From cc021ad78a054c3055122c2240e1d5263991a530 Mon Sep 17 00:00:00 2001 From: altteam Date: Thu, 23 Nov 2023 00:35:34 +0400 Subject: [PATCH 1/2] laba 3 ready!!! --- verina_daria_lab_3/README.md | 41 ++ verina_daria_lab_3/laba3_economica.py | 40 ++ verina_daria_lab_3/laba3_titanic.py | 31 + verina_daria_lab_3/result1.png | Bin 0 -> 31710 bytes verina_daria_lab_3/result2.png | Bin 0 -> 25757 bytes verina_daria_lab_3/titanic_data.csv | 892 ++++++++++++++++++++++++++ 6 files changed, 1004 insertions(+) create mode 100644 verina_daria_lab_3/README.md create mode 100644 verina_daria_lab_3/laba3_economica.py create mode 100644 verina_daria_lab_3/laba3_titanic.py create mode 100644 verina_daria_lab_3/result1.png create mode 100644 verina_daria_lab_3/result2.png create mode 100644 verina_daria_lab_3/titanic_data.csv diff --git a/verina_daria_lab_3/README.md b/verina_daria_lab_3/README.md new file mode 100644 index 0000000..cbdc59a --- /dev/null +++ b/verina_daria_lab_3/README.md @@ -0,0 +1,41 @@ +# Лабораторная работа 3. Деревья решений +### Задание на лабораторную: +Часть 1. По данным о пассажирах Титаника решите задачу классификации (с помощью дерева решений), в которой по различным характеристикам пассажиров требуется найти у выживших пассажиров два наиболее важных признака из трех рассматриваемых (по варианту). + +**Вариант 7.** +Ticket,Fare,Cabin + +Часть 2. Решите с помощью библиотечной реализации дерева решений задачу из лабораторной работы «Веб-сервис «Дерево решений» по предмету «Методы искусственного интеллекта» на 99% ваших данных. Проверьте работу модели на оставшемся проценте, сделайте вывод. +*** +### Как запустить лабораторную работу: +Для запуска первой части лабораторной работы необходимо открыть файл `laba3_titanic.py`, нажать на ПКМ и в выпадающем списке выбрать опцию "Run". Для запуска второй части - то же самое, но файл "laba3_economica" +*** +### Технологии: +**NumPy (Numerical Python)** - это библиотека для научных вычислений в Python, которая обеспечивает эффективные вычисления и манипуляции с данными. + +**Pandas** - это библиотека на языке Python, которая предоставляет удобные и эффективные инструменты для обработки и анализа данных. Она предоставляет высокоуровневые структуры данных, такие как DataFrame, которые позволяют легко и гибко работать с табличными данными. + +**Scikit-learn (Sklearn)** - это библиотека для языка программирования Python, которая предоставляет инструменты для разработки и применения различных алгоритмов машинного обучения, включая классификацию, регрессию, кластеризацию, снижение размерности и многое другое. Scikit-learn также предлагает функции для предобработки данных, оценки моделей и выбора наилучших параметров. +*** +### Что делает лабораторная работа: +Часть 1: +- Загружается выборка из файла titanic_data.csv с помощью пакета +Pandas +- Отбирается в выборку 3 признака: Ticket,Fare,Cabin +- Определяется целевая переменная (Survived) +- Обучается решающее дерево +- Выводятся важности признаков + +Часть 2: +Код использует дерево решений для прогнозирования цены на нефть на основе страны и года. Данные разделены на тренировочный (99%) и тестовый (1%) наборы. Модель обучается на тренировочных данных и оценивается на тестовых данных. Затем модель применяется к оставшимся 1% данных для дополнительной оценки. Результаты выражены в процентах ошибки относительно среднего значения цены на нефть. +*** +### Пример выходных данных: +***Часть 1:*** +![result1.png](result1.png) + +***Часть 2:*** +![result2.png](result2.png) +*** +**Вывод**: результаты первой части лабораторной работы показали, что у выживших пассажиров наиболее важными признаками являются *Fare* и Ticket. + +Во второй части лаб. работы ошибка составила 