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119 Commits

Author SHA1 Message Date
f61aea2ee2 lab 6 ready 2023-11-01 16:08:27 +04:00
b26c54a7e4 Merge pull request 'lipatov_ilya_lab_1' (#45) from lipatov_ilya_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/45
2023-10-28 12:43:49 +04:00
9e6286a3a4 Merge pull request 'ilbekov_dmitriy_lab_7' (#100) from ilbekov_dmitriy_lab_7 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/100
2023-10-28 12:43:34 +04:00
4a6bb8139e Merge pull request 'savenkov_alexander_lab_5 is done' (#88) from savenkov_alexander_lab_5 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/88
2023-10-28 12:43:15 +04:00
8b9050cce3 Merge pull request 'gusev_vladislav_lab_6 is ready' (#95) from gusev_vladislav_lab_6 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/95
2023-10-28 12:42:51 +04:00
3e08abf42b Merge pull request 'zavrazhnova_svetlana_lab_6' (#97) from zavrazhnova_svetlana_lab_6 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/97
2023-10-28 12:42:31 +04:00
c6d41e1157 Merge pull request 'savenkov_alexander_lab_3 is done' (#86) from savenkov_alexander_lab_3 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/86
2023-10-28 12:31:19 +04:00
6a9310501a Merge pull request 'abanin_daniil_lab_5' (#85) from abanin_daniil_lab_5 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/85
2023-10-28 12:29:26 +04:00
bed476a27b Merge pull request 'kurmyza_pavel_lab_3 is ready' (#81) from kurmyza_pavel_lab_3 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/81
2023-10-28 12:28:53 +04:00
2607c0dbfd Merge pull request 'ilbekov_dmitriy_lab_6' (#98) from ilbekov_dmitriy_lab_6 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/98
2023-10-28 12:22:00 +04:00
be253bf939 Merge pull request 'zavrazhnova_svetlana_lab_7 is ready' (#99) from zavrazhnova_svetlana_lab_7 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/99
2023-10-28 12:20:08 +04:00
9ab1a0f1ca Merge pull request 'ilbekov_dmitriy_lab_5' (#80) from ilbekov_dmitriy_lab_5 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/80
2023-10-28 12:13:03 +04:00
8bd93ee83e Merge pull request 'alexandrov_dmitrii_lab_7 is ready' (#78) from alexandrov_dmitrii_lab_7 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/78
2023-10-28 12:12:25 +04:00
1fddfd2362 Merge pull request 'alexandrov_dmitrii_lab_6 ready' (#72) from alexandrov_dmitrii_lab_6 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/72
2023-10-28 12:11:47 +04:00
994129b8a9 Merge pull request 'gusev_vladislav_lab_4 is ready' (#63) from gusev_vladislav_lab_4 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/63
2023-10-28 12:09:45 +04:00
79b5e5bb12 Merge pull request 'ilbekov_dmitriy_lab_4' (#79) from ilbekov_dmitriy_lab_4 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/79
2023-10-28 12:02:13 +04:00
08aa85abbc Merge pull request 'abanin_daniil_lab_4' (#84) from abanin_daniil_lab_4 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/84
2023-10-28 11:58:05 +04:00
de50a5f08d Merge pull request 'savenkov_alexander_lab_4 is done' (#87) from savenkov_alexander_lab_4 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/87
2023-10-28 11:56:58 +04:00
c37eca50a6 Merge pull request 'zavrazhnova_svetlana_lab_4' (#96) from zavrazhnova_svetlana_lab_4 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/96
2023-10-28 11:49:04 +04:00
2906d3886f Merge pull request 'kurmyza_pavel_lab_4 is ready' (#101) from kurmyza_pavel_lab_4 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/101
2023-10-28 11:48:33 +04:00
e034d93062 kurmyza_pavel_lab_4 is ready 2023-10-28 10:00:04 +04:00
879a1c5730 lab7 done 2023-10-28 01:43:58 +04:00
Svetlnkk
78bec04c10 zavrazhnova_svetlana_lab_7 is ready 2023-10-27 22:44:30 +04:00
c212c98a90 lab6 done 2023-10-27 19:58:08 +04:00
Svetlnkk
25acce2c79 zavrazhnova_svetlana_lab_6 is ready 2023-10-27 14:17:35 +04:00
vladg
db918284b5 gusev_vladislav_lab_6 is ready 2023-10-27 12:00:37 +04:00
71cad406c2 Merge pull request 'gusev_vladislav_lab_5 is ready' (#90) from gusev_vladislav_lab_5 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/90
2023-10-27 11:38:00 +04:00
a076fd78ae Merge pull request 'gusev_vladislav_lab_2 is ready' (#89) from gusev_vladislav_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/89
2023-10-27 11:37:46 +04:00
124f682c8b Merge pull request 'zavrazhnova_svetlana_lab_5' (#91) from zavrazhnova_svetlana_lab_5 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/91
2023-10-27 11:29:37 +04:00
8834f99ecf Merge pull request 'podkorytova_yulia_lab1 is ready' (#92) from podkorytova_yulia_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/92
2023-10-27 11:19:18 +04:00
dd0d45ef93 Merge pull request 'podkorytova_yulia_lab2 is ready' (#93) from podkorytova_yulia_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/93
2023-10-27 11:19:01 +04:00
c7060e6719 Merge pull request 'sergeev_evgenii_lab_2_is_done' (#94) from sergeev_evgenii_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/94
2023-10-27 11:17:36 +04:00
yulia
23bc64c816 podkorytova_yulia_lab2 2023-10-27 05:35:21 +04:00
yulia
be1b6a74ae podkorytova_yulia_lab1 2023-10-27 01:23:28 +04:00
Евгений Сергеев
32821e551a Done lab2 2023-10-27 01:16:35 +04:00
Svetlnkk
231aa0d062 fix conflict 2023-10-26 21:10:02 +04:00
Svetlnkk
10799cb639 fix conflict 2023-10-26 21:06:18 +04:00
vladg
0f61b37f8b gusev_vladislav_lab_5 is ready 2023-10-26 17:31:14 +04:00
vladg
3a68c16a44 gusev_vladislav_lab_2 is ready 2023-10-26 11:49:09 +04:00
Svetlnkk
481361b7e0 lal 2023-10-26 11:27:02 +04:00
0c414d7ab4 savenkov_alexander_lab_5 is done 2023-10-24 19:01:33 +04:00
d61b7c24f2 savenkov_alexander_lab_4 is done 2023-10-24 18:59:32 +04:00
b5fa7754bb savenkov_alexander_lab_3 is done 2023-10-24 18:56:05 +04:00
d575910860 Merge pull request 'gusev_vladislav_lab_3' (#62) from gusev_vladislav_lab_3 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/62
2023-10-24 16:48:23 +04:00
5894881f24 Merge pull request 'abanin_daniil_lab_3' (#74) from abanin_daniil_lab_3 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/74
2023-10-24 16:48:10 +04:00
92ec657bcd Merge pull request 'ilbekov_dmitriy_lab_3' (#76) from ilbekov_dmitriy_lab_3 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/76
2023-10-24 16:47:50 +04:00
346241253f Merge pull request 'zhukova_alina_lab_1 is ready' (#64) from zhukova_alina_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/64
2023-10-24 16:38:21 +04:00
BossMouseFire
ed5c549a0b lab5 2023-10-24 13:57:35 +04:00
65b47c7d0e Merge pull request 'kurmyza_pavel_lab_2 is ready' (#77) from kurmyza_pavel_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/77
2023-10-24 12:47:55 +04:00
f7af263316 Merge pull request 'belyaeva lab2 ready' (#68) from belyaeva_ekaterina_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/68
2023-10-24 12:32:43 +04:00
c45de91019 Merge pull request 'kurmyza_pavel_lab_1 is ready' (#75) from kurmyza_pavel_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/75
2023-10-24 11:36:28 +04:00
4fad5585c1 Merge pull request 'basharin_sevastyan_lab_1 is ready' (#73) from basharin_sevastyan_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/73
2023-10-24 11:36:11 +04:00
c9d485daca Merge pull request 'senkin_alexander_lab_1 is ready' (#66) from senkin_alexander_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/66
2023-10-24 11:27:59 +04:00
BossMouseFire
1638a80b4a lab4 2023-10-24 01:14:04 +04:00
6a9602359c kurmyza_pavel_lab_3 is ready 2023-10-23 00:34:57 +04:00
cee99b90a5 lab5 done 2023-10-22 21:41:29 +04:00
bb7b8e6ac0 lab4 done 2023-10-22 20:34:25 +04:00
18ea7ee729 Седьмая лабораторная 2023-10-22 20:09:37 +04:00
200d8dee7e kurmyza_pavel_lab_2 is ready 2023-10-22 19:15:28 +04:00
4e1980e638 lab3 done 2023-10-22 18:42:36 +04:00
a43eb72079 kurmyza_pavel_lab_1 is ready 2023-10-22 16:37:16 +04:00
BossMouseFire
464b437c69 lab3 2023-10-22 11:51:04 +04:00
0b422e70f9 basharin_sevastyan_lab_1 is ready 2023-10-20 22:11:35 +04:00
b0accdaf06 Шестая лабораторная готова 2023-10-20 18:59:51 +04:00
Svetlnkk
716e7b7ee6 zavrazhnova_svetlana_lab_5 is ready 2023-10-20 17:51:44 +04:00
145b7336b8 belyaeva lab2 ready 2023-10-20 16:12:55 +04:00
bea977d84c Lab1 2023-10-19 23:39:38 +04:00
Svetlnkk
1e03e8b1d2 zavrazhnova_svetlana_lab_4 is ready 2023-10-19 21:51:39 +04:00
ad5ed23a4c zhukova_alina_lab_1 is ready 2023-10-18 20:09:27 +04:00
vladg
1e1a73de10 gusev_vladislav_lab_4 is ready 2023-10-18 14:36:57 +04:00
vladg
226dd4efe9 gusev_vladislav_lab_3 is ready 2023-10-18 13:48:11 +04:00
vladg
c0217ad0d3 gusev_vladislav_lab_3 is ready 2023-10-18 13:47:11 +04:00
vladg
caab9f2f8b gusev_vladislav_lab_3 is ready 2023-10-18 13:46:28 +04:00
vladg
d2580ffa9e gusev_vladislav_lab_3 is ready 2023-10-18 13:14:11 +04:00
a98d914e7c Merge pull request 'arutunyan_dmitry_lab_6 is ready' (#59) from arutunyan_dmitry_lab_6 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/59
2023-10-17 17:34:32 +04:00
a4985e4d76 Merge pull request 'antonov_dmitry_lab_7' (#43) from antonov_dmitry_lab_7 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/43
2023-10-17 17:34:01 +04:00
3bb04b059b Merge pull request 'alexandrov_dmitrii_lab_5 is ready' (#51) from alexandrov_dmitrii_lab_5 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/51
2023-10-17 17:33:26 +04:00
a9e1145b0e Merge pull request 'arutunyan_dmitry_lab_5' (#56) from arutunyan_dmitry_lab_5 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/56
2023-10-17 17:33:06 +04:00
f44ba0d0a2 Merge pull request 'alexandrov_dmitrii_lab_4 ready' (#44) from alexandrov_dmitrii_lab_4 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/44
2023-10-17 17:32:38 +04:00
ccf3bfb561 Merge pull request 'arutunyan_dmitry_lab_4 is ready' (#55) from arutunyan_dmitry_lab_4 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/55
2023-10-17 17:32:23 +04:00
4f349a1d49 Merge pull request 'madyshev_egor_lab_4 is ready' (#58) from madyshev_egor_lab_4 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/58
2023-10-17 17:32:02 +04:00
f8075403a3 Merge pull request 'madyshev_egor_lab_3 is ready' (#57) from madyshev_egor_lab_3 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/57
2023-10-17 17:27:54 +04:00
c20695af79 Merge pull request 'arutunyan_dmitry_lab_3 is ready' (#54) from arutunyan_dmitry_lab_3 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/54
2023-10-17 17:27:35 +04:00
33dba33cc4 Merge pull request 'lipatov_ilya_lab_3' (#47) from lipatov_ilya_lab_3 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/47
2023-10-17 17:26:20 +04:00
41e0e8598f Merge pull request 'gordeeva_anna_lab_2' (#42) from gordeeva_anna_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/42
2023-10-17 17:25:29 +04:00
53a25975f9 Merge pull request 'lipatov_ilya_lab_2' (#46) from lipatov_ilya_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/46
2023-10-17 17:25:09 +04:00
5e00a83340 Merge pull request 'abanin_daniil_lab_2' (#50) from abanin_daniil_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/50
2023-10-17 17:21:19 +04:00
2239c15572 Merge pull request 'ilbekov_dmitriy_lab_2' (#52) from ilbekov_dmitriy_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/52
2023-10-17 17:20:59 +04:00
07333219ed Merge pull request 'arutunyan_dmitry_lab_2 is ready' (#41) from arutunyan_dmitry_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/41
2023-10-17 17:20:37 +04:00
5891b16f9d Merge pull request 'sergeev_evgenii_lab_1_ready' (#53) from sergeev_evgenii_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/53
2023-10-17 17:19:58 +04:00
81874f0f84 Merge pull request 'abanin_daniil_lab_1' (#48) from abanin_daniil_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/48
2023-10-17 17:18:46 +04:00
ce6105bee6 Merge pull request 'ilbekov_dmitriy_lab_1' (#49) from ilbekov_dmitriy_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/49
2023-10-17 17:18:26 +04:00
ca3b734361 arutunyan_dmitry_lab_6 is ready 2023-10-17 16:16:59 +04:00
2f1d67dc8f Merge pull request 'savenkov_alexander_lab_2 is done' (#39) from savenkov_alexander_lab_2 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/39
2023-10-16 12:10:31 +04:00
b9ec1fd145 Merge pull request 'savenkov_alexander_lab_1 is done' (#38) from savenkov_alexander_lab_1 into main
Reviewed-on: http://student.git.athene.tech/Alexey/IIS_2023_1/pulls/38
2023-10-16 11:50:21 +04:00
f84f7abaa9 arutunyan_dmitry_lab_5 is ready 2023-10-16 01:23:28 +04:00
5445cef67d arutunyan_dmitry_lab_1 is ready 2023-10-16 01:21:35 +04:00
b967af636c arutunyan_dmitry_lab_4 is ready 2023-10-16 01:19:01 +04:00
ad60c6221e arutunyan_dmitry_lab_3 is ready 2023-10-16 01:16:02 +04:00
Евгений Сергеев
8942f824d5 lab1 is done 2023-10-16 00:55:14 +04:00
106e02f76b lab2 done 2023-10-15 21:40:08 +04:00
81479f5221 Пятая лабораторная готова 2023-10-15 20:20:22 +04:00
BossMouseFire
abd650a641 Lab2 2023-10-15 19:33:03 +04:00
15936c6996 lab1 done 2023-10-15 19:15:47 +04:00
BossMouseFire
c03b5e3a94 Lab1 2023-10-15 17:58:47 +04:00
16db685d3d lipatov_ilya_lab_3 2023-10-15 17:18:00 +04:00
84fe84a15a lipatov_ilya_lab_2 2023-10-15 13:15:18 +04:00
7ccd400417 Четвёртая лабораторная готова 2023-10-14 19:48:18 +04:00
DmitriyAntonov
c15ab42cd4 реади3 2023-10-14 14:43:47 +04:00
5eb35fe26d itog 2023-10-14 14:26:32 +04:00
DmitriyAntonov
ef485bf514 реади2 2023-10-12 21:20:23 +04:00
DmitriyAntonov
3a868e5545 реади1 2023-10-12 21:19:26 +04:00
fc2fe74052 arutunyan_dmitry_lab_2 is ready 2023-10-12 20:01:33 +04:00
35826f2461 savenkov_alexander_lab_2 is done 2023-10-12 15:29:03 +04:00
7781a379c3 savenkov_alexander_lab_2 is done 2023-10-12 15:28:53 +04:00
adca415462 savenkov_alexander_lab_1 is done 2023-10-12 15:17:22 +04:00
72507eb3af madyshev_egor_lab_4 is ready 2023-10-09 10:22:50 +04:00
516c7aea4f madyshev_egor_lab_3 is ready 2023-10-09 10:18:50 +04:00
Евгений Сергеев
f11ba4d365 init 2023-09-21 20:15:20 +04:00
280 changed files with 605881 additions and 13 deletions

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## 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**
![Lin](lin_reg.jpg)
![Pol](pol_reg.jpg)
![Greb](greb_reg.jpg)

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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()

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## 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:
![Result](result.png)

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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)

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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()

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## 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
![Result](result.png)

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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))

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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
1 Loan_ID Gender Married Dependents Education Self_Employed ApplicantIncome CoapplicantIncome LoanAmount Loan_Amount_Term Credit_History Property_Area Loan_Status
2 LP001002 Male No 0 1 No 5849 0.0 360.0 1.0 0 Y 0.0
3 LP001003 Male Yes 1 1 No 4583 1508.0 128.0 360.0 1 Rural 0.0
4 LP001005 Male Yes 0 1 Yes 3000 0.0 66.0 360.0 1 Urban 1.0
5 LP001006 Male Yes 0 0 No 2583 2358.0 120.0 360.0 1 Urban 1.0
6 LP001008 Male No 0 1 No 6000 0.0 141.0 360.0 1 Urban 1.0
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495 LP002582 Female No 0 0 Yes 17263 0.0 225.0 360.0 1 Semiurban 1.0
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509 LP002625 No 0 1 No 3583 0.0 96.0 360.0 1 Urban 0.0
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527 LP002699 Male Yes 2 1 Yes 17500 0.0 400.0 360.0 1 Rural 1.0
528 LP002705 Male Yes 0 1 No 3775 0.0 110.0 360.0 1 Semiurban 1.0
529 LP002706 Male Yes 1 0 No 5285 1430.0 161.0 360.0 0 Semiurban 1.0
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534 LP002723 Male No 2 1 No 3588 0.0 110.0 360.0 0 Rural 0.0
535 LP002729 Male No 1 1 No 11250 0.0 196.0 360.0 0 Semiurban 0.0
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537 LP002732 Male No 0 0 2550 2042.0 126.0 360.0 1 Rural 1.0
538 LP002734 Male Yes 0 1 No 6133 3906.0 324.0 360.0 1 Urban 1.0
539 LP002738 Male No 2 1 No 3617 0.0 107.0 360.0 1 Semiurban 1.0
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541 LP002740 Male Yes 3+ 1 No 6417 0.0 157.0 180.0 1 Rural 1.0
542 LP002741 Female Yes 1 1 No 4608 2845.0 140.0 180.0 1 Semiurban 1.0
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548 LP002768 Male No 0 0 No 3358 0.0 80.0 36.0 1 Semiurban 0.0
549 LP002772 Male No 0 1 No 2526 1783.0 145.0 360.0 1 Rural 1.0
550 LP002776 Female No 0 1 No 5000 0.0 103.0 360.0 0 Semiurban 0.0
551 LP002777 Male Yes 0 1 No 2785 2016.0 110.0 360.0 1 Rural 1.0
552 LP002778 Male Yes 2 1 Yes 6633 0.0 0.0 360.0 0 Rural 0.0
553 LP002784 Male Yes 1 0 No 2492 2375.0 0.0 360.0 1 Rural 1.0
554 LP002785 Male Yes 1 1 No 3333 3250.0 158.0 360.0 1 Urban 1.0
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556 LP002789 Male Yes 0 1 No 3593 4266.0 132.0 180.0 0 Rural 0.0
557 LP002792 Male Yes 1 1 No 5468 1032.0 26.0 360.0 1 Semiurban 1.0
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559 LP002795 Male Yes 3+ 1 Yes 10139 0.0 260.0 360.0 1 Semiurban 1.0
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569 LP002837 Male Yes 3+ 1 No 3400 2500.0 123.0 360.0 0 Rural 0.0
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571 LP002841 Male Yes 0 1 No 3166 2064.0 104.0 360.0 0 Urban 0.0
572 LP002842 Male Yes 1 1 No 3417 1750.0 186.0 360.0 1 Urban 1.0
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574 LP002855 Male Yes 2 1 No 16666 0.0 275.0 360.0 1 Urban 1.0
575 LP002862 Male Yes 2 0 No 6125 1625.0 187.0 480.0 1 Semiurban 0.0
576 LP002863 Male Yes 3+ 1 No 6406 0.0 150.0 360.0 1 Semiurban 0.0
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578 LP002872 Yes 0 1 No 3087 2210.0 136.0 360.0 0 Semiurban 0.0
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580 LP002877 Male Yes 1 1 No 1782 2232.0 107.0 360.0 1 Rural 1.0
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582 LP002892 Male Yes 2 1 No 6540 0.0 205.0 360.0 1 Semiurban 1.0
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584 LP002894 Female Yes 0 1 No 3166 0.0 36.0 360.0 1 Semiurban 1.0
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586 LP002911 Male Yes 1 1 No 2787 1917.0 146.0 360.0 0 Rural 0.0
587 LP002912 Male Yes 1 1 No 4283 3000.0 172.0 84.0 1 Rural 0.0
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591 LP002926 Male Yes 2 1 Yes 2726 0.0 106.0 360.0 0 Semiurban 0.0
592 LP002928 Male Yes 0 1 No 3000 3416.0 56.0 180.0 1 Semiurban 1.0
593 LP002931 Male Yes 2 1 Yes 6000 0.0 205.0 240.0 1 Semiurban 0.0
594 LP002933 No 3+ 1 Yes 9357 0.0 292.0 360.0 1 Semiurban 1.0
595 LP002936 Male Yes 0 1 No 3859 3300.0 142.0 180.0 1 Rural 1.0
596 LP002938 Male Yes 0 1 Yes 16120 0.0 260.0 360.0 1 Urban 1.0
597 LP002940 Male No 0 0 No 3833 0.0 110.0 360.0 1 Rural 1.0
598 LP002941 Male Yes 2 0 Yes 6383 1000.0 187.0 360.0 1 Rural 0.0
599 LP002943 Male No 1 No 2987 0.0 88.0 360.0 0 Semiurban 0.0
600 LP002945 Male Yes 0 1 Yes 9963 0.0 180.0 360.0 1 Rural 1.0
601 LP002948 Male Yes 2 1 No 5780 0.0 192.0 360.0 1 Urban 1.0
602 LP002949 Female No 3+ 1 416 41667.0 350.0 180.0 0 Urban 0.0
603 LP002950 Male Yes 0 0 2894 2792.0 155.0 360.0 1 Rural 1.0
604 LP002953 Male Yes 3+ 1 No 5703 0.0 128.0 360.0 1 Urban 1.0
605 LP002958 Male No 0 1 No 3676 4301.0 172.0 360.0 1 Rural 1.0
606 LP002959 Female Yes 1 1 No 12000 0.0 496.0 360.0 1 Semiurban 1.0
607 LP002960 Male Yes 0 0 No 2400 3800.0 0.0 180.0 1 Urban 0.0
608 LP002961 Male Yes 1 1 No 3400 2500.0 173.0 360.0 1 Semiurban 1.0
609 LP002964 Male Yes 2 0 No 3987 1411.0 157.0 360.0 1 Rural 1.0
610 LP002974 Male Yes 0 1 No 3232 1950.0 108.0 360.0 1 Rural 1.0
611 LP002978 Female No 0 1 No 2900 0.0 71.0 360.0 1 Rural 1.0
612 LP002979 Male Yes 3+ 1 No 4106 0.0 40.0 180.0 1 Rural 1.0
613 LP002983 Male Yes 1 1 No 8072 240.0 253.0 360.0 1 Urban 1.0
614 LP002984 Male Yes 2 1 No 7583 0.0 187.0 360.0 1 Urban 1.0
615 LP002990 Female No 0 1 Yes 4583 0.0 133.0 360.0 0 Semiurban 0.0

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## 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
![Result](result.png)
По результатам кластеризации дендрограммой видно, что было проведено эффективное разбиение данных. На диаграмме показаны различные группы заявителей по рискам выдачи кредита

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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()

