0,2526,1783.0,145.0,360.0,1,Rural,1.0
|
||||
LP002776,Female,0.0,0,1,0.0,5000,0.0,103.0,360.0,0,Semiurban,0.0
|
||||
LP002777,Male,1.0,0,1,0.0,2785,2016.0,110.0,360.0,1,Rural,1.0
|
||||
LP002778,Male,1.0,2,1,1.0,6633,0.0,0.0,360.0,0,Rural,0.0
|
||||
LP002784,Male,1.0,1,0,0.0,2492,2375.0,0.0,360.0,1,Rural,1.0
|
||||
LP002785,Male,1.0,1,1,0.0,3333,3250.0,158.0,360.0,1,Urban,1.0
|
||||
LP002788,Male,1.0,0,0,0.0,2454,2333.0,181.0,360.0,0,Urban,0.0
|
||||
LP002789,Male,1.0,0,1,0.0,3593,4266.0,132.0,180.0,0,Rural,0.0
|
||||
LP002792,Male,1.0,1,1,0.0,5468,1032.0,26.0,360.0,1,Semiurban,1.0
|
||||
LP002794,Female,0.0,0,1,0.0,2667,1625.0,84.0,360.0,0,Urban,1.0
|
||||
LP002795,Male,1.0,3+,1,1.0,10139,0.0,260.0,360.0,1,Semiurban,1.0
|
||||
LP002798,Male,1.0,0,1,0.0,3887,2669.0,162.0,360.0,1,Semiurban,1.0
|
||||
LP002804,Female,1.0,0,1,0.0,4180,2306.0,182.0,360.0,1,Semiurban,1.0
|
||||
LP002807,Male,1.0,2,0,0.0,3675,242.0,108.0,360.0,1,Semiurban,1.0
|
||||
LP002813,Female,1.0,1,1,1.0,19484,0.0,600.0,360.0,1,Semiurban,1.0
|
||||
LP002820,Male,1.0,0,1,0.0,5923,2054.0,211.0,360.0,1,Rural,1.0
|
||||
LP002821,Male,0.0,0,0,1.0,5800,0.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002832,Male,1.0,2,1,0.0,8799,0.0,258.0,360.0,0,Urban,0.0
|
||||
LP002833,Male,1.0,0,0,0.0,4467,0.0,120.0,360.0,0,Rural,1.0
|
||||
LP002836,Male,0.0,0,1,0.0,3333,0.0,70.0,360.0,1,Urban,1.0
|
||||
LP002837,Male,1.0,3+,1,0.0,3400,2500.0,123.0,360.0,0,Rural,0.0
|
||||
LP002840,Female,0.0,0,1,0.0,2378,0.0,9.0,360.0,1,Urban,0.0
|
||||
LP002841,Male,1.0,0,1,0.0,3166,2064.0,104.0,360.0,0,Urban,0.0
|
||||
LP002842,Male,1.0,1,1,0.0,3417,1750.0,186.0,360.0,1,Urban,1.0
|
||||
LP002847,Male,1.0,,1,0.0,5116,1451.0,165.0,360.0,0,Urban,0.0
|
||||
LP002855,Male,1.0,2,1,0.0,16666,0.0,275.0,360.0,1,Urban,1.0
|
||||
LP002862,Male,1.0,2,0,0.0,6125,1625.0,187.0,480.0,1,Semiurban,0.0
|
||||
LP002863,Male,1.0,3+,1,0.0,6406,0.0,150.0,360.0,1,Semiurban,0.0
|
||||
LP002868,Male,1.0,2,1,0.0,3159,461.0,108.0,84.0,1,Urban,1.0
|
||||
LP002872,,1.0,0,1,0.0,3087,2210.0,136.0,360.0,0,Semiurban,0.0
|
||||
LP002874,Male,0.0,0,1,0.0,3229,2739.0,110.0,360.0,1,Urban,1.0
|
||||
LP002877,Male,1.0,1,1,0.0,1782,2232.0,107.0,360.0,1,Rural,1.0
|
||||
LP002888,Male,0.0,0,1,0.0,3182,2917.0,161.0,360.0,1,Urban,1.0
|
||||
LP002892,Male,1.0,2,1,0.0,6540,0.0,205.0,360.0,1,Semiurban,1.0
|
||||
LP002893,Male,0.0,0,1,0.0,1836,33837.0,90.0,360.0,1,Urban,0.0
|
||||
LP002894,Female,1.0,0,1,0.0,3166,0.0,36.0,360.0,1,Semiurban,1.0
|
||||
LP002898,Male,1.0,1,1,0.0,1880,0.0,61.0,360.0,0,Rural,0.0
|
||||
LP002911,Male,1.0,1,1,0.0,2787,1917.0,146.0,360.0,0,Rural,0.0
|
||||
LP002912,Male,1.0,1,1,0.0,4283,3000.0,172.0,84.0,1,Rural,0.0
|
||||
LP002916,Male,1.0,0,1,0.0,2297,1522.0,104.0,360.0,1,Urban,1.0
|
||||
LP002917,Female,0.0,0,0,0.0,2165,0.0,70.0,360.0,1,Semiurban,1.0
|
||||
LP002925,,0.0,0,1,0.0,4750,0.0,94.0,360.0,1,Semiurban,1.0
|
||||
LP002926,Male,1.0,2,1,1.0,2726,0.0,106.0,360.0,0,Semiurban,0.0
|
||||
LP002928,Male,1.0,0,1,0.0,3000,3416.0,56.0,180.0,1,Semiurban,1.0
|
||||
LP002931,Male,1.0,2,1,1.0,6000,0.0,205.0,240.0,1,Semiurban,0.0
|
||||
LP002933,,0.0,3+,1,1.0,9357,0.0,292.0,360.0,1,Semiurban,1.0
|
||||
LP002936,Male,1.0,0,1,0.0,3859,3300.0,142.0,180.0,1,Rural,1.0
|
||||
LP002938,Male,1.0,0,1,1.0,16120,0.0,260.0,360.0,1,Urban,1.0
|
||||
LP002940,Male,0.0,0,0,0.0,3833,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002941,Male,1.0,2,0,1.0,6383,1000.0,187.0,360.0,1,Rural,0.0
|
||||
LP002943,Male,0.0,,1,0.0,2987,0.0,88.0,360.0,0,Semiurban,0.0
|
||||
LP002945,Male,1.0,0,1,1.0,9963,0.0,180.0,360.0,1,Rural,1.0
|
||||
LP002948,Male,1.0,2,1,0.0,5780,0.0,192.0,360.0,1,Urban,1.0
|
||||
LP002949,Female,0.0,3+,1,0.0,416,41667.0,350.0,180.0,0,Urban,0.0
|
||||
LP002950,Male,1.0,0,0,0.0,2894,2792.0,155.0,360.0,1,Rural,1.0
|
||||
LP002953,Male,1.0,3+,1,0.0,5703,0.0,128.0,360.0,1,Urban,1.0
|
||||
LP002958,Male,0.0,0,1,0.0,3676,4301.0,172.0,360.0,1,Rural,1.0
|
||||
LP002959,Female,1.0,1,1,0.0,12000,0.0,496.0,360.0,1,Semiurban,1.0
|
||||
LP002960,Male,1.0,0,0,0.0,2400,3800.0,0.0,180.0,1,Urban,0.0
|
||||
LP002961,Male,1.0,1,1,0.0,3400,2500.0,173.0,360.0,1,Semiurban,1.0
|
||||
LP002964,Male,1.0,2,0,0.0,3987,1411.0,157.0,360.0,1,Rural,1.0
|
||||
LP002974,Male,1.0,0,1,0.0,3232,1950.0,108.0,360.0,1,Rural,1.0
|
||||
LP002978,Female,0.0,0,1,0.0,2900,0.0,71.0,360.0,1,Rural,1.0
|
||||
LP002979,Male,1.0,3+,1,0.0,4106,0.0,40.0,180.0,1,Rural,1.0
|
||||
LP002983,Male,1.0,1,1,0.0,8072,240.0,253.0,360.0,1,Urban,1.0
|
||||
LP002984,Male,1.0,2,1,0.0,7583,0.0,187.0,360.0,1,Urban,1.0
|
||||
LP002990,Female,0.0,0,1,1.0,4583,0.0,133.0,360.0,0,Semiurban,0.0
|
||||
|
BIN
abanin_daniil_lab_5/result_1.png
Normal file
|
After Width: | Height: | Size: 66 KiB |
BIN
abanin_daniil_lab_5/result_2.png
Normal file
|
After Width: | Height: | Size: 22 KiB |
39
abanin_daniil_lab_7/README.md
Normal file
@@ -0,0 +1,39 @@
|
||||
# Лабораторная работа №7
|
||||
|
||||
### Рекуррентная нейронная сеть и задача генерации текста
|
||||
|
||||
## ПИбд-41 Абанин Даниил
|
||||
|
||||
### Как запустить лабораторную работу:
|
||||
|
||||
* установить python, numpy, keras, tensorflow
|
||||
* запустить проект (стартовая точка lab7)
|
||||
|
||||
### Какие технологии использовались:
|
||||
|
||||
* Язык программирования `Python`, библиотеки numpy, keras, tensorflow
|
||||
* Среда разработки `PyCharm`
|
||||
|
||||
### Что делает лабораторная работа:
|
||||
* На основе выбранных художественных текстов происходит обучение рекуррентной нейронной сети для решения задачи генерации.
|
||||
* Необходимо подобрать архитектуру и параметры так, чтобы приблизиться к максимально осмысленному результату.
|
||||
|
||||
### Тест
|
||||
* Чтение текста из файлов .txt (eng_text.txt, rus_text.txt)
|
||||
* Вызов функция get_model_data, из которой мы получаем входные, выходные данные (X, y), размер словаря и токенайзер. Используем Tokenizer с настройкой char_level=True, что позволяет упразднить использование Embedding слоя далее
|
||||
* Создание объекта Sequential (последовательная рекуррентная нейронная сеть) и добавление двух слоёв LSTM. LSTM (Long Short-Term Memory) представляет собой разновидность рекуррентной нейронной сети, которая эффективно работает с последовательными данными. Использование нескольких слоёв даёт большую гибкость. Dropout — это метод регуляризации для нейронных сетей и моделей глубокого обучения, решение проблемы переобучения. Слой Dense с функцией активации softmax используется для предсказания следующего слова
|
||||
* Компилирование модели с использованием sparse_categorical_crossentropy
|
||||
* Обучение модели на 100 эпохах (оптимальный вариант)
|
||||
* Генерация текста
|
||||
|
||||
Сгенерированные тексты
|
||||
|
||||
* ENG: I must be getting somewhere near the centre of the earth. how funny it'll seem to come out among the people that walk with their heads downward! the antipathies, i think—' (for, you see, alice had learnt several things of this
|
||||
|
||||
* RUS: господин осматривал свою комнату, внесены были его пожитки: прежде всего чемодан из белой кожи, несколько поистасканный, показывавший, что был не в первый раз в дороге. чемодан внесли кучер селифан отправился на конюшню вози
|
||||
|
||||

|
||||
|
||||

|
||||
|
||||
По итогу, программа способна сгенерировать осмысленный текст в каждом из случаев
|
||||
7
abanin_daniil_lab_7/eng_text.txt
Normal file
@@ -0,0 +1,7 @@
|
||||
Either the well was very deep, or she fell very slowly, for she had plenty of time as she went down to look about her and to wonder what was going to happen next. First, she tried to look down and make out what she was coming to, but it was too dark to see anything; then she looked at the sides of the well, and noticed that they were filled with cupboards and book-shelves; here and there she saw maps and pictures hung upon pegs. She took down a jar from one of the shelves as she passed; it was labelled 'ORANGE MARMALADE', but to her great disappointment it was empty: she did not like to drop the jar for fear of killing somebody, so managed to put it into one of the cupboards as she fell past it.
|
||||
|
||||
'Well!' thought Alice to herself, 'after such a fall as this, I shall think nothing of tumbling down stairs! How brave they'll all think me at home! Why, I wouldn't say anything about it, even if I fell off the top of the house!' (Which was very likely true.)
|
||||
|
||||
Down, down, down. Would the fall NEVER come to an end! 'I wonder how many miles I've fallen by this time?' she said aloud. 'I must be getting somewhere near the centre of the earth. Let me see: that would be four thousand miles down, I think—' (for, you see, Alice had learnt several things of this sort in her lessons in the schoolroom, and though this was not a VERY good opportunity for showing off her knowledge, as there was no one to listen to her, still it was good practice to say it over) '—yes, that's about the right distance—but then I wonder what Latitude or Longitude I've got to?' (Alice had no idea what Latitude was, or Longitude either, but thought they were nice grand words to say.)
|
||||
|
||||
Presently she began again. 'I wonder if I shall fall right THROUGH the earth! How funny it'll seem to come out among the people that walk with their heads downward! The Antipathies, I think—' (she was rather glad there WAS no one listening, this time, as it didn't sound at all the right word) '—but I shall have to ask them what the name of the country is, you know. Please, Ma'am, is this New Zealand or Australia?' (and she tried to curtsey as she spoke—fancy CURTSEYING as you're falling through the air!
|
||||
75
abanin_daniil_lab_7/lab7.py
Normal file
@@ -0,0 +1,75 @@
|
||||
from keras import Sequential
|
||||
from keras.layers import LSTM, Dense, Dropout
|
||||
from keras.preprocessing.text import Tokenizer
|
||||
from keras.preprocessing.sequence import pad_sequences
|
||||
import numpy as np
|
||||
|
||||
with open('rus_text.txt', 'r', encoding='utf-8') as file:
|
||||
text = file.read()
|
||||
|
||||
|
||||
def create_sequences(text, seq_len):
|
||||
sequences = []
|
||||
next_chars = []
|
||||
for i in range(0, len(text) - seq_len):
|
||||
sequences.append(text[i:i + seq_len])
|
||||
next_chars.append(text[i + seq_len])
|
||||
return sequences, next_chars
|
||||
|
||||
|
||||
def get_model_data(seq_length):
|
||||
tokenizer = Tokenizer(char_level=True)
|
||||
tokenizer.fit_on_texts([text])
|
||||
|
||||
token_text = tokenizer.texts_to_sequences([text])[0]
|
||||
|
||||
sequences, next_chars = create_sequences(token_text, seq_length)
|
||||
|
||||
vocab_size = len(tokenizer.word_index) + 1
|
||||
x = pad_sequences(sequences, maxlen=seq_length)
|
||||
y = np.array(next_chars)
|
||||
|
||||
return x, y, vocab_size, tokenizer
|
||||
|
||||
|
||||
def model_build(model, vocab_size):
|
||||
model.add(LSTM(256, input_shape=(seq_length, 1), return_sequences=True))
|
||||
model.add(LSTM(128, input_shape=(seq_length, 1)))
|
||||
model.add(Dropout(0.2, input_shape=(60,)))
|
||||
model.add(Dense(vocab_size, activation='softmax'))
|
||||
|
||||
model.compile(loss='sparse_categorical_crossentropy', optimizer='adam', metrics=['accuracy'])
|
||||
|
||||
|
||||
# Функция для генерации текста
|
||||
def generate_text(seed_text, gen_length, tokenizer, model):
|
||||
generated_text = seed_text
|
||||
|
||||
for _ in range(gen_length):
|
||||
sequence = tokenizer.texts_to_sequences([seed_text])[0]
|
||||
sequence = pad_sequences([sequence], maxlen=seq_length)
|
||||
prediction = model.predict(sequence)[0]
|
||||
predicted_index = np.argmax(prediction)
|
||||
predicted_char = tokenizer.index_word[predicted_index]
|
||||
generated_text += predicted_char
|
||||
seed_text += predicted_char
|
||||
seed_text = seed_text[1:]
|
||||
|
||||
return generated_text
|
||||
|
||||
|
||||
seq_length = 10
|
||||
seed_text = "господин осматривал свою"
|
||||
|
||||
# Создание экземпляра Tokenizer и обучение на тексте
|
||||
|
||||
X, y, vocab_size, tokenizer = get_model_data(seq_length)
|
||||
|
||||
model = Sequential()
|
||||
|
||||
model_build(model, vocab_size)
|
||||
|
||||
model.fit(X, y, epochs=100, verbose=1)
|
||||
|
||||
generated_text = generate_text(seed_text, 200, tokenizer, model)
|
||||
print(generated_text)
|
||||
BIN
abanin_daniil_lab_7/result_eng.png
Normal file
|
After Width: | Height: | Size: 154 KiB |
BIN
abanin_daniil_lab_7/result_rus.png
Normal file
|
After Width: | Height: | Size: 85 KiB |
3
abanin_daniil_lab_7/rus_text.txt
Normal file
@@ -0,0 +1,3 @@
|
||||
В ворота гостиницы губернского города NN въехала довольно красивая рессорная небольшая бричка, в какой ездят холостяки: отставные подполковники, штабс-капитаны, помещики, имеющие около сотни душ крестьян, — словом, все те, которых называют господами средней руки. В бричке сидел господин, не красавец, но и не дурной наружности, ни слишком толст, ни слишком тонок; нельзя сказать, чтобы стар, однако ж и не так чтобы слишком молод. Въезд его не произвел в городе совершенно никакого шума и не был сопровожден ничем особенным; только два русские мужика, стоявшие у дверей кабака против гостиницы, сделали кое-какие замечания, относившиеся, впрочем, более к экипажу, чем к сидевшему в нем. «Вишь ты, — сказал один другому, — вон какое колесо! что ты думаешь, доедет то колесо, если б случилось, в Москву или не доедет?» — «Доедет», — отвечал другой. «А в Казань-то, я думаю, не доедет?» — «В Казань не доедет», — отвечал другой. Этим разговор и кончился. Да еще, когда бричка подъехала к гостинице, встретился молодой человек в белых канифасовых панталонах, весьма узких и коротких, во фраке с покушеньями на моду, из-под которого видна была манишка, застегнутая тульскою булавкою с бронзовым пистолетом. Молодой человек оборотился назад, посмотрел экипаж, придержал рукою картуз, чуть не слетевший от ветра, и пошел своей дорогой.
|
||||
Когда экипаж въехал на двор, господин был встречен трактирным слугою, или половым, как их называют в русских трактирах, живым и вертлявым до такой степени, что даже нельзя было рассмотреть, какое у него было лицо. Он выбежал проворно, с салфеткой в руке, весь длинный и в длинном демикотонном сюртуке со спинкою чуть не на самом затылке, встряхнул волосами и повел проворно господина вверх по всей деревянной галдарее показывать ниспосланный ему Богом покой. Покой был известного рода, ибо гостиница была тоже известного рода, то есть именно такая, как бывают гостиницы в губернских городах, где за два рубля в сутки проезжающие получают покойную комнату с тараканами, выглядывающими, как чернослив, из всех углов, и дверью в соседнее помещение, всегда заставленную комодом, где устроивается сосед, молчаливый и спокойный человек, но чрезвычайно любопытный, интересующийся знать о всех подробностях проезжающего. Наружный фасад гостиницы отвечал ее внутренности: она была очень длинна, в два этажа; нижний не был выщекатурен и оставался в темно-красных кирпичиках, еще более потемневших от лихих погодных перемен и грязноватых уже самих по себе; верхний был выкрашен вечною желтою краскою; внизу были лавочки с хомутами, веревками и баранками. В угольной из этих лавочек, или, лучше, в окне, помещался сбитенщик с самоваром из красной меди и лицом так же красным, как самовар, так что издали можно бы подумать, что на окне стояло два самовара, если б один самовар не был с черною как смоль бородою.
|
||||
Пока приезжий господин осматривал свою комнату, внесены были его пожитки: прежде всего чемодан из белой кожи, несколько поистасканный, показывавший, что был не в первый раз в дороге. Чемодан внесли кучер Селифан, низенький человек в тулупчике, и лакей Петрушка, малый лет тридцати, в просторном подержанном сюртуке, как видно с барского плеча, малый немного суровый на взгляд, с очень крупными губами и носом. Вслед за чемоданом внесен был небольшой ларчик красного дерева с штучными выкладками из карельской березы, сапожные колодки и завернутая в синюю бумагу жареная курица. Когда все это было внесено, кучер Селифан отправился на конюшню возиться около лошадей, а лакей Петрушка стал устраиваться в маленькой передней, очень темной конурке, куда уже успел притащить свою шинель и вместе с нею какой-то свой собственный запах, который был сообщен и принесенному вслед за тем мешку с разным лакейским туалетом. В этой конурке он приладил к стене узенькую трехногую кровать, накрыв ее небольшим подобием тюфяка, убитым и плоским, как блин, и, может быть, так же замаслившимся, как блин, который удалось ему вытребовать у хозяина гостиницы.
|
||||
34
abanin_danill_lab_6/README.md
Normal file
@@ -0,0 +1,34 @@
|
||||
## Лабораторная работа №6
|
||||
|
||||
### MLPClassifier
|
||||
|
||||
## Cтудент группы ПИбд-41 Абанин Даниил
|
||||
|
||||
### Как запустить лабораторную работу:
|
||||
|
||||
* установить python, numpy, matplotlib, sklearn
|
||||
* запустить проект (lab6)
|
||||
|
||||
### Какие технологии использовались:
|
||||
|
||||
* Язык программирования `Python`, библиотеки numpy, matplotlib, sklearn
|
||||
* Среда разработки `PyCharm`
|
||||
|
||||
### Что делает лабораторная работа:
|
||||
|
||||
* По данным "Eligibility Prediction for Loan" решает задачу классификации, в которой необходимо выявить риски выдачи кредита. В качестве исходных данных используются признаки:
|
||||
Credit_History - соответствие кредитной истории стандартам банка, ApplicantIncome - доход заявителя, LoanAmount - сумма кредитаб, Self_Employed - самозанятость (Да/Нет), Education - наличие образования, Married - заявитель женат/замужем (Да/Нет).
|
||||
|
||||
### Примеры работы:
|
||||
|
||||
#### Результаты:
|
||||
* Было проведено несколько прогонов на разном количестве итераций (200, 400, 600, 800, 1000)
|
||||
|
||||

|
||||

|
||||
|
||||
Средняя точность находится в диапазоне 50-60%, что является недостаточным значением. Увеличение итераций не дало значительного улучшения результата,
|
||||
максиальный прирост составляет 10%
|
||||
|
||||
|
||||

|
||||
46
abanin_danill_lab_6/lab6.py
Normal file
@@ -0,0 +1,46 @@
|
||||
from matplotlib import pyplot as plt
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.neural_network import MLPClassifier
|
||||
import pandas as pd
|
||||
import numpy as np
|
||||
|
||||
|
||||
def test_iter(iters_num, x_train, x_test, y_train, y_test):
|
||||
|
||||
print("Количество итераций: ", iters_num)
|
||||
scores = []
|
||||
|
||||
for i in range(10):
|
||||
neuro = MLPClassifier(max_iter=iters_num)
|
||||
neuro.fit(x_train, y_train.values.ravel())
|
||||
score = neuro.score(x_test, y_test)
|
||||
print(f'Оценка №{i + 1} - {score}')
|
||||
scores.append(score)
|
||||
|
||||
mean_value = np.mean(scores)
|
||||
|
||||
print(f"Средняя оценка - {mean_value}")
|
||||
|
||||
return mean_value
|
||||
|
||||
|
||||
def start():
|
||||
data = pd.read_csv('loan.csv')
|
||||
x = data[['ApplicantIncome', 'LoanAmount', 'Credit_History', 'Self_Employed', 'Education', 'Married']]
|
||||
y = data[['Loan_Status']]
|
||||
|
||||
x_train, x_test, y_train, y_test = train_test_split(x, y, test_size=0.1, random_state=42)
|
||||
|
||||
iters = [200, 400, 600, 800, 1000]
|
||||
iters_means = []
|
||||
|
||||
for i in range(len(iters)):
|
||||
mean_value = test_iter(iters[i], x_train, x_test, y_train, y_test)
|
||||
iters_means.append(mean_value)
|
||||
|
||||
plt.figure(1, figsize=(16, 9))
|
||||
plt.plot(iters, iters_means, c='r')
|
||||
plt.show()
|
||||
|
||||
|
||||
start()
|
||||
615
abanin_danill_lab_6/loan.csv
Normal file
@@ -0,0 +1,615 @@
|
||||
Loan_ID,Gender,Married,Dependents,Education,Self_Employed,ApplicantIncome,CoapplicantIncome,LoanAmount,Loan_Amount_Term,Credit_History,Property_Area,Loan_Status
|
||||
LP001002,Male,0.0,0,1,0.0,5849,0.0,360.0,1.0,0,Y,0.0
|
||||
LP001003,Male,1.0,1,1,0.0,4583,1508.0,128.0,360.0,1,Rural,0.0
|
||||
LP001005,Male,1.0,0,1,1.0,3000,0.0,66.0,360.0,1,Urban,1.0
|
||||
LP001006,Male,1.0,0,0,0.0,2583,2358.0,120.0,360.0,1,Urban,1.0
|
||||
LP001008,Male,0.0,0,1,0.0,6000,0.0,141.0,360.0,1,Urban,1.0
|
||||
LP001011,Male,1.0,2,1,1.0,5417,4196.0,267.0,360.0,1,Urban,1.0
|
||||
LP001013,Male,1.0,0,0,0.0,2333,1516.0,95.0,360.0,1,Urban,1.0
|
||||
LP001014,Male,1.0,3+,1,0.0,3036,2504.0,158.0,360.0,0,Semiurban,0.0
|
||||
LP001018,Male,1.0,2,1,0.0,4006,1526.0,168.0,360.0,1,Urban,1.0
|
||||
LP001020,Male,1.0,1,1,0.0,12841,10968.0,349.0,360.0,1,Semiurban,0.0
|
||||
LP001024,Male,1.0,2,1,0.0,3200,700.0,70.0,360.0,1,Urban,1.0
|
||||
LP001027,Male,1.0,2,1,0.0,2500,1840.0,109.0,360.0,1,Urban,1.0
|
||||
LP001028,Male,1.0,2,1,0.0,3073,8106.0,200.0,360.0,1,Urban,1.0
|
||||
LP001029,Male,0.0,0,1,0.0,1853,2840.0,114.0,360.0,1,Rural,0.0
|
||||
LP001030,Male,1.0,2,1,0.0,1299,1086.0,17.0,120.0,1,Urban,1.0
|
||||
LP001032,Male,0.0,0,1,0.0,4950,0.0,125.0,360.0,1,Urban,1.0
|
||||
LP001034,Male,0.0,1,0,0.0,3596,0.0,100.0,240.0,0,Urban,1.0
|
||||
LP001036,Female,0.0,0,1,0.0,3510,0.0,76.0,360.0,0,Urban,0.0
|
||||
LP001038,Male,1.0,0,0,0.0,4887,0.0,133.0,360.0,1,Rural,0.0
|
||||
LP001041,Male,1.0,0,1,0.0,2600,3500.0,115.0,,1,Urban,1.0
|
||||
LP001043,Male,1.0,0,0,0.0,7660,0.0,104.0,360.0,0,Urban,0.0
|
||||
LP001046,Male,1.0,1,1,0.0,5955,5625.0,315.0,360.0,1,Urban,1.0
|
||||
LP001047,Male,1.0,0,0,0.0,2600,1911.0,116.0,360.0,0,Semiurban,0.0
|
||||
LP001050,,1.0,2,0,0.0,3365,1917.0,112.0,360.0,0,Rural,0.0
|
||||
LP001052,Male,1.0,1,1,0.0,3717,2925.0,151.0,360.0,0,Semiurban,0.0
|
||||
LP001066,Male,1.0,0,1,1.0,9560,0.0,191.0,360.0,1,Semiurban,1.0
|
||||
LP001068,Male,1.0,0,1,0.0,2799,2253.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001073,Male,1.0,2,0,0.0,4226,1040.0,110.0,360.0,1,Urban,1.0
|
||||
LP001086,Male,0.0,0,0,0.0,1442,0.0,35.0,360.0,1,Urban,0.0
|
||||
LP001087,Female,0.0,2,1,0.0,3750,2083.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001091,Male,1.0,1,1,0.0,4166,3369.0,201.0,360.0,0,Urban,0.0
|
||||
LP001095,Male,0.0,0,1,0.0,3167,0.0,74.0,360.0,1,Urban,0.0
|
||||
LP001097,Male,0.0,1,1,1.0,4692,0.0,106.0,360.0,1,Rural,0.0
|
||||
LP001098,Male,1.0,0,1,0.0,3500,1667.0,114.0,360.0,1,Semiurban,1.0
|
||||
LP001100,Male,0.0,3+,1,0.0,12500,3000.0,320.0,360.0,1,Rural,0.0
|
||||
LP001106,Male,1.0,0,1,0.0,2275,2067.0,0.0,360.0,1,Urban,1.0
|
||||
LP001109,Male,1.0,0,1,0.0,1828,1330.0,100.0,,0,Urban,0.0
|
||||
LP001112,Female,1.0,0,1,0.0,3667,1459.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001114,Male,0.0,0,1,0.0,4166,7210.0,184.0,360.0,1,Urban,1.0
|
||||
LP001116,Male,0.0,0,0,0.0,3748,1668.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP001119,Male,0.0,0,1,0.0,3600,0.0,80.0,360.0,1,Urban,0.0
|
||||
LP001120,Male,0.0,0,1,0.0,1800,1213.0,47.0,360.0,1,Urban,1.0
|
||||
LP001123,Male,1.0,0,1,0.0,2400,0.0,75.0,360.0,0,Urban,1.0
|
||||
LP001131,Male,1.0,0,1,0.0,3941,2336.0,134.0,360.0,1,Semiurban,1.0
|
||||
LP001136,Male,1.0,0,0,1.0,4695,0.0,96.0,,1,Urban,1.0
|
||||
LP001137,Female,0.0,0,1,0.0,3410,0.0,88.0,,1,Urban,1.0
|
||||
LP001138,Male,1.0,1,1,0.0,5649,0.0,44.0,360.0,1,Urban,1.0
|
||||
LP001144,Male,1.0,0,1,0.0,5821,0.0,144.0,360.0,1,Urban,1.0
|
||||
LP001146,Female,1.0,0,1,0.0,2645,3440.0,120.0,360.0,0,Urban,0.0
|
||||
LP001151,Female,0.0,0,1,0.0,4000,2275.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001155,Female,1.0,0,0,0.0,1928,1644.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001157,Female,0.0,0,1,0.0,3086,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001164,Female,0.0,0,1,0.0,4230,0.0,112.0,360.0,1,Semiurban,0.0
|
||||
LP001179,Male,1.0,2,1,0.0,4616,0.0,134.0,360.0,1,Urban,0.0
|
||||
LP001186,Female,1.0,1,1,1.0,11500,0.0,286.0,360.0,0,Urban,0.0
|
||||
LP001194,Male,1.0,2,1,0.0,2708,1167.0,97.0,360.0,1,Semiurban,1.0
|
||||
LP001195,Male,1.0,0,1,0.0,2132,1591.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP001197,Male,1.0,0,1,0.0,3366,2200.0,135.0,360.0,1,Rural,0.0
|
||||
LP001198,Male,1.0,1,1,0.0,8080,2250.0,180.0,360.0,1,Urban,1.0
|
||||
LP001199,Male,1.0,2,0,0.0,3357,2859.0,144.0,360.0,1,Urban,1.0
|
||||
LP001205,Male,1.0,0,1,0.0,2500,3796.0,120.0,360.0,1,Urban,1.0
|
||||
LP001206,Male,1.0,3+,1,0.0,3029,0.0,99.0,360.0,1,Urban,1.0
|
||||
LP001207,Male,1.0,0,0,1.0,2609,3449.0,165.0,180.0,0,Rural,0.0
|
||||
LP001213,Male,1.0,1,1,0.0,4945,0.0,0.0,360.0,0,Rural,0.0
|
||||
LP001222,Female,0.0,0,1,0.0,4166,0.0,116.0,360.0,0,Semiurban,0.0
|
||||
LP001225,Male,1.0,0,1,0.0,5726,4595.0,258.0,360.0,1,Semiurban,0.0
|
||||
LP001228,Male,0.0,0,0,0.0,3200,2254.0,126.0,180.0,0,Urban,0.0