3.1554436208840472e-30 (очень близка к нулю), это означает, что модель идеально соответствует тестовым данным. Она абсолютно точно предсказывает цены на нефть на тестовом наборе. \ No newline at end of file diff --git a/verina_daria_lab_3/laba3_economica.py b/verina_daria_lab_3/laba3_economica.py new file mode 100644 index 0000000..f4a4bfd --- /dev/null +++ b/verina_daria_lab_3/laba3_economica.py @@ -0,0 +1,40 @@ +import pandas as pd +from sklearn.model_selection import train_test_split +from sklearn.tree import DecisionTreeRegressor +from sklearn.metrics import mean_squared_error +from sklearn.preprocessing import LabelEncoder + +# Загрузка данных +data = pd.read_csv('economica.csv') + +# Преобразование строковых значений в числовые +le = LabelEncoder() +data['country'] = le.fit_transform(data['country']) + +# Определение признаков и целевой переменной +X = data[['country', 'year']] +y = data['oil_prices'] + +# Разделение данных на тренировочный и тестовый наборы +X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.01, random_state=42) + +# Создание и обучение дерева решений +clf = DecisionTreeRegressor(random_state=42) +clf.fit(X_train, y_train) + +# Прогнозирование на тестовом наборе +y_pred = clf.predict(X_test) + +# Оценка качества модели на тестовом наборе +mse = mean_squared_error(y_test, y_pred) + +# Прогнозирование на оставшемся проценте данных +X_remaining = data.drop(X_train.index) +y_remaining_true = X_remaining['oil_prices'] +X_remaining = X_remaining[['country', 'year']] +y_remaining_pred = clf.predict(X_remaining) + +# Оценка качества модели на оставшемся проценте данных +mse_remaining = mean_squared_error(y_remaining_true, y_remaining_pred) +mse_remaining_percent = (mse_remaining / y.mean()) * 100 +print(f'Среднеквадратичная ошибка на 1%: {mse_remaining}({mse_remaining_percent:.2f}%)') diff --git a/verina_daria_lab_3/laba3_titanic.py b/verina_daria_lab_3/laba3_titanic.py new file mode 100644 index 0000000..695812d --- /dev/null +++ b/verina_daria_lab_3/laba3_titanic.py @@ -0,0 +1,31 @@ +import pandas as pd +from sklearn.tree import DecisionTreeClassifier + +# Загрузка данных +data = pd.read_csv('titanic_data.csv', index_col='PassengerId') + +# Фильтрация данных +data = data.dropna(subset=['Ticket', 'Fare', 'Cabin', 'Survived']) + +# Преобразование категориальных признаков в числовые +data['Ticket'], _ = pd.factorize(data['Ticket']) +data['Cabin'], _ = pd.factorize(data['Cabin']) + +# Выделение признаков и целевой переменной +X = data[['Ticket', 'Fare', 'Cabin']] +y = data['Survived'] + +# Создание и обучение дерева решений +clf = DecisionTreeClassifier(random_state=241) +clf.fit(X, y) + +# Получение и распечатка важностей признаков +importances = clf.feature_importances_ + +# Связываем важности с именами признаков +feature_importance = dict(zip(X.columns, importances)) + +# Выводим важности признаков +print("Важности признаков:") +for feature, importance in feature_importance.items(): + print(f"{feature}: {importance}") diff --git a/verina_daria_lab_3/result1.png b/verina_daria_lab_3/result1.png new file mode 100644 index 0000000000000000000000000000000000000000..b9dec9688e02d99f2628be248e89c0cb66ab56fe GIT binary patch literal 31710 zcmbrlc|6qX|Nmcy6WYd7*~%mb6%vj;BXrsnm9jIIP{tU`v5uK35wg|0ELoDANX(3- zvCmAhm0dBzSjG~{82b!n{k@#`_xty)#~5DM&0MbK`FuRD>;6c(VRPxgUWL88 zcI`TFRFEIL)V4(o$SG?!Paegi?b3ees^Gx%Y~Jif72|V$VJl8)y|pg=!}L+Hj!* zj3ceGm3iQ)V$+MtTOX=>6>CNU8$G+QH3~H}f5xwk{d>V|^B?`5N03Xz<%;z)jRM5n zy{-9q%v?yqu?Pi&k-Oif=mHir0mH4u?EBxH0lLKlPl8MrKXjc<)~Xo}84hYW@c4j% zqj|YOz>0Zj!_*31$ie^8JWi;>E2L|@`K$9Rp$>8AfBr8^@u`9Y@#bHfR^(K7#(TI( zm6HV=vXKC`>at0$T0#BAtK~nc-0aB8I?OcJJRn?L6=HdP93kHuo#~ZkuR4eB?1+zn zzKf~sUI3nx@5DH4YUS8(u4?U>fg*@3^m7)=W!H0=a82n~q3Xj|vxRd~|9S<)j%XxMl zSn!98ipcw z#%#H1{jr!