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@@ -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
1 Loan_ID Gender Married Dependents Education Self_Employed ApplicantIncome CoapplicantIncome LoanAmount Loan_Amount_Term Credit_History Property_Area Loan_Status
2 LP001002 Male No 0 1 0.0 5849 0.0 360.0 1.0 0 Y 0.0
3 LP001003 Male Yes 1 1 0.0 4583 1508.0 128.0 360.0 1 Rural 0.0
4 LP001005 Male Yes 0 1 1.0 3000 0.0 66.0 360.0 1 Urban 1.0
5 LP001006 Male Yes 0 0 0.0 2583 2358.0 120.0 360.0 1 Urban 1.0
6 LP001008 Male No 0 1 0.0 6000 0.0 141.0 360.0 1 Urban 1.0
7 LP001011 Male Yes 2 1 1.0 5417 4196.0 267.0 360.0 1 Urban 1.0
8 LP001013 Male Yes 0 0 0.0 2333 1516.0 95.0 360.0 1 Urban 1.0
9 LP001014 Male Yes 3+ 1 0.0 3036 2504.0 158.0 360.0 0 Semiurban 0.0
10 LP001018 Male Yes 2 1 0.0 4006 1526.0 168.0 360.0 1 Urban 1.0
11 LP001020 Male Yes 1 1 0.0 12841 10968.0 349.0 360.0 1 Semiurban 0.0
12 LP001024 Male Yes 2 1 0.0 3200 700.0 70.0 360.0 1 Urban 1.0
13 LP001027 Male Yes 2 1 0.0 2500 1840.0 109.0 360.0 1 Urban 1.0
14 LP001028 Male Yes 2 1 0.0 3073 8106.0 200.0 360.0 1 Urban 1.0
15 LP001029 Male No 0 1 0.0 1853 2840.0 114.0 360.0 1 Rural 0.0
16 LP001030 Male Yes 2 1 0.0 1299 1086.0 17.0 120.0 1 Urban 1.0
17 LP001032 Male No 0 1 0.0 4950 0.0 125.0 360.0 1 Urban 1.0
18 LP001034 Male No 1 0 0.0 3596 0.0 100.0 240.0 0 Urban 1.0
19 LP001036 Female No 0 1 0.0 3510 0.0 76.0 360.0 0 Urban 0.0
20 LP001038 Male Yes 0 0 0.0 4887 0.0 133.0 360.0 1 Rural 0.0
21 LP001041 Male Yes 0 1 0.0 2600 3500.0 115.0 1 Urban 1.0
22 LP001043 Male Yes 0 0 0.0 7660 0.0 104.0 360.0 0 Urban 0.0
23 LP001046 Male Yes 1 1 0.0 5955 5625.0 315.0 360.0 1 Urban 1.0
24 LP001047 Male Yes 0 0 0.0 2600 1911.0 116.0 360.0 0 Semiurban 0.0
25 LP001050 Yes 2 0 0.0 3365 1917.0 112.0 360.0 0 Rural 0.0
26 LP001052 Male Yes 1 1 0.0 3717 2925.0 151.0 360.0 0 Semiurban 0.0
27 LP001066 Male Yes 0 1 1.0 9560 0.0 191.0 360.0 1 Semiurban 1.0
28 LP001068 Male Yes 0 1 0.0 2799 2253.0 122.0 360.0 1 Semiurban 1.0
29 LP001073 Male Yes 2 0 0.0 4226 1040.0 110.0 360.0 1 Urban 1.0
30 LP001086 Male No 0 0 0.0 1442 0.0 35.0 360.0 1 Urban 0.0
31 LP001087 Female No 2 1 0.0 3750 2083.0 120.0 360.0 1 Semiurban 1.0
32 LP001091 Male Yes 1 1 0.0 4166 3369.0 201.0 360.0 0 Urban 0.0
33 LP001095 Male No 0 1 0.0 3167 0.0 74.0 360.0 1 Urban 0.0
34 LP001097 Male No 1 1 1.0 4692 0.0 106.0 360.0 1 Rural 0.0
35 LP001098 Male Yes 0 1 0.0 3500 1667.0 114.0 360.0 1 Semiurban 1.0
36 LP001100 Male No 3+ 1 0.0 12500 3000.0 320.0 360.0 1 Rural 0.0
37 LP001106 Male Yes 0 1 0.0 2275 2067.0 0.0 360.0 1 Urban 1.0
38 LP001109 Male Yes 0 1 0.0 1828 1330.0 100.0 0 Urban 0.0
39 LP001112 Female Yes 0 1 0.0 3667 1459.0 144.0 360.0 1 Semiurban 1.0
40 LP001114 Male No 0 1 0.0 4166 7210.0 184.0 360.0 1 Urban 1.0
41 LP001116 Male No 0 0 0.0 3748 1668.0 110.0 360.0 1 Semiurban 1.0
42 LP001119 Male No 0 1 0.0 3600 0.0 80.0 360.0 1 Urban 0.0
43 LP001120 Male No 0 1 0.0 1800 1213.0 47.0 360.0 1 Urban 1.0
44 LP001123 Male Yes 0 1 0.0 2400 0.0 75.0 360.0 0 Urban 1.0
45 LP001131 Male Yes 0 1 0.0 3941 2336.0 134.0 360.0 1 Semiurban 1.0
46 LP001136 Male Yes 0 0 1.0 4695 0.0 96.0 1 Urban 1.0
47 LP001137 Female No 0 1 0.0 3410 0.0 88.0 1 Urban 1.0
48 LP001138 Male Yes 1 1 0.0 5649 0.0 44.0 360.0 1 Urban 1.0
49 LP001144 Male Yes 0 1 0.0 5821 0.0 144.0 360.0 1 Urban 1.0
50 LP001146 Female Yes 0 1 0.0 2645 3440.0 120.0 360.0 0 Urban 0.0
51 LP001151 Female No 0 1 0.0 4000 2275.0 144.0 360.0 1 Semiurban 1.0
52 LP001155 Female Yes 0 0 0.0 1928 1644.0 100.0 360.0 1 Semiurban 1.0
53 LP001157 Female No 0 1 0.0 3086 0.0 120.0 360.0 1 Semiurban 1.0
54 LP001164 Female No 0 1 0.0 4230 0.0 112.0 360.0 1 Semiurban 0.0
55 LP001179 Male Yes 2 1 0.0 4616 0.0 134.0 360.0 1 Urban 0.0
56 LP001186 Female Yes 1 1 1.0 11500 0.0 286.0 360.0 0 Urban 0.0
57 LP001194 Male Yes 2 1 0.0 2708 1167.0 97.0 360.0 1 Semiurban 1.0
58 LP001195 Male Yes 0 1 0.0 2132 1591.0 96.0 360.0 1 Semiurban 1.0
59 LP001197 Male Yes 0 1 0.0 3366 2200.0 135.0 360.0 1 Rural 0.0
60 LP001198 Male Yes 1 1 0.0 8080 2250.0 180.0 360.0 1 Urban 1.0
61 LP001199 Male Yes 2 0 0.0 3357 2859.0 144.0 360.0 1 Urban 1.0
62 LP001205 Male Yes 0 1 0.0 2500 3796.0 120.0 360.0 1 Urban 1.0
63 LP001206 Male Yes 3+ 1 0.0 3029 0.0 99.0 360.0 1 Urban 1.0
64 LP001207 Male Yes 0 0 1.0 2609 3449.0 165.0 180.0 0 Rural 0.0
65 LP001213 Male Yes 1 1 0.0 4945 0.0 0.0 360.0 0 Rural 0.0
66 LP001222 Female No 0 1 0.0 4166 0.0 116.0 360.0 0 Semiurban 0.0
67 LP001225 Male Yes 0 1 0.0 5726 4595.0 258.0 360.0 1 Semiurban 0.0
68 LP001228 Male No 0 0 0.0 3200 2254.0 126.0 180.0 0 Urban 0.0
69 LP001233 Male Yes 1 1 0.0 10750 0.0 312.0 360.0 1 Urban 1.0
70 LP001238 Male Yes 3+ 0 1.0 7100 0.0 125.0 60.0 1 Urban 1.0
71 LP001241 Female No 0 1 0.0 4300 0.0 136.0 360.0 0 Semiurban 0.0
72 LP001243 Male Yes 0 1 0.0 3208 3066.0 172.0 360.0 1 Urban 1.0
73 LP001245 Male Yes 2 0 1.0 1875 1875.0 97.0 360.0 1 Semiurban 1.0
74 LP001248 Male No 0 1 0.0 3500 0.0 81.0 300.0 1 Semiurban 1.0
75 LP001250 Male Yes 3+ 0 0.0 4755 0.0 95.0 0 Semiurban 0.0
76 LP001253 Male Yes 3+ 1 1.0 5266 1774.0 187.0 360.0 1 Semiurban 1.0
77 LP001255 Male No 0 1 0.0 3750 0.0 113.0 480.0 1 Urban 0.0
78 LP001256 Male No 0 1 0.0 3750 4750.0 176.0 360.0 1 Urban 0.0
79 LP001259 Male Yes 1 1 1.0 1000 3022.0 110.0 360.0 1 Urban 0.0
80 LP001263 Male Yes 3+ 1 0.0 3167 4000.0 180.0 300.0 0 Semiurban 0.0
81 LP001264 Male Yes 3+ 0 1.0 3333 2166.0 130.0 360.0 0 Semiurban 1.0
82 LP001265 Female No 0 1 0.0 3846 0.0 111.0 360.0 1 Semiurban 1.0
83 LP001266 Male Yes 1 1 1.0 2395 0.0 0.0 360.0 1 Semiurban 1.0
84 LP001267 Female Yes 2 1 0.0 1378 1881.0 167.0 360.0 1 Urban 0.0
85 LP001273 Male Yes 0 1 0.0 6000 2250.0 265.0 360.0 0 Semiurban 0.0
86 LP001275 Male Yes 1 1 0.0 3988 0.0 50.0 240.0 1 Urban 1.0
87 LP001279 Male No 0 1 0.0 2366 2531.0 136.0 360.0 1 Semiurban 1.0
88 LP001280 Male Yes 2 0 0.0 3333 2000.0 99.0 360.0 0 Semiurban 1.0
89 LP001282 Male Yes 0 1 0.0 2500 2118.0 104.0 360.0 1 Semiurban 1.0
90 LP001289 Male No 0 1 0.0 8566 0.0 210.0 360.0 1 Urban 1.0
91 LP001310 Male Yes 0 1 0.0 5695 4167.0 175.0 360.0 1 Semiurban 1.0
92 LP001316 Male Yes 0 1 0.0 2958 2900.0 131.0 360.0 1 Semiurban 1.0
93 LP001318 Male Yes 2 1 0.0 6250 5654.0 188.0 180.0 1 Semiurban 1.0
94 LP001319 Male Yes 2 0 0.0 3273 1820.0 81.0 360.0 1 Urban 1.0
95 LP001322 Male No 0 1 0.0 4133 0.0 122.0 360.0 1 Semiurban 1.0
96 LP001325 Male No 0 0 0.0 3620 0.0 25.0 120.0 1 Semiurban 1.0
97 LP001326 Male No 0 1 0.0 6782 0.0 0.0 360.0 0 Urban 0.0
98 LP001327 Female Yes 0 1 0.0 2484 2302.0 137.0 360.0 1 Semiurban 1.0
99 LP001333 Male Yes 0 1 0.0 1977 997.0 50.0 360.0 1 Semiurban 1.0
100 LP001334 Male Yes 0 0 0.0 4188 0.0 115.0 180.0 1 Semiurban 1.0
101 LP001343 Male Yes 0 1 0.0 1759 3541.0 131.0 360.0 1 Semiurban 1.0
102 LP001345 Male Yes 2 0 0.0 4288 3263.0 133.0 180.0 1 Urban 1.0
103 LP001349 Male No 0 1 0.0 4843 3806.0 151.0 360.0 1 Semiurban 1.0
104 LP001350 Male Yes 1 0.0 13650 0.0 0.0 360.0 1 Urban 1.0
105 LP001356 Male Yes 0 1 0.0 4652 3583.0 0.0 360.0 1 Semiurban 1.0
106 LP001357 Male 1 0.0 3816 754.0 160.0 360.0 1 Urban 1.0
107 LP001367 Male Yes 1 1 0.0 3052 1030.0 100.0 360.0 1 Urban 1.0
108 LP001369 Male Yes 2 1 0.0 11417 1126.0 225.0 360.0 1 Urban 1.0
109 LP001370 Male No 0 0 0.0 7333 0.0 120.0 360.0 1 Rural 0.0
110 LP001379 Male Yes 2 1 0.0 3800 3600.0 216.0 360.0 0 Urban 0.0
111 LP001384 Male Yes 3+ 0 0.0 2071 754.0 94.0 480.0 1 Semiurban 1.0
112 LP001385 Male No 0 1 0.0 5316 0.0 136.0 360.0 1 Urban 1.0
113 LP001387 Female Yes 0 1 0.0 2929 2333.0 139.0 360.0 1 Semiurban 1.0
114 LP001391 Male Yes 0 0 0.0 3572 4114.0 152.0 0 Rural 0.0
115 LP001392 Female No 1 1 1.0 7451 0.0 0.0 360.0 1 Semiurban 1.0
116 LP001398 Male No 0 1 0.0 5050 0.0 118.0 360.0 1 Semiurban 1.0
117 LP001401 Male Yes 1 1 0.0 14583 0.0 185.0 180.0 1 Rural 1.0
118 LP001404 Female Yes 0 1 0.0 3167 2283.0 154.0 360.0 1 Semiurban 1.0
119 LP001405 Male Yes 1 1 0.0 2214 1398.0 85.0 360.0 0 Urban 1.0
120 LP001421 Male Yes 0 1 0.0 5568 2142.0 175.0 360.0 1 Rural 0.0
121 LP001422 Female No 0 1 0.0 10408 0.0 259.0 360.0 1 Urban 1.0
122 LP001426 Male Yes 1 0.0 5667 2667.0 180.0 360.0 1 Rural 1.0
123 LP001430 Female No 0 1 0.0 4166 0.0 44.0 360.0 1 Semiurban 1.0
124 LP001431 Female No 0 1 0.0 2137 8980.0 137.0 360.0 0 Semiurban 1.0
125 LP001432 Male Yes 2 1 0.0 2957 0.0 81.0 360.0 1 Semiurban 1.0
126 LP001439 Male Yes 0 0 0.0 4300 2014.0 194.0 360.0 1 Rural 1.0
127 LP001443 Female No 0 1 0.0 3692 0.0 93.0 360.0 0 Rural 1.0
128 LP001448 Yes 3+ 1 0.0 23803 0.0 370.0 360.0 1 Rural 1.0
129 LP001449 Male No 0 1 0.0 3865 1640.0 0.0 360.0 1 Rural 1.0
130 LP001451 Male Yes 1 1 1.0 10513 3850.0 160.0 180.0 0 Urban 0.0
131 LP001465 Male Yes 0 1 0.0 6080 2569.0 182.0 360.0 0 Rural 0.0
132 LP001469 Male No 0 1 1.0 20166 0.0 650.0 480.0 0 Urban 1.0
133 LP001473 Male No 0 1 0.0 2014 1929.0 74.0 360.0 1 Urban 1.0
134 LP001478 Male No 0 1 0.0 2718 0.0 70.0 360.0 1 Semiurban 1.0
135 LP001482 Male Yes 0 1 1.0 3459 0.0 25.0 120.0 1 Semiurban 1.0
136 LP001487 Male No 0 1 0.0 4895 0.0 102.0 360.0 1 Semiurban 1.0
137 LP001488 Male Yes 3+ 1 0.0 4000 7750.0 290.0 360.0 1 Semiurban 0.0
138 LP001489 Female Yes 0 1 0.0 4583 0.0 84.0 360.0 1 Rural 0.0
139 LP001491 Male Yes 2 1 1.0 3316 3500.0 88.0 360.0 1 Urban 1.0
140 LP001492 Male No 0 1 0.0 14999 0.0 242.0 360.0 0 Semiurban 0.0
141 LP001493 Male Yes 2 0 0.0 4200 1430.0 129.0 360.0 1 Rural 0.0
142 LP001497 Male Yes 2 1 0.0 5042 2083.0 185.0 360.0 1 Rural 0.0
143 LP001498 Male No 0 1 0.0 5417 0.0 168.0 360.0 1 Urban 1.0
144 LP001504 Male No 0 1 1.0 6950 0.0 175.0 180.0 1 Semiurban 1.0
145 LP001507 Male Yes 0 1 0.0 2698 2034.0 122.0 360.0 1 Semiurban 1.0
146 LP001508 Male Yes 2 1 0.0 11757 0.0 187.0 180.0 1 Urban 1.0
147 LP001514 Female Yes 0 1 0.0 2330 4486.0 100.0 360.0 1 Semiurban 1.0
148 LP001516 Female Yes 2 1 0.0 14866 0.0 70.0 360.0 1 Urban 1.0
149 LP001518 Male Yes 1 1 0.0 1538 1425.0 30.0 360.0 1 Urban 1.0
150 LP001519 Female No 0 1 0.0 10000 1666.0 225.0 360.0 1 Rural 0.0
151 LP001520 Male Yes 0 1 0.0 4860 830.0 125.0 360.0 1 Semiurban 1.0
152 LP001528 Male No 0 1 0.0 6277 0.0 118.0 360.0 0 Rural 0.0
153 LP001529 Male Yes 0 1 1.0 2577 3750.0 152.0 360.0 1 Rural 1.0
154 LP001531 Male No 0 1 0.0 9166 0.0 244.0 360.0 1 Urban 0.0
155 LP001532 Male Yes 2 0 0.0 2281 0.0 113.0 360.0 1 Rural 0.0
156 LP001535 Male No 0 1 0.0 3254 0.0 50.0 360.0 1 Urban 1.0
157 LP001536 Male Yes 3+ 1 0.0 39999 0.0 600.0 180.0 0 Semiurban 1.0
158 LP001541 Male Yes 1 1 0.0 6000 0.0 160.0 360.0 0 Rural 1.0
159 LP001543 Male Yes 1 1 0.0 9538 0.0 187.0 360.0 1 Urban 1.0
160 LP001546 Male No 0 1 0.0 2980 2083.0 120.0 360.0 1 Rural 1.0
161 LP001552 Male Yes 0 1 0.0 4583 5625.0 255.0 360.0 1 Semiurban 1.0
162 LP001560 Male Yes 0 0 0.0 1863 1041.0 98.0 360.0 1 Semiurban 1.0
163 LP001562 Male Yes 0 1 0.0 7933 0.0 275.0 360.0 1 Urban 0.0
164 LP001565 Male Yes 1 1 0.0 3089 1280.0 121.0 360.0 0 Semiurban 0.0
165 LP001570 Male Yes 2 1 0.0 4167 1447.0 158.0 360.0 1 Rural 1.0
166 LP001572 Male Yes 0 1 0.0 9323 0.0 75.0 180.0 1 Urban 1.0
167 LP001574 Male Yes 0 1 0.0 3707 3166.0 182.0 1 Rural 1.0
168 LP001577 Female Yes 0 1 0.0 4583 0.0 112.0 360.0 1 Rural 0.0
169 LP001578 Male Yes 0 1 0.0 2439 3333.0 129.0 360.0 1 Rural 1.0
170 LP001579 Male No 0 1 0.0 2237 0.0 63.0 480.0 0 Semiurban 0.0
171 LP001580 Male Yes 2 1 0.0 8000 0.0 200.0 360.0 1 Semiurban 1.0
172 LP001581 Male Yes 0 0 0.0 1820 1769.0 95.0 360.0 1 Rural 1.0
173 LP001585 Yes 3+ 1 0.0 51763 0.0 700.0 300.0 1 Urban 1.0
174 LP001586 Male Yes 3+ 0 0.0 3522 0.0 81.0 180.0 1 Rural 0.0
175 LP001594 Male Yes 0 1 0.0 5708 5625.0 187.0 360.0 1 Semiurban 1.0
176 LP001603 Male Yes 0 0 1.0 4344 736.0 87.0 360.0 1 Semiurban 0.0
177 LP001606 Male Yes 0 1 0.0 3497 1964.0 116.0 360.0 1 Rural 1.0
178 LP001608 Male Yes 2 1 0.0 2045 1619.0 101.0 360.0 1 Rural 1.0
179 LP001610 Male Yes 3+ 1 0.0 5516 11300.0 495.0 360.0 0 Semiurban 0.0
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519 LP002682 Male Yes 0 0.0 3074 1800.0 123.0 360.0 0 Semiurban 0.0
520 LP002683 Male No 0 1 0.0 4683 1915.0 185.0 360.0 1 Semiurban 0.0
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561 LP002804 Female Yes 0 1 0.0 4180 2306.0 182.0 360.0 1 Semiurban 1.0
562 LP002807 Male Yes 2 0 0.0 3675 242.0 108.0 360.0 1 Semiurban 1.0
563 LP002813 Female Yes 1 1 1.0 19484 0.0 600.0 360.0 1 Semiurban 1.0
564 LP002820 Male Yes 0 1 0.0 5923 2054.0 211.0 360.0 1 Rural 1.0
565 LP002821 Male No 0 0 1.0 5800 0.0 132.0 360.0 1 Semiurban 1.0
566 LP002832 Male Yes 2 1 0.0 8799 0.0 258.0 360.0 0 Urban 0.0
567 LP002833 Male Yes 0 0 0.0 4467 0.0 120.0 360.0 0 Rural 1.0
568 LP002836 Male No 0 1 0.0 3333 0.0 70.0 360.0 1 Urban 1.0
569 LP002837 Male Yes 3+ 1 0.0 3400 2500.0 123.0 360.0 0 Rural 0.0
570 LP002840 Female No 0 1 0.0 2378 0.0 9.0 360.0 1 Urban 0.0
571 LP002841 Male Yes 0 1 0.0 3166 2064.0 104.0 360.0 0 Urban 0.0
572 LP002842 Male Yes 1 1 0.0 3417 1750.0 186.0 360.0 1 Urban 1.0
573 LP002847 Male Yes 1 0.0 5116 1451.0 165.0 360.0 0 Urban 0.0
574 LP002855 Male Yes 2 1 0.0 16666 0.0 275.0 360.0 1 Urban 1.0
575 LP002862 Male Yes 2 0 0.0 6125 1625.0 187.0 480.0 1 Semiurban 0.0
576 LP002863 Male Yes 3+ 1 0.0 6406 0.0 150.0 360.0 1 Semiurban 0.0
577 LP002868 Male Yes 2 1 0.0 3159 461.0 108.0 84.0 1 Urban 1.0
578 LP002872 Yes 0 1 0.0 3087 2210.0 136.0 360.0 0 Semiurban 0.0
579 LP002874 Male No 0 1 0.0 3229 2739.0 110.0 360.0 1 Urban 1.0
580 LP002877 Male Yes 1 1 0.0 1782 2232.0 107.0 360.0 1 Rural 1.0
581 LP002888 Male No 0 1 0.0 3182 2917.0 161.0 360.0 1 Urban 1.0
582 LP002892 Male Yes 2 1 0.0 6540 0.0 205.0 360.0 1 Semiurban 1.0
583 LP002893 Male No 0 1 0.0 1836 33837.0 90.0 360.0 1 Urban 0.0
584 LP002894 Female Yes 0 1 0.0 3166 0.0 36.0 360.0 1 Semiurban 1.0
585 LP002898 Male Yes 1 1 0.0 1880 0.0 61.0 360.0 0 Rural 0.0
586 LP002911 Male Yes 1 1 0.0 2787 1917.0 146.0 360.0 0 Rural 0.0
587 LP002912 Male Yes 1 1 0.0 4283 3000.0 172.0 84.0 1 Rural 0.0
588 LP002916 Male Yes 0 1 0.0 2297 1522.0 104.0 360.0 1 Urban 1.0
589 LP002917 Female No 0 0 0.0 2165 0.0 70.0 360.0 1 Semiurban 1.0
590 LP002925 No 0 1 0.0 4750 0.0 94.0 360.0 1 Semiurban 1.0
591 LP002926 Male Yes 2 1 1.0 2726 0.0 106.0 360.0 0 Semiurban 0.0
592 LP002928 Male Yes 0 1 0.0 3000 3416.0 56.0 180.0 1 Semiurban 1.0
593 LP002931 Male Yes 2 1 1.0 6000 0.0 205.0 240.0 1 Semiurban 0.0
594 LP002933 No 3+ 1 1.0 9357 0.0 292.0 360.0 1 Semiurban 1.0
595 LP002936 Male Yes 0 1 0.0 3859 3300.0 142.0 180.0 1 Rural 1.0
596 LP002938 Male Yes 0 1 1.0 16120 0.0 260.0 360.0 1 Urban 1.0
597 LP002940 Male No 0 0 0.0 3833 0.0 110.0 360.0 1 Rural 1.0
598 LP002941 Male Yes 2 0 1.0 6383 1000.0 187.0 360.0 1 Rural 0.0
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600 LP002945 Male Yes 0 1 1.0 9963 0.0 180.0 360.0 1 Rural 1.0
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## 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
![Result](grade_1.png)
![Result](result_1.png)
Но при увеличении объёма данных, алгоритм теряет свою эффективность
![Result](grade_2.png)
![Result](result_2.png)
Вывод: На малых объёмах данных алгоритм показывает свою эффективность. Но при большем объём стоит использовать другие методы для данного набора информации

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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()