|
||||
LP001233,Male,1.0,1,1,0.0,10750,0.0,312.0,360.0,1,Urban,1.0
|
||||
LP001238,Male,1.0,3+,0,1.0,7100,0.0,125.0,60.0,1,Urban,1.0
|
||||
LP001241,Female,0.0,0,1,0.0,4300,0.0,136.0,360.0,0,Semiurban,0.0
|
||||
LP001243,Male,1.0,0,1,0.0,3208,3066.0,172.0,360.0,1,Urban,1.0
|
||||
LP001245,Male,1.0,2,0,1.0,1875,1875.0,97.0,360.0,1,Semiurban,1.0
|
||||
LP001248,Male,0.0,0,1,0.0,3500,0.0,81.0,300.0,1,Semiurban,1.0
|
||||
LP001250,Male,1.0,3+,0,0.0,4755,0.0,95.0,,0,Semiurban,0.0
|
||||
LP001253,Male,1.0,3+,1,1.0,5266,1774.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP001255,Male,0.0,0,1,0.0,3750,0.0,113.0,480.0,1,Urban,0.0
|
||||
LP001256,Male,0.0,0,1,0.0,3750,4750.0,176.0,360.0,1,Urban,0.0
|
||||
LP001259,Male,1.0,1,1,1.0,1000,3022.0,110.0,360.0,1,Urban,0.0
|
||||
LP001263,Male,1.0,3+,1,0.0,3167,4000.0,180.0,300.0,0,Semiurban,0.0
|
||||
LP001264,Male,1.0,3+,0,1.0,3333,2166.0,130.0,360.0,0,Semiurban,1.0
|
||||
LP001265,Female,0.0,0,1,0.0,3846,0.0,111.0,360.0,1,Semiurban,1.0
|
||||
LP001266,Male,1.0,1,1,1.0,2395,0.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001267,Female,1.0,2,1,0.0,1378,1881.0,167.0,360.0,1,Urban,0.0
|
||||
LP001273,Male,1.0,0,1,0.0,6000,2250.0,265.0,360.0,0,Semiurban,0.0
|
||||
LP001275,Male,1.0,1,1,0.0,3988,0.0,50.0,240.0,1,Urban,1.0
|
||||
LP001279,Male,0.0,0,1,0.0,2366,2531.0,136.0,360.0,1,Semiurban,1.0
|
||||
LP001280,Male,1.0,2,0,0.0,3333,2000.0,99.0,360.0,0,Semiurban,1.0
|
||||
LP001282,Male,1.0,0,1,0.0,2500,2118.0,104.0,360.0,1,Semiurban,1.0
|
||||
LP001289,Male,0.0,0,1,0.0,8566,0.0,210.0,360.0,1,Urban,1.0
|
||||
LP001310,Male,1.0,0,1,0.0,5695,4167.0,175.0,360.0,1,Semiurban,1.0
|
||||
LP001316,Male,1.0,0,1,0.0,2958,2900.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001318,Male,1.0,2,1,0.0,6250,5654.0,188.0,180.0,1,Semiurban,1.0
|
||||
LP001319,Male,1.0,2,0,0.0,3273,1820.0,81.0,360.0,1,Urban,1.0
|
||||
LP001322,Male,0.0,0,1,0.0,4133,0.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001325,Male,0.0,0,0,0.0,3620,0.0,25.0,120.0,1,Semiurban,1.0
|
||||
LP001326,Male,0.0,0,1,0.0,6782,0.0,0.0,360.0,0,Urban,0.0
|
||||
LP001327,Female,1.0,0,1,0.0,2484,2302.0,137.0,360.0,1,Semiurban,1.0
|
||||
LP001333,Male,1.0,0,1,0.0,1977,997.0,50.0,360.0,1,Semiurban,1.0
|
||||
LP001334,Male,1.0,0,0,0.0,4188,0.0,115.0,180.0,1,Semiurban,1.0
|
||||
LP001343,Male,1.0,0,1,0.0,1759,3541.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001345,Male,1.0,2,0,0.0,4288,3263.0,133.0,180.0,1,Urban,1.0
|
||||
LP001349,Male,0.0,0,1,0.0,4843,3806.0,151.0,360.0,1,Semiurban,1.0
|
||||
LP001350,Male,1.0,,1,0.0,13650,0.0,0.0,360.0,1,Urban,1.0
|
||||
LP001356,Male,1.0,0,1,0.0,4652,3583.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001357,Male,0.0,,1,0.0,3816,754.0,160.0,360.0,1,Urban,1.0
|
||||
LP001367,Male,1.0,1,1,0.0,3052,1030.0,100.0,360.0,1,Urban,1.0
|
||||
LP001369,Male,1.0,2,1,0.0,11417,1126.0,225.0,360.0,1,Urban,1.0
|
||||
LP001370,Male,0.0,0,0,0.0,7333,0.0,120.0,360.0,1,Rural,0.0
|
||||
LP001379,Male,1.0,2,1,0.0,3800,3600.0,216.0,360.0,0,Urban,0.0
|
||||
LP001384,Male,1.0,3+,0,0.0,2071,754.0,94.0,480.0,1,Semiurban,1.0
|
||||
LP001385,Male,0.0,0,1,0.0,5316,0.0,136.0,360.0,1,Urban,1.0
|
||||
LP001387,Female,1.0,0,1,0.0,2929,2333.0,139.0,360.0,1,Semiurban,1.0
|
||||
LP001391,Male,1.0,0,0,0.0,3572,4114.0,152.0,,0,Rural,0.0
|
||||
LP001392,Female,0.0,1,1,1.0,7451,0.0,0.0,360.0,1,Semiurban,1.0
|
||||
LP001398,Male,0.0,0,1,0.0,5050,0.0,118.0,360.0,1,Semiurban,1.0
|
||||
LP001401,Male,1.0,1,1,0.0,14583,0.0,185.0,180.0,1,Rural,1.0
|
||||
LP001404,Female,1.0,0,1,0.0,3167,2283.0,154.0,360.0,1,Semiurban,1.0
|
||||
LP001405,Male,1.0,1,1,0.0,2214,1398.0,85.0,360.0,0,Urban,1.0
|
||||
LP001421,Male,1.0,0,1,0.0,5568,2142.0,175.0,360.0,1,Rural,0.0
|
||||
LP001422,Female,0.0,0,1,0.0,10408,0.0,259.0,360.0,1,Urban,1.0
|
||||
LP001426,Male,1.0,,1,0.0,5667,2667.0,180.0,360.0,1,Rural,1.0
|
||||
LP001430,Female,0.0,0,1,0.0,4166,0.0,44.0,360.0,1,Semiurban,1.0
|
||||
LP001431,Female,0.0,0,1,0.0,2137,8980.0,137.0,360.0,0,Semiurban,1.0
|
||||
LP001432,Male,1.0,2,1,0.0,2957,0.0,81.0,360.0,1,Semiurban,1.0
|
||||
LP001439,Male,1.0,0,0,0.0,4300,2014.0,194.0,360.0,1,Rural,1.0
|
||||
LP001443,Female,0.0,0,1,0.0,3692,0.0,93.0,360.0,0,Rural,1.0
|
||||
LP001448,,1.0,3+,1,0.0,23803,0.0,370.0,360.0,1,Rural,1.0
|
||||
LP001449,Male,0.0,0,1,0.0,3865,1640.0,0.0,360.0,1,Rural,1.0
|
||||
LP001451,Male,1.0,1,1,1.0,10513,3850.0,160.0,180.0,0,Urban,0.0
|
||||
LP001465,Male,1.0,0,1,0.0,6080,2569.0,182.0,360.0,0,Rural,0.0
|
||||
LP001469,Male,0.0,0,1,1.0,20166,0.0,650.0,480.0,0,Urban,1.0
|
||||
LP001473,Male,0.0,0,1,0.0,2014,1929.0,74.0,360.0,1,Urban,1.0
|
||||
LP001478,Male,0.0,0,1,0.0,2718,0.0,70.0,360.0,1,Semiurban,1.0
|
||||
LP001482,Male,1.0,0,1,1.0,3459,0.0,25.0,120.0,1,Semiurban,1.0
|
||||
LP001487,Male,0.0,0,1,0.0,4895,0.0,102.0,360.0,1,Semiurban,1.0
|
||||
LP001488,Male,1.0,3+,1,0.0,4000,7750.0,290.0,360.0,1,Semiurban,0.0
|
||||
LP001489,Female,1.0,0,1,0.0,4583,0.0,84.0,360.0,1,Rural,0.0
|
||||
LP001491,Male,1.0,2,1,1.0,3316,3500.0,88.0,360.0,1,Urban,1.0
|
||||
LP001492,Male,0.0,0,1,0.0,14999,0.0,242.0,360.0,0,Semiurban,0.0
|
||||
LP001493,Male,1.0,2,0,0.0,4200,1430.0,129.0,360.0,1,Rural,0.0
|
||||
LP001497,Male,1.0,2,1,0.0,5042,2083.0,185.0,360.0,1,Rural,0.0
|
||||
LP001498,Male,0.0,0,1,0.0,5417,0.0,168.0,360.0,1,Urban,1.0
|
||||
LP001504,Male,0.0,0,1,1.0,6950,0.0,175.0,180.0,1,Semiurban,1.0
|
||||
LP001507,Male,1.0,0,1,0.0,2698,2034.0,122.0,360.0,1,Semiurban,1.0
|
||||
LP001508,Male,1.0,2,1,0.0,11757,0.0,187.0,180.0,1,Urban,1.0
|
||||
LP001514,Female,1.0,0,1,0.0,2330,4486.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001516,Female,1.0,2,1,0.0,14866,0.0,70.0,360.0,1,Urban,1.0
|
||||
LP001518,Male,1.0,1,1,0.0,1538,1425.0,30.0,360.0,1,Urban,1.0
|
||||
LP001519,Female,0.0,0,1,0.0,10000,1666.0,225.0,360.0,1,Rural,0.0
|
||||
LP001520,Male,1.0,0,1,0.0,4860,830.0,125.0,360.0,1,Semiurban,1.0
|
||||
LP001528,Male,0.0,0,1,0.0,6277,0.0,118.0,360.0,0,Rural,0.0
|
||||
LP001529,Male,1.0,0,1,1.0,2577,3750.0,152.0,360.0,1,Rural,1.0
|
||||
LP001531,Male,0.0,0,1,0.0,9166,0.0,244.0,360.0,1,Urban,0.0
|
||||
LP001532,Male,1.0,2,0,0.0,2281,0.0,113.0,360.0,1,Rural,0.0
|
||||
LP001535,Male,0.0,0,1,0.0,3254,0.0,50.0,360.0,1,Urban,1.0
|
||||
LP001536,Male,1.0,3+,1,0.0,39999,0.0,600.0,180.0,0,Semiurban,1.0
|
||||
LP001541,Male,1.0,1,1,0.0,6000,0.0,160.0,360.0,0,Rural,1.0
|
||||
LP001543,Male,1.0,1,1,0.0,9538,0.0,187.0,360.0,1,Urban,1.0
|
||||
LP001546,Male,0.0,0,1,0.0,2980,2083.0,120.0,360.0,1,Rural,1.0
|
||||
LP001552,Male,1.0,0,1,0.0,4583,5625.0,255.0,360.0,1,Semiurban,1.0
|
||||
LP001560,Male,1.0,0,0,0.0,1863,1041.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP001562,Male,1.0,0,1,0.0,7933,0.0,275.0,360.0,1,Urban,0.0
|
||||
LP001565,Male,1.0,1,1,0.0,3089,1280.0,121.0,360.0,0,Semiurban,0.0
|
||||
LP001570,Male,1.0,2,1,0.0,4167,1447.0,158.0,360.0,1,Rural,1.0
|
||||
LP001572,Male,1.0,0,1,0.0,9323,0.0,75.0,180.0,1,Urban,1.0
|
||||
LP001574,Male,1.0,0,1,0.0,3707,3166.0,182.0,,1,Rural,1.0
|
||||
LP001577,Female,1.0,0,1,0.0,4583,0.0,112.0,360.0,1,Rural,0.0
|
||||
LP001578,Male,1.0,0,1,0.0,2439,3333.0,129.0,360.0,1,Rural,1.0
|
||||
LP001579,Male,0.0,0,1,0.0,2237,0.0,63.0,480.0,0,Semiurban,0.0
|
||||
LP001580,Male,1.0,2,1,0.0,8000,0.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP001581,Male,1.0,0,0,0.0,1820,1769.0,95.0,360.0,1,Rural,1.0
|
||||
LP001585,,1.0,3+,1,0.0,51763,0.0,700.0,300.0,1,Urban,1.0
|
||||
LP001586,Male,1.0,3+,0,0.0,3522,0.0,81.0,180.0,1,Rural,0.0
|
||||
LP001594,Male,1.0,0,1,0.0,5708,5625.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP001603,Male,1.0,0,0,1.0,4344,736.0,87.0,360.0,1,Semiurban,0.0
|
||||
LP001606,Male,1.0,0,1,0.0,3497,1964.0,116.0,360.0,1,Rural,1.0
|
||||
LP001608,Male,1.0,2,1,0.0,2045,1619.0,101.0,360.0,1,Rural,1.0
|
||||
LP001610,Male,1.0,3+,1,0.0,5516,11300.0,495.0,360.0,0,Semiurban,0.0
|
||||
LP001616,Male,1.0,1,1,0.0,3750,0.0,116.0,360.0,1,Semiurban,1.0
|
||||
LP001630,Male,0.0,0,0,0.0,2333,1451.0,102.0,480.0,0,Urban,0.0
|
||||
LP001633,Male,1.0,1,1,0.0,6400,7250.0,180.0,360.0,0,Urban,0.0
|
||||
LP001634,Male,0.0,0,1,0.0,1916,5063.0,67.0,360.0,0,Rural,0.0
|
||||
LP001636,Male,1.0,0,1,0.0,4600,0.0,73.0,180.0,1,Semiurban,1.0
|
||||
LP001637,Male,1.0,1,1,0.0,33846,0.0,260.0,360.0,1,Semiurban,0.0
|
||||
LP001639,Female,1.0,0,1,0.0,3625,0.0,108.0,360.0,1,Semiurban,1.0
|
||||
LP001640,Male,1.0,0,1,1.0,39147,4750.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001641,Male,1.0,1,1,1.0,2178,0.0,66.0,300.0,0,Rural,0.0
|
||||
LP001643,Male,1.0,0,1,0.0,2383,2138.0,58.0,360.0,0,Rural,1.0
|
||||
LP001644,,1.0,0,1,1.0,674,5296.0,168.0,360.0,1,Rural,1.0
|
||||
LP001647,Male,1.0,0,1,0.0,9328,0.0,188.0,180.0,1,Rural,1.0
|
||||
LP001653,Male,0.0,0,0,0.0,4885,0.0,48.0,360.0,1,Rural,1.0
|
||||
LP001656,Male,0.0,0,1,0.0,12000,0.0,164.0,360.0,1,Semiurban,0.0
|
||||
LP001657,Male,1.0,0,0,0.0,6033,0.0,160.0,360.0,1,Urban,0.0
|
||||
LP001658,Male,0.0,0,1,0.0,3858,0.0,76.0,360.0,1,Semiurban,1.0
|
||||
LP001664,Male,0.0,0,1,0.0,4191,0.0,120.0,360.0,1,Rural,1.0
|
||||
LP001665,Male,1.0,1,1,0.0,3125,2583.0,170.0,360.0,1,Semiurban,0.0
|
||||
LP001666,Male,0.0,0,1,0.0,8333,3750.0,187.0,360.0,1,Rural,1.0
|
||||
LP001669,Female,0.0,0,0,0.0,1907,2365.0,120.0,,1,Urban,1.0
|
||||
LP001671,Female,1.0,0,1,0.0,3416,2816.0,113.0,360.0,0,Semiurban,1.0
|
||||
LP001673,Male,0.0,0,1,1.0,11000,0.0,83.0,360.0,1,Urban,0.0
|
||||
LP001674,Male,1.0,1,0,0.0,2600,2500.0,90.0,360.0,1,Semiurban,1.0
|
||||
LP001677,Male,0.0,2,1,0.0,4923,0.0,166.0,360.0,0,Semiurban,1.0
|
||||
LP001682,Male,1.0,3+,0,0.0,3992,0.0,0.0,180.0,1,Urban,0.0
|
||||
LP001688,Male,1.0,1,0,0.0,3500,1083.0,135.0,360.0,1,Urban,1.0
|
||||
LP001691,Male,1.0,2,0,0.0,3917,0.0,124.0,360.0,1,Semiurban,1.0
|
||||
LP001692,Female,0.0,0,0,0.0,4408,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP001693,Female,0.0,0,1,0.0,3244,0.0,80.0,360.0,1,Urban,1.0
|
||||
LP001698,Male,0.0,0,0,0.0,3975,2531.0,55.0,360.0,1,Rural,1.0
|
||||
LP001699,Male,0.0,0,1,0.0,2479,0.0,59.0,360.0,1,Urban,1.0
|
||||
LP001702,Male,0.0,0,1,0.0,3418,0.0,127.0,360.0,1,Semiurban,0.0
|
||||
LP001708,Female,0.0,0,1,0.0,10000,0.0,214.0,360.0,1,Semiurban,0.0
|
||||
LP001711,Male,1.0,3+,1,0.0,3430,1250.0,128.0,360.0,0,Semiurban,0.0
|
||||
LP001713,Male,1.0,1,1,1.0,7787,0.0,240.0,360.0,1,Urban,1.0
|
||||
LP001715,Male,1.0,3+,0,1.0,5703,0.0,130.0,360.0,1,Rural,1.0
|
||||
LP001716,Male,1.0,0,1,0.0,3173,3021.0,137.0,360.0,1,Urban,1.0
|
||||
LP001720,Male,1.0,3+,0,0.0,3850,983.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP001722,Male,1.0,0,1,0.0,150,1800.0,135.0,360.0,1,Rural,0.0
|
||||
LP001726,Male,1.0,0,1,0.0,3727,1775.0,131.0,360.0,1,Semiurban,1.0
|
||||
LP001732,Male,1.0,2,1,0.0,5000,0.0,72.0,360.0,0,Semiurban,0.0
|
||||
LP001734,Female,1.0,2,1,0.0,4283,2383.0,127.0,360.0,0,Semiurban,1.0
|
||||
LP001736,Male,1.0,0,1,0.0,2221,0.0,60.0,360.0,0,Urban,0.0
|
||||
LP001743,Male,1.0,2,1,0.0,4009,1717.0,116.0,360.0,1,Semiurban,1.0
|
||||
LP001744,Male,0.0,0,1,0.0,2971,2791.0,144.0,360.0,1,Semiurban,1.0
|
||||
LP001749,Male,1.0,0,1,0.0,7578,1010.0,175.0,,1,Semiurban,1.0
|
||||
LP001750,Male,1.0,0,1,0.0,6250,0.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP001751,Male,1.0,0,1,0.0,3250,0.0,170.0,360.0,1,Rural,0.0
|
||||
LP001754,Male,1.0,,0,1.0,4735,0.0,138.0,360.0,1,Urban,0.0
|
||||
LP001758,Male,1.0,2,1,0.0,6250,1695.0,210.0,360.0,1,Semiurban,1.0
|
||||
LP001760,Male,0.0,,1,0.0,4758,0.0,158.0,480.0,1,Semiurban,1.0
|
||||
LP001761,Male,0.0,0,1,1.0,6400,0.0,200.0,360.0,1,Rural,1.0
|
||||
LP001765,Male,1.0,1,1,0.0,2491,2054.0,104.0,360.0,1,Semiurban,1.0
|
||||
LP001768,Male,1.0,0,1,0.0,3716,0.0,42.0,180.0,1,Rural,1.0
|
||||
LP001770,Male,0.0,0,0,0.0,3189,2598.0,120.0,,1,Rural,1.0
|
||||
LP001776,Female,0.0,0,1,0.0,8333,0.0,280.0,360.0,1,Semiurban,1.0
|
||||
LP001778,Male,1.0,1,1,0.0,3155,1779.0,140.0,360.0,1,Semiurban,1.0
|
||||
LP001784,Male,1.0,1,1,0.0,5500,1260.0,170.0,360.0,1,Rural,1.0
|
||||
LP001786,Male,1.0,0,1,0.0,5746,0.0,255.0,360.0,0,Urban,0.0
|
||||
LP001788,Female,0.0,0,1,1.0,3463,0.0,122.0,360.0,0,Urban,1.0
|
||||
LP001790,Female,0.0,1,1,0.0,3812,0.0,112.0,360.0,1,Rural,1.0
|
||||
LP001792,Male,1.0,1,1,0.0,3315,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP001798,Male,1.0,2,1,0.0,5819,5000.0,120.0,360.0,1,Rural,1.0
|
||||
LP001800,Male,1.0,1,0,0.0,2510,1983.0,140.0,180.0,1,Urban,0.0
|
||||
LP001806,Male,0.0,0,1,0.0,2965,5701.0,155.0,60.0,1,Urban,1.0
|
||||
LP001807,Male,1.0,2,1,1.0,6250,1300.0,108.0,360.0,1,Rural,1.0
|
||||
LP001811,Male,1.0,0,0,0.0,3406,4417.0,123.0,360.0,1,Semiurban,1.0
|
||||
LP001813,Male,0.0,0,1,1.0,6050,4333.0,120.0,180.0,1,Urban,0.0
|
||||
LP001814,Male,1.0,2,1,0.0,9703,0.0,112.0,360.0,1,Urban,1.0
|
||||
LP001819,Male,1.0,1,0,0.0,6608,0.0,137.0,180.0,1,Urban,1.0
|
||||
LP001824,Male,1.0,1,1,0.0,2882,1843.0,123.0,480.0,1,Semiurban,1.0
|
||||
LP001825,Male,1.0,0,1,0.0,1809,1868.0,90.0,360.0,1,Urban,1.0
|
||||
LP001835,Male,1.0,0,0,0.0,1668,3890.0,201.0,360.0,0,Semiurban,0.0
|
||||
LP001836,Female,0.0,2,1,0.0,3427,0.0,138.0,360.0,1,Urban,0.0
|
||||
LP001841,Male,0.0,0,0,1.0,2583,2167.0,104.0,360.0,1,Rural,1.0
|
||||
LP001843,Male,1.0,1,0,0.0,2661,7101.0,279.0,180.0,1,Semiurban,1.0
|
||||
LP001844,Male,0.0,0,1,1.0,16250,0.0,192.0,360.0,0,Urban,0.0
|
||||
LP001846,Female,0.0,3+,1,0.0,3083,0.0,255.0,360.0,1,Rural,1.0
|
||||
LP001849,Male,0.0,0,0,0.0,6045,0.0,115.0,360.0,0,Rural,0.0
|
||||
LP001854,Male,1.0,3+,1,0.0,5250,0.0,94.0,360.0,1,Urban,0.0
|
||||
LP001859,Male,1.0,0,1,0.0,14683,2100.0,304.0,360.0,1,Rural,0.0
|
||||
LP001864,Male,1.0,3+,0,0.0,4931,0.0,128.0,360.0,0,Semiurban,0.0
|
||||
LP001865,Male,1.0,1,1,0.0,6083,4250.0,330.0,360.0,0,Urban,1.0
|
||||
LP001868,Male,0.0,0,1,0.0,2060,2209.0,134.0,360.0,1,Semiurban,1.0
|
||||
LP001870,Female,0.0,1,1,0.0,3481,0.0,155.0,36.0,1,Semiurban,0.0
|
||||
LP001871,Female,0.0,0,1,0.0,7200,0.0,120.0,360.0,1,Rural,1.0
|
||||
LP001872,Male,0.0,0,1,1.0,5166,0.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP001875,Male,0.0,0,1,0.0,4095,3447.0,151.0,360.0,1,Rural,1.0
|
||||
LP001877,Male,1.0,2,1,0.0,4708,1387.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP001882,Male,1.0,3+,1,0.0,4333,1811.0,160.0,360.0,0,Urban,1.0
|
||||
LP001883,Female,0.0,0,1,0.0,3418,0.0,135.0,360.0,1,Rural,0.0
|
||||
LP001884,Female,0.0,1,1,0.0,2876,1560.0,90.0,360.0,1,Urban,1.0
|
||||
LP001888,Female,0.0,0,1,0.0,3237,0.0,30.0,360.0,1,Urban,1.0
|
||||
LP001891,Male,1.0,0,1,0.0,11146,0.0,136.0,360.0,1,Urban,1.0
|
||||
LP001892,Male,0.0,0,1,0.0,2833,1857.0,126.0,360.0,1,Rural,1.0
|
||||
LP001894,Male,1.0,0,1,0.0,2620,2223.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP001896,Male,1.0,2,1,0.0,3900,0.0,90.0,360.0,1,Semiurban,1.0
|
||||
LP001900,Male,1.0,1,1,0.0,2750,1842.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP001903,Male,1.0,0,1,0.0,3993,3274.0,207.0,360.0,1,Semiurban,1.0
|
||||
LP001904,Male,1.0,0,1,0.0,3103,1300.0,80.0,360.0,1,Urban,1.0
|
||||
LP001907,Male,1.0,0,1,0.0,14583,0.0,436.0,360.0,1,Semiurban,1.0
|
||||
LP001908,Female,1.0,0,0,0.0,4100,0.0,124.0,360.0,0,Rural,1.0
|
||||
LP001910,Male,0.0,1,0,1.0,4053,2426.0,158.0,360.0,0,Urban,0.0
|
||||
LP001914,Male,1.0,0,1,0.0,3927,800.0,112.0,360.0,1,Semiurban,1.0
|
||||
LP001915,Male,1.0,2,1,0.0,2301,985.7999878,78.0,180.0,1,Urban,1.0
|
||||
LP001917,Female,0.0,0,1,0.0,1811,1666.0,54.0,360.0,1,Urban,1.0
|
||||
LP001922,Male,1.0,0,1,0.0,20667,0.0,0.0,360.0,1,Rural,0.0
|
||||
LP001924,Male,0.0,0,1,0.0,3158,3053.0,89.0,360.0,1,Rural,1.0
|
||||
LP001925,Female,0.0,0,1,1.0,2600,1717.0,99.0,300.0,1,Semiurban,0.0
|
||||
LP001926,Male,1.0,0,1,0.0,3704,2000.0,120.0,360.0,1,Rural,1.0
|
||||
LP001931,Female,0.0,0,1,0.0,4124,0.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP001935,Male,0.0,0,1,0.0,9508,0.0,187.0,360.0,1,Rural,1.0
|
||||
LP001936,Male,1.0,0,1,0.0,3075,2416.0,139.0,360.0,1,Rural,1.0
|
||||
LP001938,Male,1.0,2,1,0.0,4400,0.0,127.0,360.0,0,Semiurban,0.0
|
||||
LP001940,Male,1.0,2,1,0.0,3153,1560.0,134.0,360.0,1,Urban,1.0
|
||||
LP001945,Female,0.0,,1,0.0,5417,0.0,143.0,480.0,0,Urban,0.0
|
||||
LP001947,Male,1.0,0,1,0.0,2383,3334.0,172.0,360.0,1,Semiurban,1.0
|
||||
LP001949,Male,1.0,3+,1,0.0,4416,1250.0,110.0,360.0,1,Urban,1.0
|
||||
LP001953,Male,1.0,1,1,0.0,6875,0.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP001954,Female,1.0,1,1,0.0,4666,0.0,135.0,360.0,1,Urban,1.0
|
||||
LP001955,Female,0.0,0,1,0.0,5000,2541.0,151.0,480.0,1,Rural,0.0
|
||||
LP001963,Male,1.0,1,1,0.0,2014,2925.0,113.0,360.0,1,Urban,0.0
|
||||
LP001964,Male,1.0,0,0,0.0,1800,2934.0,93.0,360.0,0,Urban,0.0
|
||||
LP001972,Male,1.0,,0,0.0,2875,1750.0,105.0,360.0,1,Semiurban,1.0
|
||||
LP001974,Female,0.0,0,1,0.0,5000,0.0,132.0,360.0,1,Rural,1.0
|
||||
LP001977,Male,1.0,1,1,0.0,1625,1803.0,96.0,360.0,1,Urban,1.0
|
||||
LP001978,Male,0.0,0,1,0.0,4000,2500.0,140.0,360.0,1,Rural,1.0
|
||||
LP001990,Male,0.0,0,0,0.0,2000,0.0,0.0,360.0,1,Urban,0.0
|
||||
LP001993,Female,0.0,0,1,0.0,3762,1666.0,135.0,360.0,1,Rural,1.0
|
||||
LP001994,Female,0.0,0,1,0.0,2400,1863.0,104.0,360.0,0,Urban,0.0
|
||||
LP001996,Male,0.0,0,1,0.0,20233,0.0,480.0,360.0,1,Rural,0.0
|
||||
LP001998,Male,1.0,2,0,0.0,7667,0.0,185.0,360.0,0,Rural,1.0
|
||||
LP002002,Female,0.0,0,1,0.0,2917,0.0,84.0,360.0,1,Semiurban,1.0
|
||||
LP002004,Male,0.0,0,0,0.0,2927,2405.0,111.0,360.0,1,Semiurban,1.0
|
||||
LP002006,Female,0.0,0,1,0.0,2507,0.0,56.0,360.0,1,Rural,1.0
|
||||
LP002008,Male,1.0,2,1,1.0,5746,0.0,144.0,84.0,0,Rural,1.0
|
||||
LP002024,,1.0,0,1,0.0,2473,1843.0,159.0,360.0,1,Rural,0.0
|
||||
LP002031,Male,1.0,1,0,0.0,3399,1640.0,111.0,180.0,1,Urban,1.0
|
||||
LP002035,Male,1.0,2,1,0.0,3717,0.0,120.0,360.0,1,Semiurban,1.0
|
||||
LP002036,Male,1.0,0,1,0.0,2058,2134.0,88.0,360.0,0,Urban,1.0
|
||||
LP002043,Female,0.0,1,1,0.0,3541,0.0,112.0,360.0,0,Semiurban,1.0
|
||||
LP002050,Male,1.0,1,1,1.0,10000,0.0,155.0,360.0,1,Rural,0.0
|
||||
LP002051,Male,1.0,0,1,0.0,2400,2167.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP002053,Male,1.0,3+,1,0.0,4342,189.0,124.0,360.0,1,Semiurban,1.0
|
||||
LP002054,Male,1.0,2,0,0.0,3601,1590.0,0.0,360.0,1,Rural,1.0
|
||||
LP002055,Female,0.0,0,1,0.0,3166,2985.0,132.0,360.0,0,Rural,1.0
|
||||
LP002065,Male,1.0,3+,1,0.0,15000,0.0,300.0,360.0,1,Rural,1.0
|
||||
LP002067,Male,1.0,1,1,1.0,8666,4983.0,376.0,360.0,0,Rural,0.0
|
||||
LP002068,Male,0.0,0,1,0.0,4917,0.0,130.0,360.0,0,Rural,1.0
|
||||
LP002082,Male,1.0,0,1,1.0,5818,2160.0,184.0,360.0,1,Semiurban,1.0
|
||||
LP002086,Female,1.0,0,1,0.0,4333,2451.0,110.0,360.0,1,Urban,0.0
|
||||
LP002087,Female,0.0,0,1,0.0,2500,0.0,67.0,360.0,1,Urban,1.0
|
||||
LP002097,Male,0.0,1,1,0.0,4384,1793.0,117.0,360.0,1,Urban,1.0
|
||||
LP002098,Male,0.0,0,1,0.0,2935,0.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP002100,Male,0.0,,1,0.0,2833,0.0,71.0,360.0,1,Urban,1.0
|
||||
LP002101,Male,1.0,0,1,0.0,63337,0.0,490.0,180.0,1,Urban,1.0
|
||||
LP002103,,1.0,1,1,1.0,9833,1833.0,182.0,180.0,1,Urban,1.0
|
||||
LP002106,Male,1.0,,1,1.0,5503,4490.0,70.0,,1,Semiurban,1.0
|
||||
LP002110,Male,1.0,1,1,0.0,5250,688.0,160.0,360.0,1,Rural,1.0
|
||||
LP002112,Male,1.0,2,1,1.0,2500,4600.0,176.0,360.0,1,Rural,1.0
|
||||
LP002113,Female,0.0,3+,0,0.0,1830,0.0,0.0,360.0,0,Urban,0.0
|
||||
LP002114,Female,0.0,0,1,0.0,4160,0.0,71.0,360.0,1,Semiurban,1.0
|
||||
LP002115,Male,1.0,3+,0,0.0,2647,1587.0,173.0,360.0,1,Rural,0.0
|
||||
LP002116,Female,0.0,0,1,0.0,2378,0.0,46.0,360.0,1,Rural,0.0
|
||||
LP002119,Male,1.0,1,0,0.0,4554,1229.0,158.0,360.0,1,Urban,1.0
|
||||
LP002126,Male,1.0,3+,0,0.0,3173,0.0,74.0,360.0,1,Semiurban,1.0
|
||||
LP002128,Male,1.0,2,1,0.0,2583,2330.0,125.0,360.0,1,Rural,1.0
|
||||
LP002129,Male,1.0,0,1,0.0,2499,2458.0,160.0,360.0,1,Semiurban,1.0
|
||||
LP002130,Male,1.0,,0,0.0,3523,3230.0,152.0,360.0,0,Rural,0.0
|
||||
LP002131,Male,1.0,2,0,0.0,3083,2168.0,126.0,360.0,1,Urban,1.0
|
||||
LP002137,Male,1.0,0,1,0.0,6333,4583.0,259.0,360.0,0,Semiurban,1.0
|
||||
LP002138,Male,1.0,0,1,0.0,2625,6250.0,187.0,360.0,1,Rural,1.0
|
||||
LP002139,Male,1.0,0,1,0.0,9083,0.0,228.0,360.0,1,Semiurban,1.0
|
||||
LP002140,Male,0.0,0,1,0.0,8750,4167.0,308.0,360.0,1,Rural,0.0
|
||||
LP002141,Male,1.0,3+,1,0.0,2666,2083.0,95.0,360.0,1,Rural,1.0
|
||||
LP002142,Female,1.0,0,1,1.0,5500,0.0,105.0,360.0,0,Rural,0.0
|
||||
LP002143,Female,1.0,0,1,0.0,2423,505.0,130.0,360.0,1,Semiurban,1.0
|
||||
LP002144,Female,0.0,,1,0.0,3813,0.0,116.0,180.0,1,Urban,1.0
|
||||
LP002149,Male,1.0,2,1,0.0,8333,3167.0,165.0,360.0,1,Rural,1.0
|
||||
LP002151,Male,1.0,1,1,0.0,3875,0.0,67.0,360.0,1,Urban,0.0
|
||||
LP002158,Male,1.0,0,0,0.0,3000,1666.0,100.0,480.0,0,Urban,0.0
|
||||
LP002160,Male,1.0,3+,1,0.0,5167,3167.0,200.0,360.0,1,Semiurban,1.0
|
||||
LP002161,Female,0.0,1,1,0.0,4723,0.0,81.0,360.0,1,Semiurban,0.0
|
||||
LP002170,Male,1.0,2,1,0.0,5000,3667.0,236.0,360.0,1,Semiurban,1.0
|
||||
LP002175,Male,1.0,0,1,0.0,4750,2333.0,130.0,360.0,1,Urban,1.0
|
||||
LP002178,Male,1.0,0,1,0.0,3013,3033.0,95.0,300.0,0,Urban,1.0
|
||||
LP002180,Male,0.0,0,1,1.0,6822,0.0,141.0,360.0,1,Rural,1.0
|
||||
LP002181,Male,0.0,0,0,0.0,6216,0.0,133.0,360.0,1,Rural,0.0
|
||||
LP002187,Male,0.0,0,1,0.0,2500,0.0,96.0,480.0,1,Semiurban,0.0
|
||||
LP002188,Male,0.0,0,1,0.0,5124,0.0,124.0,,0,Rural,0.0
|
||||
LP002190,Male,1.0,1,1,0.0,6325,0.0,175.0,360.0,1,Semiurban,1.0
|
||||
LP002191,Male,1.0,0,1,0.0,19730,5266.0,570.0,360.0,1,Rural,0.0
|
||||
LP002194,Female,0.0,0,1,1.0,15759,0.0,55.0,360.0,1,Semiurban,1.0
|
||||
LP002197,Male,1.0,2,1,0.0,5185,0.0,155.0,360.0,1,Semiurban,1.0
|
||||
LP002201,Male,1.0,2,1,1.0,9323,7873.0,380.0,300.0,1,Rural,1.0
|
||||
LP002205,Male,0.0,1,1,0.0,3062,1987.0,111.0,180.0,0,Urban,0.0
|
||||
LP002209,Female,0.0,0,1,0.0,2764,1459.0,110.0,360.0,1,Urban,1.0
|
||||
LP002211,Male,1.0,0,1,0.0,4817,923.0,120.0,180.0,1,Urban,1.0
|
||||
LP002219,Male,1.0,3+,1,0.0,8750,4996.0,130.0,360.0,1,Rural,1.0
|
||||
LP002223,Male,1.0,0,1,0.0,4310,0.0,130.0,360.0,0,Semiurban,1.0
|
||||
LP002224,Male,0.0,0,1,0.0,3069,0.0,71.0,480.0,1,Urban,0.0
|
||||
LP002225,Male,1.0,2,1,0.0,5391,0.0,130.0,360.0,1,Urban,1.0
|
||||
LP002226,Male,1.0,0,1,0.0,3333,2500.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP002229,Male,0.0,0,1,0.0,5941,4232.0,296.0,360.0,1,Semiurban,1.0
|
||||
LP002231,Female,0.0,0,1,0.0,6000,0.0,156.0,360.0,1,Urban,1.0
|
||||
LP002234,Male,0.0,0,1,1.0,7167,0.0,128.0,360.0,1,Urban,1.0
|
||||
LP002236,Male,1.0,2,1,0.0,4566,0.0,100.0,360.0,1,Urban,0.0
|
||||
LP002237,Male,0.0,1,1,0.0,3667,0.0,113.0,180.0,1,Urban,1.0
|
||||
LP002239,Male,0.0,0,0,0.0,2346,1600.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002243,Male,1.0,0,0,0.0,3010,3136.0,0.0,360.0,0,Urban,0.0
|
||||
LP002244,Male,1.0,0,1,0.0,2333,2417.0,136.0,360.0,1,Urban,1.0
|
||||
LP002250,Male,1.0,0,1,0.0,5488,0.0,125.0,360.0,1,Rural,1.0
|
||||
LP002255,Male,0.0,3+,1,0.0,9167,0.0,185.0,360.0,1,Rural,1.0
|
||||
LP002262,Male,1.0,3+,1,0.0,9504,0.0,275.0,360.0,1,Rural,1.0
|
||||
LP002263,Male,1.0,0,1,0.0,2583,2115.0,120.0,360.0,0,Urban,1.0
|
||||
LP002265,Male,1.0,2,0,0.0,1993,1625.0,113.0,180.0,1,Semiurban,1.0
|
||||
LP002266,Male,1.0,2,1,0.0,3100,1400.0,113.0,360.0,1,Urban,1.0
|
||||
LP002272,Male,1.0,2,1,0.0,3276,484.0,135.0,360.0,0,Semiurban,1.0
|
||||
LP002277,Female,0.0,0,1,0.0,3180,0.0,71.0,360.0,0,Urban,0.0
|
||||
LP002281,Male,1.0,0,1,0.0,3033,1459.0,95.0,360.0,1,Urban,1.0
|
||||
LP002284,Male,0.0,0,0,0.0,3902,1666.0,109.0,360.0,1,Rural,1.0
|
||||
LP002287,Female,0.0,0,1,0.0,1500,1800.0,103.0,360.0,0,Semiurban,0.0
|
||||
LP002288,Male,1.0,2,0,0.0,2889,0.0,45.0,180.0,0,Urban,0.0
|
||||
LP002296,Male,0.0,0,0,0.0,2755,0.0,65.0,300.0,1,Rural,0.0
|
||||
LP002297,Male,0.0,0,1,0.0,2500,20000.0,103.0,360.0,1,Semiurban,1.0
|
||||
LP002300,Female,0.0,0,0,0.0,1963,0.0,53.0,360.0,1,Semiurban,1.0
|
||||
LP002301,Female,0.0,0,1,1.0,7441,0.0,194.0,360.0,1,Rural,0.0
|
||||
LP002305,Female,0.0,0,1,0.0,4547,0.0,115.0,360.0,1,Semiurban,1.0
|
||||
LP002308,Male,1.0,0,0,0.0,2167,2400.0,115.0,360.0,1,Urban,1.0
|
||||
LP002314,Female,0.0,0,0,0.0,2213,0.0,66.0,360.0,1,Rural,1.0
|
||||
LP002315,Male,1.0,1,1,0.0,8300,0.0,152.0,300.0,0,Semiurban,0.0
|
||||
LP002317,Male,1.0,3+,1,0.0,81000,0.0,360.0,360.0,0,Rural,0.0
|
||||
LP002318,Female,0.0,1,0,1.0,3867,0.0,62.0,360.0,1,Semiurban,0.0
|
||||
LP002319,Male,1.0,0,1,0.0,6256,0.0,160.0,360.0,0,Urban,1.0
|
||||
LP002328,Male,1.0,0,0,0.0,6096,0.0,218.0,360.0,0,Rural,0.0