*q{nc~dXG9-6Lt%RTyM(B^mqC^w+$i|+c9FsfU`+xfbZ0y;Febd?pB`J2ut&?UjVnQxhD zDtN(U1Pql5tebi~HJ6KUpF=$*;}UoUYpBAtw%7R(M8nVGsdhy~p6NudZO_d{_amp5 zsVi&k_Y2t?E)(4J+0??-Gatf7#v*4@6Gj6Y;dPvaGR#n@4Sk}|p^XN0Z@pLA5qJ$p z#5G$RlhAG(v-@ts5PzW-s7o=7ZvzpSgL{TBk^VYf&%r?hDCj@Pa1gg8@tEjn`#)|3%F>66% z!5uwF72IN)>5?32YdYDp0L6Y;yA%_71HIm3m{9U6+CPPUs~c)|e6_5VP?NHP>elHf zujpHE79^>^GU{!<7DcTY&EA$wR}+XTRB+qu%26e$VxqYAFCg zwmf2v=Pe)2jW>vE>N6L{)UEfLc0~DXcI)*W?SnGrr<1jn@TX#+&y1IXNm2rk(d2_K zky!r?Ot0~Lck1$+*9FsT2LFdHxHF2{8{&0Ul%bRBi@z5Y_@7Cz#$ zwbZ!W4!a;>80Jm_Mr(#JV#I-Ehb%|oNt^}kPT6EZ1hCSk62NFVyh_}4s`a{6UDIM! 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zYc2eD;|AZWhGGn6tmThFbY+!|r>!uX^@&K*;rP z*Fhk$d!)7jpS%E3KLG(hfdP`F5Gw`VK7x9JH{ZYgeObUd`2SE2Plq@o`*B56#_2v^ zN>tr5${g8Drb(7cgS-*#-uH>w Date: Thu, 23 Nov 2023 00:37:33 +0400 Subject: [PATCH 2/2] laba 3 economica file --- verina_daria_lab_3/economica.csv | 370 +++++++++++++++++++++++++++++++ 1 file changed, 370 insertions(+) create mode 100644 verina_daria_lab_3/economica.csv diff --git a/verina_daria_lab_3/economica.csv b/verina_daria_lab_3/economica.csv new file mode 100644 index 0000000..1d8b140 --- /dev/null +++ b/verina_daria_lab_3/economica.csv @@ -0,0 +1,370 @@ +stock_index,country,year,index_price,log_indexprice,inflationrate,oil_prices,exchange_rate,gdppercent,percapitaincome,unemploymentrate,manufacturingoutput,tradebalance,USTreasury +NASDAQ,United States of America,1980.00,168.61,2.23,0.14,21.59,1.00,0.09,12575.00,0.07,,-13.06,0.11 +NASDAQ,United States of America,1981.00,203.15,2.31,0.10,31.77,1.00,0.12,13976.00,0.08,,-12.52,0.14 +NASDAQ,United States of America,1982.00,188.98,2.28,0.06,28.52,1.00,0.04,14434.00,0.10,,-19.97,0.13 +NASDAQ,United States of America,1983.00,285.43,2.46,0.03,26.19,1.00,0.09,15544.00,0.10,,-51.64,0.11 +NASDAQ,United States of America,1984.00,248.89,2.40,0.04,25.88,1.00,0.11,17121.00,0.08,,-102.73,0.12 +NASDAQ,United States of America,1985.00,290.25,2.46,0.04,24.09,1.00,0.07,18237.00,0.07,,-114.02,0.11 +NASDAQ,United States of America,1986.00,366.97,2.56,0.02,12.51,1.00,0.06,19071.00,0.07,,-131.87,0.08 +NASDAQ,United States of America,1987.00,402.57,2.60,0.04,15.40,1.00,0.06,20039.00,0.06,,-144.77,0.08 +NASDAQ,United States of America,1988.00,374.43,2.57,0.04,12.58,1.00,0.08,21417.00,0.05,,-109.39,0.09 +NASDAQ,United States of America,1989.00,437.80,2.64,0.05,15.86,1.00,0.08,22857.00,0.05,,-86.74,0.08 +NASDAQ,United States of America,1990.00,409.18,2.61,0.05,27.28,1.00,0.02,23889.00,0.06,182.19,-77.85,0.09 +NASDAQ,United States of America,1991.00,491.69,2.69,0.04,19.50,1.00,,24342.00,0.07,185.83,-28.61,0.08 +NASDAQ,United States of America,1992.00,599.26,2.78,0.03,19.41,1.00,0.04,25419.00,0.07,189.27,-34.74,0.07 +NASDAQ,United States of America,1993.00,715.16,2.85,0.03,14.52,1.00,0.03,26387.00,0.07,166.43,-65.17,0.06 +NASDAQ,United States of America,1994.00,751.65,2.88,0.03,17.16,1.00,0.04,27695.00,0.06,187.05,-92.49,0.07 +NASDAQ,United States of America,1995.00,925.19,2.97,0.03,19.03,1.00,0.03,28691.00,0.06,208.44,-89.76,0.07 +NASDAQ,United States of America,1996.00,1164.95,3.07,0.03,25.23,1.00,0.04,29968.00,0.05,216.82,-96.38,0.06 +NASDAQ,United States of America,1997.00,1469.49,3.17,0.02,18.33,1.00,0.04,31459.00,0.05,235.67,-101.97,0.06 +NASDAQ,United States of America,1998.00,1794.91,3.25,0.02,11.35,1.00,0.05,32854.00,0.05,240.04,-162.71,0.05 +NASDAQ,United States of America,1999.00,2728.15,3.44,0.02,26.10,1.00,0.05,34514.00,0.04,234.62,-255.83,0.06 +NASDAQ,United States of America,2000.00,3783.67,3.58,0.03,28.44,1.00,0.04,36335.00,0.04,223.42,-375.05,0.06 +NASDAQ,United States of America,2001.00,2035.00,3.31,0.03,19.39,1.00,0.01,37133.00,0.05,205.70,-367.93,0.05 +NASDAQ,United