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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
1 Loan_ID Gender Married Dependents Education Self_Employed ApplicantIncome CoapplicantIncome LoanAmount Loan_Amount_Term Credit_History Property_Area Loan_Status
2 LP001002 Male 0.0 0 1 0.0 5849 0.0 360.0 1.0 0 Y 0.0
3 LP001003 Male 1.0 1 1 0.0 4583 1508.0 128.0 360.0 1 Rural 0.0
4 LP001005 Male 1.0 0 1 1.0 3000 0.0 66.0 360.0 1 Urban 1.0
5 LP001006 Male 1.0 0 0 0.0 2583 2358.0 120.0 360.0 1 Urban 1.0
6 LP001008 Male 0.0 0 1 0.0 6000 0.0 141.0 360.0 1 Urban 1.0
7 LP001011 Male 1.0 2 1 1.0 5417 4196.0 267.0 360.0 1 Urban 1.0
8 LP001013 Male 1.0 0 0 0.0 2333 1516.0 95.0 360.0 1 Urban 1.0
9 LP001014 Male 1.0 3+ 1 0.0 3036 2504.0 158.0 360.0 0 Semiurban 0.0
10 LP001018 Male 1.0 2 1 0.0 4006 1526.0 168.0 360.0 1 Urban 1.0
11 LP001020 Male 1.0 1 1 0.0 12841 10968.0 349.0 360.0 1 Semiurban 0.0
12 LP001024 Male 1.0 2 1 0.0 3200 700.0 70.0 360.0 1 Urban 1.0
13 LP001027 Male 1.0 2 1 0.0 2500 1840.0 109.0 360.0 1 Urban 1.0
14 LP001028 Male 1.0 2 1 0.0 3073 8106.0 200.0 360.0 1 Urban 1.0
15 LP001029 Male 0.0 0 1 0.0 1853 2840.0 114.0 360.0 1 Rural 0.0
16 LP001030 Male 1.0 2 1 0.0 1299 1086.0 17.0 120.0 1 Urban 1.0
17 LP001032 Male 0.0 0 1 0.0 4950 0.0 125.0 360.0 1 Urban 1.0
18 LP001034 Male 0.0 1 0 0.0 3596 0.0 100.0 240.0 0 Urban 1.0
19 LP001036 Female 0.0 0 1 0.0 3510 0.0 76.0 360.0 0 Urban 0.0
20 LP001038 Male 1.0 0 0 0.0 4887 0.0 133.0 360.0 1 Rural 0.0
21 LP001041 Male 1.0 0 1 0.0 2600 3500.0 115.0 1 Urban 1.0
22 LP001043 Male 1.0 0 0 0.0 7660 0.0 104.0 360.0 0 Urban 0.0
23 LP001046 Male 1.0 1 1 0.0 5955 5625.0 315.0 360.0 1 Urban 1.0
24 LP001047 Male 1.0 0 0 0.0 2600 1911.0 116.0 360.0 0 Semiurban 0.0
25 LP001050 1.0 2 0 0.0 3365 1917.0 112.0 360.0 0 Rural 0.0
26 LP001052 Male 1.0 1 1 0.0 3717 2925.0 151.0 360.0 0 Semiurban 0.0
27 LP001066 Male 1.0 0 1 1.0 9560 0.0 191.0 360.0 1 Semiurban 1.0
28 LP001068 Male 1.0 0 1 0.0 2799 2253.0 122.0 360.0 1 Semiurban 1.0
29 LP001073 Male 1.0 2 0 0.0 4226 1040.0 110.0 360.0 1 Urban 1.0
30 LP001086 Male 0.0 0 0 0.0 1442 0.0 35.0 360.0 1 Urban 0.0
31 LP001087 Female 0.0 2 1 0.0 3750 2083.0 120.0 360.0 1 Semiurban 1.0
32 LP001091 Male 1.0 1 1 0.0 4166 3369.0 201.0 360.0 0 Urban 0.0
33 LP001095 Male 0.0 0 1 0.0 3167 0.0 74.0 360.0 1 Urban 0.0
34 LP001097 Male 0.0 1 1 1.0 4692 0.0 106.0 360.0 1 Rural 0.0
35 LP001098 Male 1.0 0 1 0.0 3500 1667.0 114.0 360.0 1 Semiurban 1.0
36 LP001100 Male 0.0 3+ 1 0.0 12500 3000.0 320.0 360.0 1 Rural 0.0
37 LP001106 Male 1.0 0 1 0.0 2275 2067.0 0.0 360.0 1 Urban 1.0
38 LP001109 Male 1.0 0 1 0.0 1828 1330.0 100.0 0 Urban 0.0
39 LP001112 Female 1.0 0 1 0.0 3667 1459.0 144.0 360.0 1 Semiurban 1.0
40 LP001114 Male 0.0 0 1 0.0 4166 7210.0 184.0 360.0 1 Urban 1.0
41 LP001116 Male 0.0 0 0 0.0 3748 1668.0 110.0 360.0 1 Semiurban 1.0
42 LP001119 Male 0.0 0 1 0.0 3600 0.0 80.0 360.0 1 Urban 0.0
43 LP001120 Male 0.0 0 1 0.0 1800 1213.0 47.0 360.0 1 Urban 1.0
44 LP001123 Male 1.0 0 1 0.0 2400 0.0 75.0 360.0 0 Urban 1.0
45 LP001131 Male 1.0 0 1 0.0 3941 2336.0 134.0 360.0 1 Semiurban 1.0
46 LP001136 Male 1.0 0 0 1.0 4695 0.0 96.0 1 Urban 1.0
47 LP001137 Female 0.0 0 1 0.0 3410 0.0 88.0 1 Urban 1.0
48 LP001138 Male 1.0 1 1 0.0 5649 0.0 44.0 360.0 1 Urban 1.0
49 LP001144 Male 1.0 0 1 0.0 5821 0.0 144.0 360.0 1 Urban 1.0
50 LP001146 Female 1.0 0 1 0.0 2645 3440.0 120.0 360.0 0 Urban 0.0
51 LP001151 Female 0.0 0 1 0.0 4000 2275.0 144.0 360.0 1 Semiurban 1.0
52 LP001155 Female 1.0 0 0 0.0 1928 1644.0 100.0 360.0 1 Semiurban 1.0
53 LP001157 Female 0.0 0 1 0.0 3086 0.0 120.0 360.0 1 Semiurban 1.0
54 LP001164 Female 0.0 0 1 0.0 4230 0.0 112.0 360.0 1 Semiurban 0.0
55 LP001179 Male 1.0 2 1 0.0 4616 0.0 134.0 360.0 1 Urban 0.0
56 LP001186 Female 1.0 1 1 1.0 11500 0.0 286.0 360.0 0 Urban 0.0
57 LP001194 Male 1.0 2 1 0.0 2708 1167.0 97.0 360.0 1 Semiurban 1.0
58 LP001195 Male 1.0 0 1 0.0 2132 1591.0 96.0 360.0 1 Semiurban 1.0
59 LP001197 Male 1.0 0 1 0.0 3366 2200.0 135.0 360.0 1 Rural 0.0
60 LP001198 Male 1.0 1 1 0.0 8080 2250.0 180.0 360.0 1 Urban 1.0
61 LP001199 Male 1.0 2 0 0.0 3357 2859.0 144.0 360.0 1 Urban 1.0
62 LP001205 Male 1.0 0 1 0.0 2500 3796.0 120.0 360.0 1 Urban 1.0
63 LP001206 Male 1.0 3+ 1 0.0 3029 0.0 99.0 360.0 1 Urban 1.0
64 LP001207 Male 1.0 0 0 1.0 2609 3449.0 165.0 180.0 0 Rural 0.0
65 LP001213 Male 1.0 1 1 0.0 4945 0.0 0.0 360.0 0 Rural 0.0
66 LP001222 Female 0.0 0 1 0.0 4166 0.0 116.0 360.0 0 Semiurban 0.0
67 LP001225 Male 1.0 0 1 0.0 5726 4595.0 258.0 360.0 1 Semiurban 0.0
68 LP001228 Male 0.0 0 0 0.0 3200 2254.0 126.0 180.0 0 Urban 0.0
69 LP001233 Male 1.0 1 1 0.0 10750 0.0 312.0 360.0 1 Urban 1.0
70 LP001238 Male 1.0 3+ 0 1.0 7100 0.0 125.0 60.0 1 Urban 1.0
71 LP001241 Female 0.0 0 1 0.0 4300 0.0 136.0 360.0 0 Semiurban 0.0
72 LP001243 Male 1.0 0 1 0.0 3208 3066.0 172.0 360.0 1 Urban 1.0
73 LP001245 Male 1.0 2 0 1.0 1875 1875.0 97.0 360.0 1 Semiurban 1.0
74 LP001248 Male 0.0 0 1 0.0 3500 0.0 81.0 300.0 1 Semiurban 1.0
75 LP001250 Male 1.0 3+ 0 0.0 4755 0.0 95.0 0 Semiurban 0.0
76 LP001253 Male 1.0 3+ 1 1.0 5266 1774.0 187.0 360.0 1 Semiurban 1.0
77 LP001255 Male 0.0 0 1 0.0 3750 0.0 113.0 480.0 1 Urban 0.0
78 LP001256 Male 0.0 0 1 0.0 3750 4750.0 176.0 360.0 1 Urban 0.0
79 LP001259 Male 1.0 1 1 1.0 1000 3022.0 110.0 360.0 1 Urban 0.0
80 LP001263 Male 1.0 3+ 1 0.0 3167 4000.0 180.0 300.0 0 Semiurban 0.0
81 LP001264 Male 1.0 3+ 0 1.0 3333 2166.0 130.0 360.0 0 Semiurban 1.0
82 LP001265 Female 0.0 0 1 0.0 3846 0.0 111.0 360.0 1 Semiurban 1.0
83 LP001266 Male 1.0 1 1 1.0 2395 0.0 0.0 360.0 1 Semiurban 1.0
84 LP001267 Female 1.0 2 1 0.0 1378 1881.0 167.0 360.0 1 Urban 0.0
85 LP001273 Male 1.0 0 1 0.0 6000 2250.0 265.0 360.0 0 Semiurban 0.0
86 LP001275 Male 1.0 1 1 0.0 3988 0.0 50.0 240.0 1 Urban 1.0
87 LP001279 Male 0.0 0 1 0.0 2366 2531.0 136.0 360.0 1 Semiurban 1.0
88 LP001280 Male 1.0 2 0 0.0 3333 2000.0 99.0 360.0 0 Semiurban 1.0
89 LP001282 Male 1.0 0 1 0.0 2500 2118.0 104.0 360.0 1 Semiurban 1.0
90 LP001289 Male 0.0 0 1 0.0 8566 0.0 210.0 360.0 1 Urban 1.0
91 LP001310 Male 1.0 0 1 0.0 5695 4167.0 175.0 360.0 1 Semiurban 1.0
92 LP001316 Male 1.0 0 1 0.0 2958 2900.0 131.0 360.0 1 Semiurban 1.0
93 LP001318 Male 1.0 2 1 0.0 6250 5654.0 188.0 180.0 1 Semiurban 1.0
94 LP001319 Male 1.0 2 0 0.0 3273 1820.0 81.0 360.0 1 Urban 1.0
95 LP001322 Male 0.0 0 1 0.0 4133 0.0 122.0 360.0 1 Semiurban 1.0
96 LP001325 Male 0.0 0 0 0.0 3620 0.0 25.0 120.0 1 Semiurban 1.0
97 LP001326 Male 0.0 0 1 0.0 6782 0.0 0.0 360.0 0 Urban 0.0
98 LP001327 Female 1.0 0 1 0.0 2484 2302.0 137.0 360.0 1 Semiurban 1.0
99 LP001333 Male 1.0 0 1 0.0 1977 997.0 50.0 360.0 1 Semiurban 1.0
100 LP001334 Male 1.0 0 0 0.0 4188 0.0 115.0 180.0 1 Semiurban 1.0
101 LP001343 Male 1.0 0 1 0.0 1759 3541.0 131.0 360.0 1 Semiurban 1.0
102 LP001345 Male 1.0 2 0 0.0 4288 3263.0 133.0 180.0 1 Urban 1.0
103 LP001349 Male 0.0 0 1 0.0 4843 3806.0 151.0 360.0 1 Semiurban 1.0
104 LP001350 Male 1.0 1 0.0 13650 0.0 0.0 360.0 1 Urban 1.0
105 LP001356 Male 1.0 0 1 0.0 4652 3583.0 0.0 360.0 1 Semiurban 1.0
106 LP001357 Male 0.0 1 0.0 3816 754.0 160.0 360.0 1 Urban 1.0
107 LP001367 Male 1.0 1 1 0.0 3052 1030.0 100.0 360.0 1 Urban 1.0
108 LP001369 Male 1.0 2 1 0.0 11417 1126.0 225.0 360.0 1 Urban 1.0
109 LP001370 Male 0.0 0 0 0.0 7333 0.0 120.0 360.0 1 Rural 0.0
110 LP001379 Male 1.0 2 1 0.0 3800 3600.0 216.0 360.0 0 Urban 0.0
111 LP001384 Male 1.0 3+ 0 0.0 2071 754.0 94.0 480.0 1 Semiurban 1.0
112 LP001385 Male 0.0 0 1 0.0 5316 0.0 136.0 360.0 1 Urban 1.0
113 LP001387 Female 1.0 0 1 0.0 2929 2333.0 139.0 360.0 1 Semiurban 1.0
114 LP001391 Male 1.0 0 0 0.0 3572 4114.0 152.0 0 Rural 0.0
115 LP001392 Female 0.0 1 1 1.0 7451 0.0 0.0 360.0 1 Semiurban 1.0
116 LP001398 Male 0.0 0 1 0.0 5050 0.0 118.0 360.0 1 Semiurban 1.0
117 LP001401 Male 1.0 1 1 0.0 14583 0.0 185.0 180.0 1 Rural 1.0
118 LP001404 Female 1.0 0 1 0.0 3167 2283.0 154.0 360.0 1 Semiurban 1.0
119 LP001405 Male 1.0 1 1 0.0 2214 1398.0 85.0 360.0 0 Urban 1.0
120 LP001421 Male 1.0 0 1 0.0 5568 2142.0 175.0 360.0 1 Rural 0.0
121 LP001422 Female 0.0 0 1 0.0 10408 0.0 259.0 360.0 1 Urban 1.0
122 LP001426 Male 1.0 1 0.0 5667 2667.0 180.0 360.0 1 Rural 1.0
123 LP001430 Female 0.0 0 1 0.0 4166 0.0 44.0 360.0 1 Semiurban 1.0
124 LP001431 Female 0.0 0 1 0.0 2137 8980.0 137.0 360.0 0 Semiurban 1.0
125 LP001432 Male 1.0 2 1 0.0 2957 0.0 81.0 360.0 1 Semiurban 1.0
126 LP001439 Male 1.0 0 0 0.0 4300 2014.0 194.0 360.0 1 Rural 1.0
127 LP001443 Female 0.0 0 1 0.0 3692 0.0 93.0 360.0 0 Rural 1.0
128 LP001448 1.0 3+ 1 0.0 23803 0.0 370.0 360.0 1 Rural 1.0
129 LP001449 Male 0.0 0 1 0.0 3865 1640.0 0.0 360.0 1 Rural 1.0
130 LP001451 Male 1.0 1 1 1.0 10513 3850.0 160.0 180.0 0 Urban 0.0
131 LP001465 Male 1.0 0 1 0.0 6080 2569.0 182.0 360.0 0 Rural 0.0
132 LP001469 Male 0.0 0 1 1.0 20166 0.0 650.0 480.0 0 Urban 1.0
133 LP001473 Male 0.0 0 1 0.0 2014 1929.0 74.0 360.0 1 Urban 1.0
134 LP001478 Male 0.0 0 1 0.0 2718 0.0 70.0 360.0 1 Semiurban 1.0
135 LP001482 Male 1.0 0 1 1.0 3459 0.0 25.0 120.0 1 Semiurban 1.0
136 LP001487 Male 0.0 0 1 0.0 4895 0.0 102.0 360.0 1 Semiurban 1.0
137 LP001488 Male 1.0 3+ 1 0.0 4000 7750.0 290.0 360.0 1 Semiurban 0.0
138 LP001489 Female 1.0 0 1 0.0 4583 0.0 84.0 360.0 1 Rural 0.0
139 LP001491 Male 1.0 2 1 1.0 3316 3500.0 88.0 360.0 1 Urban 1.0
140 LP001492 Male 0.0 0 1 0.0 14999 0.0 242.0 360.0 0 Semiurban 0.0
141 LP001493 Male 1.0 2 0 0.0 4200 1430.0 129.0 360.0 1 Rural 0.0
142 LP001497 Male 1.0 2 1 0.0 5042 2083.0 185.0 360.0 1 Rural 0.0
143 LP001498 Male 0.0 0 1 0.0 5417 0.0 168.0 360.0 1 Urban 1.0
144 LP001504 Male 0.0 0 1 1.0 6950 0.0 175.0 180.0 1 Semiurban 1.0
145 LP001507 Male 1.0 0 1 0.0 2698 2034.0 122.0 360.0 1 Semiurban 1.0
146 LP001508 Male 1.0 2 1 0.0 11757 0.0 187.0 180.0 1 Urban 1.0
147 LP001514 Female 1.0 0 1 0.0 2330 4486.0 100.0 360.0 1 Semiurban 1.0
148 LP001516 Female 1.0 2 1 0.0 14866 0.0 70.0 360.0 1 Urban 1.0
149 LP001518 Male 1.0 1 1 0.0 1538 1425.0 30.0 360.0 1 Urban 1.0
150 LP001519 Female 0.0 0 1 0.0 10000 1666.0 225.0 360.0 1 Rural 0.0
151 LP001520 Male 1.0 0 1 0.0 4860 830.0 125.0 360.0 1 Semiurban 1.0
152 LP001528 Male 0.0 0 1 0.0 6277 0.0 118.0 360.0 0 Rural 0.0
153 LP001529 Male 1.0 0 1 1.0 2577 3750.0 152.0 360.0 1 Rural 1.0
154 LP001531 Male 0.0 0 1 0.0 9166 0.0 244.0 360.0 1 Urban 0.0
155 LP001532 Male 1.0 2 0 0.0 2281 0.0 113.0 360.0 1 Rural 0.0
156 LP001535 Male 0.0 0 1 0.0 3254 0.0 50.0 360.0 1 Urban 1.0
157 LP001536 Male 1.0 3+ 1 0.0 39999 0.0 600.0 180.0 0 Semiurban 1.0
158 LP001541 Male 1.0 1 1 0.0 6000 0.0 160.0 360.0 0 Rural 1.0
159 LP001543 Male 1.0 1 1 0.0 9538 0.0 187.0 360.0 1 Urban 1.0
160 LP001546 Male 0.0 0 1 0.0 2980 2083.0 120.0 360.0 1 Rural 1.0
161 LP001552 Male 1.0 0 1 0.0 4583 5625.0 255.0 360.0 1 Semiurban 1.0
162 LP001560 Male 1.0 0 0 0.0 1863 1041.0 98.0 360.0 1 Semiurban 1.0
163 LP001562 Male 1.0 0 1 0.0 7933 0.0 275.0 360.0 1 Urban 0.0
164 LP001565 Male 1.0 1 1 0.0 3089 1280.0 121.0 360.0 0 Semiurban 0.0
165 LP001570 Male 1.0 2 1 0.0 4167 1447.0 158.0 360.0 1 Rural 1.0
166 LP001572 Male 1.0 0 1 0.0 9323 0.0 75.0 180.0 1 Urban 1.0
167 LP001574 Male 1.0 0 1 0.0 3707 3166.0 182.0 1 Rural 1.0
168 LP001577 Female 1.0 0 1 0.0 4583 0.0 112.0 360.0 1 Rural 0.0
169 LP001578 Male 1.0 0 1 0.0 2439 3333.0 129.0 360.0 1 Rural 1.0
170 LP001579 Male 0.0 0 1 0.0 2237 0.0 63.0 480.0 0 Semiurban 0.0
171 LP001580 Male 1.0 2 1 0.0 8000 0.0 200.0 360.0 1 Semiurban 1.0
172 LP001581 Male 1.0 0 0 0.0 1820 1769.0 95.0 360.0 1 Rural 1.0
173 LP001585 1.0 3+ 1 0.0 51763 0.0 700.0 300.0 1 Urban 1.0
174 LP001586 Male 1.0 3+ 0 0.0 3522 0.0 81.0 180.0 1 Rural 0.0
175 LP001594 Male 1.0 0 1 0.0 5708 5625.0 187.0 360.0 1 Semiurban 1.0
176 LP001603 Male 1.0 0 0 1.0 4344 736.0 87.0 360.0 1 Semiurban 0.0
177 LP001606 Male 1.0 0 1 0.0 3497 1964.0 116.0 360.0 1 Rural 1.0
178 LP001608 Male 1.0 2 1 0.0 2045 1619.0 101.0 360.0 1 Rural 1.0
179 LP001610 Male 1.0 3+ 1 0.0 5516 11300.0 495.0 360.0 0 Semiurban 0.0
180 LP001616 Male 1.0 1 1 0.0 3750 0.0 116.0 360.0 1 Semiurban 1.0
181 LP001630 Male 0.0 0 0 0.0 2333 1451.0 102.0 480.0 0 Urban 0.0
182 LP001633 Male 1.0 1 1 0.0 6400 7250.0 180.0 360.0 0 Urban 0.0
183 LP001634 Male 0.0 0 1 0.0 1916 5063.0 67.0 360.0 0 Rural 0.0
184 LP001636 Male 1.0 0 1 0.0 4600 0.0 73.0 180.0 1 Semiurban 1.0
185 LP001637 Male 1.0 1 1 0.0 33846 0.0 260.0 360.0 1 Semiurban 0.0
186 LP001639 Female 1.0 0 1 0.0 3625 0.0 108.0 360.0 1 Semiurban 1.0
187 LP001640 Male 1.0 0 1 1.0 39147 4750.0 120.0 360.0 1 Semiurban 1.0
188 LP001641 Male 1.0 1 1 1.0 2178 0.0 66.0 300.0 0 Rural 0.0
189 LP001643 Male 1.0 0 1 0.0 2383 2138.0 58.0 360.0 0 Rural 1.0
190 LP001644 1.0 0 1 1.0 674 5296.0 168.0 360.0 1 Rural 1.0
191 LP001647 Male 1.0 0 1 0.0 9328 0.0 188.0 180.0 1 Rural 1.0
192 LP001653 Male 0.0 0 0 0.0 4885 0.0 48.0 360.0 1 Rural 1.0
193 LP001656 Male 0.0 0 1 0.0 12000 0.0 164.0 360.0 1 Semiurban 0.0
194 LP001657 Male 1.0 0 0 0.0 6033 0.0 160.0 360.0 1 Urban 0.0
195 LP001658 Male 0.0 0 1 0.0 3858 0.0 76.0 360.0 1 Semiurban 1.0
196 LP001664 Male 0.0 0 1 0.0 4191 0.0 120.0 360.0 1 Rural 1.0
197 LP001665 Male 1.0 1 1 0.0 3125 2583.0 170.0 360.0 1 Semiurban 0.0
198 LP001666 Male 0.0 0 1 0.0 8333 3750.0 187.0 360.0 1 Rural 1.0
199 LP001669 Female 0.0 0 0 0.0 1907 2365.0 120.0 1 Urban 1.0
200 LP001671 Female 1.0 0 1 0.0 3416 2816.0 113.0 360.0 0 Semiurban 1.0
201 LP001673 Male 0.0 0 1 1.0 11000 0.0 83.0 360.0 1 Urban 0.0
202 LP001674 Male 1.0 1 0 0.0 2600 2500.0 90.0 360.0 1 Semiurban 1.0
203 LP001677 Male 0.0 2 1 0.0 4923 0.0 166.0 360.0 0 Semiurban 1.0
204 LP001682 Male 1.0 3+ 0 0.0 3992 0.0 0.0 180.0 1 Urban 0.0
205 LP001688 Male 1.0 1 0 0.0 3500 1083.0 135.0 360.0 1 Urban 1.0
206 LP001691 Male 1.0 2 0 0.0 3917 0.0 124.0 360.0 1 Semiurban 1.0
207 LP001692 Female 0.0 0 0 0.0 4408 0.0 120.0 360.0 1 Semiurban 1.0
208 LP001693 Female 0.0 0 1 0.0 3244 0.0 80.0 360.0 1 Urban 1.0
209 LP001698 Male 0.0 0 0 0.0 3975 2531.0 55.0 360.0 1 Rural 1.0
210 LP001699 Male 0.0 0 1 0.0 2479 0.0 59.0 360.0 1 Urban 1.0
211 LP001702 Male 0.0 0 1 0.0 3418 0.0 127.0 360.0 1 Semiurban 0.0
212 LP001708 Female 0.0 0 1 0.0 10000 0.0 214.0 360.0 1 Semiurban 0.0
213 LP001711 Male 1.0 3+ 1 0.0 3430 1250.0 128.0 360.0 0 Semiurban 0.0
214 LP001713 Male 1.0 1 1 1.0 7787 0.0 240.0 360.0 1 Urban 1.0
215 LP001715 Male 1.0 3+ 0 1.0 5703 0.0 130.0 360.0 1 Rural 1.0
216 LP001716 Male 1.0 0 1 0.0 3173 3021.0 137.0 360.0 1 Urban 1.0
217 LP001720 Male 1.0 3+ 0 0.0 3850 983.0 100.0 360.0 1 Semiurban 1.0
218 LP001722 Male 1.0 0 1 0.0 150 1800.0 135.0 360.0 1 Rural 0.0
219 LP001726 Male 1.0 0 1 0.0 3727 1775.0 131.0 360.0 1 Semiurban 1.0
220 LP001732 Male 1.0 2 1 0.0 5000 0.0 72.0 360.0 0 Semiurban 0.0
221 LP001734 Female 1.0 2 1 0.0 4283 2383.0 127.0 360.0 0 Semiurban 1.0
222 LP001736 Male 1.0 0 1 0.0 2221 0.0 60.0 360.0 0 Urban 0.0
223 LP001743 Male 1.0 2 1 0.0 4009 1717.0 116.0 360.0 1 Semiurban 1.0
224 LP001744 Male 0.0 0 1 0.0 2971 2791.0 144.0 360.0 1 Semiurban 1.0
225 LP001749 Male 1.0 0 1 0.0 7578 1010.0 175.0 1 Semiurban 1.0
226 LP001750 Male 1.0 0 1 0.0 6250 0.0 128.0 360.0 1 Semiurban 1.0
227 LP001751 Male 1.0 0 1 0.0 3250 0.0 170.0 360.0 1 Rural 0.0
228 LP001754 Male 1.0 0 1.0 4735 0.0 138.0 360.0 1 Urban 0.0
229 LP001758 Male 1.0 2 1 0.0 6250 1695.0 210.0 360.0 1 Semiurban 1.0
230 LP001760 Male 0.0 1 0.0 4758 0.0 158.0 480.0 1 Semiurban 1.0
231 LP001761 Male 0.0 0 1 1.0 6400 0.0 200.0 360.0 1 Rural 1.0
232 LP001765 Male 1.0 1 1 0.0 2491 2054.0 104.0 360.0 1 Semiurban 1.0
233 LP001768 Male 1.0 0 1 0.0 3716 0.0 42.0 180.0 1 Rural 1.0
234 LP001770 Male 0.0 0 0 0.0 3189 2598.0 120.0 1 Rural 1.0
235 LP001776 Female 0.0 0 1 0.0 8333 0.0 280.0 360.0 1 Semiurban 1.0
236 LP001778 Male 1.0 1 1 0.0 3155 1779.0 140.0 360.0 1 Semiurban 1.0
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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()

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### 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.

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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()

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### 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.

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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()

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### 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.

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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()

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### 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.

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# Лаб 7 RNN
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.
В завершении подобрать компромиссную архитектуру, справляющуюся
достаточно хорошо с обоими видами текстов.
# Вариант 3
Рекуррентная нейронная сеть и задача
генерации текста
# Запуск
Выполнением скрипта файла (вывод в консоль).
# Описание модели:
Использованы библиотеки:
* numpy (np): популярная библиотека для научных вычислений.
* tensorflow (tf): библиотека для тренировки нейросетей.
* Sequential: тип Keras модель которая позволяет создавать нейросети слой за слоем.
* Embedding, LSTM, Dense: различные типы слоев в нейросетях.
* Tokenizer: класс для конвертации слов в числовой понятный для нейросети формат.
<p></p>
Каждая строка текста переводится в числа с помощью Tokernizer.
Класс Tokenizer в Keras - это утилита обработки текста, которая преобразует текст в
последовательность целых чисел. Он присваивает уникальное целое число (индекс) каждому слову
в тексте и создает словарь, который сопоставляет каждое слово с соответствующим индексом.
Это позволяет вам работать с текстовыми данными в формате, который может быть передан в нейронную сеть.
Все это записывается в input_sequences.
Строим RNN модель используя Keras:
* Embedding: Этот слой превращает числа в векторы плотности фиксированного размера. Так же известного
как "word embeddings". Вложения слов - это плотные векторные представления слов в непрерывном
векторном пространстве.Они позволяют нейронной сети изучать и понимать взаимосвязи между словами
на основе их контекста в содержании текста.
* LSTM: это тип рекуррентной нейронной сети (RNN), которая предназначена для обработки
зависимостей в последовательностях.
* Dense: полносвязный слой с множеством нейронов, нейронов столько же сколько и уникальных слов.
Он выводит вероятность следующего слова.
* Модель обучаем на разном количестве эпох, по умолчанию epochs = 100 (итераций по всему набору данных).
Определеяем функцию generate_text которая принимает стартовое слово, а также, число слов для генерации.
Модель генерирует текст путем многократного предсказания следующего слова на основе предыдущих слов в
начальном тексте.
* В конце мы получаем сгенерированную на основе текста последовательность.
# Задача генерации англоязычного текста
На вход подаем историю с похожими повторяющимися слова. Историю сохраняем в файл.
Задача проверить насколько сеть не станет повторять текст, а будет действительно генерировать
относительно новый текст.
# Результаты
Тестируется английский текст, приложенный в репозитории.
* на 50 эпохах ответ на I want
* I want to soar high up in the sky like to glide through the clouds feeling the wind beneath my wings i want to fly i want to fly i want to fly i want to fly i want to fly i want to fly i want to fly i want to
* на 100 эпох ответ на I want
* I want to fly i want to soar high up in the sky like a bird to glide through the clouds feeling the wind beneath my wings i want to fly i want to fly i want to spread my wings and soar into the open sky to glide far above the
* на 150 эпохах ответ на I want
* I want to fly i want to spread my wings and soar into the open sky to glide far above the earth unbounded by gravity i want to fly i want to fly i want to fly i want to soar high up in the sky like a bird to glide through
* на 220 эпохах ответ на I want
* I want to fly i want to soar high up in the sky like a bird to glide through the clouds feeling the wind beneath my wings i want to fly i want to fly i want to fly i want to fly i want to fly i want to fly i
* На 220 эпохах результаты хуже, это произошло скорее всего из-за переобучения(грубый повтор).
* На 50 эпохах нейронная сеть плохо обучена (из 1 места плюс повтор)
* На 100 эпохах средний результат (из 2 мест)
* На 150 эпохах нейронная сеть показывает наилучший результат (из 3 разных мест без повтора)
Так же модель работает и на русском тексте. Вот что сгенерировала модель на 150 эпохах.
Предложения взяты из разных мест и выглядят осмысленно.
"Я хочу летать потому что в этом заложено желание преодолевать границы хочу чувствовать себя
свободным словно ветер несущим меня к новым приключениям я хочу летать и продолжать этот бескрайний
полет вперед ибо в этом полете заключена вся суть моего существования существования существования
существования существования трудности трудности трудности неважными хочу летать потому что."
Чем больше текст мы берем, тем более интересные результаты получаем, но моих вычислительных мощностей уже не хватит.
Так же чем больше прогонов, тем лучше модель, но тоже не до бесконечности можно получить хороший результат.
<p>
<div>Обучение</div>
<img src="screens/img_2.png" width="650" title="Обучение">
</p>
<p>
<div>Результат</div>
<img src="screens/img_3.png" width="650" title="Результат">
</p>
<p>
<div>Обучение 1</div>
<img src="screens/step1.png" width="650" title="Обучение 1">
</p>
<p>
<div>Обучение 2</div>
<img src="screens/step2.png" width="650" title="Обучение 2">
</p>
<p>
<div>Обучение 3</div>
<img src="screens/step3.png" width="650" title="Обучение 3">
</p>
<p>
<div>Обучение 4</div>
<img src="screens/step4.png" width="650" title="Обучение 4">
</p>
<p>
<div>Обучение 5</div>
<img src="screens/step5.png" width="650" title="Обучение 5">
</p>

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import numpy as np
from keras.models import Sequential
from keras.layers import Embedding, LSTM, Dense
from keras.preprocessing.text import Tokenizer
from keras_preprocessing.sequence import pad_sequences
# загрузка текста
with open('rus.txt', encoding='utf-8') as file:
text = file.read()
tokenizer = Tokenizer()
tokenizer.fit_on_texts([text])
total_words = len(tokenizer.word_index) + 1
input_sequences = []
for line in text.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_sequence_length = max([len(x) for x in input_sequences])
input_sequences = pad_sequences(input_sequences, maxlen=max_sequence_length, padding='pre')
predictors, labels = input_sequences[:, :-1], input_sequences[:, -1]
# создание RNN модели
model = Sequential()
model.add(Embedding(total_words, 100, input_length=max_sequence_length - 1))
model.add(LSTM(150))
model.add(Dense(total_words, activation='softmax'))
model.compile(loss='sparse_categorical_crossentropy', optimizer='adam', metrics=['accuracy'])
# тренировка модели
model.fit(predictors, labels, epochs=150, verbose=1)
# генерация текста на основе модели
def generate_text(seed_text, next_words, model, max_sequence_length):
for _ in range(next_words):
token_list = tokenizer.texts_to_sequences([seed_text])[0]
token_list = pad_sequences([token_list], maxlen=max_sequence_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
generated_text = generate_text("Я хочу", 50, model, max_sequence_length)
print(generated_text)

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Я хочу летать. Почувствовать ветер в лицо, свободно парить в небесах. Я хочу летать, словно птица, освободившись от земных оков. Летать, словно орел, покоряя небесные просторы. Я хочу летать, чувствовать каждый момент поднятия в воздух, каждый поворот, каждое крыло, взмахнувшее в танце с аэродинамикой.
Я хочу летать над горами, смотреть на вершины, которые кажутся такими далекими с земли. Хочу летать над океанами, наблюдая за волнами, встречая закаты, окрашивающие водную гладь в огонь. Я хочу летать над городами, где жизнь бурлит своим ритмом, а улицы выглядят как мозаика, расстилающаяся под ногами.
Я хочу летать, ощущать тот подъем, когда ты понимаешь, что земля осталась позади, а ты свободен, как никогда. Я хочу летать и видеть этот мир с высоты, где все проблемы кажутся такими маленькими и неважными. Хочу летать и чувствовать себя частью этого огромного космического танца, где звезды танцуют свои вечерние вальсы.
Я хочу летать, несмотря ни на что, преодолевая любые преграды. Хочу летать, потому что в этом чувствую свое настоящее "я". Летать значит освобождаться от гравитации рутины, подниматься над повседневностью, смотреть на мир с высоты своей мечты.
Я хочу летать, потому что в этом заключена свобода души. Хочу ощутить, как воздух обволакивает меня, как каждая клетка моего тела ощущает эту свободу. Хочу летать, потому что это моя мечта, которая дает мне силы двигаться вперед, преодолевая все трудности.
Я хочу летать, потому что в этом заложено желание преодолевать границы. Хочу чувствовать себя свободным, словно ветер, несущим меня к новым приключениям. Я хочу летать и продолжать этот бескрайний полет вперед, ибо в этом полете заключена вся суть моего существования.

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I want to fly. I want to soar high up in the sky like a bird. To glide through the clouds, feeling the wind beneath my wings. I want to fly.
I imagine what it would be like, to be able to spread my arms and take off into the endless blue. To swoop and dive and twirl through the air unencumbered by gravity's pull. I want to fly.
I watch the birds outside my window, floating effortlessly on the breeze. How I wish I could join them up there. To break free of the bounds of this earth and taste the freedom of flight. I want to fly.
Over and over I dream of flying. I flap my arms but remain stuck to the ground. Still I gaze up hopefully at the sky. One day, I tell myself. One day I will fly. I want to fly.
I want to fly. I want to spread my wings and soar into the open sky. To glide far above the earth unbounded by gravity. I want to fly.
Ever since I was a child I've dreamed of flying. I would flap my arms trying in vain to take off. I envied the birds and their gift of flight. On windy days, I'd run with the breeze, hoping it would lift me up. But my feet stayed planted. Still my desire to fly remained.
As I grew up, my dreams of flying never left. I'd gaze out plane windows high above the earth and ache to sprout wings. I'd watch birds for hours wishing I could join their effortless flight. At night I'd have vivid dreams of gliding among the clouds. Then I'd awake still earthbound and sigh. My longing to fly unchanged.
I want to know what it feels like to swoop and dive through the air. To loop and twirl on the wind currents with ease. To soar untethered by gravity's grip. But I'm trapped on the ground, wings useless and weighted. Still I stare upwards hoping. Still I imagine what could be. Still I want to fly.
They say it's impossible, that humans aren't meant for flight. But I refuse to let go of this dream. I gaze up, envying the way the birds own the sky while my feet stay planted. I flap and I hope. And still I want to fly.

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## Лабораторная работа 2. Вариант 4.
### Задание
Выполнить ранжирование признаков. Отобразить получившиеся значения\оценки каждого признака каждым методом\моделью и среднюю оценку. Провести анализ получившихся результатов. Какие четыре признака оказались самыми важными по среднему значению?
Модели:
- Гребневая регрессия `Ridge`,
- Случайное Лассо `RandomizedLasso`,
- Рекурсивное сокращение признаков `Recursive Feature Elimination RFE`
> **Warning**
>
> Модель "случайное лассо" `RandomizedLasso` была признана устаревшей в бибилотеке `scikit` версии 0.20. Её безболезненной заменой назван регрессор случайного леса `RandomForestRegressor`. Он будет использоваться в данной лабораторной вместо устаревшей функции.
### Как запустить
Для запуска программы необходимо с помощью командной строки в корневой директории файлов прокета прописать:
```
python main.py
```
### Используемые технологии
- Библиотека `numpy`, используемая для обработки массивов данных и вычислений
- Библиотека `sklearn` - большой набор функционала для анализа данных. Из неё были использованы инструменты:
- `LinearRegression` - инструмент работы с моделью "Линейная регрессия"
- `Ridge` - инструмент работы с моделью "Гребневая регрессия"
- `RFE` - инструмент оценки важности признаков "Рекурсивное сокращение признаков"
- `RandomForestRegressor` - инструмент работы с моделью "Регрессор случайного леса"
- `MinMaxScaler` - инструмент масштабирования значений в заданный диапазон
### Описание работы
Программа генерирует данные для обучения моделей. Сначала генерируются признаки в количестве 14-ти штук, важность которых модели предстоит выявить.
```python
np.random.seed(0)
size = 750
X = np.random.uniform(0, 1, (size, 14))
```
Затем задаётся функция зависимости выходных параметров от входных, представляющая собой регриссионную проблему Фридмана.
```python
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))
```
После чего, задаются зависимости переменных `x11 x12 x13 x14` от переменных `x1 x2 x3 x4`.
```python
X[:, 10:] = X[:, :4] + np.random.normal(0, .025, (size, 4))
```
Первая группа переменных должна быть обозначена моделями как наименее значимая.
#### Работа с моделями
Первая модель `Ridge` - модель гребневой регрессии.
```python
ridge = Ridge(alpha=1)
ridge.fit(X, Y)
```
Данная модель не предоставляет прямого способа оценки важности признаков, так как она использует линейную комбинацию всех признаков с коэффициентами, которые оптимизируются во время обучения модели. Можно лишь оценить относительную важность признаков на основе абсолютных значений коэффициентов, которые были найдены в процессе обучения. Получить данные коэфициенты от модели можно с помощью метода `.coef_`.
Вторая модель `RandomForestRegressor` - алгоритм ансамбля случайных деревьев решений. Он строит множество деревьев, каждое из которых обучается на случайной подвыборке данных и случайном подмножестве признаков.
```python
rfr = RandomForestRegressor()
rfr.fit(X, Y)
```
Важность признаков в Random Forest Regressor определяется на основе того, как сильно каждый признак влияет на уменьшение неопределенности в предсказаниях модели. Для получения оценок важности в данной модели используется функция `.feature_importances_`.
Третий инструмент `Recursive Feature Elimination RFE` - алгоритм отбора признаков, который используется для оценки и ранжирования признаков по их важности.
```python
lr = LinearRegression()
lr.fit(X, Y)
rfe = RFE(lr)
rfe.fit(X,Y)
```
Оценка важности признаков в RFE происходит путем анализа, как изменяется производительность модели при удалении каждого признака. В зависимости от этого, каждый признак получает ранг. Массив рангов признаков извлекается функцией `.ranking_`
#### Нормализация оценок
Модели `Ridge` и `RandomForestRegressor` рабботают по одинаковой логике вывода значимости оценок. В данных моделях оценки значимости параметров - веса значимости, которые они представляют для модели. Очевидно, что чем выше данный показатеь, тем более значимым является признак. Для нормализации оценок необходимо взять их по модулю и привести их к диапазону от 0 до 1.
```python
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)
```
Инструмент `Recursive Feature Elimination RFE` работает иначе. Класс выдает не веса при коэффициентах регрессии, а именно ранг для каждого признака. Так наиболее важные признаки будут иметь ранг "1", а менее важные признаки ранг больше "1". Коэффициенты остальных моделей тем важнее, чем больше их абсолютное значение. Для нормализации таких рангов от 0 до 1, необходимо просто взять обратное число от величины ранга признака.
```python
new_ranks = [float(1 / x) for x in ranks]
new_ranks = map(lambda x: round(x, 2), new_ranks)
```
#### Оценка работы моделей
Для оценки результатов выведем выявленные оценки значимости признаков каждой модели, а также средние оценки значимости признаков всех моделей.
```
Ridge
[('x4', 1.0), ('x1', 0.98), ('x2', 0.8), ('x14', 0.61), ('x5', 0.54), ('x12', 0.39), ('x3', 0.25), ('x13', 0.19), ('x11', 0.16), ('x6', 0.08), ('x8', 0.07), ('x7', 0.02), ('x10', 0.02), ('x9', 0.0)]
Recursive Feature Elimination
[('x1', 1.0), ('x2', 1.0), ('x3', 1.0), ('x4', 1.0), ('x5', 1.0), ('x11', 1.0), ('x13', 1.0), ('x12', 0.5), ('x14', 0.33), ('x8', 0.25), ('x6', 0.2), ('x10', 0.17), ('x7', 0.14), ('x9', 0.12)]
Random Forest Regression
[('x14', 1.0), ('x2', 0.84), ('x4', 0.77), ('x1', 0.74), ('x11', 0.36), ('x12', 0.35), ('x5', 0.28), ('x3', 0.12), ('x13', 0.12), ('x6', 0.01), ('x7', 0.01), ('x8', 0.01), ('x9', 0.01), ('x10', 0.0)]
Mean
[('x4', 0.92), ('x1', 0.91), ('x2', 0.88), ('x14', 0.65), ('x5', 0.61), ('x11', 0.51), ('x3', 0.46), ('x13', 0.44), ('x12', 0.41), ('x8', 0.11), ('x6', 0.1), ('x7', 0.06), ('x10', 0.06), ('x9', 0.04)]
```
- Модель `Ridge` верно выявила значимость признаков `x1, x2, x4, х5`, но потеряла значимый признак `x3` и ошибочно включила признак `x14` в значимые.
- Модель `RandomForestRegressor` также верно выявила значимость признаков `x1, x2, x4`, но потеряла значимые признаки `x3, х5` и ошибочно включила признак `x14` в значимые.
- Инсрумент `Recursive Feature Elimination RFE` безошибочно выделил все значимые признаки `x1, x2, х3, x4, x5`, но ошибочно отметил признаки `x11, x13` как значимые.
- В среднем значимыми признаками были верно выявлены `x1, x2, x4, х5`, но значимый признак `x3` был потерян, а признаки `x11, х14` были признаны ошибочно значимыми.
### Вывод
Хужё всех показала себя модель `RandomForestRegressor`, потеряв два значимых признака и добавив один лишний. Модель `Ridge`и инструмент `Recursive Feature Elimination RFE` допустили по одной ошибке, однако последний не потерял ни одного значимого признака. Значимость в среднем получилась неудовлетворительна и выдала три ошибки, как и первая модель.
Исходя из этого, можно сделать вывод, что для ранжирования признаков лучше использовать специально созданные для этого инструменты по типу `Recursive Feature Elimination RFE`, а не использовать коэфициенты признаков регрессионных моделей.