|
||||
LP002332,Male,1.0,0,0,0.0,2253,2033.0,110.0,360.0,1,Rural,1.0
|
||||
LP002335,Female,1.0,0,0,0.0,2149,3237.0,178.0,360.0,0,Semiurban,0.0
|
||||
LP002337,Female,0.0,0,1,0.0,2995,0.0,60.0,360.0,1,Urban,1.0
|
||||
LP002341,Female,0.0,1,1,0.0,2600,0.0,160.0,360.0,1,Urban,0.0
|
||||
LP002342,Male,1.0,2,1,1.0,1600,20000.0,239.0,360.0,1,Urban,0.0
|
||||
LP002345,Male,1.0,0,1,0.0,1025,2773.0,112.0,360.0,1,Rural,1.0
|
||||
LP002347,Male,1.0,0,1,0.0,3246,1417.0,138.0,360.0,1,Semiurban,1.0
|
||||
LP002348,Male,1.0,0,1,0.0,5829,0.0,138.0,360.0,1,Rural,1.0
|
||||
LP002357,Female,0.0,0,0,0.0,2720,0.0,80.0,,0,Urban,0.0
|
||||
LP002361,Male,1.0,0,1,0.0,1820,1719.0,100.0,360.0,1,Urban,1.0
|
||||
LP002362,Male,1.0,1,1,0.0,7250,1667.0,110.0,,0,Urban,0.0
|
||||
LP002364,Male,1.0,0,1,0.0,14880,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP002366,Male,1.0,0,1,0.0,2666,4300.0,121.0,360.0,1,Rural,1.0
|
||||
LP002367,Female,0.0,1,0,0.0,4606,0.0,81.0,360.0,1,Rural,0.0
|
||||
LP002368,Male,1.0,2,1,0.0,5935,0.0,133.0,360.0,1,Semiurban,1.0
|
||||
LP002369,Male,1.0,0,1,0.0,2920,16.12000084,87.0,360.0,1,Rural,1.0
|
||||
LP002370,Male,0.0,0,0,0.0,2717,0.0,60.0,180.0,1,Urban,1.0
|
||||
LP002377,Female,0.0,1,1,1.0,8624,0.0,150.0,360.0,1,Semiurban,1.0
|
||||
LP002379,Male,0.0,0,1,0.0,6500,0.0,105.0,360.0,0,Rural,0.0
|
||||
LP002386,Male,0.0,0,1,0.0,12876,0.0,405.0,360.0,1,Semiurban,1.0
|
||||
LP002387,Male,1.0,0,1,0.0,2425,2340.0,143.0,360.0,1,Semiurban,1.0
|
||||
LP002390,Male,0.0,0,1,0.0,3750,0.0,100.0,360.0,1,Urban,1.0
|
||||
LP002393,Female,0.0,,1,0.0,10047,0.0,0.0,240.0,1,Semiurban,1.0
|
||||
LP002398,Male,0.0,0,1,0.0,1926,1851.0,50.0,360.0,1,Semiurban,1.0
|
||||
LP002401,Male,1.0,0,1,0.0,2213,1125.0,0.0,360.0,1,Urban,1.0
|
||||
LP002403,Male,0.0,0,1,1.0,10416,0.0,187.0,360.0,0,Urban,0.0
|
||||
LP002407,Female,1.0,0,0,1.0,7142,0.0,138.0,360.0,1,Rural,1.0
|
||||
LP002408,Male,0.0,0,1,0.0,3660,5064.0,187.0,360.0,1,Semiurban,1.0
|
||||
LP002409,Male,1.0,0,1,0.0,7901,1833.0,180.0,360.0,1,Rural,1.0
|
||||
LP002418,Male,0.0,3+,0,0.0,4707,1993.0,148.0,360.0,1,Semiurban,1.0
|
||||
LP002422,Male,0.0,1,1,0.0,37719,0.0,152.0,360.0,1,Semiurban,1.0
|
||||
LP002424,Male,1.0,0,1,0.0,7333,8333.0,175.0,300.0,0,Rural,1.0
|
||||
LP002429,Male,1.0,1,1,1.0,3466,1210.0,130.0,360.0,1,Rural,1.0
|
||||
LP002434,Male,1.0,2,0,0.0,4652,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002435,Male,1.0,0,1,0.0,3539,1376.0,55.0,360.0,1,Rural,0.0
|
||||
LP002443,Male,1.0,2,1,0.0,3340,1710.0,150.0,360.0,0,Rural,0.0
|
||||
LP002444,Male,0.0,1,0,1.0,2769,1542.0,190.0,360.0,0,Semiurban,0.0
|
||||
LP002446,Male,1.0,2,0,0.0,2309,1255.0,125.0,360.0,0,Rural,0.0
|
||||
LP002447,Male,1.0,2,0,0.0,1958,1456.0,60.0,300.0,0,Urban,1.0
|
||||
LP002448,Male,1.0,0,1,0.0,3948,1733.0,149.0,360.0,0,Rural,0.0
|
||||
LP002449,Male,1.0,0,1,0.0,2483,2466.0,90.0,180.0,0,Rural,1.0
|
||||
LP002453,Male,0.0,0,1,1.0,7085,0.0,84.0,360.0,1,Semiurban,1.0
|
||||
LP002455,Male,1.0,2,1,0.0,3859,0.0,96.0,360.0,1,Semiurban,1.0
|
||||
LP002459,Male,1.0,0,1,0.0,4301,0.0,118.0,360.0,1,Urban,1.0
|
||||
LP002467,Male,1.0,0,1,0.0,3708,2569.0,173.0,360.0,1,Urban,0.0
|
||||
LP002472,Male,0.0,2,1,0.0,4354,0.0,136.0,360.0,1,Rural,1.0
|
||||
LP002473,Male,1.0,0,1,0.0,8334,0.0,160.0,360.0,1,Semiurban,0.0
|
||||
LP002478,,1.0,0,1,1.0,2083,4083.0,160.0,360.0,0,Semiurban,1.0
|
||||
LP002484,Male,1.0,3+,1,0.0,7740,0.0,128.0,180.0,1,Urban,1.0
|
||||
LP002487,Male,1.0,0,1,0.0,3015,2188.0,153.0,360.0,1,Rural,1.0
|
||||
LP002489,Female,0.0,1,0,0.0,5191,0.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002493,Male,0.0,0,1,0.0,4166,0.0,98.0,360.0,0,Semiurban,0.0
|
||||
LP002494,Male,0.0,0,1,0.0,6000,0.0,140.0,360.0,1,Rural,1.0
|
||||
LP002500,Male,1.0,3+,0,0.0,2947,1664.0,70.0,180.0,0,Urban,0.0
|
||||
LP002501,,1.0,0,1,0.0,16692,0.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP002502,Female,1.0,2,0,0.0,210,2917.0,98.0,360.0,1,Semiurban,1.0
|
||||
LP002505,Male,1.0,0,1,0.0,4333,2451.0,110.0,360.0,1,Urban,0.0
|
||||
LP002515,Male,1.0,1,1,1.0,3450,2079.0,162.0,360.0,1,Semiurban,1.0
|
||||
LP002517,Male,1.0,1,0,0.0,2653,1500.0,113.0,180.0,0,Rural,0.0
|
||||
LP002519,Male,1.0,3+,1,0.0,4691,0.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP002522,Female,0.0,0,1,1.0,2500,0.0,93.0,360.0,0,Urban,1.0
|
||||
LP002524,Male,0.0,2,1,0.0,5532,4648.0,162.0,360.0,1,Rural,1.0
|
||||
LP002527,Male,1.0,2,1,1.0,16525,1014.0,150.0,360.0,1,Rural,1.0
|
||||
LP002529,Male,1.0,2,1,0.0,6700,1750.0,230.0,300.0,1,Semiurban,1.0
|
||||
LP002530,,1.0,2,1,0.0,2873,1872.0,132.0,360.0,0,Semiurban,0.0
|
||||
LP002531,Male,1.0,1,1,1.0,16667,2250.0,86.0,360.0,1,Semiurban,1.0
|
||||
LP002533,Male,1.0,2,1,0.0,2947,1603.0,0.0,360.0,1,Urban,0.0
|
||||
LP002534,Female,0.0,0,0,0.0,4350,0.0,154.0,360.0,1,Rural,1.0
|
||||
LP002536,Male,1.0,3+,0,0.0,3095,0.0,113.0,360.0,1,Rural,1.0
|
||||
LP002537,Male,1.0,0,1,0.0,2083,3150.0,128.0,360.0,1,Semiurban,1.0
|
||||
LP002541,Male,1.0,0,1,0.0,10833,0.0,234.0,360.0,1,Semiurban,1.0
|
||||
LP002543,Male,1.0,2,1,0.0,8333,0.0,246.0,360.0,1,Semiurban,1.0
|
||||
LP002544,Male,1.0,1,0,0.0,1958,2436.0,131.0,360.0,1,Rural,1.0
|
||||
LP002545,Male,0.0,2,1,0.0,3547,0.0,80.0,360.0,0,Rural,0.0
|
||||
LP002547,Male,1.0,1,1,0.0,18333,0.0,500.0,360.0,1,Urban,0.0
|
||||
LP002555,Male,1.0,2,1,1.0,4583,2083.0,160.0,360.0,1,Semiurban,1.0
|
||||
LP002556,Male,0.0,0,1,0.0,2435,0.0,75.0,360.0,1,Urban,0.0
|
||||
LP002560,Male,0.0,0,0,0.0,2699,2785.0,96.0,360.0,0,Semiurban,1.0
|
||||
LP002562,Male,1.0,1,0,0.0,5333,1131.0,186.0,360.0,0,Urban,1.0
|
||||
LP002571,Male,0.0,0,0,0.0,3691,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002582,Female,0.0,0,0,1.0,17263,0.0,225.0,360.0,1,Semiurban,1.0
|
||||
LP002585,Male,1.0,0,1,0.0,3597,2157.0,119.0,360.0,0,Rural,0.0
|
||||
LP002586,Female,1.0,1,1,0.0,3326,913.0,105.0,84.0,1,Semiurban,1.0
|
||||
LP002587,Male,1.0,0,0,0.0,2600,1700.0,107.0,360.0,1,Rural,1.0
|
||||
LP002588,Male,1.0,0,1,0.0,4625,2857.0,111.0,12.0,0,Urban,1.0
|
||||
LP002600,Male,1.0,1,1,1.0,2895,0.0,95.0,360.0,1,Semiurban,1.0
|
||||
LP002602,Male,0.0,0,1,0.0,6283,4416.0,209.0,360.0,0,Rural,0.0
|
||||
LP002603,Female,0.0,0,1,0.0,645,3683.0,113.0,480.0,1,Rural,1.0
|
||||
LP002606,Female,0.0,0,1,0.0,3159,0.0,100.0,360.0,1,Semiurban,1.0
|
||||
LP002615,Male,1.0,2,1,0.0,4865,5624.0,208.0,360.0,1,Semiurban,1.0
|
||||
LP002618,Male,1.0,1,0,0.0,4050,5302.0,138.0,360.0,0,Rural,0.0
|
||||
LP002619,Male,1.0,0,0,0.0,3814,1483.0,124.0,300.0,1,Semiurban,1.0
|
||||
LP002622,Male,1.0,2,1,0.0,3510,4416.0,243.0,360.0,1,Rural,1.0
|
||||
LP002624,Male,1.0,0,1,0.0,20833,6667.0,480.0,360.0,0,Urban,1.0
|
||||
LP002625,,0.0,0,1,0.0,3583,0.0,96.0,360.0,1,Urban,0.0
|
||||
LP002626,Male,1.0,0,1,1.0,2479,3013.0,188.0,360.0,1,Urban,1.0
|
||||
LP002634,Female,0.0,1,1,0.0,13262,0.0,40.0,360.0,1,Urban,1.0
|
||||
LP002637,Male,0.0,0,0,0.0,3598,1287.0,100.0,360.0,1,Rural,0.0
|
||||
LP002640,Male,1.0,1,1,0.0,6065,2004.0,250.0,360.0,1,Semiurban,1.0
|
||||
LP002643,Male,1.0,2,1,0.0,3283,2035.0,148.0,360.0,1,Urban,1.0
|
||||
LP002648,Male,1.0,0,1,0.0,2130,6666.0,70.0,180.0,1,Semiurban,0.0
|
||||
LP002652,Male,0.0,0,1,0.0,5815,3666.0,311.0,360.0,1,Rural,0.0
|
||||
LP002659,Male,1.0,3+,1,0.0,3466,3428.0,150.0,360.0,1,Rural,1.0
|
||||
LP002670,Female,1.0,2,1,0.0,2031,1632.0,113.0,480.0,1,Semiurban,1.0
|
||||
LP002682,Male,1.0,,0,0.0,3074,1800.0,123.0,360.0,0,Semiurban,0.0
|
||||
LP002683,Male,0.0,0,1,0.0,4683,1915.0,185.0,360.0,1,Semiurban,0.0
|
||||
LP002684,Female,0.0,0,0,0.0,3400,0.0,95.0,360.0,1,Rural,0.0
|
||||
LP002689,Male,1.0,2,0,0.0,2192,1742.0,45.0,360.0,1,Semiurban,1.0
|
||||
LP002690,Male,0.0,0,1,0.0,2500,0.0,55.0,360.0,1,Semiurban,1.0
|
||||
LP002692,Male,1.0,3+,1,1.0,5677,1424.0,100.0,360.0,1,Rural,1.0
|
||||
LP002693,Male,1.0,2,1,1.0,7948,7166.0,480.0,360.0,1,Rural,1.0
|
||||
LP002697,Male,0.0,0,1,0.0,4680,2087.0,0.0,360.0,1,Semiurban,0.0
|
||||
LP002699,Male,1.0,2,1,1.0,17500,0.0,400.0,360.0,1,Rural,1.0
|
||||
LP002705,Male,1.0,0,1,0.0,3775,0.0,110.0,360.0,1,Semiurban,1.0
|
||||
LP002706,Male,1.0,1,0,0.0,5285,1430.0,161.0,360.0,0,Semiurban,1.0
|
||||
LP002714,Male,0.0,1,0,0.0,2679,1302.0,94.0,360.0,1,Semiurban,1.0
|
||||
LP002716,Male,0.0,0,0,0.0,6783,0.0,130.0,360.0,1,Semiurban,1.0
|
||||
LP002717,Male,1.0,0,1,0.0,1025,5500.0,216.0,360.0,0,Rural,1.0
|
||||
LP002720,Male,1.0,3+,1,0.0,4281,0.0,100.0,360.0,1,Urban,1.0
|
||||
LP002723,Male,0.0,2,1,0.0,3588,0.0,110.0,360.0,0,Rural,0.0
|
||||
LP002729,Male,0.0,1,1,0.0,11250,0.0,196.0,360.0,0,Semiurban,0.0
|
||||
LP002731,Female,0.0,0,0,1.0,18165,0.0,125.0,360.0,1,Urban,1.0
|
||||
LP002732,Male,0.0,0,0,0.0,2550,2042.0,126.0,360.0,1,Rural,1.0
|
||||
LP002734,Male,1.0,0,1,0.0,6133,3906.0,324.0,360.0,1,Urban,1.0
|
||||
LP002738,Male,0.0,2,1,0.0,3617,0.0,107.0,360.0,1,Semiurban,1.0
|
||||
LP002739,Male,1.0,0,0,0.0,2917,536.0,66.0,360.0,1,Rural,0.0
|
||||
LP002740,Male,1.0,3+,1,0.0,6417,0.0,157.0,180.0,1,Rural,1.0
|
||||
LP002741,Female,1.0,1,1,0.0,4608,2845.0,140.0,180.0,1,Semiurban,1.0
|
||||
LP002743,Female,0.0,0,1,0.0,2138,0.0,99.0,360.0,0,Semiurban,0.0
|
||||
LP002753,Female,0.0,1,1,0.0,3652,0.0,95.0,360.0,1,Semiurban,1.0
|
||||
LP002755,Male,1.0,1,0,0.0,2239,2524.0,128.0,360.0,1,Urban,1.0
|
||||
LP002757,Female,1.0,0,0,0.0,3017,663.0,102.0,360.0,0,Semiurban,1.0
|
||||
LP002767,Male,1.0,0,1,0.0,2768,1950.0,155.0,360.0,1,Rural,1.0
|
||||
LP002768,Male,0.0,0,0,0.0,3358,0.0,80.0,36.0,1,Semiurban,0.0
|
||||
LP002772,Male,0.0,0,1,0.0,2526,1783.0,145.0,360.0,1,Rural,1.0
|
||||
LP002776,Female,0.0,0,1,0.0,5000,0.0,103.0,360.0,0,Semiurban,0.0
|
||||
LP002777,Male,1.0,0,1,0.0,2785,2016.0,110.0,360.0,1,Rural,1.0
|
||||
LP002778,Male,1.0,2,1,1.0,6633,0.0,0.0,360.0,0,Rural,0.0
|
||||
LP002784,Male,1.0,1,0,0.0,2492,2375.0,0.0,360.0,1,Rural,1.0
|
||||
LP002785,Male,1.0,1,1,0.0,3333,3250.0,158.0,360.0,1,Urban,1.0
|
||||
LP002788,Male,1.0,0,0,0.0,2454,2333.0,181.0,360.0,0,Urban,0.0
|
||||
LP002789,Male,1.0,0,1,0.0,3593,4266.0,132.0,180.0,0,Rural,0.0
|
||||
LP002792,Male,1.0,1,1,0.0,5468,1032.0,26.0,360.0,1,Semiurban,1.0
|
||||
LP002794,Female,0.0,0,1,0.0,2667,1625.0,84.0,360.0,0,Urban,1.0
|
||||
LP002795,Male,1.0,3+,1,1.0,10139,0.0,260.0,360.0,1,Semiurban,1.0
|
||||
LP002798,Male,1.0,0,1,0.0,3887,2669.0,162.0,360.0,1,Semiurban,1.0
|
||||
LP002804,Female,1.0,0,1,0.0,4180,2306.0,182.0,360.0,1,Semiurban,1.0
|
||||
LP002807,Male,1.0,2,0,0.0,3675,242.0,108.0,360.0,1,Semiurban,1.0
|
||||
LP002813,Female,1.0,1,1,1.0,19484,0.0,600.0,360.0,1,Semiurban,1.0
|
||||
LP002820,Male,1.0,0,1,0.0,5923,2054.0,211.0,360.0,1,Rural,1.0
|
||||
LP002821,Male,0.0,0,0,1.0,5800,0.0,132.0,360.0,1,Semiurban,1.0
|
||||
LP002832,Male,1.0,2,1,0.0,8799,0.0,258.0,360.0,0,Urban,0.0
|
||||
LP002833,Male,1.0,0,0,0.0,4467,0.0,120.0,360.0,0,Rural,1.0
|
||||
LP002836,Male,0.0,0,1,0.0,3333,0.0,70.0,360.0,1,Urban,1.0
|
||||
LP002837,Male,1.0,3+,1,0.0,3400,2500.0,123.0,360.0,0,Rural,0.0
|
||||
LP002840,Female,0.0,0,1,0.0,2378,0.0,9.0,360.0,1,Urban,0.0
|
||||
LP002841,Male,1.0,0,1,0.0,3166,2064.0,104.0,360.0,0,Urban,0.0
|
||||
LP002842,Male,1.0,1,1,0.0,3417,1750.0,186.0,360.0,1,Urban,1.0
|
||||
LP002847,Male,1.0,,1,0.0,5116,1451.0,165.0,360.0,0,Urban,0.0
|
||||
LP002855,Male,1.0,2,1,0.0,16666,0.0,275.0,360.0,1,Urban,1.0
|
||||
LP002862,Male,1.0,2,0,0.0,6125,1625.0,187.0,480.0,1,Semiurban,0.0
|
||||
LP002863,Male,1.0,3+,1,0.0,6406,0.0,150.0,360.0,1,Semiurban,0.0
|
||||
LP002868,Male,1.0,2,1,0.0,3159,461.0,108.0,84.0,1,Urban,1.0
|
||||
LP002872,,1.0,0,1,0.0,3087,2210.0,136.0,360.0,0,Semiurban,0.0
|
||||
LP002874,Male,0.0,0,1,0.0,3229,2739.0,110.0,360.0,1,Urban,1.0
|
||||
LP002877,Male,1.0,1,1,0.0,1782,2232.0,107.0,360.0,1,Rural,1.0
|
||||
LP002888,Male,0.0,0,1,0.0,3182,2917.0,161.0,360.0,1,Urban,1.0
|
||||
LP002892,Male,1.0,2,1,0.0,6540,0.0,205.0,360.0,1,Semiurban,1.0
|
||||
LP002893,Male,0.0,0,1,0.0,1836,33837.0,90.0,360.0,1,Urban,0.0
|
||||
LP002894,Female,1.0,0,1,0.0,3166,0.0,36.0,360.0,1,Semiurban,1.0
|
||||
LP002898,Male,1.0,1,1,0.0,1880,0.0,61.0,360.0,0,Rural,0.0
|
||||
LP002911,Male,1.0,1,1,0.0,2787,1917.0,146.0,360.0,0,Rural,0.0
|
||||
LP002912,Male,1.0,1,1,0.0,4283,3000.0,172.0,84.0,1,Rural,0.0
|
||||
LP002916,Male,1.0,0,1,0.0,2297,1522.0,104.0,360.0,1,Urban,1.0
|
||||
LP002917,Female,0.0,0,0,0.0,2165,0.0,70.0,360.0,1,Semiurban,1.0
|
||||
LP002925,,0.0,0,1,0.0,4750,0.0,94.0,360.0,1,Semiurban,1.0
|
||||
LP002926,Male,1.0,2,1,1.0,2726,0.0,106.0,360.0,0,Semiurban,0.0
|
||||
LP002928,Male,1.0,0,1,0.0,3000,3416.0,56.0,180.0,1,Semiurban,1.0
|
||||
LP002931,Male,1.0,2,1,1.0,6000,0.0,205.0,240.0,1,Semiurban,0.0
|
||||
LP002933,,0.0,3+,1,1.0,9357,0.0,292.0,360.0,1,Semiurban,1.0
|
||||
LP002936,Male,1.0,0,1,0.0,3859,3300.0,142.0,180.0,1,Rural,1.0
|
||||
LP002938,Male,1.0,0,1,1.0,16120,0.0,260.0,360.0,1,Urban,1.0
|
||||
LP002940,Male,0.0,0,0,0.0,3833,0.0,110.0,360.0,1,Rural,1.0
|
||||
LP002941,Male,1.0,2,0,1.0,6383,1000.0,187.0,360.0,1,Rural,0.0
|
||||
LP002943,Male,0.0,,1,0.0,2987,0.0,88.0,360.0,0,Semiurban,0.0
|
||||
LP002945,Male,1.0,0,1,1.0,9963,0.0,180.0,360.0,1,Rural,1.0
|
||||
LP002948,Male,1.0,2,1,0.0,5780,0.0,192.0,360.0,1,Urban,1.0
|
||||
LP002949,Female,0.0,3+,1,0.0,416,41667.0,350.0,180.0,0,Urban,0.0
|
||||
LP002950,Male,1.0,0,0,0.0,2894,2792.0,155.0,360.0,1,Rural,1.0
|
||||
LP002953,Male,1.0,3+,1,0.0,5703,0.0,128.0,360.0,1,Urban,1.0
|
||||
LP002958,Male,0.0,0,1,0.0,3676,4301.0,172.0,360.0,1,Rural,1.0
|
||||
LP002959,Female,1.0,1,1,0.0,12000,0.0,496.0,360.0,1,Semiurban,1.0
|
||||
LP002960,Male,1.0,0,0,0.0,2400,3800.0,0.0,180.0,1,Urban,0.0
|
||||
LP002961,Male,1.0,1,1,0.0,3400,2500.0,173.0,360.0,1,Semiurban,1.0
|
||||
LP002964,Male,1.0,2,0,0.0,3987,1411.0,157.0,360.0,1,Rural,1.0
|
||||
LP002974,Male,1.0,0,1,0.0,3232,1950.0,108.0,360.0,1,Rural,1.0
|
||||
LP002978,Female,0.0,0,1,0.0,2900,0.0,71.0,360.0,1,Rural,1.0
|
||||
LP002979,Male,1.0,3+,1,0.0,4106,0.0,40.0,180.0,1,Rural,1.0
|
||||
LP002983,Male,1.0,1,1,0.0,8072,240.0,253.0,360.0,1,Urban,1.0
|
||||
LP002984,Male,1.0,2,1,0.0,7583,0.0,187.0,360.0,1,Urban,1.0
|
||||
LP002990,Female,0.0,0,1,1.0,4583,0.0,133.0,360.0,0,Semiurban,0.0
|
||||
|
BIN
abanin_danill_lab_6/result_mean.jpg
Normal file
|
After Width: | Height: | Size: 32 KiB |
BIN
abanin_danill_lab_6/score_1.png
Normal file
|
After Width: | Height: | Size: 680 KiB |
BIN
abanin_danill_lab_6/score_2.png
Normal file
|
After Width: | Height: | Size: 452 KiB |
56
alexandrov_dmitrii_lab_1/lab1.py
Normal file
@@ -0,0 +1,56 @@
|
||||
import random
|
||||
from matplotlib import pyplot as plt
|
||||
from matplotlib.colors import ListedColormap
|
||||
from sklearn.datasets import make_moons
|
||||
from sklearn.linear_model import LinearRegression, Ridge
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.preprocessing import PolynomialFeatures
|
||||
from sklearn.pipeline import Pipeline
|
||||
|
||||
rs = random.randrange(50)
|
||||
|
||||
X, y = make_moons(n_samples=250, noise=0.3, random_state=rs)
|
||||
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.4, random_state=42)
|
||||
|
||||
figure = plt.figure(1, figsize=(16, 9))
|
||||
axis = figure.subplots(4, 3)
|
||||
cm = ListedColormap(['#FF0000', "#0000FF"])
|
||||
arr_res = list(range(len(y_test)))
|
||||
X_scale = list(range(len(y_test)))
|
||||
|
||||
|
||||
def test(col, model):
|
||||
global axis
|
||||
global arr_res
|
||||
global X_test
|
||||
global X_train
|
||||
global y_train
|
||||
global y_test
|
||||
|
||||
model.fit(X_train, y_train)
|
||||
res_y = model.predict(X_test)
|
||||
print(model.score(X_test, y_test))
|
||||
|
||||
axis[0, col].scatter(X_train[:, 0], X_train[:, 1], c=y_train, cmap=cm)
|
||||
axis[1, col].scatter(X_test[:, 0], X_test[:, 1], c=y_test, cmap=cm)
|
||||
axis[2, col].scatter(X_test[:, 0], X_test[:, 1], c=y_test, cmap=cm)
|
||||
axis[2, col].scatter(X_test[:, 0], X_test[:, 1], c=res_y, cmap=cm)
|
||||
axis[3, col].plot([i for i in range(len(res_y))], y_test, c="g")
|
||||
axis[3, col].plot([i for i in range(len(res_y))], res_y, c="r")
|
||||
|
||||
|
||||
def start():
|
||||
lin = LinearRegression()
|
||||
poly = Pipeline([('poly', PolynomialFeatures(degree=3)),
|
||||
('linear', LinearRegression())])
|
||||
ridge = Pipeline([('poly', PolynomialFeatures(degree=3)),
|
||||
('ridge', Ridge(alpha=1.0))])
|
||||
|
||||
test(0, lin)
|
||||
test(1, poly)
|
||||
test(2, ridge)
|
||||
|
||||
plt.show()
|
||||
|
||||
|
||||
start()
|
||||
46
alexandrov_dmitrii_lab_1/readme.md
Normal file
@@ -0,0 +1,46 @@
|
||||
## Задание
|
||||
Сгенерировать определенный тип данных и сравнить на нем 3 модели. Построить графики, отобразить качество моделей, объяснить полученные результаты.
|
||||
Вариант 1.
|
||||
Данные: make_moons (noise=0.3, random_state=rs)
|
||||
Модели:
|
||||
· Линейная регрессия
|
||||
· Полиномиальная регрессия (со степенью 3)
|
||||
· Гребневая полиномиальная регрессия (со степенью 3, alpha = 1.0)
|
||||
|
||||
### Запуск программы
|
||||
Файл lab1.py содержит и запускает программу, аргументов и настройки ~~вроде~~ не требует,
|
||||
|
||||
### Описание программы
|
||||
Генерирует один из 50 наборов данных, показывает окно с графиками и пишет оценку моделей обучения по заданию.
|
||||
Использует библиотеки matplotlib для демонстрации графиков и sklearn для создания и использования моделей.
|
||||
|
||||
### Результаты тестирования
|
||||
Для различных значений rs результаты следующие:
|
||||
значение - линейная - полиномиальная - гребневая полиномиальная
|
||||
1 - 0.54 - 0.08 - 0.35
|
||||
2 - 0.62 - 0.58 - 0.63
|
||||
3 - 0.6 - 0.67 - 0.65
|
||||
4 - 0.52 - 0.46 - 0.5
|
||||
5 - 0.4 - 0.42 - 0.44
|
||||
Из данных результатов можно заключить, что чёткой зависимости точности от выбранной модели нет.
|
||||
|
||||
Однако, после этого я добавил в генератор данных число значений: 500. Результаты оказались более детерминированными:
|
||||
значение - линейная - полиномиальная - гребневая полиномиальная
|
||||
1 - 0.54 - 0.63 - 0.63
|
||||
2 - 0.52 - 0.63 - 0.62
|
||||
3 - 0.56 - 0.64 - 0.64
|
||||
4 - 0.5 - 0.63 - 0.62
|
||||
5 - 0.5 - 0.52 - 0.53
|
||||
Из данных результатов можно заключить, что в общем случае модель линейной регрессии уступает полиномиальным. Гребневая полиномиальная регрессия чаще уступала обычной полиномиальной, однако в незначительном количестве ситуаций была оценена выше - но во всех случаях результаты были близки, поэтому можно с уверенностью предположить, что результаты идентичны и различаются по воле шума обучения.
|
||||
|
||||
После изучения число значений в генераторе заменено на 250, поскольку графики становились неразличимыми^
|
||||
значение - линейная - полиномиальная - гребневая полиномиальная
|
||||
1 - 0.48 - 0.54 - 0.54
|
||||
2 - 0.5 - 0.56 - 0.56
|
||||
3 - 0.57 - 0.6 - 0.6
|
||||
4 - 0.57 - 0.66 - 0.68
|
||||
5 - 0.49 - 0.54 - 0.55
|
||||
По данным результатам видно, что в большинстве ситуаций уже гребневая полиномиальная регрессия показывает лучшую точность.
|
||||
|
||||
Результаты объясняются следующим образом:
|
||||
Линейная регрессия будучи математически прямой плохо отражает сложные функции и нелинейные зависимости, в то время как полиномиальная регрессия способна отражать перегибы и изменяющиеся в зависимости от меры значений зависимости. Гребневая полиномиальная вышла идентичной простой полиномиальной из-за одинаковых настроек - обе они по заданию имеют третью степень, а гребневая регрессия имеет слишком малый параметр alpha, что результирует в малом эффекте гребневой функции.
|
||||
82
alexandrov_dmitrii_lab_2/lab2.py
Normal file
@@ -0,0 +1,82 @@
|
||||
from sklearn.linear_model import LinearRegression, RandomizedLasso
|
||||
from sklearn.feature_selection import RFE
|
||||
from sklearn.preprocessing import MinMaxScaler
|
||||
from matplotlib import pyplot as plt
|
||||
import numpy as np
|
||||
import random as rand
|
||||
|
||||
figure = plt.figure(1, figsize=(16, 9))
|
||||
axis = figure.subplots(1, 4)
|
||||
col = 0
|
||||
y = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14]
|
||||
|
||||
|
||||
def rank_to_dict(ranks, names, n_features):
|
||||
ranks = np.abs(ranks)
|
||||
minmax = MinMaxScaler()
|
||||
ranks = minmax.fit_transform(np.array(ranks).reshape(n_features, 1)).ravel()
|
||||
ranks = map(lambda x: round(x, 2), ranks)
|
||||
return dict(zip(names, ranks))
|
||||
|
||||
|
||||
def createView(key, val):
|
||||
global figure
|
||||
global axis
|
||||
global col
|
||||
global y
|
||||
|
||||
axis[col].bar(y, list(val.values()), label=key)
|
||||
axis[col].set_title(key)
|
||||
|
||||
col = col + 1
|
||||
|
||||
|
||||
def start():
|
||||
np.random.seed(rand.randint(0, 50))
|
||||
size = 750
|
||||
n_features = 14
|
||||
X = np.random.uniform(0, 1, (size, n_features))
|
||||
|
||||
Y = (10 * np.sin(np.pi * X[:, 0] * X[:, 1]) + 20 * (X[:, 2] - .5) ** 2 +
|
||||
10 * X[:, 3] + 5 * X[:, 4] ** 5 + np.random.normal(0, 1))
|
||||
X[:, 10:] = X[:, :4] + np.random.normal(0, .025, (size, 4))
|
||||
|
||||
lr = LinearRegression()
|
||||
rl = RandomizedLasso()
|
||||
rfe = RFE(estimator=LinearRegression(), n_features_to_select=1)
|
||||
lr.fit(X, Y)
|
||||
rl.fit(X, Y)
|
||||
rfe.fit(X, Y)
|
||||
|
||||
names = ["x%s" % i for i in range(1, n_features + 1)]
|
||||
rfe_res = rfe.ranking_
|
||||
for i in range(rfe_res.size):
|
||||
rfe_res[i] = 14 - rfe_res[i]
|
||||
ranks = {"Linear regression": rank_to_dict(lr.coef_, names, n_features),
|
||||
"Random lasso": rank_to_dict(rl.scores_, names, n_features),
|
||||
"RFE": rank_to_dict(rfe_res, names, n_features)}
|
||||
|
||||
mean = {}
|
||||
|
||||
for key, value in ranks.items():
|
||||
for item in value.items():
|
||||
if item[0] not in mean:
|
||||
mean[item[0]] = 0
|
||||
mean[item[0]] += item[1]
|
||||
|
||||
for key, value in mean.items():
|
||||
res = value / len(ranks)
|
||||
mean[key] = round(res, 2)
|
||||
|
||||
ranks["Mean"] = mean
|
||||
|
||||
for key, value in ranks.items():
|
||||
createView(key, value)
|
||||
ranks[key] = sorted(value.items(), key=lambda y: y[1], reverse=True)
|
||||
for key, value in ranks.items():
|
||||
print(key)
|
||||
print(value)
|
||||
|
||||
|
||||
start()
|
||||
plt.show()
|
||||
50
alexandrov_dmitrii_lab_2/readme.md
Normal file
@@ -0,0 +1,50 @@
|
||||
### Задание
|
||||
Выполнить ранжирование признаков с помощью указанных по варианту моделей. Отобразить получившиеся значения\оценки каждого признака каждым методом\моделью и среднюю оценку. Провести анализ получившихся результатов. Определить, какие четыре признака оказались самыми важными по среднему значению.
|
||||
|
||||
Вариант 1.
|
||||
Модели:
|
||||
* Линейная регрессия (LinearRegression)
|
||||
* Случайное Лассо (RandomizedLasso)
|
||||
* Рекурсивное сокращение признаков (Recursive Feature Elimination – RFE)
|
||||
|
||||
### Запуск программы
|
||||
Программа работает на Python 3.7, поскольку только в нём можно подключить нужную версию библиотеки scikit-learn, которая ещё содержит RandomizedLasso.
|
||||
|
||||
Файл lab2.py содержит и запускает программу, аргументов и настройки ~~вроде~~ не требует.
|
||||
|
||||
### Описание программы
|
||||
Файл lab2.py содержит непосредственно программу.
|
||||
|
||||
Программа создаёт набор данных с 10 признаками для последующего их ранжирования, и обрабатывает тремя моделями по варианту.
|
||||
Программа строит столбчатые диаграммы, которые показывают как распределились оценки важности признаков, и выводит в консоль отсортированные по убыванию важности признаки.
|
||||
Таким образом можно легко определить наиважнейшие признаки.
|
||||
|
||||
### Результаты тестирования
|
||||
По результатам тестирования, можно сказать следующее:
|
||||
* линейная регрессия показывает хорошие результаты, выделяет все 9 значимых признаков.
|
||||
* случайное лассо справляется хуже других моделей, иногда выделяя шумовые признаки в значимые, а значимые - в шумовые.
|
||||
* рекурсивное сокращение признаков показывает хорошие результаты, правильно правильно выделяя 9 самых значимых признаков.
|
||||
* хотя линейная регрессия и рекурсивное сокращение признаков правильно выделяют значимые признаки, саму значимость они оценивают по-разному.
|
||||
* среднее значение позволяет c хорошей уверенностью определять истинные значимые признаки.
|
||||
|
||||
Итого. Если необходимо просто ранжирование, достаточно взять модель RFE, однако, если необходимо анализировать признаки по коэффициентам, имея меру (коэффициенты), то брать нужно линейную регрессию. Случайное лассо лучше не надо.