States of America,2002.00,1539.73,3.19,0.02,29.46,1.00,0.02,38023.00,0.06,217.95,-425.40,0.05 +NASDAQ,United States of America,2003.00,1647.17,3.22,0.02,32.13,1.00,0.03,39496.00,0.06,240.22,-503.13,0.04 +NASDAQ,United States of America,2004.00,1986.53,3.30,0.03,43.15,1.00,0.04,41713.00,0.06,267.20,-619.08,0.04 +NASDAQ,United States of America,2005.00,2099.32,3.32,0.03,59.41,1.00,0.04,44115.00,0.05,268.36,-721.19,0.04 +NASDAQ,United States of America,2006.00,2263.41,3.35,0.03,61.96,1.00,0.03,46299.00,0.05,277.32,-770.93,0.05 +NASDAQ,United States of America,2007.00,2578.47,3.41,0.03,91.69,1.00,0.02,47976.00,0.05,299.29,-718.43,0.05 +NASDAQ,United States of America,2008.00,2161.65,3.33,0.04,41.12,1.00,,48383.00,0.06,278.83,-723.09,0.04 +NASDAQ,United States of America,2009.00,1845.38,3.27,,74.47,1.00,-0.03,47100.00,0.09,221.24,-396.45,0.03 +NASDAQ,United States of America,2010.00,2349.89,3.37,0.02,89.15,1.00,0.03,48467.00,0.10,236.41,-513.90,0.03 +NASDAQ,United States of America,2011.00,2677.44,3.43,0.03,98.56,1.00,0.02,49883.00,0.09,249.95,-579.46,0.03 +NASDAQ,United States of America,2012.00,2965.56,3.47,0.02,87.86,1.00,0.02,51603.00,0.08,252.36,-568.57,0.02 +NASDAQ,United States of America,2013.00,3541.29,3.55,0.01,97.63,1.00,0.02,53107.00,0.07,265.61,-490.78,0.02 +NASDAQ,United States of America,2014.00,4375.10,3.64,0.02,59.29,1.00,0.02,55050.00,0.06,287.86,-507.66,0.03 +NASDAQ,United States of America,2015.00,4945.55,3.69,,37.19,1.00,0.03,56863.00,0.05,274.30,-526.57,0.02 +NASDAQ,United States of America,2016.00,4987.79,3.70,0.01,51.97,1.00,0.02,58021.00,0.05,245.73,-512.51,0.02 +NASDAQ,United States of America,2017.00,6235.30,3.79,0.02,57.88,1.00,0.02,60110.00,0.04,242.59,-555.53,0.02 +NASDAQ,United States of America,2018.00,7425.96,3.87,0.02,49.52,1.00,0.03,63064.00,0.04,256.36,-609.46,0.03 +NASDAQ,United States of America,2019.00,7940.36,3.90,0.02,59.88,1.00,0.02,65280.00,0.04,245.75,-610.47,0.02 +NASDAQ,United States of America,2020.00,10201.51,4.01,0.01,47.02,1.00,-0.03,63544.00,0.08,227.14,,0.01 +FTSE 100,United Kingdom,1980.00,,3.33,0.18,21.59,2.32,-0.02,10032.00,0.05,,12.30,0.11 +FTSE 100,United Kingdom,1981.00,,3.33,0.12,31.77,2.02,-0.01,9599.00,0.04,,15.24,0.14 +FTSE 100,United Kingdom,1982.00,,3.33,0.09,28.52,1.75,0.02,9145.00,0.04,,9.77,0.13 +FTSE 100,United Kingdom,1983.00,,3.33,0.05,26.19,1.52,0.04,8691.00,0.04,,4.69,0.11 +FTSE 100,United Kingdom,1984.00,,3.33,0.05,25.88,1.34,0.02,8179.00,0.04,,-0.30,0.12 +FTSE 100,United Kingdom,1985.00,,3.33,0.06,24.09,1.30,0.04,8652.00,0.05,,5.39,0.11 +FTSE 100,United Kingdom,1986.00,,3.33,0.03,12.51,1.47,0.03,10611.00,0.04,,-3.63,0.08 +FTSE 100,United Kingdom,1987.00,,3.33,0.04,15.40,1.64,0.05,13118.00,0.05,,-7.00,0.08 +FTSE 100,United Kingdom,1988.00,,3.33,0.04,12.58,1.78,0.06,15988.00,0.05,,-29.79,0.09 +FTSE 100,United Kingdom,1989.00,,3.33,0.06,15.86,1.64,0.03,16240.00,0.05,,-33.87,0.08 +FTSE 100,United Kingdom,1990.00,2143.50,3.33,0.08,27.28,1.78,0.01,19096.00,0.07,182.19,-20.30,0.09 +FTSE 100,United Kingdom,1991.00,2493.10,3.40,0.07,19.50,1.77,-0.01,19900.00,0.09,185.83,-4.36,0.08 +FTSE 100,United Kingdom,1992.00,2846.50,3.45,0.05,19.41,1.77,,20488.00,0.10,189.27,-8.49,0.07 +FTSE 100,United Kingdom,1993.00,3418.40,3.53,0.03,14.52,1.50,0.02,18390.00,0.10,166.43,-3.90,0.06 +FTSE 100,United Kingdom,1994.00,3065.50,3.49,0.02,17.16,1.53,0.04,19708.00,0.10,187.05,-0.31,0.07 +FTSE 100,United Kingdom,1995.00,3689.30,3.57,0.03,19.03,1.58,0.03,23125.00,0.09,208.44,3.66,0.07 +FTSE 100,United Kingdom,1996.00,4118.50,3.61,0.03,25.23,1.56,0.02,24335.00,0.08,216.82,2.38,0.06 +FTSE 100,United Kingdom,1997.00,5135.50,3.71,0.02,18.33,1.64,0.05,26718.00,0.07,235.67,6.97,0.06 +FTSE 100,United