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from operator import itemgetter
import numpy as np
from sklearn.ensemble import RandomForestRegressor
from sklearn.feature_selection import RFE
from sklearn.linear_model import LinearRegression, Ridge
from sklearn.preprocessing import MinMaxScaler
np.random.seed(0)
size = 750
X = np.random.uniform(0, 1, (size, 14)) # Генерируем исходные данные: 750 строк-наблюдений и 14 столбцов-признаков
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)) # Задаем функцию-выход: регрессионную проблему Фридмана
X[:, 10:] = X[:, :4] + np.random.normal(0, .025, (size, 4)) # Добавляем зависимость признаков
ridge = Ridge(alpha=1) # Создаём модель гребневой регрессии и обучаем её
ridge.fit(X, Y)
lr = LinearRegression() # Создаём модель линейной регрессии и обучаем её
lr.fit(X, Y)
rfe = RFE(lr) # На основе линейной модели выполняем рекурсивное сокращение признаков
rfe.fit(X,Y)
rfr = RandomForestRegressor() # Создаём и обучаем регрессор случайного леса (используется вместо устаревшего рандомизированного лассо)
rfr.fit(X, Y)
def rank_ridge_rfr_to_dict(ranks, names): # Метод нормализации оценок важности для модели гребневой регрессии и регрессора случайного леса
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 rank_rfe_to_dict(ranks, names): # Метод нормализации оценок важности для модели рекурсивного сокращения признаков
new_ranks = [float(1 / x) for x in ranks]
new_ranks = map(lambda x: round(x, 2), new_ranks)
return dict(zip(names, new_ranks))
if __name__ == '__main__':
names = ["x%s" % i for i in range(1, 15)]
ranks = dict()
ranks["Ridge"] = rank_ridge_rfr_to_dict(ridge.coef_, names)
ranks["Recursive Feature Elimination"] = rank_rfe_to_dict(rfe.ranking_, names)
ranks["Random Forest Regression"] = rank_ridge_rfr_to_dict(rfr.feature_importances_, names)
for key, value in ranks.items(): # Вывод нормализованных оценок важности признаков каждой модели
ranks[key] = sorted(value.items(), key=itemgetter(1), reverse=True)
for key, value in ranks.items():
print(key)
print(value)
mean = {} # Нахождение средних значений оценок важности по 3м моделям
for key, value in ranks.items():
for item in value:
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(mean.items(), key=itemgetter(1), reverse=True)
print("Mean")
print(mean)

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## Лабораторная работа 3. Вариант 4.
### Задание
Выполнить ранжирование признаков и решить с помощью библиотечной реализации дерева решений
задачу классификации на 99% данных из курсовой работы. Проверить
работу модели на оставшемся проценте, сделать вывод.
Модель:
- Дерево решений `DecisionTreeClassifier`.
### Как запустить
Для запуска программы необходимо с помощью командной строки в корневой директории файлов прокета прописать:
```
python main.py
```
После этого в папке `static` сгенерируются 2 графика, по которым оценивается результат выполнения программы.
### Используемые технологии
- Библиотека `numpy`, используемая для обработки массивов данных и вычислений
- Библиотека `pyplot`, используемая для построения графиков.
- Библиотека `pandas`, используемая для работы с данными для анализа scv формата.
- Библиотека `sklearn` - большой набор функционала для анализа данных. Из неё были использованы инструменты:
- `DecisionTreeClassifier` - инструмент работы с моделью "Дерево решений"
- `metrics` - набор инструменов для оценки моделей
- `MinMaxScaler` - инструмент масштабирования значений в заданный диапазон
### Описание работы
#### Описание набора данных
Набор данных - набор для определения возможности наличия ССЗ заболеваний у челоека
Названия столбцов набора данных и их описание:
* HeartDisease - Имеет ли человек ССЗ (No / Yes),
* BMI - Индекс массы тела человека (float),
* Smoking - Выкурил ли человек хотя бы 5 пачек сигарет за всю жизнь (No / Yes),
* AlcoholDrinking - Сильно ли человек употребляет алкоголь (No / Yes),
* Stroke - Был ли у человека инсульт (No / Yes),
* PhysicalHealth - Сколько дней за последний месяц человек чувствовал себя плохо (0-30),
* MentalHealth - Сколько дней за последний месяц человек чувствовал себя удручённо (0-30),
* DiffWalking - Ииспытывает ли человек трудности при ходьбе (No / Yes),
* Sex - Пол (female, male),
* AgeCategory - Возрастная категория (18-24, 25-29, 30-34, 35-39, 40-44, 45-49, 50-54, 55-59, 60-64, 65-69, 70-74, 75-79, 80 or older),
* Race - Национальная принадлежность человека (White, Black, Hispanic, American Indian/Alaskan Native, Asian, Other),
* Diabetic - Был ли у человека диабет (No / Yes),
* PhysicalActivity - Занимался ли человек спротом за последний месяц (No / Yes),
* GenHealth - Общее самочувствие человека (Excellent, Very good, Good, Fair, Poor),
* SleepTime - Сколько человек в среднем спит за 24 часа (0-24),
* Asthma - Была ли у человека астма (No / Yes),
* KidneyDisease - Было ли у человека заболевание почек (No / Yes),
* SkinCancer - Был ли у человека рак кожи (No / Yes).
Ссылка на страницу набора на kuggle: [Indicators of Heart Disease](https://www.kaggle.com/datasets/kamilpytlak/personal-key-indicators-of-heart-disease/data)
#### Оцифровка и нормализация данных
Для нормальной работы с данными, необходимо исключить из них все нечисловые значения. После этого, представить все строковые значения параметров как числовые и очистить датасет от "мусора". Для удаления нечисловых значений воспользуемся функцией `.dropna()`. Мы исключаем строки с нечисловыми значениями, поскольку данные предварительно были очищены (указано в описании датасета) и строк данных достаточно с избытком для обучение модели: `400.000`.
После этого, переведём все строковые значения данных в числовые методами прямой оцифровки, разделения на группы, ранжирования.
Процесс оцифровки данных столбцов со строковыми значениями:
- Имеет ли человек ССЗ (0 / 1)
- Выкурил ли человек хотя бы 5 пачек сигарет за всю жизнь (0 / 1)
- Сильно ли человек употребляет алкоголь (0 / 1)
- Был ли у человека инсульт (0 / 1)
- Ииспытывает ли человек трудности при ходьбе (0 / 1)
- Пол (Ж - 0 / М - 1)
- Возрастная категория (средний возраст каждого диапазона)
- Национальная принадлежность человека
- White - Европиойды - 0
- Black - Негройды - 1
- Hispanic - Испанцы - 2
- American Indian/Alaskan Native - Индусы - 3
- Asian - Азиаты - 4
- Other - Другие - 5
- Был ли у человека диабет (0 / 1)
- Занимался ли человек спротом за последний месяц (0 / 1)
- Общее самочувствие человека
- Excellent - Отлично - 4
- Very good - Очень хорошо - 3
- Good - Хорошо - 2
- Fair - Нормально - 1
- "Poor" / "Other..." - Плохое или другое - 0
- Была ли у человека астма (0 / 1)
- Было ли у человека заболевание почек (0 /1)
- Был ли у человека рак кожи (0 / 1)
После оцифровки значений необходимо избавиться от строк с возможными остаточнымии данными ("мусором"). Для этого переведём автоматически все значения датасета в числовые функцией `to_numeric` и непереводимые отметим как `NaN` (параметр `errors='coerce'`). После снова сотрём строки содержащие нечисловые значения методом `.dropna()` и сохраним нормализованный датасет в новый csv файл:
```python
df = df.applymap(pd.to_numeric, errors='coerce').dropna()
df.to_csv(fileout, index=False)
```
#### Выявление значимых параметров
В выбранном датасете параметром предсказания `y` выступает столбец данных `HeartDisease`. Остальные столбцы считаются параметрами для решения задачи предсказания `x`, которые необходимо проранжировать по важности. Чтобы разделить выборку данных на обучаемую и тестовую, воспользуемся функцией `.iloc`.
```python
x_train = df[["BMI", "Smoking", "AlcoholDrinking", "Stroke", "PhysicalHealth",
"MentalHealth", "DiffWalking", "Sex", "AgeCategory", "Race", "Diabetic",
"PhysicalActivity", "GenHealth", "SleepTime", "Asthma", "KidneyDisease", "SkinCancer"]].iloc[
0:round(len(df) / 100 * 99)]
y_train = df["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test = df[["BMI", "Smoking", "AlcoholDrinking", "Stroke", "PhysicalHealth",
"MentalHealth", "DiffWalking", "Sex", "AgeCategory", "Race", "Diabetic",
"PhysicalActivity", "GenHealth", "SleepTime", "Asthma", "KidneyDisease", "SkinCancer"]].iloc[
round(len(df) / 100 * 99):len(df)]
y_test = df["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
```
Где `round(len(df) / 100 * 99)` - 99ти процентная строка в датасете.
Теперь, обучим модель на данных `x_train` и `y_train` и получим значимость каждого признака в модели с помощью метода `.feature_importances_`. После отмасштабируем значения важности признаков.
```python
ranks = np.abs(dtc.feature_importances_)
minmax = MinMaxScaler()
ranks = minmax.fit_transform(np.array(ranks).reshape(len(x_train.columns), 1)).ravel()
ranks = map(lambda x: round(x, 2), ranks)
ranks = dict(zip(x_train.columns, ranks))
ranks = dict(sorted(ranks.items(), key=lambda x: x[1], reverse=True))
```
Чтобы отсеять значимые параметры от незначимых, условимся, что параметры, с оценкой значимости меньше `0.05` будут считаться незначимыми. Выведем список параметров с пометками:
```
X ranging results:
* BMI: 1.0 - Approved
* SleepTime: 0.26 - Approved
* PhysicalHealth: 0.18 - Approved
* GenHealth: 0.16 - Approved
* MentalHealth: 0.15 - Approved
* AgeCategory: 0.14 - Approved
* Race: 0.07 - Approved
* PhysicalActivity: 0.06 - Approved
* Stroke: 0.04 - Eliminated
* Smoking: 0.03 - Eliminated
* Asthma: 0.03 - Eliminated
* SkinCancer: 0.03 - Eliminated
* DiffWalking: 0.02 - Eliminated
* Sex: 0.02 - Eliminated
* AlcoholDrinking: 0.0 - Eliminated
* Diabetic: 0.0 - Eliminated
* KidneyDisease: 0.0 - Eliminated
```
Где `Approved` - параметр значим и будет использоваться в предсказании, а `Eliminated` - параметр незначим и будет исключён.
#### Решение задачи кластеризации на полном наборе признаков
Чтобы решить задачу кластеризации моделью `DecisionTreeClassifier`, воспользуемся методом `.predict()`. Оценку качества решения и графики будем строить теми же методами, что в 1й лабораторной работе.
График решения задачи классификации на полном наборе признаков:
![](FullParam.png "")
#### Решение задачи кластеризации, используя только значимые признаки
Согласно предыдущему пункту, значимыми признаками модели были выявлены:
* BMI
* SleepTime
* PhysicalHealth
* GenHealth
* MentalHealth
* AgeCategory
* Race
* PhysicalActivity
Обучим модель только с их использованием, решим задачу классификации и построим график.
График решения задачи классификации, используя только значимые признаки:
![](ImpParam.png "")
### Вывод
Согласно среднеквадратической ошибке и коэфициенту детерминации, модель, обученная только на значимых признаков отработала точнее, чем модель, обученная на полном наборе признаков. Это значит, что ранжирование было проведено верно и дало полезный результат. О логической оценке исключённых данных сказать ничего не получится, поскольку действительную зависимость результата от параметров значет только медицинский эксперт.
Исходя их общих значений точности, обе модели показали хорошие результаты и могут быть применимы к решению задачи классификации на данном наборе данных.

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import pandas as pd
import numpy as np
from matplotlib import pyplot as plt
from sklearn import metrics
from sklearn.preprocessing import MinMaxScaler
from sklearn.tree import DecisionTreeClassifier
'''
Названия столбцов набора данных и их описание:
* HeartDisease - Имеет ли человек ССЗ (No / Yes),
* BMI - Индекс массы тела человека (float),
* Smoking - Выкурил ли человек хотя бы 5 пачек сигарет за всю жизнь (No / Yes),
* AlcoholDrinking - Сильно ли человек употребляет алкоголь (No / Yes),
* Stroke - Был ли у человека инсульт (No / Yes),
* PhysicalHealth - Сколько дней за последний месяц человек чувствовал себя плохо (0-30),
* MentalHealth - Сколько дней за последний месяц человек чувствовал себя удручённо (0-30),
* DiffWalking - Ииспытывает ли человек трудности при ходьбе (No / Yes),
* Sex - Пол (female, male),
* AgeCategory - Возрастная категория (18-24, 25-29, 30-34, 35-39, 40-44, 45-49, 50-54, 55-59, 60-64, 65-69, 70-74, 75-79, 80 or older),
* Race - Национальная принадлежность человека (White, Black, Hispanic, American Indian/Alaskan Native, Asian, Other),
* Diabetic - Был ли у человека диабет (No / Yes),
* PhysicalActivity - Занимался ли человек спротом за последний месяц (No / Yes),
* GenHealth - Общее самочувствие человека (Excellent, Very good, Good, Fair, Poor),
* SleepTime - Сколько человек в среднем спит за 24 часа (0-24),
* Asthma - Была ли у человека астма (No / Yes),
* KidneyDisease - Было ли у человека заболевание почек (No / Yes),
* SkinCancer - Был ли у человека рак кожи (No / Yes).
'''
# Метод оцифровки и нормализации данных
def normalisation(filename):
fileout = "P:\\ULSTU\\ИИС\\Datasets\\heart_2020_norm.csv"
df = pd.read_csv(filename, sep=',').dropna() # Считываем данные с csv файла и удаляем строки, содержащие NaN
for index, row in df.iterrows():
if index % 10000 == 0:
print("normalisation running . . . " + str(round((index / len(df) * 100), 2)) +'%')
if "Yes" in row["HeartDisease"]: # Имеет ли человек ССЗ (0 / 1)
df.at[index, "HeartDisease"] = 1
else:
df.at[index, "HeartDisease"] = 0
if "Yes" in row["Smoking"]: # Выкурил ли человек хотя бы 5 пачек сигарет за всю жизнь (0 / 1)
df.at[index, "Smoking"] = 1
else:
df.at[index, "Smoking"] = 0
if "Yes" in row["AlcoholDrinking"]: # Сильно ли человек употребляет алкоголь (0 / 1)
df.at[index, "AlcoholDrinking"] = 1
else:
df.at[index, "AlcoholDrinking"] = 0
if "Yes" in row["Stroke"]: # Был ли у человека инсульт (0 / 1)
df.at[index, "Stroke"] = 1
else:
df.at[index, "Stroke"] = 0
if "Yes" in row["DiffWalking"]: # Ииспытывает ли человек трудности при ходьбе (0 / 1)
df.at[index, "DiffWalking"] = 1
else:
df.at[index, "DiffWalking"] = 0
if "Female" in row["Sex"]: # Пол (Ж - 0 / М - 1)
df.at[index, "Sex"] = 0
else:
df.at[index, "Sex"] = 1
if "18-24" in row["AgeCategory"]: # Возрастная категория (средний возраст каждого диапазона)
df.at[index, "AgeCategory"] = (18 + 24) / 2
elif "25-29" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (25 + 29) / 2
elif "30-34" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (30 + 34) / 2
elif "35-39" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (35 + 39) / 2
elif "40-44" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (40 + 44) / 2
elif "45-49" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (45 + 49) / 2
elif "50-54" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (50 + 54) / 2
elif "55-59" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (55 + 59) / 2
elif "60-64" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (60 + 64) / 2
elif "65-69" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (65 + 69) / 2
elif "70-74" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (70 + 74) / 2
elif "75-79" in row["AgeCategory"]:
df.at[index, "AgeCategory"] = (75 + 79) / 2
else:
df.at[index, "AgeCategory"] = (25 + 29) / 2
if "White" in row["Race"]: # Национальная принадлежность человека
df.at[index, "Race"] = 0 # White - Европиойды - 0
elif "Black" in row["Race"]: # Black - Негройды - 1
df.at[index, "Race"] = 1 # Hispanic - Испанцы - 2
elif "Hispanic" in row["Race"]: # American Indian/Alaskan Native - Индусы - 3
df.at[index, "Race"] = 2 # Asian - Азиаты - 4
elif "American Indian/Alaskan Native" in row["Race"]: # Other - Другие - 5
df.at[index, "Race"] = 3
elif "Asian" in row["Race"]:
df.at[index, "Race"] = 4
else:
df.at[index, "Race"] = 5
if "Yes" in row["Diabetic"]: # Был ли у человека диабет (0 / 1)
df.at[index, "Diabetic"] = 1
else:
df.at[index, "Diabetic"] = 0
if "Yes" in row["PhysicalActivity"]: # Занимался ли человек спротом за последний месяц (0 / 1)
df.at[index, "PhysicalActivity"] = 1
else:
df.at[index, "PhysicalActivity"] = 0
if "Excellent" in row["GenHealth"]: # Общее самочувствие человека
df.at[index, "GenHealth"] = 4 # Excellent - Отлично - 4
elif "Very good" in row["GenHealth"]: # Very good - Очень хорошо - 3
df.at[index, "GenHealth"] = 3 # Good - Хорошо - 2
elif "Good" in row["GenHealth"]: # Fair - Нормально - 1
df.at[index, "GenHealth"] = 2 # "Poor" / "Other..." - Плохое или другое - 0
elif "Fair" in row["GenHealth"]:
df.at[index, "GenHealth"] = 1
else:
df.at[index, "GenHealth"] = 0
if "Yes" in row["Asthma"]: # Была ли у человека астма (0 / 1)
df.at[index, "Asthma"] = 1
else:
df.at[index, "Asthma"] = 0
if "Yes" in row["KidneyDisease"]: # Было ли у человека заболевание почек (0 /1)
df.at[index, "KidneyDisease"] = 1
else:
df.at[index, "KidneyDisease"] = 0
if "Yes" in row["SkinCancer"]: # Был ли у человека рак кожи (0 / 1)
df.at[index, "SkinCancer"] = 1
else:
df.at[index, "SkinCancer"] = 0
df = df.applymap(pd.to_numeric, errors='coerce').dropna() # Гарантированно убираем все нечисловые значения из датасета
df.to_csv(fileout, index=False) # Сохраняем нормализованный датасет для дальнейшей работы
return fileout
# Метод ранжирования параметров по степени важности
def param_range(filename, elim_kp):
df = pd.read_csv(filename, sep=',') # Считываем нормализованные данные и разделяем их на выборки
x_train = df[["BMI", "Smoking", "AlcoholDrinking", "Stroke", "PhysicalHealth",
"MentalHealth", "DiffWalking", "Sex", "AgeCategory", "Race", "Diabetic",
"PhysicalActivity", "GenHealth", "SleepTime", "Asthma", "KidneyDisease", "SkinCancer"]].iloc[
0:round(len(df) / 100 * 99)]
y_train = df["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test = df[["BMI", "Smoking", "AlcoholDrinking", "Stroke", "PhysicalHealth",
"MentalHealth", "DiffWalking", "Sex", "AgeCategory", "Race", "Diabetic",
"PhysicalActivity", "GenHealth", "SleepTime", "Asthma", "KidneyDisease", "SkinCancer"]].iloc[
round(len(df) / 100 * 99):len(df)]
y_test = df["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
dtc = DecisionTreeClassifier(random_state=241) # Создаём модель дерева решений
dtc.fit(x_train.values, y_train.values) # Обучаем модель на данных
y_predict = dtc.predict(x_test.values) # Решаем задачу классификации на полном наборе признаков
err = pred_errors(y_predict, y_test.values) # Рассчитываем ошибки предсказания
make_plots(y_test.values, y_predict, err[0], err[1], "Полный набор данных") # Строим графики
ranks = np.abs(dtc.feature_importances_) # Получаем значимость каждого признака в модели
minmax = MinMaxScaler() # Шкалируем и нормализуем значимость
ranks = minmax.fit_transform(np.array(ranks).reshape(len(x_train.columns), 1)).ravel()
ranks = map(lambda x: round(x, 2), ranks)
ranks = dict(zip(x_train.columns, ranks))
ranks = dict(sorted(ranks.items(), key=lambda x: x[1], reverse=True)) # Сортируем оценки по максимуму и записываем в словарь
print("X ranging results: \n")
del_keys = [] # Исключаем параметры, важность которых меньше elim_kp
for key, value in ranks.items():
if value >= elim_kp:
print(" * " + key + ": " + str(value) + " - Approved")
else:
print(" * " + key + ": " + str(value) + " - Eliminated")
del_keys.append(key)
for key in del_keys:
ranks.pop(key)
return filename, ranks.keys()
# Метод решения задачи классификации, основанный только на значимых параметрах
def most_valuable_prediction(params):
filename = params[0]
val_p = params[1]
df = pd.read_csv(filename, sep=',')
x_train = df[val_p].iloc[0:round(len(df) / 100 * 99)]
y_train = df["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test = df[val_p].iloc[round(len(df) / 100 * 99):len(df)]
y_test = df["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
dtc = DecisionTreeClassifier(random_state=241)
dtc.fit(x_train.values, y_train.values)
y_predict = dtc.predict(x_test.values)
err = pred_errors(y_predict, y_test.values)
make_plots(y_test.values, y_predict, err[0], err[1], "Только важные параметры")
# Метод рассчёта ошибок
def pred_errors(y_predict, y_test):
mid_square = np.round(np.sqrt(metrics.mean_squared_error(y_test, y_predict)),3) # Рассчёт среднеквадратичной ошибки модели
det_kp = np.round(metrics.accuracy_score (y_test, y_predict), 2) # Рассчёт коэфициента детерминации модели
return mid_square, det_kp
# Метод отрисовки графиков
def make_plots(y_test, y_predict, mid_sqrt, det_kp, title):
plt.plot(y_test, c="red", label="\"y\" исходная") # Создание графика исходной функции
plt.plot(y_predict, c="green", label="\"y\" предсказанная \n"
"Ср^2 = " + str(mid_sqrt) + "\n"
"Кд = " + str(det_kp)) # Создание графика предсказанной функции
plt.legend(loc='lower left')
plt.title(title)
plt.savefig('static/' + title + '.png')
plt.close()
if __name__ == '__main__':
# Работа системы в комплексе
# Здесь elim_kp - значение пороговой значимости параметра (выбран эмпирически)
most_valuable_prediction(param_range(normalisation("P:\\ULSTU\\ИИС\\Datasets\\heart_2020_cleaned.csv"), 0.05))

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## Лабораторная работа 4. Вариант 4.
### Задание
Использовать метод кластеризации по варианту для данных из курсовой работы. Самостоятельно сформулировав задачу. Интерпретировать результаты и оценить, насколько хорошо он подходит для
решения сформулированной задачи.
Алгоритм кластеризации:
- Пространственная кластеризация данных с шумом на основе плотности `DBSCAN`.
### Как запустить
Для запуска программы необходимо с помощью командной строки в корневой директории файлов прокета прописать:
```
python main.py
```
После этого в папке `static` сгенерируются 3 графика, по которым оценивается результат выполнения программы.
### Используемые технологии
- Библиотека `numpy`, используемая для обработки массивов данных и вычислений
- Библиотека `pyplot`, используемая для построения графиков.
- Библиотека `pandas`, используемая для работы с данными для анализа scv формата.
- Библиотека `sklearn` - большой набор функционала для анализа данных. Из неё были использованы инструменты:
- `DBSCAN` - инструмент работы с моделью "Пространственная кластеризация данных с шумом на основе плотности"
- `metrics` - набор инструменов для оценки моделей
- `LinearRegression` - инструмент работы с моделью "Линейная регрессия"
`DBSCAN` - это алгоритм кластеризации, который используется для кластеризации данных на основе плотности, что позволяет обнаруживать кластеры произвольной формы и обнаруживать выбросы (шум). `DBSCAN` может быть полезным при предварительной обработке данных перед задачей предсказания:
- Удаление выбросов (шума): `DBSCAN` может помочь в идентификации и удалении выбросов из данных.
- Генерация новых признаков: `DBSCAN` может быть использован для генерации новых признаков на основе кластеров.
### Описание работы
#### Описание набора данных
Набор данных - набор для определения возможности наличия ССЗ заболеваний у челоека
Названия столбцов набора данных и их описание:
* HeartDisease - Имеет ли человек ССЗ (No / Yes),
* BMI - Индекс массы тела человека (float),
* Smoking - Выкурил ли человек хотя бы 5 пачек сигарет за всю жизнь (No / Yes),
* AlcoholDrinking - Сильно ли человек употребляет алкоголь (No / Yes),
* Stroke - Был ли у человека инсульт (No / Yes),
* PhysicalHealth - Сколько дней за последний месяц человек чувствовал себя плохо (0-30),
* MentalHealth - Сколько дней за последний месяц человек чувствовал себя удручённо (0-30),
* DiffWalking - Ииспытывает ли человек трудности при ходьбе (No / Yes),
* Sex - Пол (female, male),
* AgeCategory - Возрастная категория (18-24, 25-29, 30-34, 35-39, 40-44, 45-49, 50-54, 55-59, 60-64, 65-69, 70-74, 75-79, 80 or older),
* Race - Национальная принадлежность человека (White, Black, Hispanic, American Indian/Alaskan Native, Asian, Other),
* Diabetic - Был ли у человека диабет (No / Yes),
* PhysicalActivity - Занимался ли человек спротом за последний месяц (No / Yes),
* GenHealth - Общее самочувствие человека (Excellent, Very good, Good, Fair, Poor),
* SleepTime - Сколько человек в среднем спит за 24 часа (0-24),
* Asthma - Была ли у человека астма (No / Yes),
* KidneyDisease - Было ли у человека заболевание почек (No / Yes),
* SkinCancer - Был ли у человека рак кожи (No / Yes).
Ссылка на страницу набора на kuggle: [Indicators of Heart Disease](https://www.kaggle.com/datasets/kamilpytlak/personal-key-indicators-of-heart-disease/data)
#### Формулировка задачи
Согласно прописанным в литературе варантам использования, `DBSCAN` может помочь в идентификации и удалении выбросов из данных, а также может быть использован для генерации новых признаков на основе кластеров. Исходя из этого сформулируем задачу:
> "В наборе данных с помощью `DBSCAN` определить и исключить строки содержащие шум, а также сгенерировать новый признак для данных на сонове кластеров. Проверить результат через решение задачи предсказания моделью линейной регрессии на исходных и модифицированных данных"
#### Использование алгоритма `DBSCAN`
Чтобы эффективно использовать алгоритм `DBSCAN` необходимо правильно определить два параметра: `eps` - радиус окрестности вокруг каждой точки и `min_samples` - минимальное количество точек, которые должны находиться в окрестности, чтобы рассматривать ее как ядро кластера.
Начнём с получения датасета из csv файла и признаков кластеризации:
```python
df = pd.read_csv(filein, sep=',').iloc[0:10000]
x = df.drop("HeartDisease", axis=1)
```
> **Warning**
>
> Алгоритм `DBSCAN` - очень жадная по памяти программа. В худшем случае алгоритм может занимать Q(N^2) оперативной памяти устройства, поэтому исследование получится провести лишь на частичной выборке в 10000 строк данных.
Для нахождения оптимального значения параметра `eps` воспользуемся методом рассчёта средней плотности данных. Для этого необходимо найти суммы максимальных и минимальных значений каждого признака и взять среднее арифметическое этих двух значений:
```python
eps_opt = (x.max().values.mean() + x.min().values.mean()) / 2
```
Оптимальное значение параметра `min_samples` будем искать эмпирически. Условимся, что нам будет достаточно разделить высе данные на 6 кластеров (пусть это будут степени риска возникновения ССЗ), но нам нельзя терять в качестве выбросов более 10% данных. Тогда мы будем варьировать параметр `min_samples` от 1 до кол-ва всех данных и закончим эксперимент при выполнении одного из указанных условий:
```python
developed_data = []
for i in range(len(x)):
if i == 0:
continue
dbscan = DBSCAN(eps=eps_opt, min_samples=i)
clusters = dbscan.fit_predict(x.values)
if len(set(clusters)) <= 7:
developed_data = clusters
break
if list(clusters).count(-1) / len(clusters) >= 0.1:
developed_data = clusters
break
```
Таким образом в массиве `developed_data` мы получим значение кластеров для каждй строки датасета. Добавим её как дополнительный признак.
График кластеров для значений датасета:
![](dbscan.png "")
#### Решение задачи предсказания
Создадим два обучающих модуля. В 1м удалим все строки с кластером `-1`, что указывает на то, что они шум и воспользуемся дополнительным признаком `DBSCAN`:
```python
df_mod = df.loc[df["DBSCAN"] != -1]
x_train_mod = df_mod.drop("HeartDisease", axis=1).iloc[0:round(len(df) / 100 * 99)]
y_train_mod = df_mod["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test_mod = df_mod.drop("HeartDisease", axis=1).iloc[round(len(df) / 100 * 99):len(df)]
y_test_mod = df_mod["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
```
Во 2м модуле для разделения на выборки оставим исходные данные:
```python
x_train = df.drop(["HeartDisease", "DBSCAN"], axis=1).iloc[0:round(len(df) / 100 * 99)]
y_train = df["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test = df.drop(["HeartDisease", "DBSCAN"], axis=1).iloc[round(len(df) / 100 * 99):len(df)]
y_test = df["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
```
Создаим две модели регрессии и на каждой решим задачу предсказания. Вычислим ошибки и построим графики.
График решения задачи предсказания на модифицированных данных:
![](regdbscan.png "")
График решения задачи предсказания на исходных данных:
![](reg.png "")
### Вывод
Согласно графиком, модель, обученная на исходных данных показала результат лучше, чем модель, обученная на модифицированных данных. Получается, что на данном наборе, используя алгоритм `DBSCAN`, мы не только невероятно увеличиваем затратность памяти на обучение модели, но и отрицательно влияем на результат её работы. Это означает, что использование алгоритма на таком наборе данных абсолютно нецелесообразно.
Связанно это может быть с большим количеством бинарных признаков в данных. В таких случаях задачи кластеризации решаются сравнительно хуже.