|
||||
|
||||
Пример консольных результатов:
|
||||
|
||||
>Linear regression
|
||||
|
||||
>[('x1', 1.0), ('x4', 0.69), ('x2', 0.61), ('x11', 0.59), ('x3', 0.51), ('x13', 0.48), ('x5', 0.19), ('x12', 0.19), ('x14', 0.12), ('x8', 0.03), ('x6', 0.02), ('x10', 0.01), ('x7', 0.0), ('x9', 0.0)]
|
||||
|
||||
>Random lasso
|
||||
|
||||
>[('x5', 1.0), ('x4', 0.76), ('x2', 0.74), ('x1', 0.72), ('x14', 0.44), ('x12', 0.32), ('x11', 0.28), ('x8', 0.22), ('x6', 0.17), ('x3', 0.08), ('x7', 0.02), ('x13', 0.02), ('x9', 0.01), ('x10', 0.0)]
|
||||
|
||||
>RFE
|
||||
|
||||
>[('x4', 1.0), ('x1', 0.92), ('x11', 0.85), ('x2', 0.77), ('x3', 0.69), ('x13', 0.62), ('x5', 0.54), ('x12', 0.46), ('x14', 0.38), ('x8', 0.31), ('x6', 0.23), ('x10', 0.15), ('x7', 0.08), ('x9', 0.0)]
|
||||
|
||||
>Mean
|
||||
|
||||
>[('x1', 0.88), ('x4', 0.82), ('x2', 0.71), ('x5', 0.58), ('x11', 0.57), ('x3', 0.43), ('x13', 0.37), ('x12', 0.32), ('x14', 0.31), ('x8', 0.19), ('x6', 0.14), ('x10', 0.05), ('x7', 0.03), ('x9', 0.0)]
|
||||
|
||||
По данным результатам можно заключить, что наиболее влиятельные признаки по убыванию: x1, x4, x2, x5.
|
||||
126
alexandrov_dmitrii_lab_3/lab3.py
Normal file
@@ -0,0 +1,126 @@
|
||||
from sklearn.impute import SimpleImputer, MissingIndicator
|
||||
from sklearn.pipeline import FeatureUnion, make_pipeline
|
||||
from sklearn.preprocessing import MinMaxScaler
|
||||
from sklearn.tree import DecisionTreeClassifier
|
||||
from sklearn.feature_extraction.text import TfidfVectorizer
|
||||
from sklearn.model_selection import train_test_split
|
||||
import pandas as pd
|
||||
import random as rand
|
||||
import numpy as np
|
||||
from matplotlib import pyplot as plt
|
||||
|
||||
|
||||
def rank_to_dict(ranks, names, n_features):
|
||||
ranks = np.abs(ranks)
|
||||
minmax = MinMaxScaler()
|
||||
ranks = minmax.fit_transform(np.array(ranks).reshape(len(ranks), 1)).ravel()
|
||||
ranks = map(lambda x: round(x, 2), ranks)
|
||||
return dict(zip(names, ranks))
|
||||
|
||||
|
||||
def part_one():
|
||||
print('Titanic data analysis\n')
|
||||
data = pd.read_csv('titanic_data.csv', index_col='PassengerId')
|
||||
x = data[['Pclass', 'Name', 'Sex']]
|
||||
y = data[['Survived']]
|
||||
|
||||
names = pd.DataFrame(TfidfVectorizer().fit_transform(x['Name']).toarray())
|
||||
col_names = names[names.columns[1:]].apply(lambda el: sum(el.dropna().astype(float)), axis=1)
|
||||
col_names.index = np.arange(1, len(col_names) + 1)
|
||||
col_sexes = []
|
||||
|
||||
for index, row in x.iterrows():
|
||||
if row['Sex'] == 'male':
|
||||
col_sexes.append(1)
|
||||
else:
|
||||
col_sexes.append(0)
|
||||
|
||||
x = x.drop(columns=['Sex', 'Name'])
|
||||
x['Sex'] = col_sexes
|
||||
x['Name'] = col_names
|
||||
|
||||
dtc = DecisionTreeClassifier(random_state=rand.randint(0, 250))
|
||||
x_train, x_test, y_train, y_test = train_test_split(x, y, test_size=0.05, random_state=rand.randint(0, 250))
|
||||
dtc.fit(x_train, y_train)
|
||||
print('model score: ' + str(dtc.score(x_test, y_test)))
|
||||
res = dict(zip(['Pclass', 'Sex', 'Name'], dtc.feature_importances_))
|
||||
print('feature importances: ' + str(res))
|
||||
|
||||
|
||||
def part_two():
|
||||
print('\n---------------------------------------------------------------------------\nSberbank data analysis\n')
|
||||
data = pd.read_csv('sberbank_data.csv', index_col='id')
|
||||
x = data.drop(columns='price_doc')
|
||||
y = data[['price_doc']]
|
||||
|
||||
x = x.replace(
|
||||
['NA', 'no', 'yes', 'Investment', 'OwnerOccupier', 'poor', 'satisfactory', 'no data', 'good', 'excellent'],
|
||||
[0, 0, 1, 0, 1, -1, 0, 0, 1, 2])
|
||||
x.fillna(0, inplace=True)
|
||||
|
||||
names = pd.DataFrame(TfidfVectorizer().fit_transform(x['sub_area']).toarray())
|
||||
col_area = names[names.columns[1:]].apply(lambda el: sum(el.dropna().astype(float)), axis=1)
|
||||
col_area.index = np.arange(1, len(col_area) + 1)
|
||||
col_date = []
|
||||
|
||||
for val in x['timestamp']:
|
||||
col_date.append(val.split('-', 1)[0])
|
||||
|
||||
x = x.drop(columns=['sub_area', 'timestamp'])
|
||||
x['sub_area'] = col_area
|
||||
x['timestamp'] = col_date
|
||||
|
||||
col_price = []
|
||||
for val in y['price_doc']:
|
||||
if val < 1500000:
|
||||
col_price.append('low')
|
||||
elif val < 3000000:
|
||||
col_price.append('medium')
|
||||
elif val < 5500000:
|
||||
col_price.append('high')
|
||||
elif val < 10000000:
|
||||
col_price.append('premium')
|
||||
else:
|
||||
col_price.append('oligarch')
|
||||
|
||||
y = pd.DataFrame(col_price)
|
||||
|
||||
transformer = FeatureUnion(
|
||||
transformer_list=[
|
||||
('features', SimpleImputer(strategy='mean')),
|
||||
('indicators', MissingIndicator())])
|
||||
|
||||
dtr = make_pipeline(transformer, DecisionTreeClassifier(random_state=rand.randint(0, 250)))
|
||||
x_train, x_test, y_train, y_test = train_test_split(x, y, test_size=0.01, random_state=rand.randint(0, 250))
|
||||
dtr.fit(x_train, y_train)
|
||||
|
||||
features = list(x.columns)
|
||||
print('model score: ' + str(dtr.score(x_test, y_test)))
|
||||
|
||||
res = sorted(dict(zip(features, dtr.steps[-1][1].feature_importances_)).items(),
|
||||
key=lambda el: el[1], reverse=True)
|
||||
|
||||
view_y = []
|
||||
view_x = []
|
||||
|
||||
flag = 0
|
||||
print('feature importances:')
|
||||
for val in res:
|
||||
if flag == 8:
|
||||
break
|
||||
print(val[0]+" - "+str(val[1]))
|
||||
view_y.append(val[0])
|
||||
view_x.append(val[1])
|
||||
flag = flag + 1
|
||||
|
||||
plt.figure(1, figsize=(16, 9))
|
||||
plt.bar(view_y, view_x)
|
||||
plt.show()
|
||||
|
||||
|
||||
def start():
|
||||
part_one()
|
||||
part_two()
|
||||
|
||||
|
||||
start()
|
||||
60
alexandrov_dmitrii_lab_3/readme.md
Normal file
@@ -0,0 +1,60 @@
|
||||
### Задание
|
||||
1. По данным о пассажирах Титаника решить задачу классификации с помощью дерева решений, в которой по различным характеристикам пассажиров требуется найти у выживших пассажиров два наиболее важных признака из трех рассматриваемых.
|
||||
|
||||
Вариант 1: Pclass,Name,Sex.
|
||||
|
||||
2. По данным курсовой работы с помощью дерева решений решить выбранную задачу: классификация - зависимость категории цены от всех остальных факторов, оценка результата и отбор наиболее значимых признаков.
|
||||
|
||||
### Запуск программы
|
||||
Файл lab3.py содержит и запускает программу, аргументов и настройки ~~вроде~~ не требует.
|
||||
|
||||
### Описание программы
|
||||
Программа состоит из двух частей:
|
||||
1. Она считывает файл с данными по пассажирам "Титаника", признаки "класс", "имя", "пол" и запись о том, выжил ли пассажир. Данные предобрабатываются: запись о поле кодируется (ж - 0, м - 1), запись об имени кодируется (Tfidf). После этого дерево решений тренируется на данных и результаты выводятся в консоль.
|
||||
2. Она считывает файл с данными сбербанка по рынку недвижимости. Далее данные предобрабатываются: названия районов кодируется (Tfidf), нечисловые записи цифровизируются, запоняются нулевые записи, записи подразделяются на классы. После этого на данных обучается дерево решений и результат выводится в консоль и на форму. Поскольку признаков слишком много, выводимые результаты ограничены восемью наиболее значимыми.
|
||||
|
||||
### Результаты тестирования
|
||||
По результатам тестирования, можно сказать следующее:
|
||||
|
||||
По первой задаче:
|
||||
* Дерево решений показывает неплохие результаты, около 70-75%.
|
||||
* Однако оценка важности признаков даёт абсолютно неверный результат: наиболее значимым признаком назначается имя пассажира. Это значит, что кодировка не подходит для правильной обработки данных. Возможные решения: обнуление или исключение признака как аналитически очевидно незначимого.
|
||||
* Помимо неправильной оценки роли имени, пол определяется более чем в два раза более значимым, нежели класс. Действительная статистика (среди спасшихся пассажиров 74% женщин и детей (из которых многие также были мужского пола) и 26% мужчин, 60% первого класса, 44% - второго, 25% - третьего) скорее подтверждает правильность этого вывода.
|
||||
|
||||
По второй задаче:
|
||||
* Дерево решений показывает неплохие результаты, около 70-75%.
|
||||
* Оценка важности признаков показывает наиболее важным признаком площадь недвижимости, что скорее всего верно.
|
||||
* После площади с небольшим отрывом идёт количество спортивных объектов в округе. Это неверно хотя бы потому, что в данных присустствуют коррелирующие признаки - площадь жилого пространства и другие. К тому же доступна информация по действительному ранжированию.
|
||||
* Дальнейшие оценки содержат как правильные, так и неправильные признаки: этаж, количество этажей в доме, район - действительно значимые признаки, но они перемешаны с незначимыми.
|
||||
|
||||
Итого. Дерево решений даёт неплохие результаты при классификации. Однако для задач регрессии не подходят, т.к. неверно определяют значимые признаки. При работе также следует тщательнее предобрабатывать данные, в особенности малозначащие текстовые - предложенные методы кодирования показали себя неэффективно на лабораторных данных.
|
||||
|
||||
Пример консольных результатов:
|
||||
|
||||
>Titanic data analysis
|
||||
|
||||
>model score: 0.7777777777777778
|
||||
|
||||
>feature importances: {'Pclass': 0.1287795817634186, 'Sex': 0.3381642167551354, 'Name': 0.533056201481446}
|
||||
|
||||
>Sberbank data analysis
|
||||
|
||||
>model score: 0.7162629757785467
|
||||
|
||||
>feature importances:
|
||||
|
||||
>full_sq - 0.1801327274709341
|
||||
|
||||
>sport_count_3000 - 0.14881362533480907
|
||||
|
||||
>floor - 0.03169232872469085
|
||||
|
||||
>power_transmission_line_km - 0.027978416524911377
|
||||
|
||||
>timestamp - 0.020092007662845194
|
||||
|
||||
>max_floor - 0.019985442431576052
|
||||
|
||||
>cafe_count_5000_price_2500 - 0.019397048405749438
|
||||
|
||||
>sub_area - 0.017477163456413432
|
||||
28896
alexandrov_dmitrii_lab_3/sberbank_data.csv
Normal file
892
alexandrov_dmitrii_lab_3/titanic_data.csv
Normal file
@@ -0,0 +1,892 @@
|
||||
PassengerId,Survived,Pclass,Name,Sex,Age,SibSp,Parch,Ticket,Fare,Cabin,Embarked
|
||||
1,0,3,"Braund, Mr. Owen Harris",male,22,1,0,A/5 21171,7.25,,S
|
||||
2,1,1,"Cumings, Mrs. John Bradley (Florence Briggs Thayer)",female,38,1,0,PC 17599,71.2833,C85,C
|
||||
3,1,3,"Heikkinen, Miss. Laina",female,26,0,0,STON/O2. 3101282,7.925,,S
|
||||
4,1,1,"Futrelle, Mrs. Jacques Heath (Lily May Peel)",female,35,1,0,113803,53.1,C123,S
|
||||
5,0,3,"Allen, Mr. William Henry",male,35,0,0,373450,8.05,,S
|
||||
6,0,3,"Moran, Mr. James",male,,0,0,330877,8.4583,,Q
|
||||
7,0,1,"McCarthy, Mr. Timothy J",male,54,0,0,17463,51.8625,E46,S
|
||||
8,0,3,"Palsson, Master. Gosta Leonard",male,2,3,1,349909,21.075,,S
|
||||
9,1,3,"Johnson, Mrs. Oscar W (Elisabeth Vilhelmina Berg)",female,27,0,2,347742,11.1333,,S
|
||||
10,1,2,"Nasser, Mrs. Nicholas (Adele Achem)",female,14,1,0,237736,30.0708,,C
|
||||
11,1,3,"Sandstrom, Miss. Marguerite Rut",female,4,1,1,PP 9549,16.7,G6,S
|
||||
12,1,1,"Bonnell, Miss. Elizabeth",female,58,0,0,113783,26.55,C103,S
|
||||
13,0,3,"Saundercock, Mr. William Henry",male,20,0,0,A/5. 2151,8.05,,S
|
||||
14,0,3,"Andersson, Mr. Anders Johan",male,39,1,5,347082,31.275,,S
|
||||
15,0,3,"Vestrom, Miss. Hulda Amanda Adolfina",female,14,0,0,350406,7.8542,,S
|
||||
16,1,2,"Hewlett, Mrs. (Mary D Kingcome) ",female,55,0,0,248706,16,,S
|
||||
17,0,3,"Rice, Master. Eugene",male,2,4,1,382652,29.125,,Q
|
||||
18,1,2,"Williams, Mr. Charles Eugene",male,,0,0,244373,13,,S
|
||||
19,0,3,"Vander Planke, Mrs. Julius (Emelia Maria Vandemoortele)",female,31,1,0,345763,18,,S
|
||||
20,1,3,"Masselmani, Mrs. Fatima",female,,0,0,2649,7.225,,C
|
||||
21,0,2,"Fynney, Mr. Joseph J",male,35,0,0,239865,26,,S
|
||||
22,1,2,"Beesley, Mr. Lawrence",male,34,0,0,248698,13,D56,S
|
||||
23,1,3,"McGowan, Miss. Anna ""Annie""",female,15,0,0,330923,8.0292,,Q
|
||||
24,1,1,"Sloper, Mr. William Thompson",male,28,0,0,113788,35.5,A6,S
|
||||
25,0,3,"Palsson, Miss. Torborg Danira",female,8,3,1,349909,21.075,,S
|
||||
26,1,3,"Asplund, Mrs. Carl Oscar (Selma Augusta Emilia Johansson)",female,38,1,5,347077,31.3875,,S
|
||||
27,0,3,"Emir, Mr. Farred Chehab",male,,0,0,2631,7.225,,C
|
||||
28,0,1,"Fortune, Mr. Charles Alexander",male,19,3,2,19950,263,C23 C25 C27,S
|
||||
29,1,3,"O'Dwyer, Miss. Ellen ""Nellie""",female,,0,0,330959,7.8792,,Q
|
||||
30,0,3,"Todoroff, Mr. Lalio",male,,0,0,349216,7.8958,,S
|
||||
31,0,1,"Uruchurtu, Don. Manuel E",male,40,0,0,PC 17601,27.7208,,C
|
||||
32,1,1,"Spencer, Mrs. William Augustus (Marie Eugenie)",female,,1,0,PC 17569,146.5208,B78,C
|
||||
33,1,3,"Glynn, Miss. Mary Agatha",female,,0,0,335677,7.75,,Q
|
||||
34,0,2,"Wheadon, Mr. Edward H",male,66,0,0,C.A. 24579,10.5,,S
|
||||
35,0,1,"Meyer, Mr. Edgar Joseph",male,28,1,0,PC 17604,82.1708,,C
|
||||
36,0,1,"Holverson, Mr. Alexander Oskar",male,42,1,0,113789,52,,S
|
||||
37,1,3,"Mamee, Mr. Hanna",male,,0,0,2677,7.2292,,C
|
||||
38,0,3,"Cann, Mr. Ernest Charles",male,21,0,0,A./5. 2152,8.05,,S
|
||||
39,0,3,"Vander Planke, Miss. Augusta Maria",female,18,2,0,345764,18,,S
|
||||
40,1,3,"Nicola-Yarred, Miss. Jamila",female,14,1,0,2651,11.2417,,C
|
||||
41,0,3,"Ahlin, Mrs. Johan (Johanna Persdotter Larsson)",female,40,1,0,7546,9.475,,S
|
||||
42,0,2,"Turpin, Mrs. William John Robert (Dorothy Ann Wonnacott)",female,27,1,0,11668,21,,S
|
||||
43,0,3,"Kraeff, Mr. Theodor",male,,0,0,349253,7.8958,,C
|
||||
44,1,2,"Laroche, Miss. Simonne Marie Anne Andree",female,3,1,2,SC/Paris 2123,41.5792,,C
|
||||
45,1,3,"Devaney, Miss. Margaret Delia",female,19,0,0,330958,7.8792,,Q
|
||||
46,0,3,"Rogers, Mr. William John",male,,0,0,S.C./A.4. 23567,8.05,,S
|
||||
47,0,3,"Lennon, Mr. Denis",male,,1,0,370371,15.5,,Q
|
||||
48,1,3,"O'Driscoll, Miss. Bridget",female,,0,0,14311,7.75,,Q
|
||||
49,0,3,"Samaan, Mr. Youssef",male,,2,0,2662,21.6792,,C
|
||||
50,0,3,"Arnold-Franchi, Mrs. Josef (Josefine Franchi)",female,18,1,0,349237,17.8,,S
|
||||
51,0,3,"Panula, Master. Juha Niilo",male,7,4,1,3101295,39.6875,,S
|
||||
52,0,3,"Nosworthy, Mr. Richard Cater",male,21,0,0,A/4. 39886,7.8,,S
|
||||
53,1,1,"Harper, Mrs. Henry Sleeper (Myna Haxtun)",female,49,1,0,PC 17572,76.7292,D33,C
|
||||
54,1,2,"Faunthorpe, Mrs. Lizzie (Elizabeth Anne Wilkinson)",female,29,1,0,2926,26,,S
|
||||
55,0,1,"Ostby, Mr. Engelhart Cornelius",male,65,0,1,113509,61.9792,B30,C
|
||||
56,1,1,"Woolner, Mr. Hugh",male,,0,0,19947,35.5,C52,S
|
||||
57,1,2,"Rugg, Miss. Emily",female,21,0,0,C.A. 31026,10.5,,S
|
||||
58,0,3,"Novel, Mr. Mansouer",male,28.5,0,0,2697,7.2292,,C
|
||||
59,1,2,"West, Miss. Constance Mirium",female,5,1,2,C.A. 34651,27.75,,S
|
||||
60,0,3,"Goodwin, Master. William Frederick",male,11,5,2,CA 2144,46.9,,S
|
||||
61,0,3,"Sirayanian, Mr. Orsen",male,22,0,0,2669,7.2292,,C
|
||||
62,1,1,"Icard, Miss. Amelie",female,38,0,0,113572,80,B28,
|
||||
63,0,1,"Harris, Mr. Henry Birkhardt",male,45,1,0,36973,83.475,C83,S
|
||||
64,0,3,"Skoog, Master. Harald",male,4,3,2,347088,27.9,,S
|
||||
65,0,1,"Stewart, Mr. Albert A",male,,0,0,PC 17605,27.7208,,C
|
||||
66,1,3,"Moubarek, Master. Gerios",male,,1,1,2661,15.2458,,C
|
||||
67,1,2,"Nye, Mrs. (Elizabeth Ramell)",female,29,0,0,C.A. 29395,10.5,F33,S
|
||||
68,0,3,"Crease, Mr. Ernest James",male,19,0,0,S.P. 3464,8.1583,,S
|
||||
69,1,3,"Andersson, Miss. Erna Alexandra",female,17,4,2,3101281,7.925,,S
|
||||
70,0,3,"Kink, Mr. Vincenz",male,26,2,0,315151,8.6625,,S
|
||||
71,0,2,"Jenkin, Mr. Stephen Curnow",male,32,0,0,C.A. 33111,10.5,,S
|
||||
72,0,3,"Goodwin, Miss. Lillian Amy",female,16,5,2,CA 2144,46.9,,S
|
||||
73,0,2,"Hood, Mr. Ambrose Jr",male,21,0,0,S.O.C. 14879,73.5,,S
|
||||
74,0,3,"Chronopoulos, Mr. Apostolos",male,26,1,0,2680,14.4542,,C
|
||||
75,1,3,"Bing, Mr. Lee",male,32,0,0,1601,56.4958,,S
|
||||
76,0,3,"Moen, Mr. Sigurd Hansen",male,25,0,0,348123,7.65,F G73,S
|
||||
77,0,3,"Staneff, Mr. Ivan",male,,0,0,349208,7.8958,,S
|
||||
78,0,3,"Moutal, Mr. Rahamin Haim",male,,0,0,374746,8.05,,S
|
||||
79,1,2,"Caldwell, Master. Alden Gates",male,0.83,0,2,248738,29,,S
|
||||
80,1,3,"Dowdell, Miss. Elizabeth",female,30,0,0,364516,12.475,,S
|
||||
81,0,3,"Waelens, Mr. Achille",male,22,0,0,345767,9,,S
|
||||
82,1,3,"Sheerlinck, Mr. Jan Baptist",male,29,0,0,345779,9.5,,S
|
||||
83,1,3,"McDermott, Miss. Brigdet Delia",female,,0,0,330932,7.7875,,Q
|
||||
84,0,1,"Carrau, Mr. Francisco M",male,28,0,0,113059,47.1,,S
|
||||
85,1,2,"Ilett, Miss. Bertha",female,17,0,0,SO/C 14885,10.5,,S
|
||||
86,1,3,"Backstrom, Mrs. Karl Alfred (Maria Mathilda Gustafsson)",female,33,3,0,3101278,15.85,,S
|
||||
87,0,3,"Ford, Mr. William Neal",male,16,1,3,W./C. 6608,34.375,,S
|
||||
88,0,3,"Slocovski, Mr. Selman Francis",male,,0,0,SOTON/OQ 392086,8.05,,S
|
||||
89,1,1,"Fortune, Miss. Mabel Helen",female,23,3,2,19950,263,C23 C25 C27,S
|
||||
90,0,3,"Celotti, Mr. Francesco",male,24,0,0,343275,8.05,,S
|
||||
91,0,3,"Christmann, Mr. Emil",male,29,0,0,343276,8.05,,S
|
||||
92,0,3,"Andreasson, Mr. Paul Edvin",male,20,0,0,347466,7.8542,,S
|
||||
93,0,1,"Chaffee, Mr. Herbert Fuller",male,46,1,0,W.E.P. 5734,61.175,E31,S
|
||||
94,0,3,"Dean, Mr. Bertram Frank",male,26,1,2,C.A. 2315,20.575,,S
|
||||
95,0,3,"Coxon, Mr. Daniel",male,59,0,0,364500,7.25,,S
|
||||
96,0,3,"Shorney, Mr. Charles Joseph",male,,0,0,374910,8.05,,S
|
||||
97,0,1,"Goldschmidt, Mr. George B",male,71,0,0,PC 17754,34.6542,A5,C
|
||||
98,1,1,"Greenfield, Mr. William Bertram",male,23,0,1,PC 17759,63.3583,D10 D12,C
|
||||
99,1,2,"Doling, Mrs. John T (Ada Julia Bone)",female,34,0,1,231919,23,,S
|
||||
100,0,2,"Kantor, Mr. Sinai",male,34,1,0,244367,26,,S
|
||||
101,0,3,"Petranec, Miss. Matilda",female,28,0,0,349245,7.8958,,S
|
||||
102,0,3,"Petroff, Mr. Pastcho (""Pentcho"")",male,,0,0,349215,7.8958,,S
|
||||
103,0,1,"White, Mr. Richard Frasar",male,21,0,1,35281,77.2875,D26,S
|
||||
104,0,3,"Johansson, Mr. Gustaf Joel",male,33,0,0,7540,8.6542,,S
|
||||
105,0,3,"Gustafsson, Mr. Anders Vilhelm",male,37,2,0,3101276,7.925,,S
|
||||
106,0,3,"Mionoff, Mr. Stoytcho",male,28,0,0,349207,7.8958,,S
|
||||
107,1,3,"Salkjelsvik, Miss. Anna Kristine",female,21,0,0,343120,7.65,,S
|
||||
108,1,3,"Moss, Mr. Albert Johan",male,,0,0,312991,7.775,,S
|
||||
109,0,3,"Rekic, Mr. Tido",male,38,0,0,349249,7.8958,,S
|
||||
110,1,3,"Moran, Miss. Bertha",female,,1,0,371110,24.15,,Q
|
||||
111,0,1,"Porter, Mr. Walter Chamberlain",male,47,0,0,110465,52,C110,S
|
||||
112,0,3,"Zabour, Miss. Hileni",female,14.5,1,0,2665,14.4542,,C
|
||||
113,0,3,"Barton, Mr. David John",male,22,0,0,324669,8.05,,S
|
||||
114,0,3,"Jussila, Miss. Katriina",female,20,1,0,4136,9.825,,S
|
||||
115,0,3,"Attalah, Miss. Malake",female,17,0,0,2627,14.4583,,C
|
||||
116,0,3,"Pekoniemi, Mr. Edvard",male,21,0,0,STON/O 2. 3101294,7.925,,S
|
||||
117,0,3,"Connors, Mr. Patrick",male,70.5,0,0,370369,7.75,,Q
|
||||
118,0,2,"Turpin, Mr. William John Robert",male,29,1,0,11668,21,,S
|
||||
119,0,1,"Baxter, Mr. Quigg Edmond",male,24,0,1,PC 17558,247.5208,B58 B60,C
|
||||
120,0,3,"Andersson, Miss. Ellis Anna Maria",female,2,4,2,347082,31.275,,S
|
||||
121,0,2,"Hickman, Mr. Stanley George",male,21,2,0,S.O.C. 14879,73.5,,S
|
||||
122,0,3,"Moore, Mr. Leonard Charles",male,,0,0,A4. 54510,8.05,,S
|
||||
123,0,2,"Nasser, Mr. Nicholas",male,32.5,1,0,237736,30.0708,,C
|
||||
124,1,2,"Webber, Miss. Susan",female,32.5,0,0,27267,13,E101,S
|
||||
125,0,1,"White, Mr. Percival Wayland",male,54,0,1,35281,77.2875,D26,S
|
||||
126,1,3,"Nicola-Yarred, Master. Elias",male,12,1,0,2651,11.2417,,C
|
||||
127,0,3,"McMahon, Mr. Martin",male,,0,0,370372,7.75,,Q
|
||||
128,1,3,"Madsen, Mr. Fridtjof Arne",male,24,0,0,C 17369,7.1417,,S
|
||||
129,1,3,"Peter, Miss. Anna",female,,1,1,2668,22.3583,F E69,C
|
||||
130,0,3,"Ekstrom, Mr. Johan",male,45,0,0,347061,6.975,,S
|
||||
131,0,3,"Drazenoic, Mr. Jozef",male,33,0,0,349241,7.8958,,C
|
||||
132,0,3,"Coelho, Mr. Domingos Fernandeo",male,20,0,0,SOTON/O.Q. 3101307,7.05,,S
|
||||
133,0,3,"Robins, Mrs. Alexander A (Grace Charity Laury)",female,47,1,0,A/5. 3337,14.5,,S
|
||||
134,1,2,"Weisz, Mrs. Leopold (Mathilde Francoise Pede)",female,29,1,0,228414,26,,S
|
||||
135,0,2,"Sobey, Mr. Samuel James Hayden",male,25,0,0,C.A. 29178,13,,S
|
||||
136,0,2,"Richard, Mr. Emile",male,23,0,0,SC/PARIS 2133,15.0458,,C
|
||||
137,1,1,"Newsom, Miss. Helen Monypeny",female,19,0,2,11752,26.2833,D47,S
|
||||
138,0,1,"Futrelle, Mr. Jacques Heath",male,37,1,0,113803,53.1,C123,S
|
||||
139,0,3,"Osen, Mr. Olaf Elon",male,16,0,0,7534,9.2167,,S
|
||||
140,0,1,"Giglio, Mr. Victor",male,24,0,0,PC 17593,79.2,B86,C
|
||||
141,0,3,"Boulos, Mrs. Joseph (Sultana)",female,,0,2,2678,15.2458,,C
|
||||
142,1,3,"Nysten, Miss. Anna Sofia",female,22,0,0,347081,7.75,,S
|
||||
143,1,3,"Hakkarainen, Mrs. Pekka Pietari (Elin Matilda Dolck)",female,24,1,0,STON/O2. 3101279,15.85,,S
|
||||
144,0,3,"Burke, Mr. Jeremiah",male,19,0,0,365222,6.75,,Q
|
||||
145,0,2,"Andrew, Mr. Edgardo Samuel",male,18,0,0,231945,11.5,,S
|
||||
146,0,2,"Nicholls, Mr. Joseph Charles",male,19,1,1,C.A. 33112,36.75,,S
|
||||
147,1,3,"Andersson, Mr. August Edvard (""Wennerstrom"")",male,27,0,0,350043,7.7958,,S
|
||||
148,0,3,"Ford, Miss. Robina Maggie ""Ruby""",female,9,2,2,W./C. 6608,34.375,,S
|
||||
149,0,2,"Navratil, Mr. Michel (""Louis M Hoffman"")",male,36.5,0,2,230080,26,F2,S
|
||||
150,0,2,"Byles, Rev. Thomas Roussel Davids",male,42,0,0,244310,13,,S
|
||||
151,0,2,"Bateman, Rev. Robert James",male,51,0,0,S.O.P. 1166,12.525,,S
|
||||
152,1,1,"Pears, Mrs. Thomas (Edith Wearne)",female,22,1,0,113776,66.6,C2,S
|
||||
153,0,3,"Meo, Mr. Alfonzo",male,55.5,0,0,A.5. 11206,8.05,,S
|
||||
154,0,3,"van Billiard, Mr. Austin Blyler",male,40.5,0,2,A/5. 851,14.5,,S
|
||||
155,0,3,"Olsen, Mr. Ole Martin",male,,0,0,Fa 265302,7.3125,,S
|
||||
156,0,1,"Williams, Mr. Charles Duane",male,51,0,1,PC 17597,61.3792,,C
|
||||
157,1,3,"Gilnagh, Miss. Katherine ""Katie""",female,16,0,0,35851,7.7333,,Q
|
||||
158,0,3,"Corn, Mr. Harry",male,30,0,0,SOTON/OQ 392090,8.05,,S
|
||||
159,0,3,"Smiljanic, Mr. Mile",male,,0,0,315037,8.6625,,S
|
||||
160,0,3,"Sage, Master. Thomas Henry",male,,8,2,CA. 2343,69.55,,S
|
||||
161,0,3,"Cribb, Mr. John Hatfield",male,44,0,1,371362,16.1,,S
|
||||
162,1,2,"Watt, Mrs. James (Elizabeth ""Bessie"" Inglis Milne)",female,40,0,0,C.A. 33595,15.75,,S
|
||||
163,0,3,"Bengtsson, Mr. John Viktor",male,26,0,0,347068,7.775,,S
|
||||
164,0,3,"Calic, Mr. Jovo",male,17,0,0,315093,8.6625,,S
|
||||
165,0,3,"Panula, Master. Eino Viljami",male,1,4,1,3101295,39.6875,,S
|
||||
166,1,3,"Goldsmith, Master. Frank John William ""Frankie""",male,9,0,2,363291,20.525,,S
|
||||
167,1,1,"Chibnall, Mrs. (Edith Martha Bowerman)",female,,0,1,113505,55,E33,S
|
||||
168,0,3,"Skoog, Mrs. William (Anna Bernhardina Karlsson)",female,45,1,4,347088,27.9,,S
|
||||
169,0,1,"Baumann, Mr. John D",male,,0,0,PC 17318,25.925,,S
|
||||
170,0,3,"Ling, Mr. Lee",male,28,0,0,1601,56.4958,,S
|
||||
171,0,1,"Van der hoef, Mr. Wyckoff",male,61,0,0,111240,33.5,B19,S
|
||||
172,0,3,"Rice, Master. Arthur",male,4,4,1,382652,29.125,,Q
|
||||
173,1,3,"Johnson, Miss. Eleanor Ileen",female,1,1,1,347742,11.1333,,S
|
||||
174,0,3,"Sivola, Mr. Antti Wilhelm",male,21,0,0,STON/O 2. 3101280,7.925,,S
|
||||
175,0,1,"Smith, Mr. James Clinch",male,56,0,0,17764,30.6958,A7,C
|
||||
176,0,3,"Klasen, Mr. Klas Albin",male,18,1,1,350404,7.8542,,S
|
||||
177,0,3,"Lefebre, Master. Henry Forbes",male,,3,1,4133,25.4667,,S
|
||||
178,0,1,"Isham, Miss. Ann Elizabeth",female,50,0,0,PC 17595,28.7125,C49,C
|
||||
179,0,2,"Hale, Mr. Reginald",male,30,0,0,250653,13,,S
|
||||
180,0,3,"Leonard, Mr. Lionel",male,36,0,0,LINE,0,,S
|
||||
181,0,3,"Sage, Miss. Constance Gladys",female,,8,2,CA. 2343,69.55,,S
|
||||
182,0,2,"Pernot, Mr. Rene",male,,0,0,SC/PARIS 2131,15.05,,C
|
||||
183,0,3,"Asplund, Master. Clarence Gustaf Hugo",male,9,4,2,347077,31.3875,,S
|
||||
184,1,2,"Becker, Master. Richard F",male,1,2,1,230136,39,F4,S
|
||||
185,1,3,"Kink-Heilmann, Miss. Luise Gretchen",female,4,0,2,315153,22.025,,S
|
||||
186,0,1,"Rood, Mr. Hugh Roscoe",male,,0,0,113767,50,A32,S
|
||||
187,1,3,"O'Brien, Mrs. Thomas (Johanna ""Hannah"" Godfrey)",female,,1,0,370365,15.5,,Q
|
||||
188,1,1,"Romaine, Mr. Charles Hallace (""Mr C Rolmane"")",male,45,0,0,111428,26.55,,S
|
||||
189,0,3,"Bourke, Mr. John",male,40,1,1,364849,15.5,,Q
|
||||
190,0,3,"Turcin, Mr. Stjepan",male,36,0,0,349247,7.8958,,S
|
||||
191,1,2,"Pinsky, Mrs. (Rosa)",female,32,0,0,234604,13,,S
|
||||
192,0,2,"Carbines, Mr. William",male,19,0,0,28424,13,,S
|
||||
193,1,3,"Andersen-Jensen, Miss. Carla Christine Nielsine",female,19,1,0,350046,7.8542,,S
|
||||
194,1,2,"Navratil, Master. Michel M",male,3,1,1,230080,26,F2,S
|
||||
195,1,1,"Brown, Mrs. James Joseph (Margaret Tobin)",female,44,0,0,PC 17610,27.7208,B4,C
|
||||
196,1,1,"Lurette, Miss. Elise",female,58,0,0,PC 17569,146.5208,B80,C
|
||||
197,0,3,"Mernagh, Mr. Robert",male,,0,0,368703,7.75,,Q
|
||||
198,0,3,"Olsen, Mr. Karl Siegwart Andreas",male,42,0,1,4579,8.4042,,S
|
||||
199,1,3,"Madigan, Miss. Margaret ""Maggie""",female,,0,0,370370,7.75,,Q
|
||||
200,0,2,"Yrois, Miss. Henriette (""Mrs Harbeck"")",female,24,0,0,248747,13,,S
|
||||
201,0,3,"Vande Walle, Mr. Nestor Cyriel",male,28,0,0,345770,9.5,,S
|
||||
202,0,3,"Sage, Mr. Frederick",male,,8,2,CA. 2343,69.55,,S
|
||||
203,0,3,"Johanson, Mr. Jakob Alfred",male,34,0,0,3101264,6.4958,,S
|
||||
204,0,3,"Youseff, Mr. Gerious",male,45.5,0,0,2628,7.225,,C
|
||||
205,1,3,"Cohen, Mr. Gurshon ""Gus""",male,18,0,0,A/5 3540,8.05,,S
|
||||
206,0,3,"Strom, Miss. Telma Matilda",female,2,0,1,347054,10.4625,G6,S
|
||||
207,0,3,"Backstrom, Mr. Karl Alfred",male,32,1,0,3101278,15.85,,S
|
||||
208,1,3,"Albimona, Mr. Nassef Cassem",male,26,0,0,2699,18.7875,,C
|
||||
209,1,3,"Carr, Miss. Helen ""Ellen""",female,16,0,0,367231,7.75,,Q
|
||||
210,1,1,"Blank, Mr. Henry",male,40,0,0,112277,31,A31,C
|
||||
211,0,3,"Ali, Mr. Ahmed",male,24,0,0,SOTON/O.Q. 3101311,7.05,,S
|
||||
212,1,2,"Cameron, Miss. Clear Annie",female,35,0,0,F.C.C. 13528,21,,S
|
||||
213,0,3,"Perkin, Mr. John Henry",male,22,0,0,A/5 21174,7.25,,S
|
||||
214,0,2,"Givard, Mr. Hans Kristensen",male,30,0,0,250646,13,,S