Kingdom,1998.00,5882.58,3.77,0.02,11.35,1.66,0.04,28238.00,0.06,240.04,-11.17,0.05 +FTSE 100,United Kingdom,1999.00,6930.20,3.84,0.02,26.10,1.62,0.03,28668.00,0.06,234.62,-24.12,0.06 +FTSE 100,United Kingdom,2000.00,6222.46,3.79,0.01,28.44,1.52,0.04,28155.00,0.06,223.42,-29.59,0.06 +FTSE 100,United Kingdom,2001.00,5217.35,3.72,0.02,19.39,1.44,0.03,27719.00,0.05,205.70,-37.30,0.05 +FTSE 100,United Kingdom,2002.00,3940.36,3.60,0.02,29.46,1.50,0.02,29982.00,0.05,217.95,-47.84,0.05 +FTSE 100,United Kingdom,2003.00,4476.87,3.65,0.01,32.13,1.63,0.03,34385.00,0.05,240.22,-45.90,0.04 +FTSE 100,United Kingdom,2004.00,4814.30,3.68,0.01,43.15,1.83,0.02,40210.00,0.05,267.20,-61.87,0.04 +FTSE 100,United Kingdom,2005.00,5618.76,3.75,0.02,59.41,1.82,0.03,41933.00,0.05,268.36,-61.73,0.04 +FTSE 100,United Kingdom,2006.00,6220.81,3.79,0.02,61.96,1.84,0.03,44474.00,0.05,277.32,-57.48,0.05 +FTSE 100,United Kingdom,2007.00,6456.91,3.81,0.02,91.69,2.00,0.02,50448.00,0.05,299.29,-63.22,0.05 +FTSE 100,United Kingdom,2008.00,4434.17,3.65,0.04,41.12,1.85,,47270.00,0.06,278.83,-63.77,0.04 +FTSE 100,United Kingdom,2009.00,5412.88,3.73,0.02,74.47,1.57,-0.04,38736.00,0.08,221.24,-38.74,0.03 +FTSE 100,United Kingdom,2010.00,5899.94,3.77,0.02,89.15,1.55,0.02,39537.00,0.08,236.41,-48.09,0.03 +FTSE 100,United Kingdom,2011.00,5572.28,3.75,0.04,98.56,1.60,0.01,42048.00,0.08,249.95,-25.37,0.03 +FTSE 100,United Kingdom,2012.00,5897.81,3.77,0.03,87.86,1.59,0.01,42449.00,0.08,252.36,-33.47,0.02 +FTSE 100,United Kingdom,2013.00,6749.09,3.83,0.02,97.63,1.56,0.02,43401.00,0.08,265.61,-39.09,0.02 +FTSE 100,United Kingdom,2014.00,6566.09,3.82,0.01,59.29,1.65,0.03,47452.00,0.06,287.86,-47.61,0.03 +FTSE 100,United Kingdom,2015.00,6242.32,3.80,,37.19,1.53,0.02,45039.00,0.05,274.30,-43.19,0.02 +FTSE 100,United Kingdom,2016.00,7142.83,3.85,0.01,51.97,1.36,0.02,41048.00,0.05,245.73,-48.76,0.02 +FTSE 100,United Kingdom,2017.00,7687.77,3.89,0.03,57.88,1.29,0.02,40306.00,0.04,242.59,-38.47,0.02 +FTSE 100,United Kingdom,2018.00,6728.13,3.83,0.02,49.52,1.34,0.01,42996.00,0.04,256.36,-34.00,0.03 +FTSE 100,United Kingdom,2019.00,7542.44,3.88,0.02,59.88,1.28,0.01,42354.00,0.04,245.75,-35.06,0.02 +FTSE 100,United Kingdom,2020.00,6460.52,3.81,0.01,47.02,1.28,-0.10,40285.00,0.04,227.14,-9.69,0.01 +Nifty 50,India,1980.00,,3.02,0.11,21.59,7.89,0.07,267.00,0.03,31.21,-5.79,0.11 +Nifty 50,India,1981.00,,3.02,0.13,31.77,8.68,0.06,270.00,0.03,32.45,-5.10,0.14 +Nifty 50,India,1982.00,,3.02,0.08,28.52,9.48,0.03,274.00,0.03,32.86,-4.33,0.13 +Nifty 50,India,1983.00,,3.02,0.12,26.19,10.10,0.07,291.00,0.03,36.37,-4.40,0.11 +Nifty 50,India,1984.00,,3.02,0.08,25.88,11.35,0.04,277.00,0.03,35.45,-3.06,0.12 +Nifty 50,India,1985.00,,3.02,0.06,24.09,12.33,0.05,296.00,0.03,38.17,-5.56,0.11 +Nifty 50,India,1986.00,,3.02,0.09,12.51,12.60,0.05,310.00,0.03,40.39,-4.55,0.08 +Nifty 50,India,1987.00,,3.02,0.09,15.40,12.95,0.04,340.00,0.03,45.23,-3.84,0.08 +Nifty 50,India,1988.00,,3.02,0.09,12.58,13.90,0.10,354.00,0.03,47.76,-4.21,0.09 +Nifty 50,India,1989.00,,3.02,0.07,15.86,16.21,0.06,346.00,0.03,50.04,-3.36,0.08 +Nifty 50,India,1990.00,1048.29,3.02,0.09,27.28,17.49,0.06,368.00,0.06,53.27,-4.49,0.09 +Nifty 50,India,1991.00,1908.85,3.28,0.14,19.50,22.71,0.01,303.00,0.06,42.34,,0.08 +Nifty 50,India,1992.00,2615.37,3.42,0.12,19.41,28.16,0.05,317.00,0.06,45.54,-2.15,0.07 +Nifty 50,India,1993.00,3346.06,3.52,0.06,14.52,31.29,0.05,301.00,0.06,44.45,0.05,0.06 +Nifty 50,India,1994.00,3926.90,3.59,0.10,17.16,31.39,0.07,346.00,0.06,54.86,-0.99,0.07 +Nifty 50,India,1995.00,3110.49,3.49,0.10,19.03,32.42,0.08,374.00,0.06,64.37,-4.25,0.07 +Nifty 50,India,1996.00,3085.20,3.49,0.09,25.23,35.51,0.08,400.00,0.06,69.14,-4.55,0.06 +Nifty 50,India,1997.00,3658.98,3.56,0.07,18.33,36.36,0.04,415.00,0.06,68.70,-5.15,0.06 +Nifty 50,India,1998.00,3055.41,3.49,0.13,11.35,41.36,0.06,413.00,0.06,66.23,-7.01,0.05 +Nifty 50,India,1999.00,5005.82,3.70,0.05,26.10,43.13,0.09,442.00,0.06,69.65,-8.77,0.06 +Nifty 50,India,2000.00,3972.12,3.60,0.04,28.44,45.00,0.04,443.00,0.06,74.60,-4.25,0.06 +Nifty 50,India,2001.00,3262.33,3.51,0.04,19.39,47.22,0.05,452.00,0.06,74.31,-4.25,0.05 +Nifty 50,India,2002.00,3377.28,3.53,0.04,29.46,48.63,0.04,471.00,0.06,80.12,-5.05,0.05 +Nifty 50,India,2003.00,5838.96,3.77,0.04,32.13,46.59,0.08,547.00,0.06,94.72,-4.23,0.04 +Nifty 50,India,2004.00,6602.69,3.82,0.04,43.15,45.26,0.08,628.00,0.06,112.24,-12.66,0.04 +Nifty 50,India,2005.00,9397.93,3.97,0.04,59.41,44.00,0.08,715.00,0.06,131.04,-22.90,0.04 +Nifty 50,India,2006.00,13786.91,4.14,0.06,61.96,45.19,0.08,807.00,0.05,162.70,-29.98,0.05 +Nifty 50,India,2007.00,20286.99,4.31,0.06,91.69,41.18,0.08,1028.00,0.05,205.20,-49.73,0.05 +Nifty 50,India,2008.00,9647.31,3.98,0.08,41.12,43.39,0.03,999.00,0.06,205.00,-62.02,0.04 +Nifty 50,India,2009.00,17464.81,4.24,0.11,74.47,48.33,0.08,1102.00,0.06,230.05,-73.43,0.03 +Nifty 50,India,2010.00,20509.09,4.31,0.12,89.15,45.65,0.08,1358.00,0.06,285.36,-74.62,0.03 +Nifty 50,India,2011.00,15454.92,4.19,0.09,98.56,46.58,0.05,1458.00,0.06,294.23,-119.28,0.03 +Nifty 50,India,2012.00,19426.71,4.29,0.09,87.86,53.37,0.05,1444.00,0.06,289.08,-122.91,0.02 +Nifty 50,India,2013.00,21170.68,4.33,0.11,97.63,58.51,0.06,1450.00,0.06,283.21,-55.38,0.02 +Nifty 50,India,2014.00,27499.42,4.44,0.07,59.29,61.00,0.07,1574.00,0.06,307.21,-60.89,0.03 +Nifty 50,India,2015.00,26117.54,4.42,0.05,37.19,64.11,0.08,1606.00,0.06,327.82,-48.31,0.02 +Nifty 50,India,2016.00,26626.46,4.43,0.05,51.97,67.16,0.08,1733.00,0.05,347.94,-40.53,0.02 +Nifty 50,India,2017.00,34056.83,4.53,0.03,57.88,65.07,0.07,1981.00,0.05,398.20,-83.76,0.02 +Nifty 50,India,2018.00,36068.33,4.56,0.04,49.52,68.37,0.07,1997.00,0.05,401.20,-100.38,0.03 +Nifty 50,India,2019.00,41253.74,4.62,0.04,59.88,70.38,0.04,2101.00,0.07,382.56,-72.57,0.02 +Nifty 50,India,2020.00,47751.33,4.68,0.07,47.02,74.14,-0.08,1901.00,0.06,339.98,-8.31,0.01 +Nikkei 225,Japan,1980.00,6867.86,3.84,0.08,21.59,226.58,0.03,9463.00,0.02,71.01,-10.76,0.11 +Nikkei 225,Japan,1981.00,7518.55,3.88,0.05,31.77,220.45,0.04,10360.00,0.02,71.70,7.48,0.14 +Nikkei 225,Japan,1982.00,7397.27,3.87,0.03,28.52,249.05,0.03,9576.00,0.02,71.96,6.22,0.13 +Nikkei 225,Japan,1983.00,8816.24,3.95,0.02,26.19,237.45,0.04,10421.00,0.03,74.24,19.08,0.11 +Nikkei 225,Japan,1984.00,10567.53,4.02,0.02,25.88,237.59,0.05,10979.00,0.03,81.16,32.25,0.12 +Nikkei 225,Japan,1985.00,12557.45,4.10,0.02,24.09,238.47,0.05,11577.00,0.03,84.14,44.63,0.11 +Nikkei 225,Japan,1986.00,16392.74,4.21,0.01,12.51,168.50,0.03,17113.00,0.03,83.98,76.37,0.08 +Nikkei 225,Japan,1987.00,23232.14,4.37,,15.40,144.62,0.05,20749.00,0.03,86.87,70.12,0.08 +Nikkei 225,Japan,1988.00,27048.26,4.43,0.01,12.58,128.14,0.07,25059.00,0.03,94.91,60.32,0.09 +Nikkei 225,Japan,1989.00,34050.78,4.53,0.02,15.86,137.99,0.05,24823.00,0.02,100.40,41.28,0.08 +Nikkei 225,Japan,1990.00,29437.18,4.47,0.03,27.28,144.82,0.05,25371.00,0.02,104.65,24.33,0.09 +Nikkei 225,Japan,1991.00,24295.57,4.39,0.03,19.50,134.51,0.03,28915.00,0.02,106.64,53.70,0.08 +Nikkei 225,Japan,1992.00,18109.08,4.26,0.02,19.41,126.75,0.01,31415.00,0.02,100.55,80.30,0.07 +Nikkei 225,Japan,1993.00,19100.00,4.28,0.01,14.52,111.23,-0.01,35682.00,0.03,97.13,95.40,0.06 +Nikkei 225,Japan,1994.00,19935.83,4.30,0.01,17.16,102.20,0.01,39200.00,0.03,98.35,93.37,0.07 +Nikkei 225,Japan,1995.00,17329.70,4.24,,19.03,94.11,0.03,43429.00,0.03,101.34,68.88,0.07 +Nikkei 225,Japan,1996.00,21094.61,4.32,,25.23,108.80,0.03,38437.00,0.03,103.53,20.96,0.06 +Nikkei 