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import pandas as pd
import numpy as np
from matplotlib import pyplot as plt
from sklearn import metrics
from sklearn.cluster import DBSCAN
from sklearn.linear_model import LinearRegression
filein = "P:\\ULSTU\\ИИС\\Datasets\\heart_2020_norm.csv"
fileout = "P:\\ULSTU\\ИИС\\Datasets\\heart_2020_classified.csv"
# Метод устранения шумов и кластеризации данных алгоритмом DBSCAN
def dbscan():
df = pd.read_csv(filein, sep=',').iloc[0:10000] # Считывание датасета
x = df.drop("HeartDisease", axis=1) # Определение кластеризуемых параметров
eps_opt = (x.max().values.mean() + x.min().values.mean()) / 2 # Рассчёт опционального радиуса окрестности методом средней плотности
developed_data = [] # Подбор значения минимального количества точек в окрестности
for i in range(len(x)): # - Начинаем с одной точки
if i == 0:
continue # - Увеличиваем значение кол-ва точек на 1
dbscan = DBSCAN(eps=eps_opt, min_samples=i) # - Обучаем модель и получаем массив кластеров
clusters = dbscan.fit_predict(x.values)
if len(set(clusters)) <= 7: # - Прекращаем увеличивать значение точек, если кол-во кластеров уменьшилось до требуемого
developed_data = clusters
break
if list(clusters).count(-1) / len(clusters) >= 0.1: # - Или если "шум" превышает 10% от данных
developed_data = clusters
break
make_plot(x, developed_data)
df["DBSCAN"] = developed_data
df.to_csv(fileout, index=False) # Сохраняем полученные кластеры как доп. столбец датасета
# Метод оценки эффективности кластеризации DBSCAN
def linear_reg(): # Создаём две выборки данных
df = pd.read_csv(fileout, sep=',') # В 1й избавляемся от "шумов" и используем столбец кластеров как признак
df_mod = df.loc[df["DBSCAN"] != -1]
x_train_mod = df_mod.drop("HeartDisease", axis=1).iloc[0:round(len(df) / 100 * 99)]
y_train_mod = df_mod["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test_mod = df_mod.drop("HeartDisease", axis=1).iloc[round(len(df) / 100 * 99):len(df)]
y_test_mod = df_mod["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
# Во 2й оставляем обычные данные
x_train = df.drop(["HeartDisease", "DBSCAN"], axis=1).iloc[0:round(len(df) / 100 * 99)]
y_train = df["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test = df.drop(["HeartDisease", "DBSCAN"], axis=1).iloc[round(len(df) / 100 * 99):len(df)]
y_test = df["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
lr_mod = LinearRegression() # Обучаем модель без "шума" и с признаком кластеров
lr_mod.fit(x_train_mod.values, y_train_mod.values)
y_mod_pred = lr_mod.predict(x_test_mod.values)
err = pred_errors(y_mod_pred, y_test_mod.values)
make_plots(y_test_mod.values, y_mod_pred, err[0], err[1], "Регрессия с кластеризацией dbscan")
lr = LinearRegression() # Обучаем модель на исходных данных
lr.fit(x_train.values, y_train.values)
y_pred = lr.predict(x_test.values)
err = pred_errors(y_pred, y_test.values)
make_plots(y_test.values, y_pred, err[0], err[1], "Чистая линейная регрессия")
# Метод рассчёта ошибок
def pred_errors(y_predict, y_test):
mid_square = np.round(np.sqrt(metrics.mean_squared_error(y_test, y_predict)),3) # Рассчёт среднеквадратичной ошибки модели
det_kp = np.round(metrics.r2_score (y_test, y_predict), 2) # Рассчёт коэфициента детерминации модели
return mid_square, det_kp
# Метод отрисовки графиков
def make_plots(y_test, y_predict, mid_sqrt, det_kp, title):
plt.plot(y_test, c="red", label="\"y\" исходная") # Создание графика исходной функции
plt.plot(y_predict, c="green", label="\"y\" предсказанная \n"
"Ср^2 = " + str(mid_sqrt) + "\n"
"Кд = " + str(det_kp)) # Создание графика предсказанной функции
plt.legend(loc='lower left')
plt.title(title)
plt.savefig('static/' + title + '.png')
plt.close()
# Метод построения графика кластеризации
def make_plot(x, c):
plt.scatter(x.values[:, 0], x.values[:, 13], c=c, cmap='viridis')
plt.xlabel('BMI')
plt.ylabel('SleepTime')
plt.colorbar()
plt.title('DBSCAN Clustering')
plt.savefig('static/dbscan.png')
plt.close()
if __name__ == '__main__':
dbscan()
linear_reg()

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## Лабораторная работа 5. Вариант 4.
### Задание
Использовать регрессию по варианту для данных из курсовой работы. Самостоятельно сформулировав задачу. Интерпретировать результаты и оценить, насколько хорошо он подходит для
решения сформулированной задачи.
Модель регрессии:
- Гребневая регрессия `Ridge`.
### Как запустить
Для запуска программы необходимо с помощью командной строки в корневой директории файлов прокета прописать:
```
python main.py
```
После этого в папке `static` сгенерируются 2 графика, по которым оценивается результат выполнения программы.
### Используемые технологии
- Библиотека `numpy`, используемая для обработки массивов данных и вычислений
- Библиотека `pyplot`, используемая для построения графиков.
- Библиотека `pandas`, используемая для работы с данными для анализа scv формата.
- Библиотека `sklearn` - большой набор функционала для анализа данных. Из неё были использованы инструменты:
- `Ridge` - инструмент работы с моделью "Гребневая регрессия"
- `metrics` - набор инструменов для оценки моделей
`Ridge` - это линейная регрессионная модель с регуляризацией L2, которая может быть использована для решения задачи регрессии.
### Описание работы
#### Описание набора данных
Набор данных - набор для определения возможности наличия ССЗ заболеваний у челоека
Названия столбцов набора данных и их описание:
* HeartDisease - Имеет ли человек ССЗ (No / Yes),
* BMI - Индекс массы тела человека (float),
* Smoking - Выкурил ли человек хотя бы 5 пачек сигарет за всю жизнь (No / Yes),
* AlcoholDrinking - Сильно ли человек употребляет алкоголь (No / Yes),
* Stroke - Был ли у человека инсульт (No / Yes),
* PhysicalHealth - Сколько дней за последний месяц человек чувствовал себя плохо (0-30),
* MentalHealth - Сколько дней за последний месяц человек чувствовал себя удручённо (0-30),
* DiffWalking - Ииспытывает ли человек трудности при ходьбе (No / Yes),
* Sex - Пол (female, male),
* AgeCategory - Возрастная категория (18-24, 25-29, 30-34, 35-39, 40-44, 45-49, 50-54, 55-59, 60-64, 65-69, 70-74, 75-79, 80 or older),
* Race - Национальная принадлежность человека (White, Black, Hispanic, American Indian/Alaskan Native, Asian, Other),
* Diabetic - Был ли у человека диабет (No / Yes),
* PhysicalActivity - Занимался ли человек спротом за последний месяц (No / Yes),
* GenHealth - Общее самочувствие человека (Excellent, Very good, Good, Fair, Poor),
* SleepTime - Сколько человек в среднем спит за 24 часа (0-24),
* Asthma - Была ли у человека астма (No / Yes),
* KidneyDisease - Было ли у человека заболевание почек (No / Yes),
* SkinCancer - Был ли у человека рак кожи (No / Yes).
Ссылка на страницу набора на kuggle: [Indicators of Heart Disease](https://www.kaggle.com/datasets/kamilpytlak/personal-key-indicators-of-heart-disease/data)
#### Формулировка задачи
Поскольку модель гребневой регрессии используется для решения задачи регресси, то попробуем на ней предсказать поведение параметров при обучении на всех признаках, и на значимых признаках, найденных ранее в лабораторной №3. Сформулируем задачу:
> "Решить задачу предсказания с помощью моделей гребневой регрессии, обученных на всех признаках и только на значимых признаках. Сравнить результаты работы моделей"
#### Решение задачи предсказания
Создадим два обучающих модуля. В 1й включим все признаки. Разделим даныые на выборки. Пусть обучающая выборка будет 99% данных, а тестовая - 1% соответсвенно:
```python
x_train = df.drop("HeartDisease", axis=1).iloc[0:round(len(df) / 100 * 99)]
y_train = df["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test = df.drop("HeartDisease", axis=1).iloc[round(len(df) / 100 * 99):len(df)]
y_test = df["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
```
Тогда во 2м модуле используем только признаки, названные значимыми в 3й лабораторной, а именно:
* BMI
* SleepTime
* PhysicalHealth
* GenHealth
* MentalHealth
* AgeCategory
* Race
* PhysicalActivity
Обучим две модели гребневой регнессии на данных из разных модулей. Решим задачу предсказания, найдём ошибки и построим графики.
График решения задачи предсказания моделью гребневой регрессии с использованием всех признаков:
![](all.png "")
График решения задачи предсказания моделью гребневой регрессии с использованием значимых признаков:
![](imp.png "")
### Вывод
Согласно графиком, среднеквадратическая ошибка обеих моделей достаточна низкая. что свидетельствует достаточно точному соответствию истиных и полученных значений, однако коэффициент детерминации моделей имеет очень низкое значение, что свидетельствует практически полному непониманию модели зависимостей в данных.
> **Note**
>
> Модель `Ridge` имеет коэффициент регуляризации `alpha`, который помогает избавиться модели от переобучения, однако даже при стандартном его значении в единицу, модель показывает очень низкий коэффициент детерминации, поэтому варьирование его значения не принесёт никаких результатов.
Исходя из полученных результатов можно сделать вывод, что модель гребневой регрессии неприменима к данному набору данных.

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import pandas as pd
import numpy as np
from matplotlib import pyplot as plt
from sklearn import metrics
from sklearn.linear_model import Ridge
filein = "P:\\ULSTU\\ИИС\\Datasets\\heart_2020_norm.csv"
# Метод решения задачи предсказания на всех признаках данных
def ridge_all():
df = pd.read_csv(filein, sep=',')
x_train = df.drop("HeartDisease", axis=1).iloc[0:round(len(df) / 100 * 99)]
y_train = df["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test = df.drop("HeartDisease", axis=1).iloc[round(len(df) / 100 * 99):len(df)]
y_test = df["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
rid = Ridge(alpha=1.0)
rid.fit(x_train.values, y_train.values)
y_predict = rid.predict(x_test.values)
err = pred_errors(y_predict, y_test.values)
make_plots(y_test.values, y_predict, err[0], err[1], "Гребневая регрессия (все признаки)")
# Метод решения задачи предсказания на значимых признаках данных
def ridge_valuable():
df = pd.read_csv(filein, sep=',')
x_train = df[["BMI", "PhysicalHealth", "MentalHealth", "AgeCategory", "Race",
"PhysicalActivity", "GenHealth", "SleepTime", ]].iloc[0:round(len(df) / 100 * 99)]
y_train = df["HeartDisease"].iloc[0:round(len(df) / 100 * 99)]
x_test = df[["BMI", "PhysicalHealth", "MentalHealth", "AgeCategory", "Race",
"PhysicalActivity", "GenHealth", "SleepTime", ]].iloc[round(len(df) / 100 * 99):len(df)]
y_test = df["HeartDisease"].iloc[round(len(df) / 100 * 99):len(df)]
rid = Ridge(alpha=1.0)
rid.fit(x_train.values, y_train.values)
y_predict = rid.predict(x_test.values)
err = pred_errors(y_predict, y_test.values)
make_plots(y_test.values, y_predict, err[0], err[1], "Гребневая регрессия (значимые признаки)")
# Метод рассчёта ошибок
def pred_errors(y_predict, y_test):
mid_square = np.round(np.sqrt(metrics.mean_squared_error(y_test, y_predict)),3) # Рассчёт среднеквадратичной ошибки модели
det_kp = np.round(metrics.r2_score (y_test, y_predict), 2) # Рассчёт коэфициента детерминации модели
return mid_square, det_kp
# Метод отрисовки графиков
def make_plots(y_test, y_predict, mid_sqrt, det_kp, title):
plt.plot(y_test, c="red", label="\"y\" исходная") # Создание графика исходной функции
plt.plot(y_predict, c="green", label="\"y\" предсказанная \n"
"Ср^2 = " + str(mid_sqrt) + "\n"
"Кд = " + str(det_kp)) # Создание графика предсказанной функции
plt.legend(loc='lower left')
plt.title(title)
plt.savefig('static/' + title + '.png')
plt.close()
if __name__ == '__main__':
ridge_all()
ridge_valuable()

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## Лабораторная работа 6. Вариант 4.
### Задание
Использовать нейронную сеть `MLPRegressor` для данных из курсовой работы. Самостоятельно сформулировав задачу. Интерпретировать результаты и оценить, насколько хорошо он подходит для решения сформулированной задачи.
### Как запустить
Для запуска программы необходимо с помощью командной строки в корневой директории файлов прокета прописать:
```
python main.py
```
После этого в папке `static` сгенерируются график, по которому оценивается результат выполнения программы.
### Используемые технологии
- Библиотека `numpy`, используемая для обработки массивов данных и вычислений
- Библиотека `pyplot`, используемая для построения графиков.
- Библиотека `pandas`, используемая для работы с данными для анализа scv формата.
- Библиотека `sklearn` - большой набор функционала для анализа данных. Из неё были использованы инструменты:
- `train_test_split` - разделитель данных на обучающиую и тестовую выборки
- `metrics` - набор инструменов для оценки моделей
- `MLPRegressor` - инструмент работы с моделью "Многослойный перцептрон для задачи регрессии"
`MLPRegressor` - это тип искусственной нейронной сети, состоящей из нескольких слоев нейронов, включая входной слой, скрытые слои и выходной слой.
Этот класс позволяет создавать и обучать MLP-модель для предсказания непрерывных числовых значений.
### Описание работы
#### Описание набора данных
Набор данных - набор для определения возможности наличия ССЗ заболеваний у челоека
Названия столбцов набора данных и их описание:
* HeartDisease - Имеет ли человек ССЗ (No / Yes),
* BMI - Индекс массы тела человека (float),
* Smoking - Выкурил ли человек хотя бы 5 пачек сигарет за всю жизнь (No / Yes),
* AlcoholDrinking - Сильно ли человек употребляет алкоголь (No / Yes),
* Stroke - Был ли у человека инсульт (No / Yes),
* PhysicalHealth - Сколько дней за последний месяц человек чувствовал себя плохо (0-30),
* MentalHealth - Сколько дней за последний месяц человек чувствовал себя удручённо (0-30),
* DiffWalking - Ииспытывает ли человек трудности при ходьбе (No / Yes),
* Sex - Пол (female, male),
* AgeCategory - Возрастная категория (18-24, 25-29, 30-34, 35-39, 40-44, 45-49, 50-54, 55-59, 60-64, 65-69, 70-74, 75-79, 80 or older),
* Race - Национальная принадлежность человека (White, Black, Hispanic, American Indian/Alaskan Native, Asian, Other),
* Diabetic - Был ли у человека диабет (No / Yes),
* PhysicalActivity - Занимался ли человек спротом за последний месяц (No / Yes),
* GenHealth - Общее самочувствие человека (Excellent, Very good, Good, Fair, Poor),
* SleepTime - Сколько человек в среднем спит за 24 часа (0-24),
* Asthma - Была ли у человека астма (No / Yes),
* KidneyDisease - Было ли у человека заболевание почек (No / Yes),
* SkinCancer - Был ли у человека рак кожи (No / Yes).
Ссылка на страницу набора на kuggle: [Indicators of Heart Disease](https://www.kaggle.com/datasets/kamilpytlak/personal-key-indicators-of-heart-disease/data)
#### Формулировка задачи
Поскольку модель `MLPRegressor` используется для решения задачи регресси, то попробуем на ней предсказать поведение параметров при обучении на всех признаках, варьируя конфигурации модели. Сформулируем задачу:
> "Решить задачу предсказания с помощью нейронной сети, обученной на всех признаках при различных конфигурациях. Сравнить результаты работы моделей"
#### Решение задачи предсказания
Из csv файла выргузим набор данных, выделим параметр для предсказания - (столбец `HeartDisease`), и его признаки - все остальные столбцы. Разделим данные на обучающую и тестовые выборки, при условии, что 99.9% данных - для обучения, а остальные для тестов:
```python
х, y = [df.drop("HeartDisease", axis=1).values, df["HeartDisease"].values]
x_train, x_test, y_train, y_test = train_test_split(x, y, test_size=0.001, random_state=42)
```
Создадим класс нейронной сети и определим варьируемые конфигурации.
`hidden_layer_sizes ` - параметр, принимающий на вход количество скрытых слоёв нейронной сети и количество нейронов в каждом слое. Для определения его наилучшего значения необходимо взять минимальное количество слоёв и нейронов в слое и постепенно увеличивать его, до тех пор, пока качество модели не перестанет улучшаться или не будет достаточным.
> **Note**
>
> Экспериментально для нейронной сети `MLPRegressor` было выявленно наилучшее значение равное 100 слоям нейронной сети по 50 нейронов в каждой. Для прелоставления данных процесс оказался очень длительным, поэтому будет указан только наилучший результат.
`activation` - функция активации. В классе представлена 4мя решениями:
- `identity` - функция `f(x) = x`, абсолютно линейная идентичная функция для приведения работы нейронной сети ближе к модели линейной регрессии,
- `logistic` - логистическая сигмовидная функция вида `f(x) = 1 / (1 + exp(-x))`,
- `tanh` - гиперболическая функция тангенса `f(x) = tanh(x)`,
- `relu` - функция выпрямленной линейной единицы измерения `f(x) = max(0, x)`, проверяет больше ли х нуля (используется чаще всего).
`solver` - метод оптимизации весов. Существует в 3х вариациях:
- `Bfgs` - оптимизатор из семейства квазиньютоновских методов,
> **Warning**
>
> Оптимизатор из семейства квазиньютоновских методов показал себя как очень жадный по времени выполнения алгоритм при этом использующий большие коэфициенты весов, что приводило к едиичным, но слишком большим погрешностям на данных. Поэтому в эксперименте варьирования он не принимал участия.
- `sgd` - метод стозастического градиентного спуска (классика),
- `adam` - оптимизированный метод стозастического градиентного спуска Кингмы, Дидерика и Джимми Барнсома.
```python
mlp = MLPRegressor(hidden_layer_sizes=(100, 50), activation='relu', solver='adam', random_state=42)
mlp.fit(x_train, y_train)
y_predict = mlp.predict(x_test)
err = pred_errors(y_predict, y_test)
```
Проведём эксперимент варьирования конфигураций, посчитаем ошибки предсказания и выберем наилучшую нейронную сеть.
#### Эксперимент варьирования
Рассмотрим различные функции активации.
Графики решения задачи предсказания на разных функциях активации:
![](1.png "")
Теперь для выбранной функции подберём лучший метод оптимизации весов.
Грфики решения задачи предсказания на разных методах оптимизации весов:
![](2.png "")
### Вывод
Согласно графиком, наилучшие результаты показала нейронаая сеть с функцией активации гиперболического тангенса `tanh` и методом оптимизации весов путём оптимизированного стозастического градиентного спуска Кингмы, Дидерика и Джимми Барнсома `adam`.
В целом нейронная сеть справилась неудовлетворительно с задачей предсказания, показав хоть и небольшую среднеквадратическую ошибку в 0.25, но очень низкий коэфициент детерминации в 0.23 максимально.
Это значит, что теоретически модель может предсказать результат по признакам, однако понимания зависимостей результата от последних у неё мало.

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import pandas as pd
import numpy as np
from matplotlib import pyplot as plt
from sklearn import metrics
from sklearn.model_selection import train_test_split
from sklearn.neural_network import MLPRegressor
filein = "P:\\ULSTU\\ИИС\\Datasets\\heart_2020_norm.csv"
# Метод обучения нейронной сети
def reg_neural_net():
df = pd.read_csv(filein, sep=',')
x, y = [df.drop("HeartDisease", axis=1).values,
df["HeartDisease"].values]
x_train, x_test, y_train, y_test = train_test_split(x, y, test_size=0.001, random_state=42)
mlp = MLPRegressor(hidden_layer_sizes=(100, 50), activation='tanh', solver='adam', random_state=15000)
mlp.fit(x_train, y_train)
y_predict = mlp.predict(x_test)
err = pred_errors(y_predict, y_test)
make_plots(y_test, y_predict, err[0], err[1], "Нейронная сеть")
# Метод рассчёта ошибок
def pred_errors(y_predict, y_test):
mid_square = np.round(np.sqrt(metrics.mean_squared_error(y_test, y_predict)),3) # Рассчёт среднеквадратичной ошибки модели
det_kp = np.round(metrics.r2_score(y_test, y_predict), 2) # Рассчёт коэфициента детерминации модели
return mid_square, det_kp
# Метод отрисовки графиков
def make_plots(y_test, y_predict, mid_sqrt, det_kp, title):
plt.plot(y_test, c="red", label="\"y\" исходная") # Создание графика исходной функции
plt.plot(y_predict, c="green", label="\"y\" предсказанная \n"
"Ср^2 = " + str(mid_sqrt) + "\n"
"Кд = " + str(det_kp)) # Создание графика предсказанной функции
plt.legend(loc='lower left')
plt.title(title)
plt.savefig('static/' + title + '.png')
plt.close()
if __name__ == '__main__':
reg_neural_net()

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## Лабораторная работа 1. Вариант 4.
### Задание
Построить графики, отобразить
качество моделей, объяснить полученные результаты.
Данные: `make_circles (noise=0.2, factor=0.5, random_state=rs)`
Модели:
- Линейная регресся
- Полиномиальная регрессия (со степенью 4)
- Гребневая полиномиальная регресся (со степенью 4, alpha = 1.0)
### Как запустить
Для запуска программы необходимо с помощью командной строки в корневой директории файлов прокета прописать:
```
python main.py
```
После будет запущена программа и сгенерированы 3 графика.
### Используемые технологии
- `numpy` (псевдоним `np`): NumPy - это библиотека для научных вычислений в Python.
- `matplotlib.pyplot` (псевдоним `plt`): Matplotlib - это библиотека для создания статических, анимированных и интерактивных визуализаций в Python. `pyplot` - это модуль Matplotlib, который используется для создания графиков и диаграмм.
- `matplotlib.colors.ListedColormap` - этот модуль Matplotlib используется для создания цветных схем цветовых карт, которые могут быть использованы для визуализации данных.
- `sklearn` (scikit-learn): Scikit-learn - это библиотека для машинного обучения и анализа данных в Python. Из данной библиотеки были использованы следующие модули:
- `model_selection` - Этот модуль scikit-learn предоставляет инструменты для разделения данных на обучающие и тестовые наборы.
- `linear_model` - содержит реализации линейных моделей, таких как линейная регрессия, логистическая регрессия и другие.
- `pipeline` - позволяет объединить несколько этапов обработки данных и построения моделей в одну конвейерную цепочку.
- `PolynomialFeatures` - Этот класс scikit-learn используется для генерации полиномиальных признаков, позволяя моделям учитывать нелинейные зависимости в данных.
- `make_circles` - Эта функция scikit-learn создает набор данных, представляющий собой два класса, расположенных в форме двух пересекающихся окружностей. Это удобно для демонстрации работы различных моделей классификации.
- `LinearRegression` - линейная регрессия - это алгоритм машинного обучения, используемый для задач бинарной классификации.
### Описание работы
Программа генерирует данные, разделяет данные на тестовые и обучающие для моделей по заданию.
```python
rs = randrange(50)
X, y = make_circles(noise=0.2, factor=0.5, random_state=rs)
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=rs)
```
`X_train` и `y_train` используются для обучения, а на данных `X_test` и `y_test` - оценка их качества.
Поскольку все модели в задании регрессионные, результаты работы будем оценивать через решение задачи предсказания.
Для оценки будем использовать следующие критерии: среднеквадратическому отклонению и коэфициенту детерминации. Чем ошибка меньше и чем коэфициент детерминации больше, тем лучше.
```python
np.round(np.sqrt(metrics.mean_squared_error(y_test, y_predict)),3) #среднеквадратическое отклонение
np.round(metrics.r2_score(y_test, y_predict), 2) #коэфициент детерминации
```
Оценочные параметры округлены с помощью функции `round` до 3х и 2х знаков после запятой.
### Линейная регрессия
Для создания модели линейной регрессии воспользуемся `LinearRegression`.
```python
linear_reg = LinearRegression()
```
Обучим её и предскажем с её помощью `y` на тестовой выборке `x_text`.
```python
model.fit(X_train, y_train)
y_predict = model.predict(X_test)
```
График для оценки результатов:
![](linear.png "")
#### Полиномиальная регрессия
Добавим 3 недостающих члена к линейной модели, возведённых в соответствующие степени 2, 3 и 4.
```python
poly_reg = make_pipeline(PolynomialFeatures(degree=4), StandardScaler(), LogisticRegression(random_state=rs))
```
График для оценки результатов:
![](poly.png "")
#### Полиномиальная гребневая регрессия
Линейная регрессия является разновидностью полиномиальной регрессии со степенью ведущего члена равной 1.
```python
ridge_poly_reg = make_pipeline(PolynomialFeatures(degree=4), StandardScaler(), LogisticRegression(penalty='l2', C=1.0, random_state=rs))
```
График для оценки результатов:
![](ridge.png "")
Точность измерений:
![](result.png "")
### Вывод
Наиболее низкое среднеквадратичное отклонение и наиболее высокий коэффициент детерминации показала модель полиномиальной и полиномиальной гребневой регрессии. Это означает, что они являются лучшими моделями для данного набора данных.

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from random import randrange
import numpy as np
from matplotlib import pyplot as plt
from matplotlib.colors import ListedColormap
from sklearn import metrics
from sklearn.model_selection import train_test_split
from sklearn.linear_model import LinearRegression, LogisticRegression
from sklearn.pipeline import make_pipeline
from sklearn.preprocessing import StandardScaler, PolynomialFeatures
from sklearn.datasets import make_circles
rs = randrange(50)
X, y = make_circles(noise=0.2, factor=0.5, random_state=rs) # Сгенерируем данные
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2,
random_state=rs) # Разделим данные на обучающий и тестовый наборы
# Линейная модель
linear_reg = LinearRegression()
# Полиномиальная регрессия (со степенью 4)
poly_reg = make_pipeline(PolynomialFeatures(degree=4), StandardScaler(), LogisticRegression(random_state=rs))
# Гребневая полиномиальная регрессия (со степенью 4 и alpha=1.0)
ridge_poly_reg = make_pipeline(PolynomialFeatures(degree=4), StandardScaler(), LogisticRegression(penalty='l2', C=1.0,
random_state=rs))
# Обучение моделей
def mid_sq_n_det(name, model):
model.fit(X_train, y_train)
y_predict = model.predict(X_test)
print(f'Рассчёт среднеквадратичной ошибки для {name}: '
f'{np.round(np.sqrt(metrics.mean_squared_error(y_test, y_predict)),3)}') # Рассчёт среднеквадратичной ошибки модели
print(f'Рассчёт коэфициента детерминации для {name}: {np.round(metrics.r2_score(y_test, y_predict), 2)}') # Рассчёт коэфициента детерминации модели
return name, model
# Графики
models = [mid_sq_n_det("Линейная регрессия", linear_reg),
mid_sq_n_det("Полиномиальная регрессия (со степенью 4)", poly_reg),
mid_sq_n_det("Гребневая полиномиальная регрессия (со степенью 4, alpha = 1.0)", ridge_poly_reg)]
cmap_background = ListedColormap(['#FFAAAA', '#AAAAFF'])
cmap_points = ListedColormap(['#FF0000', '#0000FF'])
plt.figure(figsize=(15, 4))
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()

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## Задание
Используя код из пункта «Решение задачи ранжирования признаков», выполните ранжирование признаков с помощью указанных по варианту моделей. Отобразите получившиеся оценки каждого признака каждой 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).
Вариант 6:
- Гребневая регрессия (Ridge)
- Сокращение признаков Случайными деревьями (Random Forest Regressor)
- Линейная корреляция (f_regression)
## Как запустить лабораторную
Запустить файл main.py
## Используемые технологии
Библиотеки numpy, scikit-learn, их компоненты
## Описание лабораторной (программы)
Данный код выполняет оценку важности признаков в задаче регрессии.
Сначала генерируются исходные данные с использованием 14 признаков (X) и функции-выхода (Y), которая представляет собой регрессионную проблему Фридмана. Затем используются две модели - гребневая регрессия (Ridge) и случайный лес (Random Forest) - для обучения на данных и оценки важности признаков.
Затем вычисляются коэффициенты корреляции между признаками и целевой переменной, и результаты сохраняются в словаре ranks с ключом "Correlation".
Далее в цикле вычисляются средние значения оценок важности признаков для каждого признака. Результаты сохраняются в словаре mean.
Как результат, программа выводит оценки важности для каждой модели и средние значения важности для каждого признака
## Результат
В результате получаем следующее:
Ridge
[('x4', 1.0), ('x14', 0.92), ('x1', 0.76), ('x2', 0.75), ('x12', 0.67), ('x5', 0.61), ('x11', 0.59), ('x6', 0.08), ('x8', 0.08), ('x3', 0.06), ('x7', 0.03), ('x10', 0.01), ('x9', 0.0), ('x13', 0.0)]
Random Forest
[('x14', 1.0), ('x2', 0.76), ('x1', 0.66), ('x4', 0.55), ('x11', 0.29), ('x12', 0.28), ('x5', 0.23), ('x3', 0.1), ('x13', 0.09), ('x7', 0.01), ('x6', 0.0), ('x8', 0.0), ('x9', 0.0), ('x10', 0.0)]
Correlation
[('x4', 1.0), ('x14', 0.98), ('x2', 0.45), ('x12', 0.44), ('x1', 0.3), ('x11', 0.29), ('x5', 0.04), ('x8', 0.02), ('x7', 0.01), ('x9', 0.01), ('x3', 0.0), ('x6', 0.0), ('x10', 0.0), ('x13', 0.0)]
Mean Importance:
x14 : 0.97
x4 : 0.85
x2 : 0.65
x1 : 0.57
x12 : 0.46
x11 : 0.39
x5 : 0.29
x3 : 0.05
x6 : 0.03
x8 : 0.03
x13 : 0.03
x7 : 0.02
x9 : 0.0
x10 : 0.0
Вывод: Самым важным признаком в среднем оказался х14, потом х4 и далее по убывающей - х2, х1, х12, х11, х5. Остальные признаки показали минимальную значимость или не имеют ее совсем.
Но стоит отметить, что несмотря на среднюю оценку признаков, разные модели выявили их значимость по-разному, что можно увидеть в тексте выше.
Корреляция и гребневая регрессия показали чуть более схожий результат, нежели сокращение признаков случайными деревьями, хотя стоит заметить, что результаты всех моделей все равно отличаются.