|
||||
215,0,3,"Kiernan, Mr. Philip",male,,1,0,367229,7.75,,Q
|
||||
216,1,1,"Newell, Miss. Madeleine",female,31,1,0,35273,113.275,D36,C
|
||||
217,1,3,"Honkanen, Miss. Eliina",female,27,0,0,STON/O2. 3101283,7.925,,S
|
||||
218,0,2,"Jacobsohn, Mr. Sidney Samuel",male,42,1,0,243847,27,,S
|
||||
219,1,1,"Bazzani, Miss. Albina",female,32,0,0,11813,76.2917,D15,C
|
||||
220,0,2,"Harris, Mr. Walter",male,30,0,0,W/C 14208,10.5,,S
|
||||
221,1,3,"Sunderland, Mr. Victor Francis",male,16,0,0,SOTON/OQ 392089,8.05,,S
|
||||
222,0,2,"Bracken, Mr. James H",male,27,0,0,220367,13,,S
|
||||
223,0,3,"Green, Mr. George Henry",male,51,0,0,21440,8.05,,S
|
||||
224,0,3,"Nenkoff, Mr. Christo",male,,0,0,349234,7.8958,,S
|
||||
225,1,1,"Hoyt, Mr. Frederick Maxfield",male,38,1,0,19943,90,C93,S
|
||||
226,0,3,"Berglund, Mr. Karl Ivar Sven",male,22,0,0,PP 4348,9.35,,S
|
||||
227,1,2,"Mellors, Mr. William John",male,19,0,0,SW/PP 751,10.5,,S
|
||||
228,0,3,"Lovell, Mr. John Hall (""Henry"")",male,20.5,0,0,A/5 21173,7.25,,S
|
||||
229,0,2,"Fahlstrom, Mr. Arne Jonas",male,18,0,0,236171,13,,S
|
||||
230,0,3,"Lefebre, Miss. Mathilde",female,,3,1,4133,25.4667,,S
|
||||
231,1,1,"Harris, Mrs. Henry Birkhardt (Irene Wallach)",female,35,1,0,36973,83.475,C83,S
|
||||
232,0,3,"Larsson, Mr. Bengt Edvin",male,29,0,0,347067,7.775,,S
|
||||
233,0,2,"Sjostedt, Mr. Ernst Adolf",male,59,0,0,237442,13.5,,S
|
||||
234,1,3,"Asplund, Miss. Lillian Gertrud",female,5,4,2,347077,31.3875,,S
|
||||
235,0,2,"Leyson, Mr. Robert William Norman",male,24,0,0,C.A. 29566,10.5,,S
|
||||
236,0,3,"Harknett, Miss. Alice Phoebe",female,,0,0,W./C. 6609,7.55,,S
|
||||
237,0,2,"Hold, Mr. Stephen",male,44,1,0,26707,26,,S
|
||||
238,1,2,"Collyer, Miss. Marjorie ""Lottie""",female,8,0,2,C.A. 31921,26.25,,S
|
||||
239,0,2,"Pengelly, Mr. Frederick William",male,19,0,0,28665,10.5,,S
|
||||
240,0,2,"Hunt, Mr. George Henry",male,33,0,0,SCO/W 1585,12.275,,S
|
||||
241,0,3,"Zabour, Miss. Thamine",female,,1,0,2665,14.4542,,C
|
||||
242,1,3,"Murphy, Miss. Katherine ""Kate""",female,,1,0,367230,15.5,,Q
|
||||
243,0,2,"Coleridge, Mr. Reginald Charles",male,29,0,0,W./C. 14263,10.5,,S
|
||||
244,0,3,"Maenpaa, Mr. Matti Alexanteri",male,22,0,0,STON/O 2. 3101275,7.125,,S
|
||||
245,0,3,"Attalah, Mr. Sleiman",male,30,0,0,2694,7.225,,C
|
||||
246,0,1,"Minahan, Dr. William Edward",male,44,2,0,19928,90,C78,Q
|
||||
247,0,3,"Lindahl, Miss. Agda Thorilda Viktoria",female,25,0,0,347071,7.775,,S
|
||||
248,1,2,"Hamalainen, Mrs. William (Anna)",female,24,0,2,250649,14.5,,S
|
||||
249,1,1,"Beckwith, Mr. Richard Leonard",male,37,1,1,11751,52.5542,D35,S
|
||||
250,0,2,"Carter, Rev. Ernest Courtenay",male,54,1,0,244252,26,,S
|
||||
251,0,3,"Reed, Mr. James George",male,,0,0,362316,7.25,,S
|
||||
252,0,3,"Strom, Mrs. Wilhelm (Elna Matilda Persson)",female,29,1,1,347054,10.4625,G6,S
|
||||
253,0,1,"Stead, Mr. William Thomas",male,62,0,0,113514,26.55,C87,S
|
||||
254,0,3,"Lobb, Mr. William Arthur",male,30,1,0,A/5. 3336,16.1,,S
|
||||
255,0,3,"Rosblom, Mrs. Viktor (Helena Wilhelmina)",female,41,0,2,370129,20.2125,,S
|
||||
256,1,3,"Touma, Mrs. Darwis (Hanne Youssef Razi)",female,29,0,2,2650,15.2458,,C
|
||||
257,1,1,"Thorne, Mrs. Gertrude Maybelle",female,,0,0,PC 17585,79.2,,C
|
||||
258,1,1,"Cherry, Miss. Gladys",female,30,0,0,110152,86.5,B77,S
|
||||
259,1,1,"Ward, Miss. Anna",female,35,0,0,PC 17755,512.3292,,C
|
||||
260,1,2,"Parrish, Mrs. (Lutie Davis)",female,50,0,1,230433,26,,S
|
||||
261,0,3,"Smith, Mr. Thomas",male,,0,0,384461,7.75,,Q
|
||||
262,1,3,"Asplund, Master. Edvin Rojj Felix",male,3,4,2,347077,31.3875,,S
|
||||
263,0,1,"Taussig, Mr. Emil",male,52,1,1,110413,79.65,E67,S
|
||||
264,0,1,"Harrison, Mr. William",male,40,0,0,112059,0,B94,S
|
||||
265,0,3,"Henry, Miss. Delia",female,,0,0,382649,7.75,,Q
|
||||
266,0,2,"Reeves, Mr. David",male,36,0,0,C.A. 17248,10.5,,S
|
||||
267,0,3,"Panula, Mr. Ernesti Arvid",male,16,4,1,3101295,39.6875,,S
|
||||
268,1,3,"Persson, Mr. Ernst Ulrik",male,25,1,0,347083,7.775,,S
|
||||
269,1,1,"Graham, Mrs. William Thompson (Edith Junkins)",female,58,0,1,PC 17582,153.4625,C125,S
|
||||
270,1,1,"Bissette, Miss. Amelia",female,35,0,0,PC 17760,135.6333,C99,S
|
||||
271,0,1,"Cairns, Mr. Alexander",male,,0,0,113798,31,,S
|
||||
272,1,3,"Tornquist, Mr. William Henry",male,25,0,0,LINE,0,,S
|
||||
273,1,2,"Mellinger, Mrs. (Elizabeth Anne Maidment)",female,41,0,1,250644,19.5,,S
|
||||
274,0,1,"Natsch, Mr. Charles H",male,37,0,1,PC 17596,29.7,C118,C
|
||||
275,1,3,"Healy, Miss. Hanora ""Nora""",female,,0,0,370375,7.75,,Q
|
||||
276,1,1,"Andrews, Miss. Kornelia Theodosia",female,63,1,0,13502,77.9583,D7,S
|
||||
277,0,3,"Lindblom, Miss. Augusta Charlotta",female,45,0,0,347073,7.75,,S
|
||||
278,0,2,"Parkes, Mr. Francis ""Frank""",male,,0,0,239853,0,,S
|
||||
279,0,3,"Rice, Master. Eric",male,7,4,1,382652,29.125,,Q
|
||||
280,1,3,"Abbott, Mrs. Stanton (Rosa Hunt)",female,35,1,1,C.A. 2673,20.25,,S
|
||||
281,0,3,"Duane, Mr. Frank",male,65,0,0,336439,7.75,,Q
|
||||
282,0,3,"Olsson, Mr. Nils Johan Goransson",male,28,0,0,347464,7.8542,,S
|
||||
283,0,3,"de Pelsmaeker, Mr. Alfons",male,16,0,0,345778,9.5,,S
|
||||
284,1,3,"Dorking, Mr. Edward Arthur",male,19,0,0,A/5. 10482,8.05,,S
|
||||
285,0,1,"Smith, Mr. Richard William",male,,0,0,113056,26,A19,S
|
||||
286,0,3,"Stankovic, Mr. Ivan",male,33,0,0,349239,8.6625,,C
|
||||
287,1,3,"de Mulder, Mr. Theodore",male,30,0,0,345774,9.5,,S
|
||||
288,0,3,"Naidenoff, Mr. Penko",male,22,0,0,349206,7.8958,,S
|
||||
289,1,2,"Hosono, Mr. Masabumi",male,42,0,0,237798,13,,S
|
||||
290,1,3,"Connolly, Miss. Kate",female,22,0,0,370373,7.75,,Q
|
||||
291,1,1,"Barber, Miss. Ellen ""Nellie""",female,26,0,0,19877,78.85,,S
|
||||
292,1,1,"Bishop, Mrs. Dickinson H (Helen Walton)",female,19,1,0,11967,91.0792,B49,C
|
||||
293,0,2,"Levy, Mr. Rene Jacques",male,36,0,0,SC/Paris 2163,12.875,D,C
|
||||
294,0,3,"Haas, Miss. Aloisia",female,24,0,0,349236,8.85,,S
|
||||
295,0,3,"Mineff, Mr. Ivan",male,24,0,0,349233,7.8958,,S
|
||||
296,0,1,"Lewy, Mr. Ervin G",male,,0,0,PC 17612,27.7208,,C
|
||||
297,0,3,"Hanna, Mr. Mansour",male,23.5,0,0,2693,7.2292,,C
|
||||
298,0,1,"Allison, Miss. Helen Loraine",female,2,1,2,113781,151.55,C22 C26,S
|
||||
299,1,1,"Saalfeld, Mr. Adolphe",male,,0,0,19988,30.5,C106,S
|
||||
300,1,1,"Baxter, Mrs. James (Helene DeLaudeniere Chaput)",female,50,0,1,PC 17558,247.5208,B58 B60,C
|
||||
301,1,3,"Kelly, Miss. Anna Katherine ""Annie Kate""",female,,0,0,9234,7.75,,Q
|
||||
302,1,3,"McCoy, Mr. Bernard",male,,2,0,367226,23.25,,Q
|
||||
303,0,3,"Johnson, Mr. William Cahoone Jr",male,19,0,0,LINE,0,,S
|
||||
304,1,2,"Keane, Miss. Nora A",female,,0,0,226593,12.35,E101,Q
|
||||
305,0,3,"Williams, Mr. Howard Hugh ""Harry""",male,,0,0,A/5 2466,8.05,,S
|
||||
306,1,1,"Allison, Master. Hudson Trevor",male,0.92,1,2,113781,151.55,C22 C26,S
|
||||
307,1,1,"Fleming, Miss. Margaret",female,,0,0,17421,110.8833,,C
|
||||
308,1,1,"Penasco y Castellana, Mrs. Victor de Satode (Maria Josefa Perez de Soto y Vallejo)",female,17,1,0,PC 17758,108.9,C65,C
|
||||
309,0,2,"Abelson, Mr. Samuel",male,30,1,0,P/PP 3381,24,,C
|
||||
310,1,1,"Francatelli, Miss. Laura Mabel",female,30,0,0,PC 17485,56.9292,E36,C
|
||||
311,1,1,"Hays, Miss. Margaret Bechstein",female,24,0,0,11767,83.1583,C54,C
|
||||
312,1,1,"Ryerson, Miss. Emily Borie",female,18,2,2,PC 17608,262.375,B57 B59 B63 B66,C
|
||||
313,0,2,"Lahtinen, Mrs. William (Anna Sylfven)",female,26,1,1,250651,26,,S
|
||||
314,0,3,"Hendekovic, Mr. Ignjac",male,28,0,0,349243,7.8958,,S
|
||||
315,0,2,"Hart, Mr. Benjamin",male,43,1,1,F.C.C. 13529,26.25,,S
|
||||
316,1,3,"Nilsson, Miss. Helmina Josefina",female,26,0,0,347470,7.8542,,S
|
||||
317,1,2,"Kantor, Mrs. Sinai (Miriam Sternin)",female,24,1,0,244367,26,,S
|
||||
318,0,2,"Moraweck, Dr. Ernest",male,54,0,0,29011,14,,S
|
||||
319,1,1,"Wick, Miss. Mary Natalie",female,31,0,2,36928,164.8667,C7,S
|
||||
320,1,1,"Spedden, Mrs. Frederic Oakley (Margaretta Corning Stone)",female,40,1,1,16966,134.5,E34,C
|
||||
321,0,3,"Dennis, Mr. Samuel",male,22,0,0,A/5 21172,7.25,,S
|
||||
322,0,3,"Danoff, Mr. Yoto",male,27,0,0,349219,7.8958,,S
|
||||
323,1,2,"Slayter, Miss. Hilda Mary",female,30,0,0,234818,12.35,,Q
|
||||
324,1,2,"Caldwell, Mrs. Albert Francis (Sylvia Mae Harbaugh)",female,22,1,1,248738,29,,S
|
||||
325,0,3,"Sage, Mr. George John Jr",male,,8,2,CA. 2343,69.55,,S
|
||||
326,1,1,"Young, Miss. Marie Grice",female,36,0,0,PC 17760,135.6333,C32,C
|
||||
327,0,3,"Nysveen, Mr. Johan Hansen",male,61,0,0,345364,6.2375,,S
|
||||
328,1,2,"Ball, Mrs. (Ada E Hall)",female,36,0,0,28551,13,D,S
|
||||
329,1,3,"Goldsmith, Mrs. Frank John (Emily Alice Brown)",female,31,1,1,363291,20.525,,S
|
||||
330,1,1,"Hippach, Miss. Jean Gertrude",female,16,0,1,111361,57.9792,B18,C
|
||||
331,1,3,"McCoy, Miss. Agnes",female,,2,0,367226,23.25,,Q
|
||||
332,0,1,"Partner, Mr. Austen",male,45.5,0,0,113043,28.5,C124,S
|
||||
333,0,1,"Graham, Mr. George Edward",male,38,0,1,PC 17582,153.4625,C91,S
|
||||
334,0,3,"Vander Planke, Mr. Leo Edmondus",male,16,2,0,345764,18,,S
|
||||
335,1,1,"Frauenthal, Mrs. Henry William (Clara Heinsheimer)",female,,1,0,PC 17611,133.65,,S
|
||||
336,0,3,"Denkoff, Mr. Mitto",male,,0,0,349225,7.8958,,S
|
||||
337,0,1,"Pears, Mr. Thomas Clinton",male,29,1,0,113776,66.6,C2,S
|
||||
338,1,1,"Burns, Miss. Elizabeth Margaret",female,41,0,0,16966,134.5,E40,C
|
||||
339,1,3,"Dahl, Mr. Karl Edwart",male,45,0,0,7598,8.05,,S
|
||||
340,0,1,"Blackwell, Mr. Stephen Weart",male,45,0,0,113784,35.5,T,S
|
||||
341,1,2,"Navratil, Master. Edmond Roger",male,2,1,1,230080,26,F2,S
|
||||
342,1,1,"Fortune, Miss. Alice Elizabeth",female,24,3,2,19950,263,C23 C25 C27,S
|
||||
343,0,2,"Collander, Mr. Erik Gustaf",male,28,0,0,248740,13,,S
|
||||
344,0,2,"Sedgwick, Mr. Charles Frederick Waddington",male,25,0,0,244361,13,,S
|
||||
345,0,2,"Fox, Mr. Stanley Hubert",male,36,0,0,229236,13,,S
|
||||
346,1,2,"Brown, Miss. Amelia ""Mildred""",female,24,0,0,248733,13,F33,S
|
||||
347,1,2,"Smith, Miss. Marion Elsie",female,40,0,0,31418,13,,S
|
||||
348,1,3,"Davison, Mrs. Thomas Henry (Mary E Finck)",female,,1,0,386525,16.1,,S
|
||||
349,1,3,"Coutts, Master. William Loch ""William""",male,3,1,1,C.A. 37671,15.9,,S
|
||||
350,0,3,"Dimic, Mr. Jovan",male,42,0,0,315088,8.6625,,S
|
||||
351,0,3,"Odahl, Mr. Nils Martin",male,23,0,0,7267,9.225,,S
|
||||
352,0,1,"Williams-Lambert, Mr. Fletcher Fellows",male,,0,0,113510,35,C128,S
|
||||
353,0,3,"Elias, Mr. Tannous",male,15,1,1,2695,7.2292,,C
|
||||
354,0,3,"Arnold-Franchi, Mr. Josef",male,25,1,0,349237,17.8,,S
|
||||
355,0,3,"Yousif, Mr. Wazli",male,,0,0,2647,7.225,,C
|
||||
356,0,3,"Vanden Steen, Mr. Leo Peter",male,28,0,0,345783,9.5,,S
|
||||
357,1,1,"Bowerman, Miss. Elsie Edith",female,22,0,1,113505,55,E33,S
|
||||
358,0,2,"Funk, Miss. Annie Clemmer",female,38,0,0,237671,13,,S
|
||||
359,1,3,"McGovern, Miss. Mary",female,,0,0,330931,7.8792,,Q
|
||||
360,1,3,"Mockler, Miss. Helen Mary ""Ellie""",female,,0,0,330980,7.8792,,Q
|
||||
361,0,3,"Skoog, Mr. Wilhelm",male,40,1,4,347088,27.9,,S
|
||||
362,0,2,"del Carlo, Mr. Sebastiano",male,29,1,0,SC/PARIS 2167,27.7208,,C
|
||||
363,0,3,"Barbara, Mrs. (Catherine David)",female,45,0,1,2691,14.4542,,C
|
||||
364,0,3,"Asim, Mr. Adola",male,35,0,0,SOTON/O.Q. 3101310,7.05,,S
|
||||
365,0,3,"O'Brien, Mr. Thomas",male,,1,0,370365,15.5,,Q
|
||||
366,0,3,"Adahl, Mr. Mauritz Nils Martin",male,30,0,0,C 7076,7.25,,S
|
||||
367,1,1,"Warren, Mrs. Frank Manley (Anna Sophia Atkinson)",female,60,1,0,110813,75.25,D37,C
|
||||
368,1,3,"Moussa, Mrs. (Mantoura Boulos)",female,,0,0,2626,7.2292,,C
|
||||
369,1,3,"Jermyn, Miss. Annie",female,,0,0,14313,7.75,,Q
|
||||
370,1,1,"Aubart, Mme. Leontine Pauline",female,24,0,0,PC 17477,69.3,B35,C
|
||||
371,1,1,"Harder, Mr. George Achilles",male,25,1,0,11765,55.4417,E50,C
|
||||
372,0,3,"Wiklund, Mr. Jakob Alfred",male,18,1,0,3101267,6.4958,,S
|
||||
373,0,3,"Beavan, Mr. William Thomas",male,19,0,0,323951,8.05,,S
|
||||
374,0,1,"Ringhini, Mr. Sante",male,22,0,0,PC 17760,135.6333,,C
|
||||
375,0,3,"Palsson, Miss. Stina Viola",female,3,3,1,349909,21.075,,S
|
||||
376,1,1,"Meyer, Mrs. Edgar Joseph (Leila Saks)",female,,1,0,PC 17604,82.1708,,C
|
||||
377,1,3,"Landergren, Miss. Aurora Adelia",female,22,0,0,C 7077,7.25,,S
|
||||
378,0,1,"Widener, Mr. Harry Elkins",male,27,0,2,113503,211.5,C82,C
|
||||
379,0,3,"Betros, Mr. Tannous",male,20,0,0,2648,4.0125,,C
|
||||
380,0,3,"Gustafsson, Mr. Karl Gideon",male,19,0,0,347069,7.775,,S
|
||||
381,1,1,"Bidois, Miss. Rosalie",female,42,0,0,PC 17757,227.525,,C
|
||||
382,1,3,"Nakid, Miss. Maria (""Mary"")",female,1,0,2,2653,15.7417,,C
|
||||
383,0,3,"Tikkanen, Mr. Juho",male,32,0,0,STON/O 2. 3101293,7.925,,S
|
||||
384,1,1,"Holverson, Mrs. Alexander Oskar (Mary Aline Towner)",female,35,1,0,113789,52,,S
|
||||
385,0,3,"Plotcharsky, Mr. Vasil",male,,0,0,349227,7.8958,,S
|
||||
386,0,2,"Davies, Mr. Charles Henry",male,18,0,0,S.O.C. 14879,73.5,,S
|
||||
387,0,3,"Goodwin, Master. Sidney Leonard",male,1,5,2,CA 2144,46.9,,S
|
||||
388,1,2,"Buss, Miss. Kate",female,36,0,0,27849,13,,S
|
||||
389,0,3,"Sadlier, Mr. Matthew",male,,0,0,367655,7.7292,,Q
|
||||
390,1,2,"Lehmann, Miss. Bertha",female,17,0,0,SC 1748,12,,C
|
||||
391,1,1,"Carter, Mr. William Ernest",male,36,1,2,113760,120,B96 B98,S
|
||||
392,1,3,"Jansson, Mr. Carl Olof",male,21,0,0,350034,7.7958,,S
|
||||
393,0,3,"Gustafsson, Mr. Johan Birger",male,28,2,0,3101277,7.925,,S
|
||||
394,1,1,"Newell, Miss. Marjorie",female,23,1,0,35273,113.275,D36,C
|
||||
395,1,3,"Sandstrom, Mrs. Hjalmar (Agnes Charlotta Bengtsson)",female,24,0,2,PP 9549,16.7,G6,S
|
||||
396,0,3,"Johansson, Mr. Erik",male,22,0,0,350052,7.7958,,S
|
||||
397,0,3,"Olsson, Miss. Elina",female,31,0,0,350407,7.8542,,S
|
||||
398,0,2,"McKane, Mr. Peter David",male,46,0,0,28403,26,,S
|
||||
399,0,2,"Pain, Dr. Alfred",male,23,0,0,244278,10.5,,S
|
||||
400,1,2,"Trout, Mrs. William H (Jessie L)",female,28,0,0,240929,12.65,,S
|
||||
401,1,3,"Niskanen, Mr. Juha",male,39,0,0,STON/O 2. 3101289,7.925,,S
|
||||
402,0,3,"Adams, Mr. John",male,26,0,0,341826,8.05,,S
|
||||
403,0,3,"Jussila, Miss. Mari Aina",female,21,1,0,4137,9.825,,S
|
||||
404,0,3,"Hakkarainen, Mr. Pekka Pietari",male,28,1,0,STON/O2. 3101279,15.85,,S
|
||||
405,0,3,"Oreskovic, Miss. Marija",female,20,0,0,315096,8.6625,,S
|
||||
406,0,2,"Gale, Mr. Shadrach",male,34,1,0,28664,21,,S
|
||||
407,0,3,"Widegren, Mr. Carl/Charles Peter",male,51,0,0,347064,7.75,,S
|
||||
408,1,2,"Richards, Master. William Rowe",male,3,1,1,29106,18.75,,S
|
||||
409,0,3,"Birkeland, Mr. Hans Martin Monsen",male,21,0,0,312992,7.775,,S
|
||||
410,0,3,"Lefebre, Miss. Ida",female,,3,1,4133,25.4667,,S
|
||||
411,0,3,"Sdycoff, Mr. Todor",male,,0,0,349222,7.8958,,S
|
||||
412,0,3,"Hart, Mr. Henry",male,,0,0,394140,6.8583,,Q
|
||||
413,1,1,"Minahan, Miss. Daisy E",female,33,1,0,19928,90,C78,Q
|
||||
414,0,2,"Cunningham, Mr. Alfred Fleming",male,,0,0,239853,0,,S
|
||||
415,1,3,"Sundman, Mr. Johan Julian",male,44,0,0,STON/O 2. 3101269,7.925,,S
|
||||
416,0,3,"Meek, Mrs. Thomas (Annie Louise Rowley)",female,,0,0,343095,8.05,,S
|
||||
417,1,2,"Drew, Mrs. James Vivian (Lulu Thorne Christian)",female,34,1,1,28220,32.5,,S
|
||||
418,1,2,"Silven, Miss. Lyyli Karoliina",female,18,0,2,250652,13,,S
|
||||
419,0,2,"Matthews, Mr. William John",male,30,0,0,28228,13,,S
|
||||
420,0,3,"Van Impe, Miss. Catharina",female,10,0,2,345773,24.15,,S
|
||||
421,0,3,"Gheorgheff, Mr. Stanio",male,,0,0,349254,7.8958,,C
|
||||
422,0,3,"Charters, Mr. David",male,21,0,0,A/5. 13032,7.7333,,Q
|
||||
423,0,3,"Zimmerman, Mr. Leo",male,29,0,0,315082,7.875,,S
|
||||
424,0,3,"Danbom, Mrs. Ernst Gilbert (Anna Sigrid Maria Brogren)",female,28,1,1,347080,14.4,,S
|
||||
425,0,3,"Rosblom, Mr. Viktor Richard",male,18,1,1,370129,20.2125,,S
|
||||
426,0,3,"Wiseman, Mr. Phillippe",male,,0,0,A/4. 34244,7.25,,S
|
||||
427,1,2,"Clarke, Mrs. Charles V (Ada Maria Winfield)",female,28,1,0,2003,26,,S
|
||||
428,1,2,"Phillips, Miss. Kate Florence (""Mrs Kate Louise Phillips Marshall"")",female,19,0,0,250655,26,,S
|
||||
429,0,3,"Flynn, Mr. James",male,,0,0,364851,7.75,,Q
|
||||
430,1,3,"Pickard, Mr. Berk (Berk Trembisky)",male,32,0,0,SOTON/O.Q. 392078,8.05,E10,S
|
||||
431,1,1,"Bjornstrom-Steffansson, Mr. Mauritz Hakan",male,28,0,0,110564,26.55,C52,S
|
||||
432,1,3,"Thorneycroft, Mrs. Percival (Florence Kate White)",female,,1,0,376564,16.1,,S
|
||||
433,1,2,"Louch, Mrs. Charles Alexander (Alice Adelaide Slow)",female,42,1,0,SC/AH 3085,26,,S
|
||||
434,0,3,"Kallio, Mr. Nikolai Erland",male,17,0,0,STON/O 2. 3101274,7.125,,S
|
||||
435,0,1,"Silvey, Mr. William Baird",male,50,1,0,13507,55.9,E44,S
|
||||
436,1,1,"Carter, Miss. Lucile Polk",female,14,1,2,113760,120,B96 B98,S
|
||||
437,0,3,"Ford, Miss. Doolina Margaret ""Daisy""",female,21,2,2,W./C. 6608,34.375,,S
|
||||
438,1,2,"Richards, Mrs. Sidney (Emily Hocking)",female,24,2,3,29106,18.75,,S
|
||||
439,0,1,"Fortune, Mr. Mark",male,64,1,4,19950,263,C23 C25 C27,S
|
||||
440,0,2,"Kvillner, Mr. Johan Henrik Johannesson",male,31,0,0,C.A. 18723,10.5,,S
|
||||
441,1,2,"Hart, Mrs. Benjamin (Esther Ada Bloomfield)",female,45,1,1,F.C.C. 13529,26.25,,S
|
||||
442,0,3,"Hampe, Mr. Leon",male,20,0,0,345769,9.5,,S
|
||||
443,0,3,"Petterson, Mr. Johan Emil",male,25,1,0,347076,7.775,,S
|
||||
444,1,2,"Reynaldo, Ms. Encarnacion",female,28,0,0,230434,13,,S
|
||||
445,1,3,"Johannesen-Bratthammer, Mr. Bernt",male,,0,0,65306,8.1125,,S
|
||||
446,1,1,"Dodge, Master. Washington",male,4,0,2,33638,81.8583,A34,S
|
||||
447,1,2,"Mellinger, Miss. Madeleine Violet",female,13,0,1,250644,19.5,,S
|
||||
448,1,1,"Seward, Mr. Frederic Kimber",male,34,0,0,113794,26.55,,S
|
||||
449,1,3,"Baclini, Miss. Marie Catherine",female,5,2,1,2666,19.2583,,C
|
||||
450,1,1,"Peuchen, Major. Arthur Godfrey",male,52,0,0,113786,30.5,C104,S
|
||||
451,0,2,"West, Mr. Edwy Arthur",male,36,1,2,C.A. 34651,27.75,,S
|
||||
452,0,3,"Hagland, Mr. Ingvald Olai Olsen",male,,1,0,65303,19.9667,,S
|
||||
453,0,1,"Foreman, Mr. Benjamin Laventall",male,30,0,0,113051,27.75,C111,C
|
||||
454,1,1,"Goldenberg, Mr. Samuel L",male,49,1,0,17453,89.1042,C92,C
|
||||
455,0,3,"Peduzzi, Mr. Joseph",male,,0,0,A/5 2817,8.05,,S
|
||||
456,1,3,"Jalsevac, Mr. Ivan",male,29,0,0,349240,7.8958,,C
|
||||
457,0,1,"Millet, Mr. Francis Davis",male,65,0,0,13509,26.55,E38,S
|
||||
458,1,1,"Kenyon, Mrs. Frederick R (Marion)",female,,1,0,17464,51.8625,D21,S
|
||||
459,1,2,"Toomey, Miss. Ellen",female,50,0,0,F.C.C. 13531,10.5,,S
|
||||
460,0,3,"O'Connor, Mr. Maurice",male,,0,0,371060,7.75,,Q
|
||||
461,1,1,"Anderson, Mr. Harry",male,48,0,0,19952,26.55,E12,S
|
||||
462,0,3,"Morley, Mr. William",male,34,0,0,364506,8.05,,S
|
||||
463,0,1,"Gee, Mr. Arthur H",male,47,0,0,111320,38.5,E63,S
|
||||
464,0,2,"Milling, Mr. Jacob Christian",male,48,0,0,234360,13,,S
|
||||
465,0,3,"Maisner, Mr. Simon",male,,0,0,A/S 2816,8.05,,S
|
||||
466,0,3,"Goncalves, Mr. Manuel Estanslas",male,38,0,0,SOTON/O.Q. 3101306,7.05,,S
|
||||
467,0,2,"Campbell, Mr. William",male,,0,0,239853,0,,S
|
||||
468,0,1,"Smart, Mr. John Montgomery",male,56,0,0,113792,26.55,,S
|
||||
469,0,3,"Scanlan, Mr. James",male,,0,0,36209,7.725,,Q
|
||||
470,1,3,"Baclini, Miss. Helene Barbara",female,0.75,2,1,2666,19.2583,,C
|
||||
471,0,3,"Keefe, Mr. Arthur",male,,0,0,323592,7.25,,S
|
||||
472,0,3,"Cacic, Mr. Luka",male,38,0,0,315089,8.6625,,S
|
||||
473,1,2,"West, Mrs. Edwy Arthur (Ada Mary Worth)",female,33,1,2,C.A. 34651,27.75,,S
|
||||
474,1,2,"Jerwan, Mrs. Amin S (Marie Marthe Thuillard)",female,23,0,0,SC/AH Basle 541,13.7917,D,C
|
||||
475,0,3,"Strandberg, Miss. Ida Sofia",female,22,0,0,7553,9.8375,,S
|
||||
476,0,1,"Clifford, Mr. George Quincy",male,,0,0,110465,52,A14,S
|
||||
477,0,2,"Renouf, Mr. Peter Henry",male,34,1,0,31027,21,,S
|
||||
478,0,3,"Braund, Mr. Lewis Richard",male,29,1,0,3460,7.0458,,S
|
||||
479,0,3,"Karlsson, Mr. Nils August",male,22,0,0,350060,7.5208,,S
|
||||
480,1,3,"Hirvonen, Miss. Hildur E",female,2,0,1,3101298,12.2875,,S
|
||||
481,0,3,"Goodwin, Master. Harold Victor",male,9,5,2,CA 2144,46.9,,S
|
||||
482,0,2,"Frost, Mr. Anthony Wood ""Archie""",male,,0,0,239854,0,,S
|
||||
483,0,3,"Rouse, Mr. Richard Henry",male,50,0,0,A/5 3594,8.05,,S
|
||||
484,1,3,"Turkula, Mrs. (Hedwig)",female,63,0,0,4134,9.5875,,S
|
||||
485,1,1,"Bishop, Mr. Dickinson H",male,25,1,0,11967,91.0792,B49,C
|
||||
486,0,3,"Lefebre, Miss. Jeannie",female,,3,1,4133,25.4667,,S
|
||||
487,1,1,"Hoyt, Mrs. Frederick Maxfield (Jane Anne Forby)",female,35,1,0,19943,90,C93,S
|
||||
488,0,1,"Kent, Mr. Edward Austin",male,58,0,0,11771,29.7,B37,C
|
||||
489,0,3,"Somerton, Mr. Francis William",male,30,0,0,A.5. 18509,8.05,,S
|
||||
490,1,3,"Coutts, Master. Eden Leslie ""Neville""",male,9,1,1,C.A. 37671,15.9,,S
|
||||
491,0,3,"Hagland, Mr. Konrad Mathias Reiersen",male,,1,0,65304,19.9667,,S
|
||||
492,0,3,"Windelov, Mr. Einar",male,21,0,0,SOTON/OQ 3101317,7.25,,S
|
||||
493,0,1,"Molson, Mr. Harry Markland",male,55,0,0,113787,30.5,C30,S
|
||||
494,0,1,"Artagaveytia, Mr. Ramon",male,71,0,0,PC 17609,49.5042,,C
|
||||
495,0,3,"Stanley, Mr. Edward Roland",male,21,0,0,A/4 45380,8.05,,S
|
||||
496,0,3,"Yousseff, Mr. Gerious",male,,0,0,2627,14.4583,,C
|
||||
497,1,1,"Eustis, Miss. Elizabeth Mussey",female,54,1,0,36947,78.2667,D20,C
|
||||
498,0,3,"Shellard, Mr. Frederick William",male,,0,0,C.A. 6212,15.1,,S
|
||||
499,0,1,"Allison, Mrs. Hudson J C (Bessie Waldo Daniels)",female,25,1,2,113781,151.55,C22 C26,S
|
||||
500,0,3,"Svensson, Mr. Olof",male,24,0,0,350035,7.7958,,S
|
||||
501,0,3,"Calic, Mr. Petar",male,17,0,0,315086,8.6625,,S
|
||||
502,0,3,"Canavan, Miss. Mary",female,21,0,0,364846,7.75,,Q
|
||||
503,0,3,"O'Sullivan, Miss. Bridget Mary",female,,0,0,330909,7.6292,,Q
|
||||
504,0,3,"Laitinen, Miss. Kristina Sofia",female,37,0,0,4135,9.5875,,S
|
||||
505,1,1,"Maioni, Miss. Roberta",female,16,0,0,110152,86.5,B79,S
|
||||
506,0,1,"Penasco y Castellana, Mr. Victor de Satode",male,18,1,0,PC 17758,108.9,C65,C
|
||||
507,1,2,"Quick, Mrs. Frederick Charles (Jane Richards)",female,33,0,2,26360,26,,S
|
||||
508,1,1,"Bradley, Mr. George (""George Arthur Brayton"")",male,,0,0,111427,26.55,,S
|
||||
509,0,3,"Olsen, Mr. Henry Margido",male,28,0,0,C 4001,22.525,,S
|
||||
510,1,3,"Lang, Mr. Fang",male,26,0,0,1601,56.4958,,S
|
||||
511,1,3,"Daly, Mr. Eugene Patrick",male,29,0,0,382651,7.75,,Q
|
||||
512,0,3,"Webber, Mr. James",male,,0,0,SOTON/OQ 3101316,8.05,,S
|
||||
513,1,1,"McGough, Mr. James Robert",male,36,0,0,PC 17473,26.2875,E25,S
|
||||
514,1,1,"Rothschild, Mrs. Martin (Elizabeth L. Barrett)",female,54,1,0,PC 17603,59.4,,C
|
||||
515,0,3,"Coleff, Mr. Satio",male,24,0,0,349209,7.4958,,S
|
||||
516,0,1,"Walker, Mr. William Anderson",male,47,0,0,36967,34.0208,D46,S
|
||||
517,1,2,"Lemore, Mrs. (Amelia Milley)",female,34,0,0,C.A. 34260,10.5,F33,S
|
||||
518,0,3,"Ryan, Mr. Patrick",male,,0,0,371110,24.15,,Q
|
||||
519,1,2,"Angle, Mrs. William A (Florence ""Mary"" Agnes Hughes)",female,36,1,0,226875,26,,S
|
||||
520,0,3,"Pavlovic, Mr. Stefo",male,32,0,0,349242,7.8958,,S
|
||||
521,1,1,"Perreault, Miss. Anne",female,30,0,0,12749,93.5,B73,S
|
||||
522,0,3,"Vovk, Mr. Janko",male,22,0,0,349252,7.8958,,S
|
||||
523,0,3,"Lahoud, Mr. Sarkis",male,,0,0,2624,7.225,,C
|
||||
524,1,1,"Hippach, Mrs. Louis Albert (Ida Sophia Fischer)",female,44,0,1,111361,57.9792,B18,C
|
||||
525,0,3,"Kassem, Mr. Fared",male,,0,0,2700,7.2292,,C
|
||||
526,0,3,"Farrell, Mr. James",male,40.5,0,0,367232,7.75,,Q
|
||||
527,1,2,"Ridsdale, Miss. Lucy",female,50,0,0,W./C. 14258,10.5,,S
|
||||
528,0,1,"Farthing, Mr. John",male,,0,0,PC 17483,221.7792,C95,S
|
||||
529,0,3,"Salonen, Mr. Johan Werner",male,39,0,0,3101296,7.925,,S
|
||||
530,0,2,"Hocking, Mr. Richard George",male,23,2,1,29104,11.5,,S
|
||||
531,1,2,"Quick, Miss. Phyllis May",female,2,1,1,26360,26,,S
|
||||
532,0,3,"Toufik, Mr. Nakli",male,,0,0,2641,7.2292,,C
|
||||
533,0,3,"Elias, Mr. Joseph Jr",male,17,1,1,2690,7.2292,,C
|
||||
534,1,3,"Peter, Mrs. Catherine (Catherine Rizk)",female,,0,2,2668,22.3583,,C
|
||||
535,0,3,"Cacic, Miss. Marija",female,30,0,0,315084,8.6625,,S
|
||||
536,1,2,"Hart, Miss. Eva Miriam",female,7,0,2,F.C.C. 13529,26.25,,S
|
||||
537,0,1,"Butt, Major. Archibald Willingham",male,45,0,0,113050,26.55,B38,S
|
||||
538,1,1,"LeRoy, Miss. Bertha",female,30,0,0,PC 17761,106.425,,C
|
||||
539,0,3,"Risien, Mr. Samuel Beard",male,,0,0,364498,14.5,,S
|
||||
540,1,1,"Frolicher, Miss. Hedwig Margaritha",female,22,0,2,13568,49.5,B39,C
|
||||
541,1,1,"Crosby, Miss. Harriet R",female,36,0,2,WE/P 5735,71,B22,S
|
||||
542,0,3,"Andersson, Miss. Ingeborg Constanzia",female,9,4,2,347082,31.275,,S
|
||||
543,0,3,"Andersson, Miss. Sigrid Elisabeth",female,11,4,2,347082,31.275,,S
|
||||
544,1,2,"Beane, Mr. Edward",male,32,1,0,2908,26,,S
|
||||
545,0,1,"Douglas, Mr. Walter Donald",male,50,1,0,PC 17761,106.425,C86,C
|
||||
546,0,1,"Nicholson, Mr. Arthur Ernest",male,64,0,0,693,26,,S
|
||||
547,1,2,"Beane, Mrs. Edward (Ethel Clarke)",female,19,1,0,2908,26,,S
|
||||
548,1,2,"Padro y Manent, Mr. Julian",male,,0,0,SC/PARIS 2146,13.8625,,C
|
||||
549,0,3,"Goldsmith, Mr. Frank John",male,33,1,1,363291,20.525,,S
|
||||
550,1,2,"Davies, Master. John Morgan Jr",male,8,1,1,C.A. 33112,36.75,,S
|
||||
551,1,1,"Thayer, Mr. John Borland Jr",male,17,0,2,17421,110.8833,C70,C
|
||||
552,0,2,"Sharp, Mr. Percival James R",male,27,0,0,244358,26,,S
|
||||
553,0,3,"O'Brien, Mr. Timothy",male,,0,0,330979,7.8292,,Q
|
||||
554,1,3,"Leeni, Mr. Fahim (""Philip Zenni"")",male,22,0,0,2620,7.225,,C
|
||||
555,1,3,"Ohman, Miss. Velin",female,22,0,0,347085,7.775,,S
|
||||
556,0,1,"Wright, Mr. George",male,62,0,0,113807,26.55,,S
|
||||
557,1,1,"Duff Gordon, Lady. (Lucille Christiana Sutherland) (""Mrs Morgan"")",female,48,1,0,11755,39.6,A16,C
|
||||
558,0,1,"Robbins, Mr. Victor",male,,0,0,PC 17757,227.525,,C
|
||||
559,1,1,"Taussig, Mrs. Emil (Tillie Mandelbaum)",female,39,1,1,110413,79.65,E67,S
|
||||
560,1,3,"de Messemaeker, Mrs. Guillaume Joseph (Emma)",female,36,1,0,345572,17.4,,S
|
||||
561,0,3,"Morrow, Mr. Thomas Rowan",male,,0,0,372622,7.75,,Q
|