225,Japan,1997.00,18397.52,4.26,0.02,18.33,121.09,0.01,35022.00,0.04,107.66,46.66,0.06 +Nikkei 225,Japan,1998.00,15355.99,4.19,0.01,11.35,130.82,-0.01,31903.00,0.04,100.48,73.27,0.05 +Nikkei 225,Japan,1999.00,16823.41,4.23,,26.10,113.71,,36027.00,0.05,101.07,70.92,0.06 +Nikkei 225,Japan,2000.00,17145.01,4.23,-0.01,28.44,107.82,0.03,38532.00,0.05,106.05,69.86,0.06 +Nikkei 225,Japan,2001.00,12093.56,4.08,-0.01,19.39,121.52,,33846.00,0.05,99.62,28.41,0.05 +Nikkei 225,Japan,2002.00,10123.14,4.01,-0.01,29.46,125.27,,32289.00,0.06,98.45,55.59,0.05 +Nikkei 225,Japan,2003.00,9311.42,3.97,,32.13,115.92,0.02,34808.00,0.05,102.29,75.37,0.04 +Nikkei 225,Japan,2004.00,11179.25,4.05,,43.15,108.16,0.02,37689.00,0.05,107.12,97.35,0.04 +Nikkei 225,Japan,2005.00,12422.58,4.09,,59.41,110.14,0.02,37218.00,0.05,108.86,71.78,0.04 +Nikkei 225,Japan,2006.00,16110.38,4.21,,61.96,116.35,0.01,35434.00,0.04,113.30,64.06,0.05 +Nikkei 225,Japan,2007.00,17002.24,4.23,,91.69,117.77,0.02,35275.00,0.04,116.60,85.46,0.05 +Nikkei 225,Japan,2008.00,12165.35,4.09,0.01,41.12,103.38,-0.01,39339.00,0.04,112.83,22.62,0.04 +Nikkei 225,Japan,2009.00,9346.11,3.97,-0.01,74.47,93.60,-0.05,40855.00,0.05,89.39,28.82,0.03 +Nikkei 225,Japan,2010.00,10006.49,4.00,-0.01,89.15,87.75,0.04,44508.00,0.05,102.78,83.25,0.03 +Nikkei 225,Japan,2011.00,9425.42,3.97,,98.56,79.71,,48168.00,0.05,99.93,-33.44,0.03 +Nikkei 225,Japan,2012.00,9102.56,3.96,,87.86,79.81,0.01,48603.00,0.05,100.06,-95.94,0.02 +Nikkei 225,Japan,2013.00,13577.87,4.13,,97.63,97.56,0.02,40454.00,0.04,99.46,-119.44,0.02 +Nikkei 225,Japan,2014.00,15460.43,4.19,0.03,59.29,105.86,,38109.00,0.04,101.24,-119.57,0.03 +Nikkei 225,Japan,2015.00,19203.77,4.28,0.01,37.19,121.02,0.01,34524.00,0.04,100.00,-18.39,0.02 +Nikkei 225,Japan,2016.00,16920.48,4.23,,51.97,108.76,0.01,38762.00,0.03,100.22,48.78,0.02 +Nikkei 225,Japan,2017.00,20209.03,4.31,,57.88,112.14,0.02,38387.00,0.03,102.84,45.27,0.02 +Nikkei 225,Japan,2018.00,22310.73,4.35,0.01,49.52,110.43,,39159.00,0.03,103.91,11.56,0.03 +Nikkei 225,Japan,2019.00,21697.23,4.34,,59.88,109.03,,40113.00,0.02,101.19,8.66,0.02 +Nikkei 225,Japan,2020.00,22705.02,4.36,,47.02,106.76,-0.05,,0.03,90.94,,0.01 +HSI,Hong Kong,1980.00,,3.46,,21.59,,0.10,5700.00,,,-0.15,0.11 +HSI,Hong Kong,1981.00,,3.46,,31.77,5.59,0.09,5991.00,,,-0.47,0.14 +HSI,Hong Kong,1982.00,,3.46,0.11,28.52,6.07,0.03,6134.00,,,0.18,0.13 +HSI,Hong Kong,1983.00,,3.46,0.10,26.19,7.26,0.06,5595.00,,,0.54,0.11 +HSI,Hong Kong,1984.00,,3.46,0.09,25.88,7.82,0.10,6208.00,,,2.68,0.12 +HSI,Hong Kong,1985.00,,3.46,0.04,24.09,7.79,0.01,6543.00,,,3.58,0.11 +HSI,Hong Kong,1986.00,,3.46,0.03,12.51,7.80,0.11,7435.00,,,3.74,0.08 +HSI,Hong Kong,1987.00,,3.46,0.06,15.40,7.80,0.13,9071.00,,,5.27,0.08 +HSI,Hong Kong,1988.00,2884.51,3.46,0.08,12.58,7.81,0.09,10610.00,,,5.33,0.09 +HSI,Hong Kong,1989.00,2556.72,3.41,0.10,15.86,7.80,0.02,12098.00,,,7.89,0.08 +HSI,Hong Kong,1990.00,2781.05,3.44,0.10,27.28,7.79,0.04,13486.00,,,6.57,0.09 +HSI,Hong Kong,1991.00,3027.13,3.48,0.11,19.50,7.77,0.06,15466.00,0.02,,6.05,0.08 +HSI,Hong Kong,1992.00,3829.37,3.58,0.10,19.41,7.74,0.06,17976.00,0.02,,5.42,0.07 +HSI,Hong Kong,1993.00,5545.98,3.74,0.09,14.52,7.74,0.06,20396.00,0.02,,8.12,0.06 +HSI,Hong Kong,1994.00,7695.99,3.89,0.09,17.16,7.73,0.06,22503.00,0.02,,1.57,0.07 +HSI,Hong Kong,1995.00,9453.52,3.98,0.09,19.03,7.74,0.02,23497.00,0.03,,-6.48,0.07 +HSI,Hong Kong,1996.00,9098.46,3.96,0.06,25.23,7.73,0.04,24818.00,0.03,,-2.37,0.06 +HSI,Hong Kong,1997.00,11646.54,4.07,0.06,18.33,7.74,0.05,27330.00,0.02,,-5.95,0.06 +HSI,Hong Kong,1998.00,13294.70,4.12,0.03,11.35,7.75,-0.06,25809.00,0.05,,0.91,0.05 +HSI,Hong Kong,1999.00,9484.47,3.98,-0.04,26.10,7.76,0.03,25092.00,0.06,,8.56,0.06 +HSI,Hong