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from sklearn.linear_model import Ridge
from sklearn.feature_selection import f_regression
from sklearn.ensemble import RandomForestRegressor
from sklearn.preprocessing import MinMaxScaler
import numpy as np
# генерируем исходные данные: 750 строк-наблюдений и 14 столбцов-признаков
np.random.seed(0)
size = 750
X = np.random.uniform(0, 1, (size, 14))
# Задаем функцию-выход: регрессионную проблему Фридмана
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))
# Добавляем зависимость признаков
X[:, 10:] = X[:, :4] + np.random.normal(0, .025, (size, 4))
# Гребневая регрессия
ridge = Ridge(alpha=7)
ridge.fit(X, Y)
# Случайные деревья
rf = RandomForestRegressor(n_estimators=100, random_state=0)
rf.fit(X, Y)
ranks = {}
names = ["x%s" % i for i in range(1, 15)]
def rank_to_dict(ranks, names):
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))
ranks["Ridge"] = rank_to_dict(ridge.coef_, names)
ranks["Random Forest"] = rank_to_dict(rf.feature_importances_, names)
# Вычисляем коэффициенты корреляции между признаками и целевой переменной
correlation_coeffs = f_regression(X, Y)[0]
# Добавляем результаты корреляции в словарь ranks
ranks["Correlation"] = rank_to_dict(correlation_coeffs, names)
# Создаем пустой словарь для данных
mean = {}
# Бежим по словарю ranks
for key, value in ranks.items():
# Пробегаемся по словарю значений ranks, которые являются парой имя:оценка
for item in value.items():
# Имя будет ключом для нашего mean
# Если элемента с текущим ключом в mean нет - добавляем
if item[0] not in mean:
mean[item[0]] = 0
# Суммируем значения по каждому ключу-имени признака
mean[item[0]] += item[1]
# Находим среднее по каждому признаку
for key, value in mean.items():
res = value / len(ranks)
mean[key] = round(res, 2)
# Сортируем и распечатываем список
mean = sorted(mean.items(), key=lambda x: x[1], reverse=True)
for key, value in ranks.items():
ranks[key] = sorted(value.items(), key=lambda x: x[1], reverse=True)
for key, value in ranks.items():
print(key)
print(value)
print("Mean Importance:")
for item in mean:
print(item[0], ":", item[1])