||||
562,0,3,"Sivic, Mr. Husein",male,40,0,0,349251,7.8958,,S
|
||||
563,0,2,"Norman, Mr. Robert Douglas",male,28,0,0,218629,13.5,,S
|
||||
564,0,3,"Simmons, Mr. John",male,,0,0,SOTON/OQ 392082,8.05,,S
|
||||
565,0,3,"Meanwell, Miss. (Marion Ogden)",female,,0,0,SOTON/O.Q. 392087,8.05,,S
|
||||
566,0,3,"Davies, Mr. Alfred J",male,24,2,0,A/4 48871,24.15,,S
|
||||
567,0,3,"Stoytcheff, Mr. Ilia",male,19,0,0,349205,7.8958,,S
|
||||
568,0,3,"Palsson, Mrs. Nils (Alma Cornelia Berglund)",female,29,0,4,349909,21.075,,S
|
||||
569,0,3,"Doharr, Mr. Tannous",male,,0,0,2686,7.2292,,C
|
||||
570,1,3,"Jonsson, Mr. Carl",male,32,0,0,350417,7.8542,,S
|
||||
571,1,2,"Harris, Mr. George",male,62,0,0,S.W./PP 752,10.5,,S
|
||||
572,1,1,"Appleton, Mrs. Edward Dale (Charlotte Lamson)",female,53,2,0,11769,51.4792,C101,S
|
||||
573,1,1,"Flynn, Mr. John Irwin (""Irving"")",male,36,0,0,PC 17474,26.3875,E25,S
|
||||
574,1,3,"Kelly, Miss. Mary",female,,0,0,14312,7.75,,Q
|
||||
575,0,3,"Rush, Mr. Alfred George John",male,16,0,0,A/4. 20589,8.05,,S
|
||||
576,0,3,"Patchett, Mr. George",male,19,0,0,358585,14.5,,S
|
||||
577,1,2,"Garside, Miss. Ethel",female,34,0,0,243880,13,,S
|
||||
578,1,1,"Silvey, Mrs. William Baird (Alice Munger)",female,39,1,0,13507,55.9,E44,S
|
||||
579,0,3,"Caram, Mrs. Joseph (Maria Elias)",female,,1,0,2689,14.4583,,C
|
||||
580,1,3,"Jussila, Mr. Eiriik",male,32,0,0,STON/O 2. 3101286,7.925,,S
|
||||
581,1,2,"Christy, Miss. Julie Rachel",female,25,1,1,237789,30,,S
|
||||
582,1,1,"Thayer, Mrs. John Borland (Marian Longstreth Morris)",female,39,1,1,17421,110.8833,C68,C
|
||||
583,0,2,"Downton, Mr. William James",male,54,0,0,28403,26,,S
|
||||
584,0,1,"Ross, Mr. John Hugo",male,36,0,0,13049,40.125,A10,C
|
||||
585,0,3,"Paulner, Mr. Uscher",male,,0,0,3411,8.7125,,C
|
||||
586,1,1,"Taussig, Miss. Ruth",female,18,0,2,110413,79.65,E68,S
|
||||
587,0,2,"Jarvis, Mr. John Denzil",male,47,0,0,237565,15,,S
|
||||
588,1,1,"Frolicher-Stehli, Mr. Maxmillian",male,60,1,1,13567,79.2,B41,C
|
||||
589,0,3,"Gilinski, Mr. Eliezer",male,22,0,0,14973,8.05,,S
|
||||
590,0,3,"Murdlin, Mr. Joseph",male,,0,0,A./5. 3235,8.05,,S
|
||||
591,0,3,"Rintamaki, Mr. Matti",male,35,0,0,STON/O 2. 3101273,7.125,,S
|
||||
592,1,1,"Stephenson, Mrs. Walter Bertram (Martha Eustis)",female,52,1,0,36947,78.2667,D20,C
|
||||
593,0,3,"Elsbury, Mr. William James",male,47,0,0,A/5 3902,7.25,,S
|
||||
594,0,3,"Bourke, Miss. Mary",female,,0,2,364848,7.75,,Q
|
||||
595,0,2,"Chapman, Mr. John Henry",male,37,1,0,SC/AH 29037,26,,S
|
||||
596,0,3,"Van Impe, Mr. Jean Baptiste",male,36,1,1,345773,24.15,,S
|
||||
597,1,2,"Leitch, Miss. Jessie Wills",female,,0,0,248727,33,,S
|
||||
598,0,3,"Johnson, Mr. Alfred",male,49,0,0,LINE,0,,S
|
||||
599,0,3,"Boulos, Mr. Hanna",male,,0,0,2664,7.225,,C
|
||||
600,1,1,"Duff Gordon, Sir. Cosmo Edmund (""Mr Morgan"")",male,49,1,0,PC 17485,56.9292,A20,C
|
||||
601,1,2,"Jacobsohn, Mrs. Sidney Samuel (Amy Frances Christy)",female,24,2,1,243847,27,,S
|
||||
602,0,3,"Slabenoff, Mr. Petco",male,,0,0,349214,7.8958,,S
|
||||
603,0,1,"Harrington, Mr. Charles H",male,,0,0,113796,42.4,,S
|
||||
604,0,3,"Torber, Mr. Ernst William",male,44,0,0,364511,8.05,,S
|
||||
605,1,1,"Homer, Mr. Harry (""Mr E Haven"")",male,35,0,0,111426,26.55,,C
|
||||
606,0,3,"Lindell, Mr. Edvard Bengtsson",male,36,1,0,349910,15.55,,S
|
||||
607,0,3,"Karaic, Mr. Milan",male,30,0,0,349246,7.8958,,S
|
||||
608,1,1,"Daniel, Mr. Robert Williams",male,27,0,0,113804,30.5,,S
|
||||
609,1,2,"Laroche, Mrs. Joseph (Juliette Marie Louise Lafargue)",female,22,1,2,SC/Paris 2123,41.5792,,C
|
||||
610,1,1,"Shutes, Miss. Elizabeth W",female,40,0,0,PC 17582,153.4625,C125,S
|
||||
611,0,3,"Andersson, Mrs. Anders Johan (Alfrida Konstantia Brogren)",female,39,1,5,347082,31.275,,S
|
||||
612,0,3,"Jardin, Mr. Jose Neto",male,,0,0,SOTON/O.Q. 3101305,7.05,,S
|
||||
613,1,3,"Murphy, Miss. Margaret Jane",female,,1,0,367230,15.5,,Q
|
||||
614,0,3,"Horgan, Mr. John",male,,0,0,370377,7.75,,Q
|
||||
615,0,3,"Brocklebank, Mr. William Alfred",male,35,0,0,364512,8.05,,S
|
||||
616,1,2,"Herman, Miss. Alice",female,24,1,2,220845,65,,S
|
||||
617,0,3,"Danbom, Mr. Ernst Gilbert",male,34,1,1,347080,14.4,,S
|
||||
618,0,3,"Lobb, Mrs. William Arthur (Cordelia K Stanlick)",female,26,1,0,A/5. 3336,16.1,,S
|
||||
619,1,2,"Becker, Miss. Marion Louise",female,4,2,1,230136,39,F4,S
|
||||
620,0,2,"Gavey, Mr. Lawrence",male,26,0,0,31028,10.5,,S
|
||||
621,0,3,"Yasbeck, Mr. Antoni",male,27,1,0,2659,14.4542,,C
|
||||
622,1,1,"Kimball, Mr. Edwin Nelson Jr",male,42,1,0,11753,52.5542,D19,S
|
||||
623,1,3,"Nakid, Mr. Sahid",male,20,1,1,2653,15.7417,,C
|
||||
624,0,3,"Hansen, Mr. Henry Damsgaard",male,21,0,0,350029,7.8542,,S
|
||||
625,0,3,"Bowen, Mr. David John ""Dai""",male,21,0,0,54636,16.1,,S
|
||||
626,0,1,"Sutton, Mr. Frederick",male,61,0,0,36963,32.3208,D50,S
|
||||
627,0,2,"Kirkland, Rev. Charles Leonard",male,57,0,0,219533,12.35,,Q
|
||||
628,1,1,"Longley, Miss. Gretchen Fiske",female,21,0,0,13502,77.9583,D9,S
|
||||
629,0,3,"Bostandyeff, Mr. Guentcho",male,26,0,0,349224,7.8958,,S
|
||||
630,0,3,"O'Connell, Mr. Patrick D",male,,0,0,334912,7.7333,,Q
|
||||
631,1,1,"Barkworth, Mr. Algernon Henry Wilson",male,80,0,0,27042,30,A23,S
|
||||
632,0,3,"Lundahl, Mr. Johan Svensson",male,51,0,0,347743,7.0542,,S
|
||||
633,1,1,"Stahelin-Maeglin, Dr. Max",male,32,0,0,13214,30.5,B50,C
|
||||
634,0,1,"Parr, Mr. William Henry Marsh",male,,0,0,112052,0,,S
|
||||
635,0,3,"Skoog, Miss. Mabel",female,9,3,2,347088,27.9,,S
|
||||
636,1,2,"Davis, Miss. Mary",female,28,0,0,237668,13,,S
|
||||
637,0,3,"Leinonen, Mr. Antti Gustaf",male,32,0,0,STON/O 2. 3101292,7.925,,S
|
||||
638,0,2,"Collyer, Mr. Harvey",male,31,1,1,C.A. 31921,26.25,,S
|
||||
639,0,3,"Panula, Mrs. Juha (Maria Emilia Ojala)",female,41,0,5,3101295,39.6875,,S
|
||||
640,0,3,"Thorneycroft, Mr. Percival",male,,1,0,376564,16.1,,S
|
||||
641,0,3,"Jensen, Mr. Hans Peder",male,20,0,0,350050,7.8542,,S
|
||||
642,1,1,"Sagesser, Mlle. Emma",female,24,0,0,PC 17477,69.3,B35,C
|
||||
643,0,3,"Skoog, Miss. Margit Elizabeth",female,2,3,2,347088,27.9,,S
|
||||
644,1,3,"Foo, Mr. Choong",male,,0,0,1601,56.4958,,S
|
||||
645,1,3,"Baclini, Miss. Eugenie",female,0.75,2,1,2666,19.2583,,C
|
||||
646,1,1,"Harper, Mr. Henry Sleeper",male,48,1,0,PC 17572,76.7292,D33,C
|
||||
647,0,3,"Cor, Mr. Liudevit",male,19,0,0,349231,7.8958,,S
|
||||
648,1,1,"Simonius-Blumer, Col. Oberst Alfons",male,56,0,0,13213,35.5,A26,C
|
||||
649,0,3,"Willey, Mr. Edward",male,,0,0,S.O./P.P. 751,7.55,,S
|
||||
650,1,3,"Stanley, Miss. Amy Zillah Elsie",female,23,0,0,CA. 2314,7.55,,S
|
||||
651,0,3,"Mitkoff, Mr. Mito",male,,0,0,349221,7.8958,,S
|
||||
652,1,2,"Doling, Miss. Elsie",female,18,0,1,231919,23,,S
|
||||
653,0,3,"Kalvik, Mr. Johannes Halvorsen",male,21,0,0,8475,8.4333,,S
|
||||
654,1,3,"O'Leary, Miss. Hanora ""Norah""",female,,0,0,330919,7.8292,,Q
|
||||
655,0,3,"Hegarty, Miss. Hanora ""Nora""",female,18,0,0,365226,6.75,,Q
|
||||
656,0,2,"Hickman, Mr. Leonard Mark",male,24,2,0,S.O.C. 14879,73.5,,S
|
||||
657,0,3,"Radeff, Mr. Alexander",male,,0,0,349223,7.8958,,S
|
||||
658,0,3,"Bourke, Mrs. John (Catherine)",female,32,1,1,364849,15.5,,Q
|
||||
659,0,2,"Eitemiller, Mr. George Floyd",male,23,0,0,29751,13,,S
|
||||
660,0,1,"Newell, Mr. Arthur Webster",male,58,0,2,35273,113.275,D48,C
|
||||
661,1,1,"Frauenthal, Dr. Henry William",male,50,2,0,PC 17611,133.65,,S
|
||||
662,0,3,"Badt, Mr. Mohamed",male,40,0,0,2623,7.225,,C
|
||||
663,0,1,"Colley, Mr. Edward Pomeroy",male,47,0,0,5727,25.5875,E58,S
|
||||
664,0,3,"Coleff, Mr. Peju",male,36,0,0,349210,7.4958,,S
|
||||
665,1,3,"Lindqvist, Mr. Eino William",male,20,1,0,STON/O 2. 3101285,7.925,,S
|
||||
666,0,2,"Hickman, Mr. Lewis",male,32,2,0,S.O.C. 14879,73.5,,S
|
||||
667,0,2,"Butler, Mr. Reginald Fenton",male,25,0,0,234686,13,,S
|
||||
668,0,3,"Rommetvedt, Mr. Knud Paust",male,,0,0,312993,7.775,,S
|
||||
669,0,3,"Cook, Mr. Jacob",male,43,0,0,A/5 3536,8.05,,S
|
||||
670,1,1,"Taylor, Mrs. Elmer Zebley (Juliet Cummins Wright)",female,,1,0,19996,52,C126,S
|
||||
671,1,2,"Brown, Mrs. Thomas William Solomon (Elizabeth Catherine Ford)",female,40,1,1,29750,39,,S
|
||||
672,0,1,"Davidson, Mr. Thornton",male,31,1,0,F.C. 12750,52,B71,S
|
||||
673,0,2,"Mitchell, Mr. Henry Michael",male,70,0,0,C.A. 24580,10.5,,S
|
||||
674,1,2,"Wilhelms, Mr. Charles",male,31,0,0,244270,13,,S
|
||||
675,0,2,"Watson, Mr. Ennis Hastings",male,,0,0,239856,0,,S
|
||||
676,0,3,"Edvardsson, Mr. Gustaf Hjalmar",male,18,0,0,349912,7.775,,S
|
||||
677,0,3,"Sawyer, Mr. Frederick Charles",male,24.5,0,0,342826,8.05,,S
|
||||
678,1,3,"Turja, Miss. Anna Sofia",female,18,0,0,4138,9.8417,,S
|
||||
679,0,3,"Goodwin, Mrs. Frederick (Augusta Tyler)",female,43,1,6,CA 2144,46.9,,S
|
||||
680,1,1,"Cardeza, Mr. Thomas Drake Martinez",male,36,0,1,PC 17755,512.3292,B51 B53 B55,C
|
||||
681,0,3,"Peters, Miss. Katie",female,,0,0,330935,8.1375,,Q
|
||||
682,1,1,"Hassab, Mr. Hammad",male,27,0,0,PC 17572,76.7292,D49,C
|
||||
683,0,3,"Olsvigen, Mr. Thor Anderson",male,20,0,0,6563,9.225,,S
|
||||
684,0,3,"Goodwin, Mr. Charles Edward",male,14,5,2,CA 2144,46.9,,S
|
||||
685,0,2,"Brown, Mr. Thomas William Solomon",male,60,1,1,29750,39,,S
|
||||
686,0,2,"Laroche, Mr. Joseph Philippe Lemercier",male,25,1,2,SC/Paris 2123,41.5792,,C
|
||||
687,0,3,"Panula, Mr. Jaako Arnold",male,14,4,1,3101295,39.6875,,S
|
||||
688,0,3,"Dakic, Mr. Branko",male,19,0,0,349228,10.1708,,S
|
||||
689,0,3,"Fischer, Mr. Eberhard Thelander",male,18,0,0,350036,7.7958,,S
|
||||
690,1,1,"Madill, Miss. Georgette Alexandra",female,15,0,1,24160,211.3375,B5,S
|
||||
691,1,1,"Dick, Mr. Albert Adrian",male,31,1,0,17474,57,B20,S
|
||||
692,1,3,"Karun, Miss. Manca",female,4,0,1,349256,13.4167,,C
|
||||
693,1,3,"Lam, Mr. Ali",male,,0,0,1601,56.4958,,S
|
||||
694,0,3,"Saad, Mr. Khalil",male,25,0,0,2672,7.225,,C
|
||||
695,0,1,"Weir, Col. John",male,60,0,0,113800,26.55,,S
|
||||
696,0,2,"Chapman, Mr. Charles Henry",male,52,0,0,248731,13.5,,S
|
||||
697,0,3,"Kelly, Mr. James",male,44,0,0,363592,8.05,,S
|
||||
698,1,3,"Mullens, Miss. Katherine ""Katie""",female,,0,0,35852,7.7333,,Q
|
||||
699,0,1,"Thayer, Mr. John Borland",male,49,1,1,17421,110.8833,C68,C
|
||||
700,0,3,"Humblen, Mr. Adolf Mathias Nicolai Olsen",male,42,0,0,348121,7.65,F G63,S
|
||||
701,1,1,"Astor, Mrs. John Jacob (Madeleine Talmadge Force)",female,18,1,0,PC 17757,227.525,C62 C64,C
|
||||
702,1,1,"Silverthorne, Mr. Spencer Victor",male,35,0,0,PC 17475,26.2875,E24,S
|
||||
703,0,3,"Barbara, Miss. Saiide",female,18,0,1,2691,14.4542,,C
|
||||
704,0,3,"Gallagher, Mr. Martin",male,25,0,0,36864,7.7417,,Q
|
||||
705,0,3,"Hansen, Mr. Henrik Juul",male,26,1,0,350025,7.8542,,S
|
||||
706,0,2,"Morley, Mr. Henry Samuel (""Mr Henry Marshall"")",male,39,0,0,250655,26,,S
|
||||
707,1,2,"Kelly, Mrs. Florence ""Fannie""",female,45,0,0,223596,13.5,,S
|
||||
708,1,1,"Calderhead, Mr. Edward Pennington",male,42,0,0,PC 17476,26.2875,E24,S
|
||||
709,1,1,"Cleaver, Miss. Alice",female,22,0,0,113781,151.55,,S
|
||||
710,1,3,"Moubarek, Master. Halim Gonios (""William George"")",male,,1,1,2661,15.2458,,C
|
||||
711,1,1,"Mayne, Mlle. Berthe Antonine (""Mrs de Villiers"")",female,24,0,0,PC 17482,49.5042,C90,C
|
||||
712,0,1,"Klaber, Mr. Herman",male,,0,0,113028,26.55,C124,S
|
||||
713,1,1,"Taylor, Mr. Elmer Zebley",male,48,1,0,19996,52,C126,S
|
||||
714,0,3,"Larsson, Mr. August Viktor",male,29,0,0,7545,9.4833,,S
|
||||
715,0,2,"Greenberg, Mr. Samuel",male,52,0,0,250647,13,,S
|
||||
716,0,3,"Soholt, Mr. Peter Andreas Lauritz Andersen",male,19,0,0,348124,7.65,F G73,S
|
||||
717,1,1,"Endres, Miss. Caroline Louise",female,38,0,0,PC 17757,227.525,C45,C
|
||||
718,1,2,"Troutt, Miss. Edwina Celia ""Winnie""",female,27,0,0,34218,10.5,E101,S
|
||||
719,0,3,"McEvoy, Mr. Michael",male,,0,0,36568,15.5,,Q
|
||||
720,0,3,"Johnson, Mr. Malkolm Joackim",male,33,0,0,347062,7.775,,S
|
||||
721,1,2,"Harper, Miss. Annie Jessie ""Nina""",female,6,0,1,248727,33,,S
|
||||
722,0,3,"Jensen, Mr. Svend Lauritz",male,17,1,0,350048,7.0542,,S
|
||||
723,0,2,"Gillespie, Mr. William Henry",male,34,0,0,12233,13,,S
|
||||
724,0,2,"Hodges, Mr. Henry Price",male,50,0,0,250643,13,,S
|
||||
725,1,1,"Chambers, Mr. Norman Campbell",male,27,1,0,113806,53.1,E8,S
|
||||
726,0,3,"Oreskovic, Mr. Luka",male,20,0,0,315094,8.6625,,S
|
||||
727,1,2,"Renouf, Mrs. Peter Henry (Lillian Jefferys)",female,30,3,0,31027,21,,S
|
||||
728,1,3,"Mannion, Miss. Margareth",female,,0,0,36866,7.7375,,Q
|
||||
729,0,2,"Bryhl, Mr. Kurt Arnold Gottfrid",male,25,1,0,236853,26,,S
|
||||
730,0,3,"Ilmakangas, Miss. Pieta Sofia",female,25,1,0,STON/O2. 3101271,7.925,,S
|
||||
731,1,1,"Allen, Miss. Elisabeth Walton",female,29,0,0,24160,211.3375,B5,S
|
||||
732,0,3,"Hassan, Mr. Houssein G N",male,11,0,0,2699,18.7875,,C
|
||||
733,0,2,"Knight, Mr. Robert J",male,,0,0,239855,0,,S
|
||||
734,0,2,"Berriman, Mr. William John",male,23,0,0,28425,13,,S
|
||||
735,0,2,"Troupiansky, Mr. Moses Aaron",male,23,0,0,233639,13,,S
|
||||
736,0,3,"Williams, Mr. Leslie",male,28.5,0,0,54636,16.1,,S
|
||||
737,0,3,"Ford, Mrs. Edward (Margaret Ann Watson)",female,48,1,3,W./C. 6608,34.375,,S
|
||||
738,1,1,"Lesurer, Mr. Gustave J",male,35,0,0,PC 17755,512.3292,B101,C
|
||||
739,0,3,"Ivanoff, Mr. Kanio",male,,0,0,349201,7.8958,,S
|
||||
740,0,3,"Nankoff, Mr. Minko",male,,0,0,349218,7.8958,,S
|
||||
741,1,1,"Hawksford, Mr. Walter James",male,,0,0,16988,30,D45,S
|
||||
742,0,1,"Cavendish, Mr. Tyrell William",male,36,1,0,19877,78.85,C46,S
|
||||
743,1,1,"Ryerson, Miss. Susan Parker ""Suzette""",female,21,2,2,PC 17608,262.375,B57 B59 B63 B66,C
|
||||
744,0,3,"McNamee, Mr. Neal",male,24,1,0,376566,16.1,,S
|
||||
745,1,3,"Stranden, Mr. Juho",male,31,0,0,STON/O 2. 3101288,7.925,,S
|
||||
746,0,1,"Crosby, Capt. Edward Gifford",male,70,1,1,WE/P 5735,71,B22,S
|
||||
747,0,3,"Abbott, Mr. Rossmore Edward",male,16,1,1,C.A. 2673,20.25,,S
|
||||
748,1,2,"Sinkkonen, Miss. Anna",female,30,0,0,250648,13,,S
|
||||
749,0,1,"Marvin, Mr. Daniel Warner",male,19,1,0,113773,53.1,D30,S
|
||||
750,0,3,"Connaghton, Mr. Michael",male,31,0,0,335097,7.75,,Q
|
||||
751,1,2,"Wells, Miss. Joan",female,4,1,1,29103,23,,S
|
||||
752,1,3,"Moor, Master. Meier",male,6,0,1,392096,12.475,E121,S
|
||||
753,0,3,"Vande Velde, Mr. Johannes Joseph",male,33,0,0,345780,9.5,,S
|
||||
754,0,3,"Jonkoff, Mr. Lalio",male,23,0,0,349204,7.8958,,S
|
||||
755,1,2,"Herman, Mrs. Samuel (Jane Laver)",female,48,1,2,220845,65,,S
|
||||
756,1,2,"Hamalainen, Master. Viljo",male,0.67,1,1,250649,14.5,,S
|
||||
757,0,3,"Carlsson, Mr. August Sigfrid",male,28,0,0,350042,7.7958,,S
|
||||
758,0,2,"Bailey, Mr. Percy Andrew",male,18,0,0,29108,11.5,,S
|
||||
759,0,3,"Theobald, Mr. Thomas Leonard",male,34,0,0,363294,8.05,,S
|
||||
760,1,1,"Rothes, the Countess. of (Lucy Noel Martha Dyer-Edwards)",female,33,0,0,110152,86.5,B77,S
|
||||
761,0,3,"Garfirth, Mr. John",male,,0,0,358585,14.5,,S
|
||||
762,0,3,"Nirva, Mr. Iisakki Antino Aijo",male,41,0,0,SOTON/O2 3101272,7.125,,S
|
||||
763,1,3,"Barah, Mr. Hanna Assi",male,20,0,0,2663,7.2292,,C
|
||||
764,1,1,"Carter, Mrs. William Ernest (Lucile Polk)",female,36,1,2,113760,120,B96 B98,S
|
||||
765,0,3,"Eklund, Mr. Hans Linus",male,16,0,0,347074,7.775,,S
|
||||
766,1,1,"Hogeboom, Mrs. John C (Anna Andrews)",female,51,1,0,13502,77.9583,D11,S
|
||||
767,0,1,"Brewe, Dr. Arthur Jackson",male,,0,0,112379,39.6,,C
|
||||
768,0,3,"Mangan, Miss. Mary",female,30.5,0,0,364850,7.75,,Q
|
||||
769,0,3,"Moran, Mr. Daniel J",male,,1,0,371110,24.15,,Q
|
||||
770,0,3,"Gronnestad, Mr. Daniel Danielsen",male,32,0,0,8471,8.3625,,S
|
||||
771,0,3,"Lievens, Mr. Rene Aime",male,24,0,0,345781,9.5,,S
|
||||
772,0,3,"Jensen, Mr. Niels Peder",male,48,0,0,350047,7.8542,,S
|
||||
773,0,2,"Mack, Mrs. (Mary)",female,57,0,0,S.O./P.P. 3,10.5,E77,S
|
||||
774,0,3,"Elias, Mr. Dibo",male,,0,0,2674,7.225,,C
|
||||
775,1,2,"Hocking, Mrs. Elizabeth (Eliza Needs)",female,54,1,3,29105,23,,S
|
||||
776,0,3,"Myhrman, Mr. Pehr Fabian Oliver Malkolm",male,18,0,0,347078,7.75,,S
|
||||
777,0,3,"Tobin, Mr. Roger",male,,0,0,383121,7.75,F38,Q
|
||||
778,1,3,"Emanuel, Miss. Virginia Ethel",female,5,0,0,364516,12.475,,S
|
||||
779,0,3,"Kilgannon, Mr. Thomas J",male,,0,0,36865,7.7375,,Q
|
||||
780,1,1,"Robert, Mrs. Edward Scott (Elisabeth Walton McMillan)",female,43,0,1,24160,211.3375,B3,S
|
||||
781,1,3,"Ayoub, Miss. Banoura",female,13,0,0,2687,7.2292,,C
|
||||
782,1,1,"Dick, Mrs. Albert Adrian (Vera Gillespie)",female,17,1,0,17474,57,B20,S
|
||||
783,0,1,"Long, Mr. Milton Clyde",male,29,0,0,113501,30,D6,S
|
||||
784,0,3,"Johnston, Mr. Andrew G",male,,1,2,W./C. 6607,23.45,,S
|
||||
785,0,3,"Ali, Mr. William",male,25,0,0,SOTON/O.Q. 3101312,7.05,,S
|
||||
786,0,3,"Harmer, Mr. Abraham (David Lishin)",male,25,0,0,374887,7.25,,S
|
||||
787,1,3,"Sjoblom, Miss. Anna Sofia",female,18,0,0,3101265,7.4958,,S
|
||||
788,0,3,"Rice, Master. George Hugh",male,8,4,1,382652,29.125,,Q
|
||||
789,1,3,"Dean, Master. Bertram Vere",male,1,1,2,C.A. 2315,20.575,,S
|
||||
790,0,1,"Guggenheim, Mr. Benjamin",male,46,0,0,PC 17593,79.2,B82 B84,C
|
||||
791,0,3,"Keane, Mr. Andrew ""Andy""",male,,0,0,12460,7.75,,Q
|
||||
792,0,2,"Gaskell, Mr. Alfred",male,16,0,0,239865,26,,S
|
||||
793,0,3,"Sage, Miss. Stella Anna",female,,8,2,CA. 2343,69.55,,S
|
||||
794,0,1,"Hoyt, Mr. William Fisher",male,,0,0,PC 17600,30.6958,,C
|
||||
795,0,3,"Dantcheff, Mr. Ristiu",male,25,0,0,349203,7.8958,,S
|
||||
796,0,2,"Otter, Mr. Richard",male,39,0,0,28213,13,,S
|
||||
797,1,1,"Leader, Dr. Alice (Farnham)",female,49,0,0,17465,25.9292,D17,S
|
||||
798,1,3,"Osman, Mrs. Mara",female,31,0,0,349244,8.6833,,S
|
||||
799,0,3,"Ibrahim Shawah, Mr. Yousseff",male,30,0,0,2685,7.2292,,C
|
||||
800,0,3,"Van Impe, Mrs. Jean Baptiste (Rosalie Paula Govaert)",female,30,1,1,345773,24.15,,S
|
||||
801,0,2,"Ponesell, Mr. Martin",male,34,0,0,250647,13,,S
|
||||
802,1,2,"Collyer, Mrs. Harvey (Charlotte Annie Tate)",female,31,1,1,C.A. 31921,26.25,,S
|
||||
803,1,1,"Carter, Master. William Thornton II",male,11,1,2,113760,120,B96 B98,S
|
||||
804,1,3,"Thomas, Master. Assad Alexander",male,0.42,0,1,2625,8.5167,,C
|
||||
805,1,3,"Hedman, Mr. Oskar Arvid",male,27,0,0,347089,6.975,,S
|
||||
806,0,3,"Johansson, Mr. Karl Johan",male,31,0,0,347063,7.775,,S
|
||||
807,0,1,"Andrews, Mr. Thomas Jr",male,39,0,0,112050,0,A36,S
|
||||
808,0,3,"Pettersson, Miss. Ellen Natalia",female,18,0,0,347087,7.775,,S
|
||||
809,0,2,"Meyer, Mr. August",male,39,0,0,248723,13,,S
|
||||
810,1,1,"Chambers, Mrs. Norman Campbell (Bertha Griggs)",female,33,1,0,113806,53.1,E8,S
|
||||
811,0,3,"Alexander, Mr. William",male,26,0,0,3474,7.8875,,S
|
||||
812,0,3,"Lester, Mr. James",male,39,0,0,A/4 48871,24.15,,S
|
||||
813,0,2,"Slemen, Mr. Richard James",male,35,0,0,28206,10.5,,S
|
||||
814,0,3,"Andersson, Miss. Ebba Iris Alfrida",female,6,4,2,347082,31.275,,S
|
||||
815,0,3,"Tomlin, Mr. Ernest Portage",male,30.5,0,0,364499,8.05,,S
|
||||
816,0,1,"Fry, Mr. Richard",male,,0,0,112058,0,B102,S
|
||||
817,0,3,"Heininen, Miss. Wendla Maria",female,23,0,0,STON/O2. 3101290,7.925,,S
|
||||
818,0,2,"Mallet, Mr. Albert",male,31,1,1,S.C./PARIS 2079,37.0042,,C
|
||||
819,0,3,"Holm, Mr. John Fredrik Alexander",male,43,0,0,C 7075,6.45,,S
|
||||
820,0,3,"Skoog, Master. Karl Thorsten",male,10,3,2,347088,27.9,,S
|
||||
821,1,1,"Hays, Mrs. Charles Melville (Clara Jennings Gregg)",female,52,1,1,12749,93.5,B69,S
|
||||
822,1,3,"Lulic, Mr. Nikola",male,27,0,0,315098,8.6625,,S
|
||||
823,0,1,"Reuchlin, Jonkheer. John George",male,38,0,0,19972,0,,S
|
||||
824,1,3,"Moor, Mrs. (Beila)",female,27,0,1,392096,12.475,E121,S
|
||||
825,0,3,"Panula, Master. Urho Abraham",male,2,4,1,3101295,39.6875,,S
|
||||
826,0,3,"Flynn, Mr. John",male,,0,0,368323,6.95,,Q
|
||||
827,0,3,"Lam, Mr. Len",male,,0,0,1601,56.4958,,S
|
||||
828,1,2,"Mallet, Master. Andre",male,1,0,2,S.C./PARIS 2079,37.0042,,C
|
||||
829,1,3,"McCormack, Mr. Thomas Joseph",male,,0,0,367228,7.75,,Q
|
||||
830,1,1,"Stone, Mrs. George Nelson (Martha Evelyn)",female,62,0,0,113572,80,B28,
|
||||
831,1,3,"Yasbeck, Mrs. Antoni (Selini Alexander)",female,15,1,0,2659,14.4542,,C
|
||||
832,1,2,"Richards, Master. George Sibley",male,0.83,1,1,29106,18.75,,S
|
||||
833,0,3,"Saad, Mr. Amin",male,,0,0,2671,7.2292,,C
|
||||
834,0,3,"Augustsson, Mr. Albert",male,23,0,0,347468,7.8542,,S
|
||||
835,0,3,"Allum, Mr. Owen George",male,18,0,0,2223,8.3,,S
|
||||
836,1,1,"Compton, Miss. Sara Rebecca",female,39,1,1,PC 17756,83.1583,E49,C
|
||||
837,0,3,"Pasic, Mr. Jakob",male,21,0,0,315097,8.6625,,S
|
||||
838,0,3,"Sirota, Mr. Maurice",male,,0,0,392092,8.05,,S
|
||||
839,1,3,"Chip, Mr. Chang",male,32,0,0,1601,56.4958,,S
|
||||
840,1,1,"Marechal, Mr. Pierre",male,,0,0,11774,29.7,C47,C
|
||||
841,0,3,"Alhomaki, Mr. Ilmari Rudolf",male,20,0,0,SOTON/O2 3101287,7.925,,S
|
||||
842,0,2,"Mudd, Mr. Thomas Charles",male,16,0,0,S.O./P.P. 3,10.5,,S
|
||||
843,1,1,"Serepeca, Miss. Augusta",female,30,0,0,113798,31,,C
|
||||
844,0,3,"Lemberopolous, Mr. Peter L",male,34.5,0,0,2683,6.4375,,C
|
||||
845,0,3,"Culumovic, Mr. Jeso",male,17,0,0,315090,8.6625,,S
|
||||
846,0,3,"Abbing, Mr. Anthony",male,42,0,0,C.A. 5547,7.55,,S
|
||||
847,0,3,"Sage, Mr. Douglas Bullen",male,,8,2,CA. 2343,69.55,,S
|
||||
848,0,3,"Markoff, Mr. Marin",male,35,0,0,349213,7.8958,,C
|
||||
849,0,2,"Harper, Rev. John",male,28,0,1,248727,33,,S
|
||||
850,1,1,"Goldenberg, Mrs. Samuel L (Edwiga Grabowska)",female,,1,0,17453,89.1042,C92,C
|
||||
851,0,3,"Andersson, Master. Sigvard Harald Elias",male,4,4,2,347082,31.275,,S
|
||||
852,0,3,"Svensson, Mr. Johan",male,74,0,0,347060,7.775,,S
|
||||
853,0,3,"Boulos, Miss. Nourelain",female,9,1,1,2678,15.2458,,C
|
||||
854,1,1,"Lines, Miss. Mary Conover",female,16,0,1,PC 17592,39.4,D28,S
|
||||
855,0,2,"Carter, Mrs. Ernest Courtenay (Lilian Hughes)",female,44,1,0,244252,26,,S
|
||||
856,1,3,"Aks, Mrs. Sam (Leah Rosen)",female,18,0,1,392091,9.35,,S
|
||||
857,1,1,"Wick, Mrs. George Dennick (Mary Hitchcock)",female,45,1,1,36928,164.8667,,S
|
||||
858,1,1,"Daly, Mr. Peter Denis ",male,51,0,0,113055,26.55,E17,S
|
||||
859,1,3,"Baclini, Mrs. Solomon (Latifa Qurban)",female,24,0,3,2666,19.2583,,C
|
||||
860,0,3,"Razi, Mr. Raihed",male,,0,0,2629,7.2292,,C
|
||||
861,0,3,"Hansen, Mr. Claus Peter",male,41,2,0,350026,14.1083,,S
|
||||
862,0,2,"Giles, Mr. Frederick Edward",male,21,1,0,28134,11.5,,S
|
||||
863,1,1,"Swift, Mrs. Frederick Joel (Margaret Welles Barron)",female,48,0,0,17466,25.9292,D17,S
|
||||
864,0,3,"Sage, Miss. Dorothy Edith ""Dolly""",female,,8,2,CA. 2343,69.55,,S
|
||||
865,0,2,"Gill, Mr. John William",male,24,0,0,233866,13,,S
|
||||
866,1,2,"Bystrom, Mrs. (Karolina)",female,42,0,0,236852,13,,S
|
||||
867,1,2,"Duran y More, Miss. Asuncion",female,27,1,0,SC/PARIS 2149,13.8583,,C
|
||||
868,0,1,"Roebling, Mr. Washington Augustus II",male,31,0,0,PC 17590,50.4958,A24,S
|
||||
869,0,3,"van Melkebeke, Mr. Philemon",male,,0,0,345777,9.5,,S
|
||||
870,1,3,"Johnson, Master. Harold Theodor",male,4,1,1,347742,11.1333,,S
|
||||
871,0,3,"Balkic, Mr. Cerin",male,26,0,0,349248,7.8958,,S
|
||||
872,1,1,"Beckwith, Mrs. Richard Leonard (Sallie Monypeny)",female,47,1,1,11751,52.5542,D35,S
|
||||
873,0,1,"Carlsson, Mr. Frans Olof",male,33,0,0,695,5,B51 B53 B55,S
|
||||
874,0,3,"Vander Cruyssen, Mr. Victor",male,47,0,0,345765,9,,S
|
||||
875,1,2,"Abelson, Mrs. Samuel (Hannah Wizosky)",female,28,1,0,P/PP 3381,24,,C
|
||||
876,1,3,"Najib, Miss. Adele Kiamie ""Jane""",female,15,0,0,2667,7.225,,C
|
||||
877,0,3,"Gustafsson, Mr. Alfred Ossian",male,20,0,0,7534,9.8458,,S
|
||||
878,0,3,"Petroff, Mr. Nedelio",male,19,0,0,349212,7.8958,,S
|
||||
879,0,3,"Laleff, Mr. Kristo",male,,0,0,349217,7.8958,,S
|
||||
880,1,1,"Potter, Mrs. Thomas Jr (Lily Alexenia Wilson)",female,56,0,1,11767,83.1583,C50,C
|
||||
881,1,2,"Shelley, Mrs. William (Imanita Parrish Hall)",female,25,0,1,230433,26,,S
|
||||
882,0,3,"Markun, Mr. Johann",male,33,0,0,349257,7.8958,,S
|
||||
883,0,3,"Dahlberg, Miss. Gerda Ulrika",female,22,0,0,7552,10.5167,,S
|
||||
884,0,2,"Banfield, Mr. Frederick James",male,28,0,0,C.A./SOTON 34068,10.5,,S
|
||||
885,0,3,"Sutehall, Mr. Henry Jr",male,25,0,0,SOTON/OQ 392076,7.05,,S
|
||||
886,0,3,"Rice, Mrs. William (Margaret Norton)",female,39,0,5,382652,29.125,,Q
|
||||
887,0,2,"Montvila, Rev. Juozas",male,27,0,0,211536,13,,S
|
||||
888,1,1,"Graham, Miss. Margaret Edith",female,19,0,0,112053,30,B42,S
|
||||
889,0,3,"Johnston, Miss. Catherine Helen ""Carrie""",female,,1,2,W./C. 6607,23.45,,S
|
||||
890,1,1,"Behr, Mr. Karl Howell",male,26,0,0,111369,30,C148,C
|
||||
891,0,3,"Dooley, Mr. Patrick",male,32,0,0,370376,7.75,,Q
|
||||
|
40
alexandrov_dmitrii_lab_4/lab4.py
Normal file
@@ -0,0 +1,40 @@
|
||||
from scipy.cluster import hierarchy
|
||||
import pandas as pd
|
||||
from matplotlib import pyplot as plt
|
||||
|
||||
|
||||
def start():
|
||||
data = pd.read_csv('sberbank_data.csv', index_col='id')
|
||||
x = data[['full_sq', 'price_doc']]
|
||||
plt.figure(1, figsize=(16, 9))
|
||||
plt.title('Дендрограмма кластеризации цен')
|
||||
|
||||
prices = [0, 0, 0, 0]
|
||||
for ind, val in x.iterrows():
|
||||
val = val['price_doc'] / val['full_sq']
|
||||
if val < 100000:
|
||||
prices[0] = prices[0] + 1
|
||||
elif val < 300000:
|
||||
prices[1] = prices[1] + 1
|
||||
elif val < 500000:
|
||||
prices[2] = prices[2] + 1
|
||||
else:
|
||||
prices[3] = prices[3] + 1
|
||||
print('Результаты подчсёта ручного распределения:')
|
||||
print('низких цен:'+str(prices[0]))
|
||||
print('средних цен:'+str(prices[1]))
|
||||
print('высоких цен:'+str(prices[2]))
|
||||
print('премиальных цен:'+str(prices[3]))
|
||||
|
||||
hierarchy.dendrogram(hierarchy.linkage(x, method='single'),
|
||||
truncate_mode='lastp',
|
||||
p=15,
|
||||
orientation='top',
|
||||
leaf_rotation=90,
|
||||
leaf_font_size=8,
|
||||
show_contracted=True)
|
||||
|
||||
plt.show()
|
||||
|
||||
|
||||
start()
|
||||
27
alexandrov_dmitrii_lab_4/readme.md
Normal file
@@ -0,0 +1,27 @@
|
||||
### Задание
|
||||
Использовать метод кластеризации по варианту для выбранных данных по варианту, самостоятельно сформулировав задачу.
|
||||
Интерпретировать результаты и оценить, насколько хорошо он подходит для
|
||||
решения сформулированной вами задачи.
|
||||
|
||||
Вариант 1: dendrogram
|
||||
|
||||
Была сформулирована следующая задача: необходимо разбить записи на кластеры в зависимости от цен и площади.
|
||||
|
||||
### Запуск программы
|
||||
Файл lab4.py содержит и запускает программу, аргументов и настройки ~~вроде~~ не требует.
|
||||
|
||||
### Описание программы
|
||||
Программа считывает цены и площади из файла статистики сбербанка по рынку недвижимости.
|
||||
Поскольку по заданию требуется оценить машинную кластеризацию, для сравнения программа подсчитывает и выводит в консоль количество записей в каждом из выделенных вручную классов цен.
|
||||
Далее программа кластеризует данные с помощью алгоритма ближайших точек (на другие памяти нету) и выводит дендрограмму на основе кластеризации.
|
||||
Выводимая дендрограмма ограничена 15 последними (верхними) объединениями.
|
||||
|
||||
### Результаты тестирования
|
||||
По результатам тестирования, можно сказать следующее:
|
||||
* Последние объединения в дендрограмме - объединения выбросов с 'основным' кластером, то есть 10-20 записей с кластером с более чем 28000 записями.
|
||||
* Это правильная информация, так как ручная классификация показывает, что премиальных (аномально больших) цен как раз порядка 20, остальные относятся к другим классам.
|
||||
* Поскольку в имеющихся данных нет ограничений по ценам, выбросы аномально высоких цен при использовании данного алгоритма формируют отдельные кластеры, что негативно сказывается на наглядности.
|
||||
* Ценовое ограничение также не дало положительнх результатов: снова сформировался 'основной' кластер, с которым последними объединялись отдельные значения.
|
||||
* Значит, сам алгоритм не эффективен.
|
||||
|
||||
Итого: Алгоритм ближайших точек слишком чувствителен к выбросам, поэтому можно признать его неэффективным для необработанных данных. Дендрограмма как средство визуализации скорее уступает по наглядности диаграмме рассеяния.
|
||||
28896
alexandrov_dmitrii_lab_4/sberbank_data.csv
Normal file
48
alexandrov_dmitrii_lab_5/lab5.py
Normal file
@@ -0,0 +1,48 @@
|
||||
from matplotlib import pyplot as plt
|
||||
from sklearn import metrics
|
||||
from sklearn.linear_model import LinearRegression
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.preprocessing import PolynomialFeatures
|
||||
from sklearn.pipeline import Pipeline
|
||||
import pandas as pd
|
||||
|
||||
|
||||
def start():
|
||||
data = pd.read_csv('sberbank_data.csv', index_col='id')
|
||||
x = data[['timestamp', 'full_sq', 'floor', 'max_floor', 'build_year', 'num_room', 'material', 'kremlin_km']]
|
||||
y = data[['price_doc']]
|
||||
|
||||
x = x.replace('NA', 0)
|
||||
x.fillna(0, inplace=True)
|
||||
|
||||
col_date = []
|
||||
|
||||
for val in x['timestamp']:
|
||||
col_date.append(val.split('-', 1)[0])
|
||||
|
||||
x = x.drop(columns='timestamp')
|
||||
x['timestamp'] = col_date
|
||||
|
||||
x_train, x_test, y_train, y_test = train_test_split(x, y, test_size=0.01, random_state=42)
|
||||
|
||||
poly = Pipeline([('poly', PolynomialFeatures(degree=3)),
|
||||
('linear', LinearRegression())])
|
||||
poly.fit(x_train, y_train)
|
||||
|
||||
y_mean = y['price_doc'].mean()
|
||||
y_predicted = poly.predict(x_test)
|
||||
for i, n in enumerate(y_predicted):
|
||||
if n < 10000:
|
||||
y_predicted[i] = y_mean
|
||||
|
||||
print('Оценка обучения:')
|
||||
print(metrics.r2_score(y_test, y_predicted))
|
||||
|
||||
plt.figure(1, figsize=(16, 9))
|
||||
plt.title('Сравнение результатов обучения')
|
||||
plt.scatter(x=[i for i in range(len(y_test))], y=y_test, c='g', s=5)
|
||||
plt.scatter(x=[i for i in range(len(y_test))], y=y_predicted, c='r', s=5)
|
||||
plt.show()
|
||||
|
||||
|
||||
start()
|
||||
36
alexandrov_dmitrii_lab_5/readme.md
Normal file
@@ -0,0 +1,36 @@
|
||||
### Задание
|
||||
Использовать регрессию по варианту для выбранных данных по варианту, самостоятельно сформулировав задачу.
|
||||
Интерпретировать результаты и оценить, насколько хорошо она подходит для
|
||||
решения сформулированной вами задачи.
|
||||
|
||||
Вариант 1: полиномиальная регрессия
|
||||
|
||||
Была сформулирована следующая задача: необходимо предсказывать стоимость жилья по избранным признакам при помощи регрессии.
|
||||
|
||||
### Запуск программы
|
||||
Файл lab5.py содержит и запускает программу, аргументов и настройки ~~вроде~~ не требует.
|
||||
|
||||
### Описание программы
|
||||
Программа считывает цены на жильё как выходные данные и следующие данные как входные: год размещения объявления, площадь, этаж, количество этажей, год постройки, количество комнат, материал, расстояние до кремля (условного центра).
|
||||
Далее она обрабатывает данные (цифровизирует нулевые данные), оставляет только год объявления.
|
||||
|
||||
После обработки программа делит данные на 99% обучающего материала и 1% тестового и обучает модель полиномиальной регрессии со степенью 3.
|
||||
Далее модель генерирует набор предсказаний на основе тестовых входных данных. Эти предсказания обрабатываются: убираются отрицательные цены.
|
||||
|
||||
Далее программа оценивает предсказания по коэффициенту детерминации и выводит результат в консоль. А также показывает диаграммы рассеяния для действительных (зелёные точки) и предсказанных (красные точки) цен.
|
||||
|
||||
### Результаты тестирования
|
||||
По результатам тестирования, можно сказать следующее:
|
||||
* Полные данные алгоритм обрабатывает плохо, поэтому было необходимо было выбирать наиболее значимые признаки.
|
||||
* В зависимости от данных, разные степени регрессии дают разный результат. В общем случае обычная линейная регрессия давала коэффициент около 0.3. При добавлении же степеней полиномиальная регрессия выдавала выбросные значения цен: например, -300 миллионов, что негативно сказывалось на результате.
|
||||
* Для того, чтобы явно выбросные результаты не портили оценку (коэффициент соответственно становился -1000) эти выбросные значения заменялись на средние.
|
||||
* Опытным путём было найдено, что наилучшие результаты (коэффициент 0.54) показывает степень 3.
|
||||
* Результат 0.54 - наилучший результат - можно назвать неприемлимым: только в половине случаев предсказанная цена условно похожа на действительную.
|
||||
* Возможно, включением большего количества признаков и использованием других моделей (линейная, например, не давала выбросов) удастся решить проблему.
|
||||
|
||||
Пример консольного вывода:
|
||||
>Оценка обучения:
|
||||
>
|
||||
>0.5390648784908953
|
||||
|
||||
Итого: Алгоритм можно привести к некоторой эффективности, однако для конкретно этих данных он не подходит. Лучше попытаться найти другую модель регрессии.
|
||||
28896
alexandrov_dmitrii_lab_5/sberbank_data.csv
Normal file
76
alexandrov_dmitrii_lab_6/lab6.py
Normal file
@@ -0,0 +1,76 @@
|
||||
from matplotlib import pyplot as plt
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.neural_network import MLPClassifier
|
||||
import pandas as pd
|
||||
import numpy as np
|
||||
|
||||
data = pd.read_csv('sberbank_data.csv', index_col='id')
|
||||
x = data[['timestamp', 'full_sq', 'floor', 'max_floor', 'build_year', 'num_room', 'material', 'kremlin_km']]
|
||||
|
||||
x = x.replace('NA', 0)
|
||||
x.fillna(0, inplace=True)
|
||||
|
||||
col_date = []
|
||||
|
||||
for val in x['timestamp']:
|
||||
col_date.append(val.split('-', 1)[0])
|
||||
|
||||
x = x.drop(columns='timestamp')
|
||||
x['timestamp'] = col_date
|
||||
|
||||
y = []
|
||||
for val in data['price_doc']:
|
||||
if val < 1500000:
|
||||
y.append('low')
|
||||
elif val < 3000000:
|
||||
y.append('medium')
|
||||
elif val < 5500000:
|
||||
y.append('high')
|
||||
elif val < 10000000:
|
||||
y.append('premium')
|
||||
else:
|
||||
y.append('oligarch')
|
||||
|
||||
x_train, x_test, y_train, y_test = train_test_split(x, y, test_size=0.01, random_state=42)
|
||||
|
||||
min_scores = []
|
||||
med_scores = []
|
||||
max_scores = []
|
||||
|
||||
|
||||
def do_test(iters_num):
|
||||
global x_train, x_test, y_train, y_test, min_scores, med_scores, max_scores
|
||||
|
||||
print("Testing iterations number "+str(iters_num)+":")
|
||||
scores = []
|
||||
|
||||
for i in range(10):
|
||||
neuro = MLPClassifier(max_iter=200)
|
||||
neuro.fit(x_train, y_train)
|
||||
scr = neuro.score(x_test, y_test)
|
||||
print("res"+str(i+1)+": "+str(scr))
|
||||
scores.append(scr)
|
||||
|
||||
print("Medium result: "+str(np.mean(scores)))
|
||||
|
||||
min_scores.append(np.min(scores))
|
||||
med_scores.append(np.mean(scores))
|
||||
max_scores.append(np.max(scores))
|
||||
|
||||
|
||||
def start():
|
||||
global min_scores, med_scores, max_scores
|
||||
|
||||
iter_nums = [200, 400, 600, 800, 1000]
|
||||
|
||||
for num in iter_nums:
|
||||
do_test(num)
|
||||
|
||||
plt.figure(1, figsize=(16, 9))
|
||||
plt.plot(iter_nums, min_scores, c='r')
|
||||
plt.plot(iter_nums, med_scores, c='b')
|
||||
plt.plot(iter_nums, max_scores, c='b')
|
||||
plt.show()
|
||||
|
||||
|
||||
start()
|
||||
149
alexandrov_dmitrii_lab_6/readme.md
Normal file
@@ -0,0 +1,149 @@
|
||||
### Задание
|
||||
Использовать нейронную сеть по варианту для выбранных данных по варианту, самостоятельно сформулировав задачу.
|
||||
Интерпретировать результаты и оценить, насколько хорошо она подходит для
|
||||
решения сформулированной вами задачи.
|
||||
|
||||
Вариант 1: MLPClassifier
|
||||
|
||||
Была сформулирована следующая задача: необходимо классифицировать жильё по стоимости на основе избранных признаков при помощи нейронной сети.
|
||||
|
||||
### Запуск программы
|
||||
Файл lab6.py содержит и запускает программу, аргументов и настройки ~~вроде~~ не требует.
|
||||
|
||||
### Описание программы
|
||||
Программа считывает цены на жильё как выходные данные и следующие данные как входные: год размещения объявления, площадь, этаж, количество этажей, год постройки, количество комнат, материал, расстояние до кремля (условного центра).
|
||||
Далее она обрабатывает данные (цифровизирует нулевые данные), оставляет только год объявления. Цены распределяются по пяти классам.
|
||||
|
||||
После обработки программа делит данные на 99% обучающего материала и 1% тестового.
|
||||
Эти данные обрабатываются по 10 раз для идентичных моделей нейронных сетей, использующих метод градиентного спуска "adam", с разной настройкой максимального количества поколений: 200, 400, 600, 800, 1000.
|
||||
Считаются оценка модели. Для каждой модели запоминаются минимальный, максимальный и средний результаты. В консоль выводятся все результаты.
|
||||
В конце программа показывает графики зависимости результатов от максимального количества поколений модели.
|
||||
|
||||
### Результаты тестирования
|
||||
По результатам тестирования, можно сказать следующее:
|
||||
* В общем, модель даёт средний результат в районе 40-50% точности, что недостаточно.
|
||||
* Увеличение максимального количества поколений влияет сильнее всего на минимальные оценки, сужая разброс точности.
|
||||
* Нельзя сказать, что увеличение максимального количества поколений сильно улучшит модель: максимум на 10% точности.
|
||||
|
||||
Пример консольного вывода:
|
||||
>Testing iterations number 200:
|
||||
>
|
||||
>res1: 0.3806228373702422
|
||||
>
|
||||
>res2: 0.6055363321799307
|
||||
>
|
||||
>res3: 0.4809688581314879
|
||||
>
|
||||
>res4: 0.4913494809688581
|
||||
>
|
||||
>res5: 0.4844290657439446
|
||||
>
|
||||
>res6: 0.2975778546712803
|
||||
>
|
||||
>res7: 0.48788927335640137
|
||||
>
|
||||
>res8: 0.06228373702422145
|
||||
>
|
||||
>res9: 0.6193771626297578
|
||||
>
|
||||
>res10: 0.47750865051903113
|
||||
>
|
||||
>Medium result: 0.4387543252595155
|
||||
>
|
||||
>Testing iterations number 400:
|
||||
>
|
||||
>res1: 0.6124567474048442
|
||||
>
|
||||
>res2: 0.4290657439446367
|
||||
>
|
||||
>res3: 0.3217993079584775
|
||||
>
|
||||
>res4: 0.5467128027681661
|
||||
>
|
||||
>res5: 0.48788927335640137
|
||||
>
|
||||
>res6: 0.40484429065743943
|
||||
>
|
||||
>res7: 0.6020761245674741
|
||||
>
|
||||
>res8: 0.4186851211072664
|
||||
>
|
||||
>res9: 0.42214532871972316
|
||||
>
|
||||
>res10: 0.370242214532872
|
||||
>
|
||||
>Medium result: 0.46159169550173
|
||||
>
|
||||
>Testing iterations number 600:
|
||||
>
|
||||
>res1: 0.4359861591695502
|
||||
>
|
||||
>res2: 0.2560553633217993
|
||||
>
|
||||
>res3: 0.5363321799307958
|
||||
>
|
||||
>res4: 0.5778546712802768
|
||||
>
|
||||
>res5: 0.35986159169550175
|
||||
>
|
||||
>res6: 0.356401384083045
|
||||
>
|
||||
>res7: 0.49480968858131485
|
||||
>
|
||||
>res8: 0.5121107266435986
|
||||
>
|
||||
>res9: 0.5224913494809689
|
||||
>
|
||||
>res10: 0.5190311418685121
|
||||
>
|
||||
>Medium result: 0.4570934256055363
|
||||
>
|
||||
>Testing iterations number 800:
|
||||
>
|
||||
>res1: 0.25951557093425603
|
||||
>
|
||||
>res2: 0.4083044982698962
|
||||
>
|
||||
>res3: 0.5224913494809689
|
||||
>
|
||||
>res4: 0.5986159169550173
|
||||
>
|
||||
>res5: 0.24567474048442905
|
||||
>
|
||||
>res6: 0.4013840830449827
|
||||
>
|
||||
>res7: 0.21453287197231835
|
||||
>
|
||||
>res8: 0.4671280276816609
|
||||
>
|
||||
>res9: 0.40484429065743943
|
||||
>
|
||||
>res10: 0.38408304498269896
|
||||
>
|
||||
>Medium result: 0.3906574394463667
|
||||
>
|
||||
>Testing iterations number 1000:
|
||||
>
|
||||
>res1: 0.4186851211072664
|
||||
>
|
||||
>res2: 0.5017301038062284
|
||||
>
|
||||
>res3: 0.5121107266435986
|
||||
>
|
||||
>res4: 0.3806228373702422
|
||||
>
|
||||
>res5: 0.44982698961937717
|
||||
>
|
||||
>res6: 0.5986159169550173
|
||||
>
|
||||
>res7: 0.5570934256055363
|
||||
>
|
||||
>res8: 0.4290657439446367
|
||||
>
|
||||
>res9: 0.32525951557093424
|
||||
>
|
||||
>res10: 0.41522491349480967
|
||||
>
|
||||
>Medium result: 0.4588235294117647
|
||||
|
||||
Итого: Для отобранных данных нейронная модель с методом градиентного спуска "adam" показала себя не лучшим образом. Возможно, другие методы могут выдать лучшие результаты, либо необходима более обширная модификация модели.
|
||||
28896
alexandrov_dmitrii_lab_6/sberbank_data.csv
Normal file
2795
alexandrov_dmitrii_lab_7/data.txt
Normal file
96
alexandrov_dmitrii_lab_7/lab7.py
Normal file
@@ -0,0 +1,96 @@
|
||||
import numpy as np
|
||||
from keras_preprocessing.sequence import pad_sequences
|
||||
from keras_preprocessing.text import Tokenizer
|
||||
from keras.models import Sequential
|
||||
from keras.layers import Dense, LSTM, Embedding, Dropout
|
||||
from keras.callbacks import ModelCheckpoint
|
||||
|
||||
|
||||
def recreate_model(predictors, labels, model, filepath, epoch_num):
|
||||
model.compile(loss='sparse_categorical_crossentropy', optimizer='adam', metrics=['accuracy'])
|
||||
append_epochs(predictors, labels, model, epoch_num)
|
||||
|
||||
|
||||
def append_epochs(predictors, labels, model, filepath, epoch_num):
|
||||
checkpoint = ModelCheckpoint(filepath, monitor='loss', verbose=1, save_best_only=True, mode='min')
|
||||
desired_callbacks = [checkpoint]
|
||||
model.fit(predictors, labels, epochs=epoch_num, verbose=1, callbacks=desired_callbacks)
|
||||
|
||||
|
||||
def generate_text(tokenizer, seed_text, next_words, model, max_seq_length):
|
||||
for _ in range(next_words):
|
||||
token_list = tokenizer.texts_to_sequences([seed_text])[0]
|
||||
token_list = pad_sequences([token_list], maxlen=max_seq_length - 1, padding='pre')
|
||||
predicted = np.argmax(model.predict(token_list), axis=-1)
|
||||
output_word = ""
|
||||
for word, index in tokenizer.word_index.items():
|
||||
if index == predicted:
|
||||
output_word = word
|
||||
break
|
||||
seed_text += " " + output_word
|
||||
return seed_text
|
||||
|
||||
|
||||
def start():
|
||||
flag = -1
|
||||
while flag < 1 or flag > 2:
|
||||
flag = int(input("Select model and text (1 - eng, 2 - ru): "))
|
||||
|
||||
if flag == 1:
|
||||
file = open("data.txt").read()
|
||||
filepath = "model_eng.hdf5"
|
||||
elif flag == 2:
|
||||
file = open("rus_data.txt").read()
|
||||
filepath = "model_rus.hdf5"
|
||||
else:
|
||||
exit(1)
|
||||
|
||||
tokenizer = Tokenizer()
|
||||
tokenizer.fit_on_texts([file])
|
||||
words_count = len(tokenizer.word_index) + 1
|
||||
|
||||
input_sequences = []
|
||||
for line in file.split('\n'):
|
||||
token_list = tokenizer.texts_to_sequences([line])[0]
|
||||
for i in range(1, len(token_list)):
|
||||
n_gram_sequence = token_list[:i + 1]
|
||||
input_sequences.append(n_gram_sequence)
|
||||
|
||||
max_seq_length = max([len(x) for x in input_sequences])
|
||||
input_sequences = pad_sequences(input_sequences, maxlen=max_seq_length, padding='pre')
|
||||
|
||||
predictors, labels = input_sequences[:, :-1], input_sequences[:, -1]
|
||||
|
||||
model = Sequential()
|
||||
model.add(Embedding(words_count, 100, input_length=max_seq_length - 1))
|
||||
model.add(LSTM(150))
|
||||
model.add(Dropout(0.15))
|
||||
model.add(Dense(words_count, activation='softmax'))
|
||||
|
||||
flag = input("Do you want to recreate the model ? (print yes): ")
|
||||
if flag == 'yes':
|
||||
flag = input("Are you sure? (print yes): ")
|
||||
if flag == 'yes':
|
||||
num = int(input("Select number of epoch: "))
|
||||
if 0 < num < 100:
|
||||
recreate_model(predictors, labels, model, filepath, num)
|
||||
|
||||
model.load_weights(filepath)
|
||||
model.compile(loss='sparse_categorical_crossentropy', optimizer='adam', metrics=['accuracy'])
|
||||
|
||||
flag = input("Do you want to train the model ? (print yes): ")
|
||||
if flag == 'yes':
|
||||
flag = input("Are you sure? (print yes): ")
|
||||
if flag == 'yes':
|
||||
num = int(input("Select number of epoch: "))
|
||||
if 0 < num < 100:
|
||||
append_epochs(predictors, labels, model, filepath, num)
|
||||
|
||||
flag = 'y'
|
||||
while flag == 'y':
|
||||
seed = input("Enter seed: ")
|
||||
print(generate_text(tokenizer, seed, 25, model, max_seq_length))
|
||||
flag = input("Continue? (print \'y\'): ")
|
||||
|
||||
|
||||
start()
|
||||
BIN
alexandrov_dmitrii_lab_7/model_eng.hdf5
Normal file
BIN
alexandrov_dmitrii_lab_7/model_rus.hdf5
Normal file
49
alexandrov_dmitrii_lab_7/readme.md
Normal file
@@ -0,0 +1,49 @@
|
||||
### Задание
|
||||
Выбрать художественный текст(четные варианты – русскоязычный, нечетные – англоязычный)и обучить на нем рекуррентную нейронную сеть для решения задачи генерации. Подобрать архитектуру и параметры так, чтобы приблизиться к максимально осмысленному результату. Далее разбиться на пары четный-нечетный вариант, обменяться разработанными сетями и проверить, как архитектура товарища справляется с вашим текстом.
|
||||
|
||||
Вариант 1: первостепенно - английский текст. Кооперироваться, впрочем, не с кем.
|
||||
|
||||
### Запуск программы
|
||||
Файл lab7.py содержит и запускает программу, аргументов и настройки ~~вроде~~ не требует.
|
||||
|
||||
### Описание программы
|
||||
Программа представляет собой консольное приложение-инструмент для работы с моделями. Она может создавать и обучать однородные модели для разных текстов.
|
||||
В файлах хранятся два текста: англоязычный data.txt (Остров сокровищ) и русскоязычный rus_data.txt (Хоббит). Также там хранятся две сохранённые обученные модели:
|
||||
* model_eng - модель, обученная на английском тексте. На текущий момент 27 эпох обучения.
|
||||
* model_rus - модель, обученная на русском тексте. На текущий момент 12 эпох обучения.
|
||||
Обучение проходило 1 день.
|
||||
|
||||
В программе необходимо выбрать загружаемый текст и соответствующую модель, в данный момент подключается русскоязычная модель.
|
||||
|
||||
Программа содержит методы пересоздания модели и дообучения модели (передаётся модель и количество эпох дообучения). Оба метода отключены и могут быть подключены обратно при необходимости.
|
||||
|
||||
После возможных пересоздания и дообучения моделей программа запрашивает текст-кодовое слово, которое модели будет необходимо продолжить, сгенерировав свой текст.
|
||||
|
||||
Сама модель имеет следующую архитектуру:
|
||||
* слой, преобразующий слова в векторы плотности, Embedding с входом, равным числу слов, с выходом 100, и с длиной ввода, равной длине максимального слова.
|
||||
* слой с блоками долгой краткосрочной памятью, составляющая рекуррентную сеть, LSTM со 150 блоками.
|
||||
* слой, задающий степень разрыва нейронных связей между соседними слоями, Dropout с процентом разрыва 15.
|
||||
* слой вычисления взвешенных сумм Dense с числом нейронов, равным числу слов в тексте и функцией активации 'softmax'
|
||||
|
||||
### Результаты тестирования
|
||||
По результатам дневного обучения можно сказать следующее:
|
||||
|
||||
Модель успешно генерирует бессмысленные последовательности слов, которые либо состоят из обрывков фраз, либо случайно (но достаточно часто) складываются в осмысленные словосочетания, но не более.
|
||||
|
||||
Примеры генераций (первое слово - код генерации):
|
||||
|
||||
Модель, обученная на 'Острове сокровищ', 27 эпох обучения:
|
||||
>ship that he said with the buccaneers a gentleman and neither can read and figure but what is it anyway ah 'deposed' that's it is a
|
||||
>
|
||||
>chest said the doctor touching the black spot mind by the arm who is the ship there's long john now you are the first that were
|
||||
>
|
||||
>silver said the doctor if you can get the treasure you can find the ship there's been a man that has lost his score out he
|
||||
|
||||
Модель, обученная на 'Хоббите', 12 эпох обучения:
|
||||
>дракон и тут они услыхали про смога он понял что он стал видел и разозлился как слоны у гэндальфа хороши но все это было бы он
|
||||
>
|
||||
>поле он не мог сообразить что он делал то в живых и слышал бильбо как раз доедал пуще прежнего а бильбо все таки уж не мог
|
||||
>
|
||||
>паук направился к нему толстому из свертков они добрались до рассвета и даже дальше не останавливаясь а именно что гоблины обидело бильбо они не мог ничего
|
||||
|
||||
Итого: Даже такая простая модель с таким малым количеством эпох обучения может иногда сгенерировать нечто осмысленное. Однако для генерации нормального текста необходимо длительное обучение и более сложная модель, из нескольких слоёв LSTM и Dropout после них, что, однако, потребовало бы вычислительные мощности, которых у меня нет в наличии. Иначе следует взять очень маленький текст.
|
||||
6838
alexandrov_dmitrii_lab_7/rus_data.txt
Normal file
53
almukhammetov_bulat_lab_1/README.md
Normal file
@@ -0,0 +1,53 @@
|
||||
Вариант 2
|
||||
|
||||
Задание:
|
||||
Используя код из пункта «Регуляризация и сеть прямого распространения «из [1] (стр. 228), сгенерируйте определенный тип данных и сравните на нем 3 модели (по варианту)Постройте графики, отобразите качество моделей, объясните полученные результаты.
|
||||
|
||||
Данные:
|
||||
make_circles (noise=0.2, factor=0.5, random_state=rs) Модели: · Линейную регрессию · Полиномиальную регрессию (со степенью 3) · Гребневую полиномиальную регрессию (со степенью 3, alpha= 1.0)
|
||||
|
||||
Запуск:
|
||||
Запустите файл lab1.py
|
||||
|
||||
Описание программы:
|
||||
1. Генерирует набор данных с использованием функции make_circles из scikit-learn. Этот набор данных представляет собой два класса, где точки одного класса окружают точки другого класса с добавленным шумом.