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,Name,Primary Attribute,Roles,Herald Picks,Herald Wins,Herald Win Rate,Guardian Picks,Guardian Wins,Guardian Win Rate,Crusader Picks,Crusader Wins,Crusader Win Rate,Archon Picks,Archon Wins,Archon Win Rate,Legend Picks,Legend Wins,Legend Win Rate,Ancient Picks,Ancient Wins,Ancient Win Rate,Divine Picks,Divine Wins,Divine Win Rate,Immortal Picks,Immortal Wins,Immortal Win Rate
0,Abaddon,all,"Support, Carry, Durable",1111,575,51.76,6408,3309,51.64,13811,7050,51.05,16497,8530,51.71,11360,5877,51.73,5571,2893,51.93,2632,1345,51.1,991,497,50.15
1,Alchemist,str,"Carry, Support, Durable, Disabler, Initiator, Nuker",1119,486,43.43,6370,2883,45.26,12238,5617,45.9,13028,6130,47.05,8455,4055,47.96,4120,1984,48.16,2021,1023,50.62,860,424,49.3
2,Ancient Apparition,int,"Support, Disabler, Nuker",2146,1073,50.0,13697,7069,51.61,30673,16118,52.55,35145,18219,51.84,23114,12166,52.63,10688,5528,51.72,5035,2573,51.1,2134,1076,50.42
3,Anti-Mage,agi,"Carry, Escape, Nuker",3765,1818,48.29,22050,10774,48.86,47371,23304,49.19,49115,24074,49.02,28599,13991,48.92,12303,5958,48.43,4866,2349,48.27,1502,751,50.0
4,Arc Warden,agi,"Carry, Escape, Nuker",1448,704,48.62,8047,4162,51.72,14946,7982,53.41,14711,7875,53.53,9472,5167,54.55,4323,2309,53.41,2104,1148,54.56,789,435,55.13
5,Axe,str,"Initiator, Durable, Disabler, Carry",5343,2880,53.9,32652,17719,54.27,71010,37736,53.14,77869,40559,52.09,49182,25079,50.99,22637,11353,50.15,10114,5000,49.44,3795,1837,48.41
6,Bane,all,"Support, Disabler, Nuker, Durable",745,334,44.83,4983,2422,48.61,11332,5504,48.57,13633,6767,49.64,10132,5032,49.66,5596,2861,51.13,3028,1555,51.35,1958,1055,53.88
7,Batrider,all,"Initiator, Disabler, Escape",349,136,38.97,1983,812,40.95,4053,1595,39.35,4725,1861,39.39,3173,1275,40.18,1678,731,43.56,802,362,45.14,497,227,45.67
8,Beastmaster,all,"Initiator, Disabler, Durable, Nuker",402,174,43.28,2447,1060,43.32,5787,2569,44.39,6930,3092,44.62,5288,2389,45.18,2816,1274,45.24,1593,752,47.21,1176,539,45.83
9,Bloodseeker,agi,"Carry, Disabler, Nuker, Initiator",2765,1382,49.98,12589,6270,49.81,21781,10683,49.05,20961,10420,49.71,13035,6430,49.33,6210,3006,48.41,2941,1475,50.15,1465,718,49.01
10,Bounty Hunter,agi,"Escape, Nuker",3852,1868,48.49,19609,9535,48.63,36362,17600,48.4,37059,18314,49.42,22934,11518,50.22,10584,5276,49.85,5105,2594,50.81,2498,1325,53.04
11,Brewmaster,all,"Carry, Initiator, Durable, Disabler, Nuker",545,280,51.38,3564,1745,48.96,8941,4388,49.08,12340,6111,49.52,11185,5623,50.27,7645,3906,51.09,4812,2478,51.5,3533,1820,51.51
12,Bristleback,str,"Carry, Durable, Initiator, Nuker",5884,3262,55.44,27952,14587,52.19,48847,24379,49.91,46702,22927,49.09,27466,13319,48.49,12398,5969,48.14,5865,2915,49.7,2639,1304,49.41
13,Broodmother,all,"Carry, Pusher, Escape, Nuker",456,173,37.94,2048,842,41.11,3444,1462,42.45,3392,1448,42.69,2193,1048,47.79,1203,602,50.04,795,422,53.08,453,230,50.77
14,Centaur Warrunner,str,"Durable, Initiator, Disabler, Nuker, Escape",1721,911,52.93,11754,6266,53.31,28691,15201,52.98,35369,18741,52.99,25393,13468,53.04,12653,6607,52.22,6124,3181,51.94,2442,1243,50.9
15,Chaos Knight,str,"Carry, Disabler, Durable, Pusher, Initiator",3032,1639,54.06,16762,8931,53.28,31892,17139,53.74,30697,16435,53.54,18217,9810,53.85,8572,4620,53.9,4230,2291,54.16,1750,943,53.89
16,Chen,all,"Support, Pusher",284,125,44.01,1450,678,46.76,2969,1345,45.3,3258,1604,49.23,2641,1331,50.4,1488,767,51.55,970,512,52.78,770,448,58.18
17,Clinkz,agi,"Carry, Escape, Pusher",3151,1608,51.03,13891,7141,51.41,25465,12938,50.81,27327,14066,51.47,18846,9726,51.61,9452,4890,51.74,4765,2475,51.94,2093,1052,50.26
18,Clockwerk,all,"Initiator, Disabler, Durable, Nuker",816,397,48.65,5860,2837,48.41,14478,6929,47.86,18466,8843,47.89,13143,6301,47.94,6612,3169,47.93,3286,1581,48.11,1378,658,47.75
19,Crystal Maiden,int,"Support, Disabler, Nuker",4821,2529,52.46,26584,13626,51.26,52168,26040,49.92,52258,25365,48.54,30690,14848,48.38,13295,6404,48.17,5602,2680,47.84,1638,771,47.07
20,Dark Seer,all,"Initiator, Escape, Disabler",627,320,51.04,3675,1884,51.27,7881,3803,48.26,9589,4844,50.52,7186,3573,49.72,3902,1983,50.82,2145,1095,51.05,1217,593,48.73
21,Dark Willow,all,"Support, Nuker, Disabler, Escape",2654,1293,48.72,13829,6657,48.14,28142,13480,47.9,32114,15785,49.15,23100,11331,49.05,12052,5909,49.03,6400,3182,49.72,3708,1915,51.65
22,Dawnbreaker,str,"Carry, Durable",1746,875,50.11,12297,6105,49.65,32398,15921,49.14,44846,21936,48.91,35474,17441,49.17,19770,9832,49.73,10637,5263,49.48,6339,3173,50.06
23,Dazzle,all,"Support, Nuker, Disabler",2827,1418,50.16,19852,9758,49.15,48236,23691,49.11,56417,27798,49.27,38159,18642,48.85,18695,9199,49.21,8530,4239,49.7,3382,1654,48.91
24,Death Prophet,int,"Carry, Pusher, Nuker, Disabler",1372,659,48.03,6643,3145,47.34,11987,5729,47.79,12268,5856,47.73,7455,3606,48.37,3591,1698,47.28,1872,902,48.18,926,459,49.57
25,Disruptor,int,"Support, Disabler, Nuker, Initiator",1541,757,49.12,11104,5331,48.01,27746,13542,48.81,33742,16310,48.34,23173,11096,47.88,10907,5201,47.68,4859,2255,46.41,1863,861,46.22
26,Doom,str,"Carry, Disabler, Initiator, Durable, Nuker",1049,474,45.19,6112,2767,45.27,13700,6056,44.2,15454,6925,44.81,10727,4842,45.14,5444,2451,45.02,2979,1348,45.25,1545,731,47.31
27,Dragon Knight,str,"Carry, Pusher, Durable, Disabler, Initiator, Nuker",1950,942,48.31,10643,5274,49.55,20451,9733,47.59,20326,9671,47.58,11674,5544,47.49,4979,2355,47.3,2024,973,48.07,725,341,47.03
28,Drow Ranger,agi,"Carry, Disabler, Pusher",5737,2904,50.62,29675,14831,49.98,57655,28573,49.56,56682,27927,49.27,34310,16607,48.4,15050,7171,47.65,5947,2815,47.33,1768,788,44.57
29,Earth Spirit,str,"Nuker, Escape, Disabler, Initiator, Durable",1038,465,44.8,7420,3276,44.15,20807,9432,45.33,30107,14166,47.05,25314,12148,47.99,14579,7041,48.3,7678,3802,49.52,4379,2169,49.53
30,Earthshaker,str,"Support, Initiator, Disabler, Nuker",5012,2455,48.98,29784,14662,49.23,67050,33111,49.38,79963,39843,49.83,57108,28961,50.71,28650,14591,50.93,14186,7296,51.43,6151,3165,51.46
31,Elder Titan,str,"Initiator, Disabler, Nuker, Durable",471,212,45.01,2551,1248,48.92,5213,2570,49.3,5572,2809,50.41,3847,1942,50.48,1964,998,50.81,1124,613,54.54,550,292,53.09
32,Ember Spirit,agi,"Carry, Escape, Nuker, Disabler, Initiator",1514,635,41.94,9180,3836,41.79,20578,8738,42.46,25152,10844,43.11,17703,7814,44.14,8538,3793,44.42,4265,1892,44.36,2065,928,44.94
33,Enchantress,int,"Support, Pusher, Durable, Disabler",1794,848,47.27,8050,3622,44.99,12921,5686,44.01,11673,4974,42.61,6863,2840,41.38,2948,1212,41.11,1434,654,45.61,806,318,39.45
34,Enigma,all,"Disabler, Initiator, Pusher",1317,588,44.65,6937,3171,45.71,12908,5979,46.32,11687,5428,46.44,6194,2839,45.83,2493,1127,45.21,938,437,46.59,338,159,47.04
35,Faceless Void,agi,"Carry, Initiator, Disabler, Escape, Durable",4323,2043,47.26,25618,11902,46.46,54581,25874,47.4,60671,28993,47.79,40137,19611,48.86,19376,9620,49.65,9579,4828,50.4,4439,2256,50.82
36,Grimstroke,int,"Support, Nuker, Disabler, Escape",1455,694,47.7,9714,4789,49.3,24688,12430,50.35,32027,16094,50.25,23193,11795,50.86,12102,6100,50.4,6191,3047,49.22,3449,1666,48.3
37,Gyrocopter,agi,"Carry, Nuker, Disabler",2560,1213,47.38,16589,7882,47.51,42072,20358,48.39,54200,26229,48.39,39414,19053,48.34,20164,9781,48.51,10164,4937,48.57,5241,2507,47.83
38,Hoodwink,agi,"Support, Nuker, Escape, Disabler",2420,1126,46.53,14034,6800,48.45,31382,14964,47.68,35684,16966,47.55,22626,10651,47.07,9949,4690,47.14,4349,2089,48.03,1533,703,45.86
39,Huskar,str,"Carry, Durable, Initiator",3501,1603,45.79,14234,6639,46.64,22794,10912,47.87,21801,10763,49.37,13811,6919,50.1,6769,3535,52.22,3556,1822,51.24,1936,993,51.29
40,Invoker,all,"Carry, Nuker, Disabler, Escape, Pusher",4330,2042,47.16,27625,13176,47.7,69035,33863,49.05,86745,43479,50.12,61821,31510,50.97,31459,16321,51.88,15431,8195,53.11,7852,4148,52.83
41,Io,all,"Support, Escape, Nuker",1274,615,48.27,6158,2999,48.7,12762,6247,48.95,14216,7024,49.41,9564,4843,50.64,5301,2685,50.65,2789,1463,52.46,1464,773,52.8
42,Jakiro,int,"Support, Nuker, Pusher, Disabler",3147,1708,54.27,22718,12413,54.64,56736,30984,54.61,70038,37473,53.5,46389,24997,53.89,22084,11639,52.7,9838,5103,51.87,3282,1729,52.68
43,Juggernaut,agi,"Carry, Pusher, Escape",5585,2711,48.54,30394,14800,48.69,62313,30581,49.08,65590,32344,49.31,39235,19326,49.26,16334,8012,49.05,6419,3066,47.76,1576,731,46.38
44,Keeper of the Light,int,"Support, Nuker, Disabler",896,353,39.4,5051,2216,43.87,10452,4579,43.81,11614,5322,45.82,7870,3627,46.09,4268,2001,46.88,2147,1043,48.58,1333,588,44.11
45,Kunkka,str,"Carry, Support, Disabler, Initiator, Durable, Nuker",2251,1124,49.93,13474,6828,50.68,31210,16196,51.89,39691,21293,53.65,30314,16458,54.29,15706,8793,55.98,7884,4339,55.04,3458,1898,54.89
46,Legion Commander,str,"Carry, Disabler, Initiator, Durable, Nuker",6263,3264,52.12,37100,19157,51.64,81491,41557,51.0,91431,46558,50.92,59383,29917,50.38,27945,13917,49.8,13193,6587,49.93,5601,2745,49.01
47,Leshrac,int,"Carry, Support, Nuker, Pusher, Disabler",674,316,46.88,3872,1799,46.46,7490,3433,45.83,7903,3604,45.6,5322,2526,47.46,2687,1298,48.31,1325,647,48.83,721,357,49.51
48,Lich,int,"Support, Nuker",2700,1412,52.3,16646,8820,52.99,37785,19685,52.1,45471,23554,51.8,31203,16108,51.62,15530,7821,50.36,7243,3597,49.66,2520,1258,49.92
49,Lifestealer,str,"Carry, Durable, Escape, Disabler",2515,1213,48.23,14131,6978,49.38,29724,14627,49.21,31211,15581,49.92,18970,9481,49.98,8689,4400,50.64,3630,1821,50.17,1229,617,50.2
50,Lina,int,"Support, Carry, Nuker, Disabler",4512,2030,44.99,21927,10156,46.32,45301,21210,46.82,54229,25956,47.86,40016,19138,47.83,21072,10112,47.99,10481,5031,48.0,4369,2138,48.94
51,Lion,int,"Support, Disabler, Nuker, Initiator",6204,2855,46.02,37869,17465,46.12,80124,36649,45.74,84390,38176,45.24,50720,22914,45.18,21698,9784,45.09,9308,4280,45.98,3220,1496,46.46
52,Lone Druid,all,"Carry, Pusher, Durable",909,483,53.14,4714,2421,51.36,10987,5858,53.32,14580,7968,54.65,11810,6490,54.95,7241,3971,54.84,4024,2240,55.67,2303,1259,54.67
53,Luna,agi,"Carry, Nuker, Pusher",1927,904,46.91,9091,4271,46.98,16571,7922,47.81,16035,7615,47.49,9728,4634,47.64,4463,2103,47.12,1912,911,47.65,719,322,44.78
54,Lycan,all,"Carry, Pusher, Durable, Escape",374,174,46.52,1894,915,48.31,3691,1744,47.25,3824,1905,49.82,2694,1332,49.44,1460,753,51.58,827,411,49.7,532,289,54.32
55,Magnus,all,"Initiator, Disabler, Nuker, Escape",770,339,44.03,5789,2651,45.79,17837,7954,44.59,26126,12058,46.15,20634,9592,46.49,10574,5056,47.82,4565,2073,45.41,1606,751,46.76
56,Marci,all,"Support, Carry, Initiator, Disabler, Escape",1370,620,45.26,7092,3252,45.85,15199,7240,47.63,18485,8874,48.01,13308,6305,47.38,7176,3476,48.44,3689,1882,51.02,1746,883,50.57
57,Mars,str,"Carry, Initiator, Disabler, Durable",862,375,43.5,5719,2529,44.22,15156,6756,44.58,20719,9369,45.22,16419,7387,44.99,9044,4052,44.8,4536,2093,46.14,1926,868,45.07
58,Medusa,agi,"Carry, Disabler, Durable",1898,902,47.52,9289,4512,48.57,16504,7818,47.37,14796,6886,46.54,7488,3449,46.06,2775,1270,45.77,1073,482,44.92,394,184,46.7
59,Meepo,agi,"Carry, Escape, Nuker, Disabler, Initiator, Pusher",1004,523,52.09,3970,1990,50.13,6904,3587,51.96,7166,3646,50.88,4906,2563,52.24,2383,1282,53.8,1139,588,51.62,585,300,51.28
60,Mirana,all,"Carry, Support, Escape, Nuker, Disabler",2499,1193,47.74,16954,8135,47.98,39985,19097,47.76,45169,21554,47.72,28467,13456,47.27,12800,6047,47.24,5272,2500,47.42,1824,874,47.92
61,Monkey King,agi,"Carry, Escape, Disabler, Initiator",3191,1384,43.37,17306,7544,43.59,35734,16113,45.09,40778,18322,44.93,27558,12630,45.83,14034,6433,45.84,6650,3152,47.4,3040,1440,47.37
62,Morphling,agi,"Carry, Escape, Durable, Nuker, Disabler",1521,690,45.36,8620,4006,46.47,18075,8161,45.15,20414,9235,45.24,14395,6530,45.36,7697,3551,46.13,4432,2050,46.25,2560,1190,46.48
63,Muerta,int,"Carry, Nuker, Disabler",2130,1089,51.13,10787,5740,53.21,22602,11898,52.64,27609,14495,52.5,20175,10465,51.87,10662,5518,51.75,5462,2759,50.51,2948,1517,51.46
64,Naga Siren,agi,"Carry, Support, Pusher, Disabler, Initiator, Escape",1502,804,53.53,6495,3356,51.67,10423,5234,50.22,9830,4929,50.14,6057,2971,49.05,3216,1675,52.08,1855,933,50.3,1242,634,51.05
65,Nature's Prophet,int,"Carry, Pusher, Escape, Nuker",5991,3029,50.56,36433,18143,49.8,83118,42095,50.64,100341,51268,51.09,69436,35870,51.66,34256,17858,52.13,16585,8745,52.73,7182,3755,52.28
66,Necrophos,int,"Carry, Nuker, Durable, Disabler",4776,2702,56.57,28535,15771,55.27,62186,34285,55.13,70212,38163,54.35,46539,24708,53.09,21607,11302,52.31,9677,4994,51.61,3418,1733,50.7
67,Night Stalker,str,"Carry, Initiator, Durable, Disabler, Nuker",1189,594,49.96,7868,3892,49.47,19446,10004,51.45,25524,13506,52.91,20138,10828,53.77,10767,5651,52.48,5499,2889,52.54,2415,1257,52.05
68,Nyx Assassin,all,"Disabler, Nuker, Initiator, Escape",1718,867,50.47,10925,5525,50.57,27207,14073,51.73,34684,18059,52.07,25736,13572,52.74,13313,7093,53.28,6485,3444,53.11,2852,1468,51.47
69,Ogre Magi,str,"Support, Nuker, Disabler, Durable, Initiator",5331,2845,53.37,31507,16299,51.73,62954,32248,51.22,61758,31373,50.8,33746,16988,50.34,13262,6654,50.17,4861,2420,49.78,1271,654,51.46
70,Omniknight,str,"Support, Durable, Nuker",975,479,49.13,6426,3109,48.38,14641,7319,49.99,17258,8731,50.59,11695,5916,50.59,5746,2993,52.09,2870,1469,51.18,1333,656,49.21
71,Oracle,int,"Support, Nuker, Disabler, Escape",796,384,48.24,4857,2417,49.76,13141,6645,50.57,18944,9853,52.01,15221,7964,52.32,8356,4458,53.35,4475,2380,53.18,1905,1018,53.44
72,Outworld Destroyer,int,"Carry, Nuker, Disabler",2226,1118,50.22,13388,6864,51.27,33284,17362,52.16,43991,23377,53.14,32021,16994,53.07,16655,8724,52.38,8123,4218,51.93,3176,1649,51.92
73,Pangolier,all,"Carry, Nuker, Disabler, Durable, Escape, Initiator",1156,534,46.19,7189,3209,44.64,17802,7937,44.58,25785,11677,45.29,21727,10144,46.69,13064,6351,48.61,7567,3737,49.39,5275,2734,51.83
74,Phantom Assassin,agi,"Carry, Escape",8553,4426,51.75,48549,25553,52.63,104756,54881,52.39,119332,62511,52.38,79140,41143,51.99,37399,19325,51.67,17774,9077,51.07,7819,3856,49.32
75,Phantom Lancer,agi,"Carry, Escape, Pusher, Nuker",3641,1960,53.83,19550,10374,53.06,38576,20633,53.49,41505,22310,53.75,26401,14268,54.04,12437,6590,52.99,5708,2985,52.3,2383,1243,52.16
76,Phoenix,all,"Support, Nuker, Initiator, Escape, Disabler",743,315,42.4,5231,2471,47.24,13950,6633,47.55,18350,8864,48.31,13972,6715,48.06,7787,3761,48.3,4322,2132,49.33,2610,1325,50.77
77,Primal Beast,str,"Initiator, Durable, Disabler",1455,701,48.18,9333,4448,47.66,22800,11058,48.5,30084,14643,48.67,24307,11993,49.34,13970,6991,50.04,7742,3890,50.25,4625,2407,52.04
78,Puck,int,"Initiator, Disabler, Escape, Nuker",871,399,45.81,5773,2628,45.52,16596,7578,45.66,24480,11315,46.22,20070,9497,47.32,11023,5298,48.06,5656,2714,47.98,2555,1200,46.97
79,Pudge,str,"Disabler, Initiator, Durable, Nuker",7677,3796,49.45,50891,24776,48.68,114784,56289,49.04,129604,63097,48.68,85800,41542,48.42,41730,20239,48.5,19823,9530,48.08,7112,3431,48.24
80,Pugna,int,"Nuker, Pusher",2075,944,45.49,9998,4695,46.96,18962,8958,47.24,20240,9965,49.23,12807,6199,48.4,5825,2855,49.01,2758,1387,50.29,1195,592,49.54
81,Queen of Pain,int,"Carry, Nuker, Escape",2287,1100,48.1,15119,7354,48.64,37137,18118,48.79,47706,23657,49.59,35500,18018,50.75,18405,9289,50.47,9243,4689,50.73,4227,2113,49.99
82,Razor,agi,"Carry, Durable, Nuker, Pusher",2470,1231,49.84,12000,5964,49.7,24666,12142,49.23,30334,14844,48.94,21832,10558,48.36,11917,5679,47.65,6092,2912,47.8,3144,1551,49.33
83,Riki,agi,"Carry, Escape, Disabler",3684,1929,52.36,19022,9891,52.0,35638,18582,52.14,33908,17415,51.36,20194,10312,51.06,8726,4377,50.16,3735,1855,49.67,1160,559,48.19
84,Rubick,int,"Support, Disabler, Nuker",3090,1404,45.44,21639,9303,42.99,57417,24590,42.83,74874,32603,43.54,55186,24219,43.89,28206,12568,44.56,13732,6106,44.47,5764,2642,45.84
85,Sand King,all,"Initiator, Disabler, Support, Nuker, Escape",2633,1513,57.46,13097,7323,55.91,25271,13807,54.64,26724,14323,53.6,17384,9144,52.6,7907,4104,51.9,3394,1719,50.65,1211,611,50.45
86,Shadow Demon,int,"Support, Disabler, Initiator, Nuker",547,236,43.14,3252,1426,43.85,7920,3524,44.49,9752,4551,46.67,7404,3467,46.83,3956,1876,47.42,2076,1004,48.36,1054,497,47.15
87,Shadow Fiend,agi,"Carry, Nuker",5051,2544,50.37,27255,14064,51.6,58589,29830,50.91,65429,33097,50.58,41810,21189,50.68,18766,9401,50.1,8232,4000,48.59,3016,1430,47.41
88,Shadow Shaman,int,"Support, Pusher, Disabler, Nuker, Initiator",5323,2795,52.51,29733,15606,52.49,58894,31236,53.04,58765,30895,52.57,34475,18242,52.91,15166,7986,52.66,6377,3323,52.11,2413,1253,51.93
89,Silencer,int,"Carry, Support, Disabler, Initiator, Nuker",4229,2324,54.95,27878,14960,53.66,61698,33081,53.62,65256,34458,52.8,38589,19853,51.45,16889,8653,51.23,6836,3416,49.97,2236,1105,49.42
90,Skywrath Mage,int,"Support, Nuker, Disabler",4000,2030,50.75,22783,11675,51.24,46512,23624,50.79,51329,25706,50.08,34167,17364,50.82,16693,8415,50.41,8496,4208,49.53,4389,2069,47.14
91,Slardar,str,"Carry, Durable, Initiator, Disabler, Escape",3935,2129,54.1,21523,11602,53.91,43947,23701,53.93,47721,25633,53.71,29887,16132,53.98,14233,7722,54.25,6530,3467,53.09,2322,1205,51.89
92,Slark,agi,"Carry, Escape, Disabler, Nuker",4815,2521,52.36,29413,14762,50.19,64004,31771,49.64,70173,34411,49.04,44780,21926,48.96,20864,10270,49.22,9969,4962,49.77,4565,2394,52.44
93,Snapfire,all,"Support, Nuker, Disabler, Escape",1524,682,44.75,10646,4576,42.98,27103,12120,44.72,34711,15412,44.4,24351,10786,44.29,11723,5131,43.77,5227,2294,43.89,1987,868,43.68
94,Sniper,agi,"Carry, Nuker",8022,4079,50.85,44508,22727,51.06,88690,45223,50.99,87190,44086,50.56,47411,23648,49.88,18092,8924,49.33,6130,3040,49.59,1370,662,48.32
95,Spectre,agi,"Carry, Durable, Escape",3454,2008,58.14,22097,12356,55.92,49157,26961,54.85,55914,30100,53.83,36321,19338,53.24,16946,8960,52.87,7921,4163,52.56,2568,1370,53.35
96,Spirit Breaker,str,"Carry, Initiator, Disabler, Durable, Escape",4788,2423,50.61,26662,13530,50.75,56535,28908,51.13,63991,32249,50.4,42512,21357,50.24,20119,9926,49.34,9499,4814,50.68,3761,1884,50.09
97,Storm Spirit,int,"Carry, Escape, Nuker, Initiator, Disabler",2202,1001,45.46,11656,5197,44.59,25644,11806,46.04,30968,14210,45.89,21680,10197,47.03,10810,5025,46.48,5278,2382,45.13,2363,1122,47.48
98,Sven,str,"Carry, Disabler, Initiator, Durable, Nuker",3552,1761,49.58,19792,9744,49.23,41296,20478,49.59,48709,24228,49.74,35460,17828,50.28,19795,10065,50.85,11014,5655,51.34,6701,3387,50.54
99,Techies,all,"Nuker, Disabler",2356,1131,48.01,13105,6245,47.65,27293,12893,47.24,29180,13507,46.29,18216,8407,46.15,8266,3771,45.62,3459,1644,47.53,1319,591,44.81
100,Templar Assassin,agi,"Carry, Escape",2142,955,44.58,10932,4758,43.52,21211,9445,44.53,23928,10909,45.59,17399,8242,47.37,9567,4656,48.67,5525,2708,49.01,3524,1775,50.37
101,Terrorblade,agi,"Carry, Pusher, Nuker",1115,484,43.41,5686,2430,42.74,10856,4638,42.72,11518,5041,43.77,8059,3540,43.93,4192,1827,43.58,2419,1082,44.73,1621,700,43.18
102,Tidehunter,str,"Initiator, Durable, Disabler, Nuker, Carry",1835,855,46.59,11159,5369,48.11,26222,12699,48.43,30735,14879,48.41,20523,9727,47.4,9731,4740,48.71,4426,2079,46.97,1998,936,46.85
103,Timbersaw,all,"Nuker, Durable, Escape",1050,448,42.67,5854,2584,44.14,12301,5391,43.83,14295,6097,42.65,9697,4217,43.49,4992,2163,43.33,2419,1021,42.21,1139,471,41.35
104,Tinker,int,"Carry, Nuker, Pusher",2106,944,44.82,11058,5200,47.02,24263,11826,48.74,27531,13614,49.45,19017,9732,51.18,9416,4875,51.77,4700,2466,52.47,1951,1036,53.1
105,Tiny,str,"Carry, Nuker, Pusher, Initiator, Durable, Disabler",1434,654,45.61,7742,3452,44.59,15936,6950,43.61,17139,7468,43.57,11269,4991,44.29,5485,2491,45.41,2599,1216,46.79,1058,519,49.05
106,Treant Protector,str,"Support, Initiator, Durable, Disabler, Escape",1646,899,54.62,11430,5881,51.45,28752,15124,52.6,36093,19344,53.59,28762,15532,54.0,16751,9227,55.08,9870,5468,55.4,6801,3855,56.68
107,Troll Warlord,agi,"Carry, Pusher, Disabler, Durable",3176,1720,54.16,14007,7445,53.15,24729,13022,52.66,25424,13228,52.03,17362,9030,52.01,9427,4913,52.12,4767,2499,52.42,2341,1242,53.05
108,Tusk,str,"Initiator, Disabler, Nuker",1263,565,44.73,8338,3777,45.3,19642,8869,45.15,25308,11520,45.52,18927,8853,46.77,10100,4820,47.72,5220,2502,47.93,2350,1157,49.23
109,Underlord,str,"Support, Nuker, Disabler, Durable, Escape",797,405,50.82,4583,2341,51.08,10067,5057,50.23,11650,5786,49.67,7224,3561,49.29,3310,1591,48.07,1368,673,49.2,395,190,48.1
110,Undying,str,"Support, Durable, Disabler, Nuker",3170,1620,51.1,19403,10116,52.14,40582,21110,52.02,40850,21182,51.85,23985,12454,51.92,10395,5389,51.84,4541,2336,51.44,2064,1012,49.03
111,Ursa,agi,"Carry, Durable, Disabler",2801,1273,45.45,15132,7038,46.51,33269,15478,46.52,40822,19264,47.19,29348,14011,47.74,15262,7375,48.32,7507,3622,48.25,3004,1473,49.03
112,Vengeful Spirit,all,"Support, Initiator, Disabler, Nuker, Escape",2186,1108,50.69,15817,8285,52.38,41843,21809,52.12,57524,30476,52.98,45512,24120,53.0,25581,13382,52.31,13758,7121,51.76,8276,4303,51.99
113,Venomancer,all,"Support, Nuker, Initiator, Pusher, Disabler",2309,1187,51.41,14669,7463,50.88,34787,18020,51.8,41797,21690,51.89,28706,15085,52.55,13974,7338,52.51,6538,3495,53.46,2794,1459,52.22
114,Viper,agi,"Carry, Durable, Initiator, Disabler",4100,2057,50.17,18991,9510,50.08,33517,16923,50.49,32728,16677,50.96,18537,9427,50.86,7851,3928,50.03,3260,1652,50.67,1176,610,51.87
115,Visage,all,"Support, Nuker, Durable, Disabler, Pusher",331,171,51.66,1638,813,49.63,3240,1577,48.67,3840,1986,51.72,3108,1609,51.77,1995,1055,52.88,1309,702,53.63,858,457,53.26
116,Void Spirit,all,"Carry, Escape, Nuker, Disabler",1565,727,46.45,8672,4096,47.23,20010,9694,48.45,25213,12376,49.09,18817,9231,49.06,10026,4920,49.07,4788,2319,48.43,2006,964,48.06
117,Warlock,int,"Support, Initiator, Disabler",2547,1369,53.75,18931,10331,54.57,49795,26999,54.22,66697,36220,54.31,48401,25668,53.03,24999,12942,51.77,12575,6356,50.54,6183,2934,47.45
118,Weaver,agi,"Carry, Escape",2818,1389,49.29,13873,6770,48.8,23493,11571,49.25,21545,10694,49.64,12911,6427,49.78,5809,2928,50.4,2960,1455,49.16,1303,719,55.18
119,Windranger,all,"Carry, Support, Disabler, Escape, Nuker",3861,1814,46.98,19934,9223,46.27,40644,18807,46.27,44476,20652,46.43,28952,13508,46.66,13418,6297,46.93,5898,2782,47.17,2374,1142,48.1
120,Winter Wyvern,all,"Support, Disabler, Nuker",821,371,45.19,5168,2424,46.9,10544,5014,47.55,11184,5308,47.46,7426,3512,47.29,3730,1854,49.71,1862,934,50.16,944,464,49.15
121,Witch Doctor,int,"Support, Nuker, Disabler",7504,4173,55.61,45501,25616,56.3,99664,54963,55.15,111382,60421,54.25,71830,37860,52.71,33164,17334,52.27,14610,7442,50.94,4196,2076,49.48
122,Wraith King,str,"Carry, Support, Durable, Disabler, Initiator",4175,2266,54.28,26362,14516,55.06,58733,32403,55.17,66283,36503,55.07,42360,23083,54.49,19084,10251,53.72,8334,4315,51.78,2707,1376,50.83
123,Zeus,int,"Nuker, Carry",4132,2106,50.97,23721,12487,52.64,51568,27475,53.28,58333,31078,53.28,37821,20047,53.0,17901,9504,53.09,8539,4459,52.22,3400,1791,52.68
1 Name Primary Attribute Roles Herald Picks Herald Wins Herald Win Rate Guardian Picks Guardian Wins Guardian Win Rate Crusader Picks Crusader Wins Crusader Win Rate Archon Picks Archon Wins Archon Win Rate Legend Picks Legend Wins Legend Win Rate Ancient Picks Ancient Wins Ancient Win Rate Divine Picks Divine Wins Divine Win Rate Immortal Picks Immortal Wins Immortal Win Rate
2 0 Abaddon all Support, Carry, Durable 1111 575 51.76 6408 3309 51.64 13811 7050 51.05 16497 8530 51.71 11360 5877 51.73 5571 2893 51.93 2632 1345 51.1 991 497 50.15
3 1 Alchemist str Carry, Support, Durable, Disabler, Initiator, Nuker 1119 486 43.43 6370 2883 45.26 12238 5617 45.9 13028 6130 47.05 8455 4055 47.96 4120 1984 48.16 2021 1023 50.62 860 424 49.3
4 2 Ancient Apparition int Support, Disabler, Nuker 2146 1073 50.0 13697 7069 51.61 30673 16118 52.55 35145 18219 51.84 23114 12166 52.63 10688 5528 51.72 5035 2573 51.1 2134 1076 50.42
5 3 Anti-Mage agi Carry, Escape, Nuker 3765 1818 48.29 22050 10774 48.86 47371 23304 49.19 49115 24074 49.02 28599 13991 48.92 12303 5958 48.43 4866 2349 48.27 1502 751 50.0
6 4 Arc Warden agi Carry, Escape, Nuker 1448 704 48.62 8047 4162 51.72 14946 7982 53.41 14711 7875 53.53 9472 5167 54.55 4323 2309 53.41 2104 1148 54.56 789 435 55.13
7 5 Axe str Initiator, Durable, Disabler, Carry 5343 2880 53.9 32652 17719 54.27 71010 37736 53.14 77869 40559 52.09 49182 25079 50.99 22637 11353 50.15 10114 5000 49.44 3795 1837 48.41
8 6 Bane all Support, Disabler, Nuker, Durable 745 334 44.83 4983 2422 48.61 11332 5504 48.57 13633 6767 49.64 10132 5032 49.66 5596 2861 51.13 3028 1555 51.35 1958 1055 53.88
9 7 Batrider all Initiator, Disabler, Escape 349 136 38.97 1983 812 40.95 4053 1595 39.35 4725 1861 39.39 3173 1275 40.18 1678 731 43.56 802 362 45.14 497 227 45.67
10 8 Beastmaster all Initiator, Disabler, Durable, Nuker 402 174 43.28 2447 1060 43.32 5787 2569 44.39 6930 3092 44.62 5288 2389 45.18 2816 1274 45.24 1593 752 47.21 1176 539 45.83
11 9 Bloodseeker agi Carry, Disabler, Nuker, Initiator 2765 1382 49.98 12589 6270 49.81 21781 10683 49.05 20961 10420 49.71 13035 6430 49.33 6210 3006 48.41 2941 1475 50.15 1465 718 49.01
12 10 Bounty Hunter agi Escape, Nuker 3852 1868 48.49 19609 9535 48.63 36362 17600 48.4 37059 18314 49.42 22934 11518 50.22 10584 5276 49.85 5105 2594 50.81 2498 1325 53.04
13 11 Brewmaster all Carry, Initiator, Durable, Disabler, Nuker 545 280 51.38 3564 1745 48.96 8941 4388 49.08 12340 6111 49.52 11185 5623 50.27 7645 3906 51.09 4812 2478 51.5 3533 1820 51.51
14 12 Bristleback str Carry, Durable, Initiator, Nuker 5884 3262 55.44 27952 14587 52.19 48847 24379 49.91 46702 22927 49.09 27466 13319 48.49 12398 5969 48.14 5865 2915 49.7 2639 1304 49.41
15 13 Broodmother all Carry, Pusher, Escape, Nuker 456 173 37.94 2048 842 41.11 3444 1462 42.45 3392 1448 42.69 2193 1048 47.79 1203 602 50.04 795 422 53.08 453 230 50.77
16 14 Centaur Warrunner str Durable, Initiator, Disabler, Nuker, Escape 1721 911 52.93 11754 6266 53.31 28691 15201 52.98 35369 18741 52.99 25393 13468 53.04 12653 6607 52.22 6124 3181 51.94 2442 1243 50.9
17 15 Chaos Knight str Carry, Disabler, Durable, Pusher, Initiator 3032 1639 54.06 16762 8931 53.28 31892 17139 53.74 30697 16435 53.54 18217 9810 53.85 8572 4620 53.9 4230 2291 54.16 1750 943 53.89
18 16 Chen all Support, Pusher 284 125 44.01 1450 678 46.76 2969 1345 45.3 3258 1604 49.23 2641 1331 50.4 1488 767 51.55 970 512 52.78 770 448 58.18
19 17 Clinkz agi Carry, Escape, Pusher 3151 1608 51.03 13891 7141 51.41 25465 12938 50.81 27327 14066 51.47 18846 9726 51.61 9452 4890 51.74 4765 2475 51.94 2093 1052 50.26
20 18 Clockwerk all Initiator, Disabler, Durable, Nuker 816 397 48.65 5860 2837 48.41 14478 6929 47.86 18466 8843 47.89 13143 6301 47.94 6612 3169 47.93 3286 1581 48.11 1378 658 47.75
21 19 Crystal Maiden int Support, Disabler, Nuker 4821 2529 52.46 26584 13626 51.26 52168 26040 49.92 52258 25365 48.54 30690 14848 48.38 13295 6404 48.17 5602 2680 47.84 1638 771 47.07
22 20 Dark Seer all Initiator, Escape, Disabler 627 320 51.04 3675 1884 51.27 7881 3803 48.26 9589 4844 50.52 7186 3573 49.72 3902 1983 50.82 2145 1095 51.05 1217 593 48.73
23 21 Dark Willow all Support, Nuker, Disabler, Escape 2654 1293 48.72 13829 6657 48.14 28142 13480 47.9 32114 15785 49.15 23100 11331 49.05 12052 5909 49.03 6400 3182 49.72 3708 1915 51.65
24 22 Dawnbreaker str Carry, Durable 1746 875 50.11 12297 6105 49.65 32398 15921 49.14 44846 21936 48.91 35474 17441 49.17 19770 9832 49.73 10637 5263 49.48 6339 3173 50.06
25 23 Dazzle all Support, Nuker, Disabler 2827 1418 50.16 19852 9758 49.15 48236 23691 49.11 56417 27798 49.27 38159 18642 48.85 18695 9199 49.21 8530 4239 49.7 3382 1654 48.91
26 24 Death Prophet int Carry, Pusher, Nuker, Disabler 1372 659 48.03 6643 3145 47.34 11987 5729 47.79 12268 5856 47.73 7455 3606 48.37 3591 1698 47.28 1872 902 48.18 926 459 49.57
27 25 Disruptor int Support, Disabler, Nuker, Initiator 1541 757 49.12 11104 5331 48.01 27746 13542 48.81 33742 16310 48.34 23173 11096 47.88 10907 5201 47.68 4859 2255 46.41 1863 861 46.22
28 26 Doom str Carry, Disabler, Initiator, Durable, Nuker 1049 474 45.19 6112 2767 45.27 13700 6056 44.2 15454 6925 44.81 10727 4842 45.14 5444 2451 45.02 2979 1348 45.25 1545 731 47.31
29 27 Dragon Knight str Carry, Pusher, Durable, Disabler, Initiator, Nuker 1950 942 48.31 10643 5274 49.55 20451 9733 47.59 20326 9671 47.58 11674 5544 47.49 4979 2355 47.3 2024 973 48.07 725 341 47.03
30 28 Drow Ranger agi Carry, Disabler, Pusher 5737 2904 50.62 29675 14831 49.98 57655 28573 49.56 56682 27927 49.27 34310 16607 48.4 15050 7171 47.65 5947 2815 47.33 1768 788 44.57
31 29 Earth Spirit str Nuker, Escape, Disabler, Initiator, Durable 1038 465 44.8 7420 3276 44.15 20807 9432 45.33 30107 14166 47.05 25314 12148 47.99 14579 7041 48.3 7678 3802 49.52 4379 2169 49.53
32 30 Earthshaker str Support, Initiator, Disabler, Nuker 5012 2455 48.98 29784 14662 49.23 67050 33111 49.38 79963 39843 49.83 57108 28961 50.71 28650 14591 50.93 14186 7296 51.43 6151 3165 51.46
33 31 Elder Titan str Initiator, Disabler, Nuker, Durable 471 212 45.01 2551 1248 48.92 5213 2570 49.3 5572 2809 50.41 3847 1942 50.48 1964 998 50.81 1124 613 54.54 550 292 53.09
34 32 Ember Spirit agi Carry, Escape, Nuker, Disabler, Initiator 1514 635 41.94 9180 3836 41.79 20578 8738 42.46 25152 10844 43.11 17703 7814 44.14 8538 3793 44.42 4265 1892 44.36 2065 928 44.94
35 33 Enchantress int Support, Pusher, Durable, Disabler 1794 848 47.27 8050 3622 44.99 12921 5686 44.01 11673 4974 42.61 6863 2840 41.38 2948 1212 41.11 1434 654 45.61 806 318 39.45
36 34 Enigma all Disabler, Initiator, Pusher 1317 588 44.65 6937 3171 45.71 12908 5979 46.32 11687 5428 46.44 6194 2839 45.83 2493 1127 45.21 938 437 46.59 338 159 47.04
37 35 Faceless Void agi Carry, Initiator, Disabler, Escape, Durable 4323 2043 47.26 25618 11902 46.46 54581 25874 47.4 60671 28993 47.79 40137 19611 48.86 19376 9620 49.65 9579 4828 50.4 4439 2256 50.82
38 36 Grimstroke int Support, Nuker, Disabler, Escape 1455 694 47.7 9714 4789 49.3 24688 12430 50.35 32027 16094 50.25 23193 11795 50.86 12102 6100 50.4 6191 3047 49.22 3449 1666 48.3
39 37 Gyrocopter agi Carry, Nuker, Disabler 2560 1213 47.38 16589 7882 47.51 42072 20358 48.39 54200 26229 48.39 39414 19053 48.34 20164 9781 48.51 10164 4937 48.57 5241 2507 47.83
40 38 Hoodwink agi Support, Nuker, Escape, Disabler 2420 1126 46.53 14034 6800 48.45 31382 14964 47.68 35684 16966 47.55 22626 10651 47.07 9949 4690 47.14 4349 2089 48.03 1533 703 45.86
41 39 Huskar str Carry, Durable, Initiator 3501 1603 45.79 14234 6639 46.64 22794 10912 47.87 21801 10763 49.37 13811 6919 50.1 6769 3535 52.22 3556 1822 51.24 1936 993 51.29
42 40 Invoker all Carry, Nuker, Disabler, Escape, Pusher 4330 2042 47.16 27625 13176 47.7 69035 33863 49.05 86745 43479 50.12 61821 31510 50.97 31459 16321 51.88 15431 8195 53.11 7852 4148 52.83
43 41 Io all Support, Escape, Nuker 1274 615 48.27 6158 2999 48.7 12762 6247 48.95 14216 7024 49.41 9564 4843 50.64 5301 2685 50.65 2789 1463 52.46 1464 773 52.8
44 42 Jakiro int Support, Nuker, Pusher, Disabler 3147 1708 54.27 22718 12413 54.64 56736 30984 54.61 70038 37473 53.5 46389 24997 53.89 22084 11639 52.7 9838 5103 51.87 3282 1729 52.68
45 43 Juggernaut agi Carry, Pusher, Escape 5585 2711 48.54 30394 14800 48.69 62313 30581 49.08 65590 32344 49.31 39235 19326 49.26 16334 8012 49.05 6419 3066 47.76 1576 731 46.38
46 44 Keeper of the Light int Support, Nuker, Disabler 896 353 39.4 5051 2216 43.87 10452 4579 43.81 11614 5322 45.82 7870 3627 46.09 4268 2001 46.88 2147 1043 48.58 1333 588 44.11
47 45 Kunkka str Carry, Support, Disabler, Initiator, Durable, Nuker 2251 1124 49.93 13474 6828 50.68 31210 16196 51.89 39691 21293 53.65 30314 16458 54.29 15706 8793 55.98 7884 4339 55.04 3458 1898 54.89
48 46 Legion Commander str Carry, Disabler, Initiator, Durable, Nuker 6263 3264 52.12 37100 19157 51.64 81491 41557 51.0 91431 46558 50.92 59383 29917 50.38 27945 13917 49.8 13193 6587 49.93 5601 2745 49.01
49 47 Leshrac int Carry, Support, Nuker, Pusher, Disabler 674 316 46.88 3872 1799 46.46 7490 3433 45.83 7903 3604 45.6 5322 2526 47.46 2687 1298 48.31 1325 647 48.83 721 357 49.51
50 48 Lich int Support, Nuker 2700 1412 52.3 16646 8820 52.99 37785 19685 52.1 45471 23554 51.8 31203 16108 51.62 15530 7821 50.36 7243 3597 49.66 2520 1258 49.92
51 49 Lifestealer str Carry, Durable, Escape, Disabler 2515 1213 48.23 14131 6978 49.38 29724 14627 49.21 31211 15581 49.92 18970 9481 49.98 8689 4400 50.64 3630 1821 50.17 1229 617 50.2
52 50 Lina int Support, Carry, Nuker, Disabler 4512 2030 44.99 21927 10156 46.32 45301 21210 46.82 54229 25956 47.86 40016 19138 47.83 21072 10112 47.99 10481 5031 48.0 4369 2138 48.94
53 51 Lion int Support, Disabler, Nuker, Initiator 6204 2855 46.02 37869 17465 46.12 80124 36649 45.74 84390 38176 45.24 50720 22914 45.18 21698 9784 45.09 9308 4280 45.98 3220 1496 46.46
54 52 Lone Druid all Carry, Pusher, Durable 909 483 53.14 4714 2421 51.36 10987 5858 53.32 14580 7968 54.65 11810 6490 54.95 7241 3971 54.84 4024 2240 55.67 2303 1259 54.67
55 53 Luna agi Carry, Nuker, Pusher 1927 904 46.91 9091 4271 46.98 16571 7922 47.81 16035 7615 47.49 9728 4634 47.64 4463 2103 47.12 1912 911 47.65 719 322 44.78
56 54 Lycan all Carry, Pusher, Durable, Escape 374 174 46.52 1894 915 48.31 3691 1744 47.25 3824 1905 49.82 2694 1332 49.44 1460 753 51.58 827 411 49.7 532 289 54.32
57 55 Magnus all Initiator, Disabler, Nuker, Escape 770 339 44.03 5789 2651 45.79 17837 7954 44.59 26126 12058 46.15 20634 9592 46.49 10574 5056 47.82 4565 2073 45.41 1606 751 46.76
58 56 Marci all Support, Carry, Initiator, Disabler, Escape 1370 620 45.26 7092 3252 45.85 15199 7240 47.63 18485 8874 48.01 13308 6305 47.38 7176 3476 48.44 3689 1882 51.02 1746 883 50.57
59 57 Mars str Carry, Initiator, Disabler, Durable 862 375 43.5 5719 2529 44.22 15156 6756 44.58 20719 9369 45.22 16419 7387 44.99 9044 4052 44.8 4536 2093 46.14 1926 868 45.07
60 58 Medusa agi Carry, Disabler, Durable 1898 902 47.52 9289 4512 48.57 16504 7818 47.37 14796 6886 46.54 7488 3449 46.06 2775 1270 45.77 1073 482 44.92 394 184 46.7
61 59 Meepo agi Carry, Escape, Nuker, Disabler, Initiator, Pusher 1004 523 52.09 3970 1990 50.13 6904 3587 51.96 7166 3646 50.88 4906 2563 52.24 2383 1282 53.8 1139 588 51.62 585 300 51.28
62 60 Mirana all Carry, Support, Escape, Nuker, Disabler 2499 1193 47.74 16954 8135 47.98 39985 19097 47.76 45169 21554 47.72 28467 13456 47.27 12800 6047 47.24 5272 2500 47.42 1824 874 47.92
63 61 Monkey King agi Carry, Escape, Disabler, Initiator 3191 1384 43.37 17306 7544 43.59 35734 16113 45.09 40778 18322 44.93 27558 12630 45.83 14034 6433 45.84 6650 3152 47.4 3040 1440 47.37
64 62 Morphling agi Carry, Escape, Durable, Nuker, Disabler 1521 690 45.36 8620 4006 46.47 18075 8161 45.15 20414 9235 45.24 14395 6530 45.36 7697 3551 46.13 4432 2050 46.25 2560 1190 46.48
65 63 Muerta int Carry, Nuker, Disabler 2130 1089 51.13 10787 5740 53.21 22602 11898 52.64 27609 14495 52.5 20175 10465 51.87 10662 5518 51.75 5462 2759 50.51 2948 1517 51.46
66 64 Naga Siren agi Carry, Support, Pusher, Disabler, Initiator, Escape 1502 804 53.53 6495 3356 51.67 10423 5234 50.22 9830 4929 50.14 6057 2971 49.05 3216 1675 52.08 1855 933 50.3 1242 634 51.05
67 65 Nature's Prophet int Carry, Pusher, Escape, Nuker 5991 3029 50.56 36433 18143 49.8 83118 42095 50.64 100341 51268 51.09 69436 35870 51.66 34256 17858 52.13 16585 8745 52.73 7182 3755 52.28
68 66 Necrophos int Carry, Nuker, Durable, Disabler 4776 2702 56.57 28535 15771 55.27 62186 34285 55.13 70212 38163 54.35 46539 24708 53.09 21607 11302 52.31 9677 4994 51.61 3418 1733 50.7
69 67 Night Stalker str Carry, Initiator, Durable, Disabler, Nuker 1189 594 49.96 7868 3892 49.47 19446 10004 51.45 25524 13506 52.91 20138 10828 53.77 10767 5651 52.48 5499 2889 52.54 2415 1257 52.05
70 68 Nyx Assassin all Disabler, Nuker, Initiator, Escape 1718 867 50.47 10925 5525 50.57 27207 14073 51.73 34684 18059 52.07 25736 13572 52.74 13313 7093 53.28 6485 3444 53.11 2852 1468 51.47
71 69 Ogre Magi str Support, Nuker, Disabler, Durable, Initiator 5331 2845 53.37 31507 16299 51.73 62954 32248 51.22 61758 31373 50.8 33746 16988 50.34 13262 6654 50.17 4861 2420 49.78 1271 654 51.46
72 70 Omniknight str Support, Durable, Nuker 975 479 49.13 6426 3109 48.38 14641 7319 49.99 17258 8731 50.59 11695 5916 50.59 5746 2993 52.09 2870 1469 51.18 1333 656 49.21
73 71 Oracle int Support, Nuker, Disabler, Escape 796 384 48.24 4857 2417 49.76 13141 6645 50.57 18944 9853 52.01 15221 7964 52.32 8356 4458 53.35 4475 2380 53.18 1905 1018 53.44
74 72 Outworld Destroyer int Carry, Nuker, Disabler 2226 1118 50.22 13388 6864 51.27 33284 17362 52.16 43991 23377 53.14 32021 16994 53.07 16655 8724 52.38 8123 4218 51.93 3176 1649 51.92
75 73 Pangolier all Carry, Nuker, Disabler, Durable, Escape, Initiator 1156 534 46.19 7189 3209 44.64 17802 7937 44.58 25785 11677 45.29 21727 10144 46.69 13064 6351 48.61 7567 3737 49.39 5275 2734 51.83
76 74 Phantom Assassin agi Carry, Escape 8553 4426 51.75 48549 25553 52.63 104756 54881 52.39 119332 62511 52.38 79140 41143 51.99 37399 19325 51.67 17774 9077 51.07 7819 3856 49.32
77 75 Phantom Lancer agi Carry, Escape, Pusher, Nuker 3641 1960 53.83 19550 10374 53.06 38576 20633 53.49 41505 22310 53.75 26401 14268 54.04 12437 6590 52.99 5708 2985 52.3 2383 1243 52.16
78 76 Phoenix all Support, Nuker, Initiator, Escape, Disabler 743 315 42.4 5231 2471 47.24 13950 6633 47.55 18350 8864 48.31 13972 6715 48.06 7787 3761 48.3 4322 2132 49.33 2610 1325 50.77
79 77 Primal Beast str Initiator, Durable, Disabler 1455 701 48.18 9333 4448 47.66 22800 11058 48.5 30084 14643 48.67 24307 11993 49.34 13970 6991 50.04 7742 3890 50.25 4625 2407 52.04
80 78 Puck int Initiator, Disabler, Escape, Nuker 871 399 45.81 5773 2628 45.52 16596 7578 45.66 24480 11315 46.22 20070 9497 47.32 11023 5298 48.06 5656 2714 47.98 2555 1200 46.97
81 79 Pudge str Disabler, Initiator, Durable, Nuker 7677 3796 49.45 50891 24776 48.68 114784 56289 49.04 129604 63097 48.68 85800 41542 48.42 41730 20239 48.5 19823 9530 48.08 7112 3431 48.24
82 80 Pugna int Nuker, Pusher 2075 944 45.49 9998 4695 46.96 18962 8958 47.24 20240 9965 49.23 12807 6199 48.4 5825 2855 49.01 2758 1387 50.29 1195 592 49.54
83 81 Queen of Pain int Carry, Nuker, Escape 2287 1100 48.1 15119 7354 48.64 37137 18118 48.79 47706 23657 49.59 35500 18018 50.75 18405 9289 50.47 9243 4689 50.73 4227 2113 49.99
84 82 Razor agi Carry, Durable, Nuker, Pusher 2470 1231 49.84 12000 5964 49.7 24666 12142 49.23 30334 14844 48.94 21832 10558 48.36 11917 5679 47.65 6092 2912 47.8 3144 1551 49.33
85 83 Riki agi Carry, Escape, Disabler 3684 1929 52.36 19022 9891 52.0 35638 18582 52.14 33908 17415 51.36 20194 10312 51.06 8726 4377 50.16 3735 1855 49.67 1160 559 48.19
86 84 Rubick int Support, Disabler, Nuker 3090 1404 45.44 21639 9303 42.99 57417 24590 42.83 74874 32603 43.54 55186 24219 43.89 28206 12568 44.56 13732 6106 44.47 5764 2642 45.84
87 85 Sand King all Initiator, Disabler, Support, Nuker, Escape 2633 1513 57.46 13097 7323 55.91 25271 13807 54.64 26724 14323 53.6 17384 9144 52.6 7907 4104 51.9 3394 1719 50.65 1211 611 50.45
88 86 Shadow Demon int Support, Disabler, Initiator, Nuker 547 236 43.14 3252 1426 43.85 7920 3524 44.49 9752 4551 46.67 7404 3467 46.83 3956 1876 47.42 2076 1004 48.36 1054 497 47.15
89 87 Shadow Fiend agi Carry, Nuker 5051 2544 50.37 27255 14064 51.6 58589 29830 50.91 65429 33097 50.58 41810 21189 50.68 18766 9401 50.1 8232 4000 48.59 3016 1430 47.41
90 88 Shadow Shaman int Support, Pusher, Disabler, Nuker, Initiator 5323 2795 52.51 29733 15606 52.49 58894 31236 53.04 58765 30895 52.57 34475 18242 52.91 15166 7986 52.66 6377 3323 52.11 2413 1253 51.93
91 89 Silencer int Carry, Support, Disabler, Initiator, Nuker 4229 2324 54.95 27878 14960 53.66 61698 33081 53.62 65256 34458 52.8 38589 19853 51.45 16889 8653 51.23 6836 3416 49.97 2236 1105 49.42
92 90 Skywrath Mage int Support, Nuker, Disabler 4000 2030 50.75 22783 11675 51.24 46512 23624 50.79 51329 25706 50.08 34167 17364 50.82 16693 8415 50.41 8496 4208 49.53 4389 2069 47.14
93 91 Slardar str Carry, Durable, Initiator, Disabler, Escape 3935 2129 54.1 21523 11602 53.91 43947 23701 53.93 47721 25633 53.71 29887 16132 53.98 14233 7722 54.25 6530 3467 53.09 2322 1205 51.89
94 92 Slark agi Carry, Escape, Disabler, Nuker 4815 2521 52.36 29413 14762 50.19 64004 31771 49.64 70173 34411 49.04 44780 21926 48.96 20864 10270 49.22 9969 4962 49.77 4565 2394 52.44
95 93 Snapfire all Support, Nuker, Disabler, Escape 1524 682 44.75 10646 4576 42.98 27103 12120 44.72 34711 15412 44.4 24351 10786 44.29 11723 5131 43.77 5227 2294 43.89 1987 868 43.68
96 94 Sniper agi Carry, Nuker 8022 4079 50.85 44508 22727 51.06 88690 45223 50.99 87190 44086 50.56 47411 23648 49.88 18092 8924 49.33 6130 3040 49.59 1370 662 48.32
97 95 Spectre agi Carry, Durable, Escape 3454 2008 58.14 22097 12356 55.92 49157 26961 54.85 55914 30100 53.83 36321 19338 53.24 16946 8960 52.87 7921 4163 52.56 2568 1370 53.35
98 96 Spirit Breaker str Carry, Initiator, Disabler, Durable, Escape 4788 2423 50.61 26662 13530 50.75 56535 28908 51.13 63991 32249 50.4 42512 21357 50.24 20119 9926 49.34 9499 4814 50.68 3761 1884 50.09
99 97 Storm Spirit int Carry, Escape, Nuker, Initiator, Disabler 2202 1001 45.46 11656 5197 44.59 25644 11806 46.04 30968 14210 45.89 21680 10197 47.03 10810 5025 46.48 5278 2382 45.13 2363 1122 47.48
100 98 Sven str Carry, Disabler, Initiator, Durable, Nuker 3552 1761 49.58 19792 9744 49.23 41296 20478 49.59 48709 24228 49.74 35460 17828 50.28 19795 10065 50.85 11014 5655 51.34 6701 3387 50.54
101 99 Techies all Nuker, Disabler 2356 1131 48.01 13105 6245 47.65 27293 12893 47.24 29180 13507 46.29 18216 8407 46.15 8266 3771 45.62 3459 1644 47.53 1319 591 44.81
102 100 Templar Assassin agi Carry, Escape 2142 955 44.58 10932 4758 43.52 21211 9445 44.53 23928 10909 45.59 17399 8242 47.37 9567 4656 48.67 5525 2708 49.01 3524 1775 50.37
103 101 Terrorblade agi Carry, Pusher, Nuker 1115 484 43.41 5686 2430 42.74 10856 4638 42.72 11518 5041 43.77 8059 3540 43.93 4192 1827 43.58 2419 1082 44.73 1621 700 43.18
104 102 Tidehunter str Initiator, Durable, Disabler, Nuker, Carry 1835 855 46.59 11159 5369 48.11 26222 12699 48.43 30735 14879 48.41 20523 9727 47.4 9731 4740 48.71 4426 2079 46.97 1998 936 46.85
105 103 Timbersaw all Nuker, Durable, Escape 1050 448 42.67 5854 2584 44.14 12301 5391 43.83 14295 6097 42.65 9697 4217 43.49 4992 2163 43.33 2419 1021 42.21 1139 471 41.35
106 104 Tinker int Carry, Nuker, Pusher 2106 944 44.82 11058 5200 47.02 24263 11826 48.74 27531 13614 49.45 19017 9732 51.18 9416 4875 51.77 4700 2466 52.47 1951 1036 53.1
107 105 Tiny str Carry, Nuker, Pusher, Initiator, Durable, Disabler 1434 654 45.61 7742 3452 44.59 15936 6950 43.61 17139 7468 43.57 11269 4991 44.29 5485 2491 45.41 2599 1216 46.79 1058 519 49.05
108 106 Treant Protector str Support, Initiator, Durable, Disabler, Escape 1646 899 54.62 11430 5881 51.45 28752 15124 52.6 36093 19344 53.59 28762 15532 54.0 16751 9227 55.08 9870 5468 55.4 6801 3855 56.68
109 107 Troll Warlord agi Carry, Pusher, Disabler, Durable 3176 1720 54.16 14007 7445 53.15 24729 13022 52.66 25424 13228 52.03 17362 9030 52.01 9427 4913 52.12 4767 2499 52.42 2341 1242 53.05
110 108 Tusk str Initiator, Disabler, Nuker 1263 565 44.73 8338 3777 45.3 19642 8869 45.15 25308 11520 45.52 18927 8853 46.77 10100 4820 47.72 5220 2502 47.93 2350 1157 49.23
111 109 Underlord str Support, Nuker, Disabler, Durable, Escape 797 405 50.82 4583 2341 51.08 10067 5057 50.23 11650 5786 49.67 7224 3561 49.29 3310 1591 48.07 1368 673 49.2 395 190 48.1
112 110 Undying str Support, Durable, Disabler, Nuker 3170 1620 51.1 19403 10116 52.14 40582 21110 52.02 40850 21182 51.85 23985 12454 51.92 10395 5389 51.84 4541 2336 51.44 2064 1012 49.03
113 111 Ursa agi Carry, Durable, Disabler 2801 1273 45.45 15132 7038 46.51 33269 15478 46.52 40822 19264 47.19 29348 14011 47.74 15262 7375 48.32 7507 3622 48.25 3004 1473 49.03
114 112 Vengeful Spirit all Support, Initiator, Disabler, Nuker, Escape 2186 1108 50.69 15817 8285 52.38 41843 21809 52.12 57524 30476 52.98 45512 24120 53.0 25581 13382 52.31 13758 7121 51.76 8276 4303 51.99
115 113 Venomancer all Support, Nuker, Initiator, Pusher, Disabler 2309 1187 51.41 14669 7463 50.88 34787 18020 51.8 41797 21690 51.89 28706 15085 52.55 13974 7338 52.51 6538 3495 53.46 2794 1459 52.22
116 114 Viper agi Carry, Durable, Initiator, Disabler 4100 2057 50.17 18991 9510 50.08 33517 16923 50.49 32728 16677 50.96 18537 9427 50.86 7851 3928 50.03 3260 1652 50.67 1176 610 51.87
117 115 Visage all Support, Nuker, Durable, Disabler, Pusher 331 171 51.66 1638 813 49.63 3240 1577 48.67 3840 1986 51.72 3108 1609 51.77 1995 1055 52.88 1309 702 53.63 858 457 53.26
118 116 Void Spirit all Carry, Escape, Nuker, Disabler 1565 727 46.45 8672 4096 47.23 20010 9694 48.45 25213 12376 49.09 18817 9231 49.06 10026 4920 49.07 4788 2319 48.43 2006 964 48.06
119 117 Warlock int Support, Initiator, Disabler 2547 1369 53.75 18931 10331 54.57 49795 26999 54.22 66697 36220 54.31 48401 25668 53.03 24999 12942 51.77 12575 6356 50.54 6183 2934 47.45
120 118 Weaver agi Carry, Escape 2818 1389 49.29 13873 6770 48.8 23493 11571 49.25 21545 10694 49.64 12911 6427 49.78 5809 2928 50.4 2960 1455 49.16 1303 719 55.18
121 119 Windranger all Carry, Support, Disabler, Escape, Nuker 3861 1814 46.98 19934 9223 46.27 40644 18807 46.27 44476 20652 46.43 28952 13508 46.66 13418 6297 46.93 5898 2782 47.17 2374 1142 48.1
122 120 Winter Wyvern all Support, Disabler, Nuker 821 371 45.19 5168 2424 46.9 10544 5014 47.55 11184 5308 47.46 7426 3512 47.29 3730 1854 49.71 1862 934 50.16 944 464 49.15
123 121 Witch Doctor int Support, Nuker, Disabler 7504 4173 55.61 45501 25616 56.3 99664 54963 55.15 111382 60421 54.25 71830 37860 52.71 33164 17334 52.27 14610 7442 50.94 4196 2076 49.48
124 122 Wraith King str Carry, Support, Durable, Disabler, Initiator 4175 2266 54.28 26362 14516 55.06 58733 32403 55.17 66283 36503 55.07 42360 23083 54.49 19084 10251 53.72 8334 4315 51.78 2707 1376 50.83
125 123 Zeus int Nuker, Carry 4132 2106 50.97 23721 12487 52.64 51568 27475 53.28 58333 31078 53.28 37821 20047 53.0 17901 9504 53.09 8539 4459 52.22 3400 1791 52.68