|
||||
2. Разделяет данные на обучающий и тестовый наборы с помощью функции train_test_split.
|
||||
3. Создает три разные модели для классификации данных:
|
||||
4. Линейная регрессия (Logistic Regression).
|
||||
5. Полиномиальная регрессия третьей степени (Polynomial Regression).
|
||||
6. Гребневая полиномиальная регрессия третьей степени с регуляризацией и альфой равной единице (Ridge Polynomial Regression).
|
||||
7. Обучаем каждую из этих моделей на обучающем наборе данных и оцениваем их точность на тестовом наборе данных.
|
||||
8. Выводит результаты точности каждой модели.
|
||||
9. Разделение областей предсказаний моделей (границы решения).
|
||||
10. Тестовые и обучающие точки, окрашенные в соответствии с классами. (красным и синим)
|
||||
|
||||
Результаты:
|
||||
|
||||
<p>
|
||||
<div>Точность</div>
|
||||
<img src="Рисунок1.png">
|
||||
</p>
|
||||
|
||||
<p>
|
||||
<div>Графики регрессии</div>
|
||||
<img src="Рисунок2.png">
|
||||
<img src="Рисунок3.png">
|
||||
<img src="Рисунок4.png">
|
||||
</p>
|
||||
|
||||
|
||||
Исходя из получивших графиков и точночсти с данным типом генерации данных из этих трех моделей наиболее точной получились полиномиальную регрессия (со степенью 3) и гребневaz полиномиальная регрессия (со степенью 3, alpha= 1.0). Они так же являются идентичными между собой. Чтобы проверить это утверждение я провел дополнительное тестирование и написал скрипт, который для 10 разных random_state (2-11) вычисляет точность для трех разных моделей.
|
||||
|
||||
Результаты:
|
||||
|
||||
Значения точности для каждой модели:
|
||||
Линейная регрессия 0.40 0.52 0.44 0.56 0.48 0.49 0.50 0.49 0.46 0.40
|
||||
Полиномиальная регрессия (со степенью 3) 0.63 0.67 0.74 0.64 0.80 0.73 0.64 0.81 0.46 0.62
|
||||
Гребневая полиномиальная регрессия (со степенью 3, alpha = 1.0) 0.63 0.67 0.74 0.64 0.80 0.73 0.64 0.81 0.46 0.62
|
||||
|
||||
Средние значения точности:
|
||||
Линейная регрессия - Средняя точность: 0.47
|
||||
Полиномиальная регрессия (со степенью 3) - Средняя точность: 0.68
|
||||
Гребневая полиномиальная регрессия (со степенью 3, alpha = 1.0) - Средняя точность: 0.68
|
||||
|
||||
Утверждение также подтвердилось.
|
||||
83
almukhammetov_bulat_lab_1/lab1.py
Normal file
@@ -0,0 +1,83 @@
|
||||
import numpy as np
|
||||
from matplotlib import pyplot as plt
|
||||
from matplotlib.colors import ListedColormap
|
||||
from sklearn.datasets import make_circles
|
||||
from sklearn.linear_model import LogisticRegression
|
||||
from sklearn.metrics import accuracy_score
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.pipeline import make_pipeline
|
||||
from sklearn.preprocessing import PolynomialFeatures
|
||||
from sklearn.preprocessing import StandardScaler
|
||||
|
||||
# Используя код из пункта «Регуляризация и сеть прямого распространения»из [1](стр. 228),
|
||||
# сгенерируйте определенный тип данных и сравните на нем 3 модели (по варианту).
|
||||
# Постройте графики, отобразите качество моделей, объясните полученные результаты.
|
||||
|
||||
# Модели
|
||||
# Линейная регрессия
|
||||
# Полиномиальная регрессия (со степенью 3)
|
||||
# Гребневую полиномиальную регрессию (со степенью 3, alpha = 1.0)
|
||||
|
||||
# Данные
|
||||
# make_circles (noise=0.2, factor=0.5, random_state=rs)
|
||||
|
||||
random_state = np.random.RandomState(2)
|
||||
|
||||
# Генерируем датасет
|
||||
circles_dataset = make_circles(noise=0.2, factor=0.5, random_state=random_state)
|
||||
|
||||
X, y = circles_dataset
|
||||
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.9, random_state=random_state)
|
||||
|
||||
# Создаем модели
|
||||
models = []
|
||||
|
||||
# Линейная регрессия
|
||||
linear_model = LogisticRegression(random_state=random_state)
|
||||
models.append(("Линейная регрессия", linear_model))
|
||||
|
||||
# Полиномиальная регрессия (со степенью 3)
|
||||
poly_model = make_pipeline(PolynomialFeatures(degree=3), StandardScaler(),
|
||||
LogisticRegression(random_state=random_state))
|
||||
models.append(("Полиномиальная регрессия (со степенью 3)", poly_model))
|
||||
|
||||
# Гребневая полиномиальная регрессия (со степенью 3 и alpha=1.0)
|
||||
ridge_poly_model = make_pipeline(PolynomialFeatures(degree=3), StandardScaler(),
|
||||
LogisticRegression(penalty='l2', C=1.0, random_state=random_state))
|
||||
models.append(("Гребневая полиномиальная регрессия (со степенью 3, alpha = 1.0)", ridge_poly_model))
|
||||
|
||||
# Обучаем и оцениваем модели
|
||||
results = []
|
||||
|
||||
for name, model in models:
|
||||
model.fit(X_train, y_train) # обучаем
|
||||
y_pred = model.predict(X_test) # предсказываем
|
||||
accuracy = accuracy_score(y_test, y_pred) # определяем точность
|
||||
results.append((name, accuracy))
|
||||
|
||||
# Выводим результаты
|
||||
for name, accuracy in results:
|
||||
print(f"{name} - Точность: {accuracy:.2f}")
|
||||
|
||||
# Строим графики
|
||||
cmap_background = ListedColormap(['#FFAAAA', '#AAAAFF'])
|
||||
cmap_points = ListedColormap(['#FF0000', '#0000FF'])
|
||||
|
||||
plt.figure(figsize=(15, 5))
|
||||
for i, (name, model) in enumerate(models):
|
||||
plt.subplot(1, 3, i + 1)
|
||||
xx, yy = np.meshgrid(np.linspace(X[:, 0].min() - 1, X[:, 0].max() + 1, 100),
|
||||
np.linspace(X[:, 1].min() - 1, X[:, 1].max() + 1, 100))
|
||||
Z = model.predict(np.c_[xx.ravel(), yy.ravel()])
|
||||
Z = Z.reshape(xx.shape)
|
||||
plt.contourf(xx, yy, Z, cmap=cmap_background, alpha=0.5)
|
||||
plt.scatter(X_test[:, 0], X_test[:, 1], c=y_test, cmap=cmap_points, marker='o', label='Тестовые точки')
|
||||
plt.scatter(X_train[:, 0], X_train[:, 1], c=y_train, cmap=cmap_points, marker='x', label='Обучающие точки')
|
||||
plt.legend()
|
||||
plt.title(name)
|
||||
|
||||
plt.text(0.5, -1.2, 'Красный класс', color='r', fontsize=12)
|
||||
plt.text(0.5, -1.7, 'Синий класс', color='b', fontsize=12)
|
||||
|
||||
plt.tight_layout()
|
||||
plt.show()
|
||||
BIN
almukhammetov_bulat_lab_1/Рисунок1.png
Normal file
|
After Width: | Height: | Size: 33 KiB |
BIN
almukhammetov_bulat_lab_1/Рисунок2.png
Normal file
|
After Width: | Height: | Size: 66 KiB |
BIN
almukhammetov_bulat_lab_1/Рисунок3.png
Normal file
|
After Width: | Height: | Size: 46 KiB |
BIN
almukhammetov_bulat_lab_1/Рисунок4.png
Normal file
|
After Width: | Height: | Size: 81 KiB |
40
almukhammetov_bulat_lab_2/README.md
Normal file
@@ -0,0 +1,40 @@
|
||||
Вариант 2
|
||||
|
||||
Задание:
|
||||
Используя код из [1](пункт «Решение задачи ранжирования признаков», стр. 205), выполните ранжирование признаков с помощью указанных по варианту моделей. Отобразите получившиеся значения\оценки каждого признака каждым методом\моделью и среднюю оценку. Проведите анализ получившихся результатов. Какие четыре признака оказались самыми важными по среднему значению? (Названия\индексы признаков и будут ответом на задание).
|
||||
|
||||
Данные:
|
||||
Линейная регрессия (LinearRegression)
|
||||
Рекурсивное сокращение признаков (Recursive Feature Elimination –RFE)
|
||||
Сокращение признаков Случайными деревьями (Random Forest Regressor)
|
||||
|
||||
Запуск:
|
||||
Запустите файл lab2.py
|
||||
|
||||
Описание программы:
|
||||
1. Генерирует случайные данные для задачи регрессии с помощью функции make_regression, создавая матрицу признаков X и вектор целевой переменной y.
|
||||
2. Создает DataFrame data, в котором столбцы представляют признаки, а последний столбец - целевую переменную.
|
||||
3. Разделяет данные на матрицу признаков X и вектор целевой переменной y.
|
||||
4. Создает список моделей для ранжирования признаков: линейной регрессии, рекурсивного сокращения признаков и сокращения признаков случайными деревьями.
|
||||
5. Создает словарь model_scores для хранения оценок каждой модели.
|
||||
6. Обучает и оценивает каждую модель на данных:
|
||||
7. Вычисляет ранги признаков и нормализует их в диапазоне от 0 до 1.
|
||||
8. Выводит оценки признаков каждой модели и их средние оценки.
|
||||
9. Находит четыре наиболее важных признака по средней оценке и выводит их индексы и значения.
|
||||
|
||||
Результаты:
|
||||
|
||||

|
||||
|
||||

|
||||
|
||||

|
||||
|
||||

|
||||
|
||||

|
||||
|
||||
Выводы:
|
||||
|
||||
Четыре наиболее важных признака, определенных на основе средних оценок, включают Признак 6, Признак 1, Признак 2 и Признак 5. Эти признаки имеют наибольшую среднюю важность среди всех признаков.
|
||||
|
||||
BIN
almukhammetov_bulat_lab_2/image-1.png
Normal file
|
After Width: | Height: | Size: 21 KiB |
BIN
almukhammetov_bulat_lab_2/image-2.png
Normal file
|
After Width: | Height: | Size: 22 KiB |
BIN
almukhammetov_bulat_lab_2/image-3.png
Normal file
|
After Width: | Height: | Size: 9.8 KiB |
BIN
almukhammetov_bulat_lab_2/image-4.png
Normal file
|
After Width: | Height: | Size: 6.8 KiB |
BIN
almukhammetov_bulat_lab_2/image.png
Normal file
|
After Width: | Height: | Size: 9.7 KiB |
75
almukhammetov_bulat_lab_2/lab2.py
Normal file
@@ -0,0 +1,75 @@
|
||||
import numpy as np
|
||||
import pandas as pd
|
||||
from sklearn.datasets import make_regression
|
||||
from sklearn.linear_model import LinearRegression
|
||||
from sklearn.feature_selection import RFE
|
||||
from sklearn.ensemble import RandomForestRegressor
|
||||
from sklearn.preprocessing import MinMaxScaler
|
||||
|
||||
# Используя код из [1](пункт «Решение задачи ранжирования признаков», стр. 205), выполните ранжирование признаков
|
||||
# с помощью указанных по варианту моделей. Отобразите получившиеся значения\оценки каждого признака каждым
|
||||
# методом\моделью и среднюю оценку. Проведите анализ получившихся результатов. Какие четыре признака оказались
|
||||
# самыми важными по среднему значению? (Названия\индексы признаков и будут ответом на задание).
|
||||
|
||||
# Линейная регрессия (LinearRegression), Рекурсивное сокращение признаков (Recursive Feature Elimination –RFE),
|
||||
# Сокращение признаков Случайными деревьями (Random Forest Regressor)
|
||||
random_state = np.random.RandomState(2)
|
||||
|
||||
# Генерация случайных данных для регрессии
|
||||
X, y = make_regression(n_samples=100, n_features=10, noise=0.1, random_state=random_state)
|
||||
|
||||
# Создание DataFrame для данных
|
||||
data = pd.DataFrame(X, columns=[f'признак_{i}' for i in range(X.shape[1])])
|
||||
data['целевая_переменная'] = y
|
||||
|
||||
# Разделение данных на признаки (X) и целевую переменную (y)
|
||||
X = data.drop('целевая_переменная', axis=1)
|
||||
y = data['целевая_переменная']
|
||||
|
||||
# Создаем модели
|
||||
models = [
|
||||
("Линейная регрессия", LinearRegression()),
|
||||
("Рекурсивное сокращение признаков", RFE(LinearRegression(), n_features_to_select=1)),
|
||||
("Сокращение признаков Случайными деревьями", RandomForestRegressor())
|
||||
]
|
||||
|
||||
# Словарь для хранения оценок каждой модели
|
||||
model_scores = {}
|
||||
|
||||
# Обучение и оценка моделей
|
||||
for name, model in models:
|
||||
model.fit(X, y)
|
||||
if name == "Рекурсивное сокращение признаков":
|
||||
# RFE возвращает ранжирование признаков
|
||||
rankings = model.ranking_
|
||||
# Нормализация рангов так, чтобы они находились в диапазоне от 0 до 1
|
||||
normalized_rankings = 1 - (rankings - 1) / (np.max(rankings) - 1)
|
||||
model_scores[name] = normalized_rankings
|
||||
elif name == "Сокращение признаков Случайными деревьями":
|
||||
# Важность признаков для RandomForestRegressor
|
||||
feature_importances = model.feature_importances_
|
||||
# Нормализация значений важности признаков в диапазоне от 0 до 1
|
||||
normalized_importances = MinMaxScaler().fit_transform(feature_importances.reshape(-1, 1))
|
||||
model_scores[name] = normalized_importances.flatten()
|
||||
elif name == "Линейная регрессия":
|
||||
# Коэффициенты признаков для Linear Regression
|
||||
coefficients = model.coef_
|
||||
# Нормализация коэффициентов так, чтобы они находились в диапазоне от 0 до 1
|
||||
normalized_coefficients = MinMaxScaler().fit_transform(np.abs(coefficients).reshape(-1, 1))
|
||||
model_scores[name] = normalized_coefficients.flatten()
|
||||
|
||||
# Вывод оценок каждой модели
|
||||
for name, scores in model_scores.items():
|
||||
print(f"{name} оценки признаков:")
|
||||
for feature, score in enumerate(scores, start=1):
|
||||
print(f"Признак {feature}: {score:.2f}")
|
||||
print(f"Средняя оценка: {np.mean(scores):.2f}")
|
||||
print()
|
||||
|
||||
# Находим четыре наиболее важных признака по средней оценке
|
||||
all_feature_scores = np.mean(list(model_scores.values()), axis=0)
|
||||
sorted_features = sorted(enumerate(all_feature_scores, start=1), key=lambda x: x[1], reverse=True)
|
||||
top_features = sorted_features[:4]
|
||||
print("Четыре наиболее важных признака:")
|
||||
for feature, score in top_features:
|
||||
print(f"Признак {feature}: {score:.2f}")
|
||||
BIN
almukhammetov_bulat_lab_3/1.png
Normal file
|
After Width: | Height: | Size: 73 KiB |
64
almukhammetov_bulat_lab_3/README.md
Normal file
@@ -0,0 +1,64 @@
|
||||
Вариант 2
|
||||
|
||||
Задание:
|
||||
Предсказание категории возраста дома (housingMedianAge) на основе других признаков, таких как широта, долгота, общее количество комнат и т.д.
|
||||
|
||||
Данные:
|
||||
Данный набор данных использовался во второй главе недавней книги Аурелиена Жерона "Практическое машинное обучение с помощью Scikit-Learn и TensorFlow". Он служит отличным введением в реализацию алгоритмов машинного обучения, потому что требует минимальной предварительной обработки данных, содержит легко понимаемый список переменных и находится в оптимальном размере, который не слишком мал и не слишком большой.
|
||||
|
||||
Данные содержат информацию о домах в определенном районе Калифорнии и некоторую сводную статистику на основе данных переписи 1990 года. Следует отметить, что данные не прошли предварительную очистку, и для них требуются некоторые этапы предварительной обработки. Столбцы включают в себя следующие переменные, их названия весьма наглядно описывают их суть:
|
||||
|
||||
долгота longitude
|
||||
|
||||
широта latitude
|
||||
|
||||
средний возраст жилья median_house_value
|
||||
|
||||
общее количество комнат total_rooms
|
||||
|
||||
общее количество спален total_bedrooms
|
||||
|
||||
население population
|
||||
|
||||
домохозяйства households
|
||||
|
||||
медианный доход median_income
|
||||
|
||||
Запуск:
|
||||
Запустите файл lab3.py
|
||||
|
||||
Описание программы:
|
||||
|
||||
1. Загружает набор данных из файла 'housing.csv', который содержит информацию о домах в Калифорнии, включая их координаты, возраст, количество комнат, население, доход и другие характеристики.
|
||||
|
||||
2. Удаляет строки с нулевыми значениями из набора данных для чистоты анализа.
|
||||
|
||||
3. Выбирает набор признаков (features) из данных, которые будут использоваться для обучения моделей регрессии и классификации.
|
||||
|
||||
4. Определяет задачу регрессии, где целевой переменной (target) является 'housing_median_age', и задачу классификации, где целевой переменной является 'housing_median_age'.
|
||||
|
||||
5. Разделяет данные на обучающий и тестовый наборы для обеих задач с использованием функции train_test_split. Тестовый набор составляет 1% от исходных данных.
|
||||
|
||||
6. Создает и обучает дерево решений для регрессии и классификации с использованием моделей DecisionTreeRegressor и DecisionTreeClassifier.
|
||||
|
||||
7. Предсказывает значения целевой переменной на тестовых наборах для обеих задач.
|
||||
|
||||
8. Оценивает качество моделей с помощью среднеквадратичной ошибки (MSE) для регрессии и точности (accuracy) для классификации.
|
||||
|
||||
9. Выводит среднеквадратичную ошибку для регрессии и точность для классификации, а также важности признаков для обеих задач.
|
||||
|
||||
Результаты:
|
||||
|
||||

|
||||
|
||||
Выводы:
|
||||
|
||||
Для задачи регрессии, где целью было предсказать возраст жилья (housing_median_age), модель дерева решений показала среднюю ошибку (MSE) равную 117.65. Это означает, что модель регрессии вполне приемлемо предсказывает возраст жилья на основе выбранных признаков.
|
||||
|
||||
Для задачи классификации, где целью было предсказать стоимость жилья (housing_median_age), модель дерева решений показала низкую точность, всего 8.29%. Это свидетельствует о том, что модель классификации не справляется с предсказанием стоимости жилья на основе выбранных признаков. Низкая точность указывает на необходимость улучшения модели или выбора других методов для решения задачи классификации.
|
||||
|
||||
Анализ важности признаков для задачи регрессии показал, что наибольший вклад в предсказание возраста жилья вносят признаки 'longitude', 'latitude' и 'total_rooms'. Эти признаки оказывают наибольшее влияние на результаты модели.
|
||||
|
||||
Для задачи классификации наибольший вклад в предсказание стоимости жилья вносят признаки 'median_income', 'longitude' и 'latitude'. Эти признаки имеют наибольшее значение при определении классов стоимости жилья.
|
||||
|
||||
В целом, результаты указывают на успешное решение задачи регрессии с использованием модели дерева решений. Однако задача классификации требует дополнительных улучшений.
|
||||
48
almukhammetov_bulat_lab_3/lab3(old).py
Normal file
@@ -0,0 +1,48 @@
|
||||
import pandas as pd
|
||||
from sklearn.preprocessing import LabelEncoder
|
||||
from sklearn.tree import DecisionTreeClassifier
|
||||
|
||||
# Загрузка данных
|
||||
data = pd.read_csv('titanic.csv', index_col='PassengerId')
|
||||
|
||||
|
||||
# Функция для преобразования пола в числовое значение
|
||||
def Sex_to_bool(sex):
|
||||
if sex == "male":
|
||||
return 0
|
||||
return 1
|
||||
|
||||
|
||||
# Преобразование пола в числовое значение
|
||||
data['Sex'] = data['Sex'].apply(Sex_to_bool)
|
||||
|
||||
# Отбор строк с непустыми значениями
|
||||
# Отбор строк с непустыми значениями
|
||||
data = data.loc[~data['Name'].isna()
|
||||
& ~data['Age'].isna()
|
||||
& ~data['Sex'].isna()
|
||||
& ~data['Survived'].isna()]
|
||||
|
||||
|
||||
# Отбор нужных столбцов
|
||||
features = data[['Name', 'Sex', 'Age']]
|
||||
|
||||
# Применение Label Encoding к столбцу 'Name'
|
||||
label_encoder = LabelEncoder()
|
||||
features['Name'] = label_encoder.fit_transform(features['Name'])
|
||||
|
||||
# Определение целевой переменной
|
||||
y = data['Survived']
|
||||
|
||||
# Создание и обучение дерева решений
|
||||
clf = DecisionTreeClassifier(random_state=241)
|
||||
clf.fit(features, y)
|
||||
|
||||
# Получение важностей признаков
|
||||
importance = clf.feature_importances_
|
||||
|
||||
# Печать важности каждого признака
|
||||
print("Важность 'Name':", importance[0])
|
||||
print("Важность 'Sex':", importance[1])
|
||||
print("Важность 'Age':", importance[2])
|
||||
|
||||
77
almukhammetov_bulat_lab_3/lab3.py
Normal file
@@ -0,0 +1,77 @@
|
||||
import pandas as pd
|
||||
from sklearn.tree import DecisionTreeClassifier, DecisionTreeRegressor
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.metrics import mean_squared_error, accuracy_score
|
||||
|
||||
# Загрузка данных
|
||||
data = pd.read_csv('housing.csv')
|
||||
data = data.dropna()
|
||||
|
||||
# Отбор нужных столбцов
|
||||
features = data[
|
||||
['longitude', 'latitude', 'total_rooms', 'total_bedrooms', 'population', 'households', 'median_income']]
|
||||
|
||||
# Задача регрессии
|
||||
target_regression = data['housing_median_age']
|
||||
|
||||
# Разделение данных на обучающий и тестовый наборы для регрессии
|
||||
X_train_regression, X_test_regression, y_train_regression, y_test_regression = train_test_split(features,
|
||||
target_regression,
|
||||
test_size=0.01,
|
||||
random_state=241)
|
||||
|
||||
# Создание и обучение дерева решений для регрессии
|
||||
clf_regression = DecisionTreeRegressor(random_state=241)
|
||||
clf_regression.fit(X_train_regression, y_train_regression)
|
||||
|
||||
# Предсказание на тестовом наборе для регрессии
|
||||
y_pred_regression = clf_regression.predict(X_test_regression)
|
||||
|
||||
# Оценка качества модели для регрессии (MSE)
|
||||
mse_regression = mean_squared_error(y_test_regression, y_pred_regression)
|
||||
print("Средняя ошибка для регрессии:", mse_regression)
|
||||
|
||||
# Задача классификации
|
||||
target_classification = data['median_house_value']
|
||||
|
||||
# Разделение данных на обучающий и тестовый наборы для классификации
|
||||
X_train_classification, X_test_classification, y_train_classification, y_test_classification = train_test_split(
|
||||
features, target_classification, test_size=0.01, random_state=241)
|
||||
|
||||
# Создание и обучение дерева классификации
|
||||
clf_classification = DecisionTreeClassifier(random_state=241)
|
||||
clf_classification.fit(X_train_classification, y_train_classification)
|
||||
|
||||
# Предсказание на тестовом наборе для классификации
|
||||
y_pred_classification = clf_classification.predict(X_test_classification)
|
||||
|
||||
# Оценка качества модели для классификации (точность)
|
||||
accuracy_classification = accuracy_score(y_test_classification, y_pred_classification)
|
||||
print("Точность для классификации: {:.2f}%".format(accuracy_classification * 100))
|
||||
|
||||
# Важности признаков для регрессии
|
||||
importance_regression = clf_regression.feature_importances_
|
||||
|
||||
print("Важность для регрессии")
|
||||
# Печать важности каждого признака для регрессии
|
||||
print("Важность 'longitude':", importance_regression[0]) # За западную долготу дома
|
||||
print("Важность 'latitude':", importance_regression[1]) # За северную широту дома
|
||||
print("Важность 'total_rooms':", importance_regression[2]) # За общее количество комнат в блоке
|
||||
print("Важность 'total_bedrooms':", importance_regression[3]) # За общее количество спален в блоке
|
||||
print("Важность 'population':", importance_regression[4]) # За общее количество проживающих в блоке
|
||||
print("Важность 'households':", importance_regression[5]) # За общее количество домохозяйств в блоке
|
||||
print("Важность 'median_income':", importance_regression[6]) # За медианный доход домохозяйств в блоке
|
||||
|
||||
# Важности признаков для классификации
|
||||
importance_classification = clf_classification.feature_importances_
|
||||
|
||||
print()
|
||||
print("Важность для классификации")
|
||||
# Печать важности каждого признака для классификации
|
||||
print("Важность 'longitude':", importance_classification[0]) # За западную долготу дома
|
||||
print("Важность 'latitude':", importance_classification[1]) # За северную широту дома
|
||||
print("Важность 'total_rooms':", importance_classification[2]) # За общее количество комнат в блоке
|
||||
print("Важность 'total_bedrooms':", importance_classification[3]) # За общее количество спален в блоке
|
||||
print("Важность 'population':", importance_classification[4]) # За общее количество проживающих в блоке
|
||||
print("Важность 'households':", importance_classification[5]) # За общее количество домохозяйств в блоке
|
||||
print("Важность 'median_income':", importance_classification[6]) # За медианный доход домохозяйств в блоке
|
||||
97
antonov_dmitry_lab_1/README.md
Normal file
@@ -0,0 +1,97 @@
|
||||
# Лаб 1
|
||||
|
||||
Работа с типовыми наборами данных и различными моделями
|
||||
|
||||
# Вариант 3
|
||||
|
||||
Данные: make_classification (n_samples=500, n_features=2,
|
||||
n_redundant=0, n_informative=2, random_state=rs, n_clusters_per_class=1)
|
||||
|
||||
# Запуск
|
||||
|
||||
Выполнением скрипта файла (вывод в консоль + рисует графики).
|
||||
|
||||
# Модели:
|
||||
|
||||
1. Линейная регрессия
|
||||
1. Полиномиальная регрессия (со степенью 3)
|
||||
1. Гребневая полиномиальная регрессия (со степенью 3, alpha = 1.0)
|
||||
|
||||
# Графики
|
||||
|
||||
<div>
|
||||
Качество каждой модели может быть оценено на основе среднеквадратичной ошибки (MSE).
|
||||
Более низкая MSE указывает на лучшее соответствие данным.
|
||||
Однако выбор модели зависит от набора данных и лежащей в основе взаимосвязи между объектами и целевой переменной.
|
||||
|
||||
Линейная регрессия: Линейная регрессия предполагает линейную зависимость между признаками и целевой переменной.
|
||||
Это хорошо работает, когда взаимосвязь линейна, а шум в наборе данных минимален.
|
||||
Лучше всего сработала на наборе лун. Хуже всего на кругах.
|
||||
На линейном наборе показала себя на равне с остальными.
|
||||
|
||||
Полиномиальная и гребневая показали примерно одинаково на всех наборах.
|
||||
|
||||
Полиномиальная регрессия (степень=3):
|
||||
Полиномиальная регрессия обеспечивает более гибкую подгонку за счет полинома более высокого порядка(кубическая кривая).
|
||||
Она может выявить более сложные взаимосвязи между объектами и целевой переменной.
|
||||
Она может сработать лучше, чем линейная регрессия, если истинная взаимосвязь нелинейна.
|
||||
|
||||
Гребневая регрессия (степень= 3, альфа=1,0):
|
||||
В случае полиномиальной регрессии с регуляризацией (альфа=1,0) модель добавляет коэффициент регуляризации
|
||||
для управления сложностью обучения. Регуляризация помогает предотвратить переобучение, когда набор
|
||||
данных содержит шум или когда он ограничен.
|
||||
</div>
|
||||
|
||||
<p>
|
||||
<div>Набор лун (moon_dataset)</div>
|
||||
<img src="screens/myplot1.png" width="650" title="датасет 1">
|
||||
</p>
|
||||
<p>
|
||||
<div>Графики регрессии</div>
|
||||
<img src="screens/myplot2.png" width="450" title="линейная модель">
|
||||
<img src="screens/myplot3.png" width="450" title="полиномиальная модель">
|
||||
<img src="screens/myplot4.png" width="450" title="гребневая модель">
|
||||
<div>
|
||||
Линейная MSE: 0.0936
|
||||
Полиномиальная (degree=3) MSE: 0.0674
|
||||
Гребневая (degree=3, alpha=1.0) MSE: 0.0682
|
||||
</div>
|
||||
</p>
|
||||
|
||||
<p>
|
||||
<div>Набор кругов (circles_dataset)</div>
|
||||
<img src="screens/myplot5.png" width="650" title="датасет 2">
|
||||
</p>
|
||||
<p>
|
||||
<div>Графики регрессии</div>
|
||||
<img src="screens/myplot6.png" width="450" title="линейная модель">
|
||||
<img src="screens/myplot7.png" width="450" title="полиномиальная модель">
|
||||
<img src="screens/myplot8.png" width="450" title="гребневая модель">
|
||||
<div>
|
||||
Линейная MSE: 0.2684
|
||||
Полиномиальная (degree=3) MSE: 0.1341
|
||||
Гребневая (degree=3, alpha=1.0) MSE: 0.1312
|
||||
</div>
|
||||
</p>
|
||||
|
||||
<p>
|
||||
<div>Набор линейный (linearly_dataset)</div>
|
||||
<img src="screens/myplot9.png" width="650" title="датасет 3">
|
||||
</p>
|
||||
<p>
|
||||
<div>Графики регрессии</div>
|
||||
<img src="screens/myplot10.png" width="450" title="линейная модель">
|
||||
<img src="screens/myplot11.png" width="450" title="полиномиальная модель">
|
||||
<img src="screens/myplot12.png" width="450" title="гребневая модель">
|
||||
<div>
|
||||
Линейная MSE: 0.1101
|
||||
Полиномиальная (degree=3) MSE: 0.1045
|
||||
Гребневая (degree=3, alpha=1.0) MSE: 0.1078
|
||||
</div>
|
||||
</p>
|
||||
|
||||
<div>
|
||||
Итоговая модель подбирается учитывая зависимость в данных,
|
||||
как правило полиномиальная регрессия справляется лучше, а коэф регуляризации в гребневой регрессии помогает избежать
|
||||
переобучения.
|
||||
</div>
|
||||
97
antonov_dmitry_lab_1/lab1.py
Normal file
@@ -0,0 +1,97 @@
|
||||
import numpy as np
|
||||
from matplotlib import pyplot as plt
|
||||
from skimage.metrics import mean_squared_error
|
||||
from sklearn.datasets import make_moons, make_circles, make_classification
|
||||
from sklearn.linear_model import LinearRegression, Ridge
|
||||
from sklearn.model_selection import train_test_split
|
||||
from sklearn.pipeline import make_pipeline
|
||||
from sklearn.preprocessing import StandardScaler, PolynomialFeatures
|
||||
|
||||
X, y = make_classification(
|
||||
n_features=2,
|
||||
n_redundant=0,
|
||||
n_informative=2,
|
||||
random_state=0,
|
||||
n_clusters_per_class=1
|
||||
)
|
||||
|
||||
rng = np.random.RandomState(2)
|
||||
X += 2 * rng.uniform(size=X.shape)
|
||||
linearly_dataset = (X, y)
|
||||
moon_dataset = make_moons(noise=0.3, random_state=0)
|
||||
circles_dataset = make_circles(noise=0.2, factor=0.5, random_state=1)
|
||||
datasets = [moon_dataset, circles_dataset, linearly_dataset]
|
||||
|
||||
"""
|
||||
Данные:
|
||||
· moon_dataset
|
||||
· circles_dataset
|
||||
· linearly_dataset
|
||||
"""
|
||||
for ds_cnt, ds in enumerate(datasets):
|
||||
X, y = ds
|
||||
X = StandardScaler().fit_transform(X)
|
||||
X_train, X_test, y_train, y_test = train_test_split(
|
||||
X, y, test_size=.4, random_state=42
|
||||
)
|
||||
"""
|
||||
Модели:
|
||||
· Линейную регрессию
|
||||
· Полиномиальную регрессию (со степенью 3)
|
||||
· Гребневую полиномиальную регрессию (со степенью 3, alpha = 1.0)
|
||||
"""
|
||||
|
||||
# Линейная
|
||||
linear_regression = LinearRegression()
|
||||
linear_regression.fit(X_train, y_train)
|
||||
linear_predictions = linear_regression.predict(X_test)
|
||||
linear_mse = mean_squared_error(y_test, linear_predictions)
|
||||
|
||||
# Полиномиальная (degree=3)
|
||||
poly_regression = make_pipeline(PolynomialFeatures(degree=3), LinearRegression())
|
||||
poly_regression.fit(X_train, y_train)
|
||||
poly_predictions = poly_regression.predict(X_test)
|
||||
poly_mse = mean_squared_error(y_test, poly_predictions)
|
||||
|
||||
# Гребневая (degree=3, alpha=1.0)
|
||||
poly_regression_alpha = make_pipeline(PolynomialFeatures(degree=3), Ridge(alpha=1.0))
|
||||
poly_regression_alpha.fit(X_train, y_train)
|
||||
poly_alpha_predictions = poly_regression_alpha.predict(X_test)
|
||||
poly_alpha_mse = mean_squared_error(y_test, poly_alpha_predictions)
|
||||
|
||||
# График данных
|
||||
plt.figure(figsize=(10, 6))
|
||||
plt.scatter(X_test[:, 0], X_test[:, 1], c=y_test, cmap='coolwarm')
|
||||
plt.title('Датасет №' + str(ds_cnt))
|
||||
plt.xlabel('X')
|
||||
plt.ylabel('Y')
|
||||
|
||||
# График линейной модели
|
||||
plt.figure(figsize=(10, 6))
|
||||
plt.scatter(X_test[:, 0], X_test[:, 1], c=linear_predictions, cmap='coolwarm')
|
||||
plt.title('Линейная ds'+ str(ds_cnt))
|
||||
plt.xlabel('X')
|
||||
plt.ylabel('Y')
|
||||
plt.show()
|
||||
|
||||
# График полиномиальной модели (degree=3)
|
||||
plt.figure(figsize=(10, 6))
|
||||
plt.scatter(X_test[:, 0], X_test[:, 1], c=poly_predictions, cmap='coolwarm')
|
||||
plt.title('Полиномиальная (degree=3) ds' + str(ds_cnt))
|
||||
plt.xlabel('X')
|
||||
plt.ylabel('Y')
|
||||
plt.show()
|
||||
|
||||
# График гребневой модели (degree=3, alpha=1.0)
|
||||
plt.figure(figsize=(10, 6))
|
||||
plt.scatter(X_test[:, 0], X_test[:, 1], c=poly_alpha_predictions, cmap='coolwarm')
|
||||
plt.title('Гребневая (degree=3, alpha=1.0) ds' + str(ds_cnt))
|
||||
plt.xlabel('X')
|
||||
plt.ylabel('Y')
|
||||
plt.show()
|
||||
|
||||
# Сравнение качества
|
||||
print('Линейная MSE:', linear_mse)
|
||||
print('Полиномиальная (degree=3) MSE:', poly_mse)
|
||||
print('Гребневая (degree=3, alpha=1.0) MSE:', poly_alpha_mse)
|
||||
|
||||
BIN
antonov_dmitry_lab_1/screens/myplot1.png
Normal file
|
After Width: | Height: | Size: 18 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot10.png
Normal file
|
After Width: | Height: | Size: 18 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot11.png
Normal file
|
After Width: | Height: | Size: 21 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot12.png
Normal file
|
After Width: | Height: | Size: 21 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot2.png
Normal file
|
After Width: | Height: | Size: 18 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot3.png
Normal file
|
After Width: | Height: | Size: 19 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot4.png
Normal file
|
After Width: | Height: | Size: 20 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot5.png
Normal file
|
After Width: | Height: | Size: 20 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot6.png
Normal file
|
After Width: | Height: | Size: 19 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot7.png
Normal file
|
After Width: | Height: | Size: 22 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot8.png
Normal file
|
After Width: | Height: | Size: 22 KiB |
BIN
antonov_dmitry_lab_1/screens/myplot9.png
Normal file
|
After Width: | Height: | Size: 19 KiB |