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## Задание
Использовать нейронную сеть MLPClassifier для данных из таблицы 1 по
варианту, самостоятельно сформулировав задачу. Интерпретировать результаты и оценить, насколько хорошо она подходит для решения сформулированной вами задачи
## Как запустить лабораторную
Запустить файл main.py
## Используемые технологии
Библиотеки pandas, scikit-learn, их компоненты
## Описание лабораторной (программы)
Данный код берет данные из датасета о персонажах Dota 2, где описаны атрибуты персонажей, их роли, название, и как часто их пикают и какой у них винрейт на каждом звании в Доте, от реркута до титана.
В моем случае была поставлена задача понять, можно ли определить позицию персонажа (всего в игре есть 5 позиций -
carry, mid, offlane, support, full support), по его главному атрибуту и по тому, какие роли он выполняет в игре. Учитывая
то, что Dota 2 имеет 124 персонажа, все они очень разные, поэтому была вероятность, что модель не установит зависимость и
не будет работать в принципе. Именно поэтому я посчитала данную задачу довольно интересной. В моем датасете присутствует информация о главном атрибуте персонажа и его ролях, но нет
информации о том, на каких позициях он играется. Поэтому для выяснения этого списка я обратилась к внешним ресурсам
и занесла информацию об этом в программу вручную. Это можно увидеть в коде в месте, где определяются роли.
![positions.png](positions.png)
Программа берет столбцы Name, Roles, PrimaryAttribute из датасета. Так как в столбце Roles есть 9 значений, которые прописаны
в разном количестве и разные у каждого персонажа, нужно было создать 9 дополнительных столбцов, где для каждого персонажа
выставлялось 1, если такая роль присутствует в его описании и 0, если ее нет.
Пример:
data['IsDurable'] = data['Roles'].apply(lambda x: 1 if 'Durable' in x else 0)
Далее столбец Roles был удален.
Так как PrimaryAttribute указан в строковом значении, он так же был переведен в числовое значение.
После этого нужно было заполнить столбцы posCarry, posMid, posOfflane, posSupport, posFullSupport. Если персонаж есть в списке
персонажей с этой позицией, там проставлялась 1, 0 - если нет.
В итоге получился датасет, где есть имя персонажа, его главный атрибут в виде числа, его роли (1 - если есть, 0 - если нет)
и то же самое с позициями.
Далее датафрейм делится на признаки (все столбцы, кроме столбцов с позициями) и метки (столбцы с позициями). Метки переводятся в числовой формат с помощью LabelEncoder(), иначе программа не может с ними работать.
Данные делятся на обучающую и тестовую выборку.
Модель создается таким образом потому, что если ставить меньшее число итераций или скрытых слоев, то она не успевала обучаться.
model = MLPClassifier(hidden_layer_sizes=(128, 128, 128), activation='relu', max_iter=1000, random_state=42)
Затем происходит предсказание позиций для тестовой выборки и оценка работы модели с помощью accuracy_score и classification_report
## Результат
В результате получаем следующее:
![accuracy.png](accuracy.png)
Оценка модели имеет относительно низкое значение. Однако, как было сказано ранее, она могла не работать в принципе, поэтому
я считаю это достаточно неплохим результатом и поставленная цель была выполнена - было выяснено, что позиция персонажа
все-таки зависит от его атрибута и ролей, которые он выполняет по игре, хоть эта зависимость и не 100% явная. Если бы она
была явная, например, все персонажи с атрибутом "сила" - это позиция offlane, тогда работа модели была бы значительно лучше.
Далее мы получаем classification report:
![classificationReport.png](classificationReport.png)
В данном отчете представлены 5 классов, то есть позиции (0, 1, 2, 3, 4). Для каждого класса представлены значения точности,
полноты и F1-оценки, вычисленные с использованием соответствующих метрик. Также показана поддержка класса, которая
представляет собой количество образцов, принадлежащих этому классу.
Precision (точность) - это метрика, которая оценивает долю правильно классифицированных объектов из всех объектов, которые модель отнесла к данному классу. Она измеряет, насколько точно модель предсказывает положительные классы.
Recall (полнота) - это метрика, которая оценивает долю правильно классифицированных объектов, отнесенных моделью к данному классу, относительно всех объектов, принадлежащих к данному классу. Она измеряет, насколько полно модель находит положительные классы.
F1-мера (F1-score) - это гармоническое среднее между precision и recall. Она используется для объединения оценок точности и полноты в единую метрику. F1-мера принимает значение между 0 и 1, где 1 - это идеальное значение, означающее, что модель идеально находит и точно классифицирует объекты положительного класса
micro avg - средневзвешенное значение точности, полноты и F1-оценки во всех классах, подсчитанное по общему количеству образцов.
macro avg - среднее значение точности, полноты и F1-оценки по всем классам, без учета количества образцов.
weighted avg - средневзвешенное значение точности, полноты и F1-оценки по всем классам, учитывая количество образцов.
samples avg - средневзвешенное значение точности, полноты и F1-оценки по всем классам, учитывая количество образцов
класса (если образец может принадлежать нескольким классам).
Из данного отчета можно сделать вывод о том, что по атрибутам и ролям в игре модель точно выявила персонажей для позиции
mid и offlane, но при этом, при работе с объектами, модель пропустила больше всего объектов, относящихся к этим классам,
и занесла их в другие классы, из-за чего снизилась precision других классов. Мы сами должны выбирать, что важнее - точность или полнота,
и в моем случае важнее точность, ведь изначально стоял вопрос о том, сможет ли модель определить, что к чему относится. Но низкие
значения полноты говорят о том, что низкое значение accuracy вполне оправдано, и хоть модель и может выявить, какие объекты к каким классам относятся,
делает она это не совсем "пОлно" и пропускает некоторые объекты.
Что касается признаков micro avg, macro avg, weighted avg, samples avg - все они показывают неплохие результаты относительно
ожиданий по поводу работы модели. Я думаю, что для поставленной задачи значения этих показателей довольно высоки.
Вывод: точность и показатели из отчета вышли достаточно хорошими относительно поставленной задачи, также был получен ответ на вопрос
зависит ли позиция персонажа от его атрибута и роли. Следовательно, с задачей разработанная модель справилась.

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import pandas as pd
from sklearn.neural_network import MLPClassifier
from sklearn.model_selection import train_test_split
from sklearn.preprocessing import StandardScaler
from sklearn.preprocessing import LabelEncoder
from sklearn.metrics import accuracy_score, classification_report
# Чтение данных из файла Current_Pub_Meta.csv
current_pub_meta = pd.read_csv('Current_Pub_Meta.csv')
# Создаем пустой DataFrame для хранения данных
data = pd.DataFrame(columns=['Name', 'Roles', 'Primary Attribute', 'IsDurable', 'IsSupport', 'IsCarry', 'IsDisabler',
'IsInitiator', 'IsNuker', 'IsEscaper', 'IsPusher', 'posCarry', 'posMid',
'posOfflane', 'posSupport', 'posHardSupport'])
# Добавление новых столбцов из файла в датафрейм data
data['Name'] = current_pub_meta['Name']
data['Roles'] = current_pub_meta['Roles']
data['Primary Attribute'] = current_pub_meta['Primary Attribute']
data['Primary Attribute'] = data['Primary Attribute'].map({'str': 0, 'all': 1, 'int': 2, 'agi': 3})
data['IsDurable'] = data['Roles'].apply(lambda x: 1 if 'Durable' in x else 0)
data['IsCarry'] = data['Roles'].apply(lambda x: 1 if 'Carry' in x else 0)
data['IsSupport'] = data['Roles'].apply(lambda x: 1 if 'Support' in x else 0)
data['IsDisabler'] = data['Roles'].apply(lambda x: 1 if 'Disabler' in x else 0)
data['IsInitiator'] = data['Roles'].apply(lambda x: 1 if 'Initiator' in x else 0)
data['IsNuker'] = data['Roles'].apply(lambda x: 1 if 'Nuker' in x else 0)
data['IsEscaper'] = data['Roles'].apply(lambda x: 1 if 'Escaper' in x else 0)
data['IsPusher'] = data['Roles'].apply(lambda x: 1 if 'Pusher' in x else 0)
#Удаление столбца Roles
data.drop('Roles', axis=1, inplace=True)
# Создаем список персонажей на каждую позицию
roles = {
'posHardSupport': ['Undying', 'Pudge', 'Marci', 'Grimstroke', 'Elder Titan', 'Warlock', 'Dazzle', 'Witch Doctor', 'Vengeful Spirit', 'Ancient Apparition', 'Disruptor', 'Keeper of the Light', 'Rubick', 'Jakiro', 'Oracle', 'Visage', 'Silencer', 'Shadow Demon', 'Chen', 'Winter Wyvern', 'Bane', 'Treant Protector', 'Io', 'Enchantress', 'Naga Siren'],
'posSupport': ['Venomancer', 'Tusk', 'Tiny', 'Spirit Breaker', 'Techies', 'Snapfire', 'Pudge', 'Muerta', 'Marci', 'Hoodwink', 'Grimstroke', 'Earth Spirit', 'Bounty Hunter', 'Crystal Maiden', 'Lion', 'Shadow Shaman', 'Lich', 'Ogre Magi', 'Warlock', 'Dazzle', 'Witch Doctor', 'Vengeful Spirit', 'Ancient Apparition', 'Disruptor', 'Keeper of the Light', 'Rubick', 'Jakiro', 'Oracle', 'Visage', 'Silencer', 'Shadow Demon', 'Chen', 'Winter Wyvern', 'Bane', 'Treant Protector', 'Io', 'Enchantress', 'Naga Siren', 'Earthshaker', 'Skywrath Mage', 'Leshrac', 'Shadow Fiend', 'Nyx Assassin', 'Pugna', 'Lina', 'Zeus', "Nature's Prophet", 'Dark Willow'],
'posOfflane': ['Wraith King', 'Spirit Breaker', 'Snapfire', 'Pudge', 'Primal Beast', 'Marci', 'Dragon Knight', 'Tidehunter', 'Centaur Warrunner', 'Dark Seer', 'Beastmaster', 'Mars', 'Brewmaster', 'Timbersaw', 'Bristleback', 'Abaddon', 'Axe', 'Enigma', 'Sand King', 'Clockwerk', 'Doom', 'Underlord', 'Omniknight', 'Legion Commander', "Nature's Prophet", 'Slardar', 'Faceless Void', 'Earthshaker', 'Pangolier', 'Pugna', 'Mars', 'Batrider', 'Windranger', 'Mirana', 'Beastmaster', 'Brewmaster', 'Phoenix', 'Beastmaster', 'Dark Seer', 'Lone Druid', 'Timbersaw', 'Broodmother', "Nature's Prophet", 'Magnus', 'Necrophos', 'Bloodseeker', 'Lycan'],
'posMid': ['Void Spirit', 'Pudge', 'Primal Beast', 'Earth Spirit', 'Dragon Knight', 'Arc Warden', 'Invoker', 'Storm Spirit', 'Shadow Fiend', 'Templar Assassin', 'Queen of Pain', 'Puck', 'Zeus', 'Tinker', 'Lina', 'Ember Spirit', 'Outworld Destroyer', 'Morphling', 'Leshrac', 'Sniper', 'Mirana', 'Viper', 'Death Prophet', 'Razor', 'Pugna', 'Skywrath Mage', "Nature's Prophet", 'Windranger', 'Batrider', 'Lina', 'Shadow Fiend', 'Templar Assassin', 'Ember Spirit', 'Huskar', 'Kunkka', 'Puck', 'Queen of Pain', 'Invoker', 'Storm Spirit', 'Outworld Devourer', 'Death Prophet', 'Razor', 'Lina', 'Sniper', 'Medusa', 'Leshrac', 'Viper'],
'posCarry': ['Pudge', 'Muerta', 'Monkey King', 'Drow Ranger', 'Alchemist', 'Anti-Mage', 'Spectre', 'Juggernaut', 'Phantom Assassin', 'Faceless Void', 'Phantom Lancer', 'Lifestealer', 'Slark', 'Terrorblade', 'Medusa', 'Luna', 'Shadow Fiend', 'Morphling', 'Templar Assassin', 'Ember Spirit', 'Naga Siren', 'Troll Warlord', 'Gyrocopter', 'Lone Druid', 'Ursa', 'Riki', 'Sven', 'Phantom Lancer', 'Chaos Knight', 'Night Stalker', 'Wraith King', 'Meepo', 'Troll Warlord', 'Juggernaut', 'Lifestealer', 'Templar Assassin', 'Ursa', 'Clinkz', 'Weaver', 'Riki', 'Spectre', 'Phantom Assassin', 'Naga Siren', 'Luna', 'Gyrocopter', 'Meepo', 'Lone Druid', 'Slark', 'Morphling', 'Terrorblade', 'Medusa', 'Faceless Void']
}
# Перебираем каждого героя и добавляем значения в соответствующие столбцы
for index, row in data.iterrows():
for role, characters in roles.items():
data.loc[index, role] = int(row['Name'] in characters)
pd.set_option('display.max_columns', None)
pd.set_option('display.max_rows', None)
print(data)
# Разделение датафрейма на признаки и метки
X = data[['Primary Attribute', 'IsDurable', 'IsSupport', 'IsCarry', 'IsDisabler', 'IsInitiator', 'IsNuker', 'IsEscaper', 'IsPusher']]
y = data[['posCarry', 'posMid', 'posOfflane', 'posSupport', 'posHardSupport']]
# Преобразование меток в числовой формат
label_encoder = LabelEncoder()
y = y.apply(label_encoder.fit_transform)
# Разделение выборки на обучающую и тестовую
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.1, random_state=42)
# Создание и обучение модели
model = MLPClassifier(hidden_layer_sizes=(128, 128, 128), activation='relu', max_iter=1000, random_state=42)
model.fit(X_train, y_train)
# Предсказание позиций для тестовой выборки
y_pred = model.predict(X_test)
# Оценка точности модели
accuracy = accuracy_score(y_test, y_pred)
class_report = classification_report(y_test, y_pred)
print("Accuracy:", accuracy)
print('Classification Report:')
print(class_report)

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import streamlit as st
import numpy as np
from sklearn.linear_model import Lasso
from sklearn.preprocessing import MinMaxScaler
from sklearn.linear_model import LassoCV
from sklearn.feature_selection import SelectFromModel
from sklearn.feature_selection import RFE
st.header("Лабораторная работа 2. Вариант 7. Лассо, случайное лассо, рекурсивное сокращение признаков")
# генерируем исходные данные: 750 строк-наблюдений и 14 столбцов-признаков
np.random.seed(0) #делаем случайные числа предсказуемыми, чтобы при каждом сбросе, рандомные числа были одинаковы
size = 750
X = np.random.uniform(0, 1, (size, 14))
# Задаем функцию-выход: регрессионную проблему Фридмана
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))
# Добавляем зависимость признаков
X[:, 10:] = X[:, :4] + np.random.normal(0, .025, (size, 4))
# Создание списка пар в формате: номер признака - средняя оценка
names = ["x%s" % i for i in range(1, 15)] # Список имен признаков
def random_lasso(X, Y, n_subsets=100):
n_samples, n_features = X.shape
selected_features = np.zeros(n_features)
for _ in range(n_subsets):
# Создаем случайное подмножество признаков
subset_indices = np.random.choice(n_features, int(n_features * 0.7), replace=False)
X_subset = X[:, subset_indices]
# Создаем LassoCV модель
lasso_cv = LassoCV(alphas=[0.05])
# Обучаем модель на подмножестве признаков
lasso_cv.fit(X_subset, Y)
# Определяем, какие признаки были выбраны
selected_features[subset_indices] += (lasso_cv.coef_ != 0)
# Вычисляем, какие признаки были выбраны чаще всего
most_selected_features = np.where(selected_features > n_subsets / 2)[0]
return most_selected_features
def rank_to_dict(ranks, name):
ranks = np.abs(ranks)
minmax = MinMaxScaler()
ranks = minmax.fit_transform(np.array(ranks).reshape(-1, 1)).ravel()
ranks = list(map(lambda x: round(x, 2), ranks))
ranked_features = list(zip(name, ranks))
return ranked_features
def mean_rank(ranks):
total = sum(rank for _, rank in ranks)
return total / len(ranks)
# Переключатели
lasso_check = st.checkbox("Лассо")
random_lasso_check = st.checkbox("Случайное лассо")
RFE_check = st.checkbox("Рекурсивное сокращение признаков")
# Результаты
if lasso_check:
model_lasso = Lasso(alpha=.05)
model_lasso.fit(X, Y)
rank = rank_to_dict(model_lasso.coef_, names)
mean = mean_rank(rank)
st.write("Получившиеся оценки для каждого признака")
st.table(rank)
st.write("Средняя оценка: ", mean)
if random_lasso_check:
selected_features = random_lasso(X, Y)
X_subset = X[:, selected_features]
lasso_cv = LassoCV(alphas=[0.05])
lasso_cv.fit(X_subset, Y)
rank = rank_to_dict(lasso_cv.coef_, [names[i] for i in selected_features])
mean = mean_rank(rank)
st.write("Получившиеся оценки")
st.table(rank)
st.write("Средняя оценка: ", mean)
if RFE_check:
model_lasso = Lasso(alpha=0.05)
rfe = RFE(model_lasso, n_features_to_select=4)
rfe.fit(X, Y)
selected_feature_indices = rfe.support_
selected_feature_names = [name for i, name in enumerate(names) if selected_feature_indices[i]]
rank = rank_to_dict(rfe.ranking_, selected_feature_names)
mean = mean_rank(rank)
st.write("Получившиеся оценки")
st.table(rank)
st.write("Средняя оценка: ", mean)

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## Задание
Модели:
* Лассо (Lasso)
* Случайное лассо (RandomizedLasso)
* Рекурсивное сокращение признаков (Recursive Feature Elimination RFE)
## В чем различие каждой модели
Лассо (Lasso) автоматически отбирает наиболее важные признаки и уменьшает влияние менее важных.
Случайное лассо (RandomizedLasso) случайным образом выбирает подмножества признаков из исходных данных и применяет Лассо к каждому из них. Затем он объединяет результаты и определяет, какие признаки были выбраны чаще всего.
Рекурсивное сокращение признаков (Recursive Feature Elimination RFE) оценивает важность каждого признака. Затем он удаляет наименее важный признак и повторяет процесс, пока не останется желаемое количество признаков.
## Библиотеки
Streamlit. Предоставляет простой способ создания веб-приложений для визуализации данных.
Numpy. Предоставляет возможность работать с массивами и матрицами.
Sklearn. Предоставляет инструменты и алгоритмы, которые упрощают задачи, связанные с машинным обучением.
## Функционал
* Генерация исходных данных из 750 строк-наблюдений и 14 столбцов-признаков
* Создание и обучение таких моделей, как лассо, случайное лассо и рекурсивное сокращение признаков.
* Вывод получившихся оценок для признаков и средней оценки.
## Запуск
Перед запуском необходимо запустить виртуальную среду venv. Так как я использую streamlit, то для запуска необходимо в терминал прописать следующую строку:
```
streamlit run lab1.py
```
Приложение развернется на локальном сервере и автоматически откроется в браузере.
## Скриншоты работы программы
Лассо (Lasso)
![Alt text](Lasso_screen.png "Optional Title")
Случайное лассо (RandomizedLasso)
![Alt text](RandLasso_screen.png "Optional Title")
Рекурсивное сокращение признаков (Recursive Feature Elimination RFE)
![Alt text](RFE_screen.png "Optional Title")
## Вывод
Модель лассо выводит все 14 признаков, наиболее важными признаками оказались под индексом
1, 2, 4 и 5. Самый важный признак под номером 4. Средняя оценка по всем признакам 0.19.
Модель случайное лассо выводит наиболее важные признаки, такими признаками являются 1, 2, 4 и 5. Средняя оценка же по этим признакам равна 0.53. Она выше, так как мы исключаем маловажные признаки.
Модель рекурсивного сокращения признаков выводит 4 признака, так как я указала именно вывод 4 признаков в коде программы. Таким образом, модель отсекает маловажные признаки. Самым важным признаком оказался под номером 4. Средняя оценка: 0.25.
Как итог, можно сказать, что наиболее важными признаками являются 1, 2, 4 и 5. А самым важным из них является признак под номером 4.

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### Вариант 9
### Задание на лабораторную работу:
Выполнить ранжирование признаков с помощью указанных по варианту моделей:
- Лассо (Lasso)
- Сокращение признаков Случайными деревьями (Random Forest Regressor)
- Линейная корреляция (f_regression)
### Как запустить лабораторную работу:
Выполняем файл gusev_vladislav_lab_2.py, в консоль будут выведены результаты.
### Технологии
NumPy - библиотека для работы с многомерными массивами. Sklearn - библиотека с большим количеством алгоритмов машинного обучения.
### По коду
В начале генерируем исходные данные: 750 строк-наблюдений и 14 столбцов-признаков, задаем функцию-выход: регрессионную проблему Фридмана, добавляем зависимость признаков
Далее создаем пустой словарь для хранения рангов признаков, используем методы из библиотеки Sklearn: Lasso, RandomForestRegressor и f_regression для задания по варианту.
Далее необходимо объявить функцию def rank_to_dict(ranks, names): для соотнесения нашего списка рангов и списка оценок по признакам. Возвращает он словарь типа (имя_признака: оценка_признака) и оценки приведены к единому диапазону от 0 до 1 и округлены до сотых.
В конце формируем среднее по каждому признаку, сортируем по убыванию и выводим на экран.
Пример:
![img.png](img.png)
Признаки х4 и х14 имеют наивысшие ранги, что говорит об их наибольшей значимости для решения задачи
Далее x2 и x12 занимают второе место по значимости (средняя значимость)
х1, х11 ниже среднего
х5, х8, х7 низкая значимость
х9, х3, х13, х10, х6 очень низкая значимость

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from sklearn.linear_model import Lasso
from sklearn.ensemble import RandomForestRegressor
from sklearn.feature_selection import f_regression
from sklearn.preprocessing import MinMaxScaler
import numpy as np
#генерируем исходные данные: 750 строк-наблюдений и 14 столбцов-признаков
np.random.seed(0)
size = 750
X = np.random.uniform(0, 1, (size, 14))
#Задаем функцию-выход: регрессионную проблему Фридмана
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))
#Добавляем зависимость признаков
X[:,10:] = X[:,:4] + np.random.normal(0, .025, (size,4))
names = ["x%s" % i for i in range(1,15)]
#Создается пустой словарь для хранения рангов признаков
ranks = {}
#Lasso
lasso = Lasso(alpha=0.5)
lasso.fit(X, Y)
ranks["Lasso"] = dict(zip(names, lasso.coef_))
#Случайные деревья
rf = RandomForestRegressor(n_estimators=100)
rf.fit(X, Y)
ranks["Random Forest"] = dict(zip(names, rf.feature_importances_))
#Линейная корреляция
f_scores, p_values = f_regression(X, Y)
ranks["f_regression"] = dict(zip(names, f_scores))
def rank_to_dict(ranks, names):
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))
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]
sorted_mean = sorted(mean.items(), key=lambda x: x[1], reverse=True)
result = {}
for item in sorted_mean:
result[item[0]] = item[1]
print(f'{item[0]}: {item[1]}')

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