Kong,2000.00,12859.93,4.11,-0.04,28.44,7.79,0.08,25757.00,0.05,7.88,7.57,0.06 +HSI,Hong Kong,2001.00,15838.33,4.20,-0.02,19.39,7.80,0.01,25230.00,0.05,6.87,7.95,0.05 +HSI,Hong Kong,2002.00,12446.85,4.10,-0.03,29.46,7.80,0.02,24666.00,0.07,5.87,13.57,0.05 +HSI,Hong Kong,2003.00,10321.22,4.01,-0.03,32.13,7.79,0.03,23977.00,0.08,5.01,14.68,0.04 +HSI,Hong Kong,2004.00,10346.25,4.01,,43.15,7.79,0.09,24928.00,0.07,5.07,14.73,0.04 +HSI,Hong Kong,2005.00,12988.18,4.11,0.01,59.41,7.78,0.07,26650.00,0.06,5.10,22.18,0.04 +HSI,Hong Kong,2006.00,14402.00,4.16,0.02,61.96,7.77,0.07,28224.00,0.05,5.11,21.60,0.05 +HSI,Hong Kong,2007.00,17118.31,4.23,0.02,91.69,7.80,0.06,30594.00,0.04,4.15,22.59,0.05 +HSI,Hong Kong,2008.00,23700.45,4.37,0.04,41.12,7.79,0.02,31516.00,0.04,4.05,22.31,0.04 +HSI,Hong Kong,2009.00,20606.72,4.31,0.01,74.47,7.75,-0.02,30697.00,0.05,3.70,16.85,0.03 +HSI,Hong Kong,2010.00,18203.01,4.26,0.02,89.15,7.77,0.07,32550.00,0.04,3.91,13.43,0.03 +HSI,Hong Kong,2011.00,21336.42,4.33,0.05,98.56,7.78,0.05,35142.00,0.03,3.93,9.57,0.03 +HSI,Hong Kong,2012.00,21414.34,4.33,0.04,87.86,7.76,0.02,36731.00,0.03,3.95,2.97,0.02 +HSI,Hong Kong,2013.00,20686.69,4.32,0.04,97.63,7.76,0.03,38404.00,0.03,3.89,1.65,0.02 +HSI,Hong Kong,2014.00,22654.24,4.36,0.04,59.29,7.75,0.03,40315.00,0.03,3.60,0.60,0.03 +HSI,Hong Kong,2015.00,23287.69,4.37,0.03,37.19,7.75,0.02,42432.00,0.03,3.45,7.39,0.02 +HSI,Hong Kong,2016.00,24145.21,4.38,0.02,51.97,7.76,0.02,43731.00,0.03,3.46,7.33,0.02 +HSI,Hong Kong,2017.00,21511.54,4.33,0.01,57.88,7.79,0.04,46166.00,0.03,3.50,3.44,0.02 +HSI,Hong Kong,2018.00,26453.67,4.42,0.02,49.52,7.84,0.03,48543.00,0.03,3.52,-0.77,0.03 +HSI,Hong Kong,2019.00,28804.14,4.46,0.03,59.88,7.84,-0.02,48354.00,0.03,3.75,5.64,0.02 +HSI,Hong Kong,2020.00,27650.63,4.44,,47.02,7.76,-0.06,46324.00,0.06,,6.32,0.01 +SZCOMP,China,1980.00,,3.07,,21.59,,0.08,195.00,0.05,,-1.15,0.11 +SZCOMP,China,1981.00,,3.07,,31.77,1.71,0.05,197.00,0.05,,,0.14 +SZCOMP,China,1982.00,,3.07,,28.52,1.90,0.09,203.00,0.05,,4.81,0.13 +SZCOMP,China,1983.00,,3.07,,26.19,1.98,0.11,225.00,0.04,,2.57,0.11 +SZCOMP,China,1984.00,,3.07,,25.88,2.33,0.15,251.00,0.03,,0.05,0.12 +SZCOMP,China,1985.00,,3.07,,24.09,2.94,0.13,294.00,0.02,,-12.50,0.11 +SZCOMP,China,1986.00,,3.07,,12.51,3.46,0.09,282.00,0.02,,-7.39,0.08 +SZCOMP,China,1987.00,,3.07,0.07,15.40,3.73,0.12,252.00,0.02,,0.29,0.08 +SZCOMP,China,1988.00,,3.07,0.19,12.58,3.73,0.11,284.00,0.02,,-4.06,0.09 +SZCOMP,China,1989.00,,3.07,0.18,15.86,3.77,0.04,311.00,0.02,,-4.93,0.08 +SZCOMP,China,1990.00,,3.07,0.03,27.28,4.79,0.04,318.00,0.02,,10.67,0.09 +SZCOMP,China,1991.00,,3.07,0.04,19.50,5.33,0.09,333.00,0.03,,11.60,0.08 +SZCOMP,China,1992.00,,3.07,0.06,19.41,5.52,0.14,366.00,0.03,,5.00,0.07 +SZCOMP,China,1993.00,,3.07,0.15,14.52,5.78,0.14,377.00,0.02,,-11.79,0.06 +SZCOMP,China,1994.00,,3.07,0.24,17.16,8.64,0.13,473.00,0.02,,7.36,0.07 +SZCOMP,China,1995.00,,3.07,0.17,19.03,8.37,0.11,610.00,0.03,,11.96,0.07 +SZCOMP,China,1996.00,,3.07,0.08,25.23,8.34,0.10,709.00,0.03,,17.55,0.06 +SZCOMP,China,1997.00,1166.51,3.07,0.03,18.33,8.32,0.09,782.00,0.03,,42.82,0.06 +SZCOMP,China,1998.00,1257.32,3.10,-0.01,11.35,8.30,0.08,829.00,0.03,,43.84,0.05 +SZCOMP,China,1999.00,1381.49,3.14,-0.01,26.10,8.28,0.08,873.00,0.03,,30.64,0.06 +SZCOMP,China,2000.00,1897.42,3.28,,28.44,8.28,0.08,959.00,0.03,,28.79,0.06 +SZCOMP,China,2001.00,1940.96,3.29,0.01,19.39,8.28,0.08,1053.00,0.03,,28.09,0.05 +SZCOMP,China,2002.00,1561.31,3.19,-0.01,29.46,8.28,0.09,1149.00,0.03,,37.38,0.05 +SZCOMP,China,2003.00,1467.88,3.17,0.01,32.13,8.28,0.10,1289.00,0.04,,35.82,0.04 +SZCOMP,China,2004.00,1467.57,3.17,0.04,43.15,8.28,0.10,1509.00,0.04,625.22,51.17,0.04 +SZCOMP,China,2005.00,1144.54,3.06,0.02,59.41,8.19,0.11,1753.00,0.04,733.66,124.63,0.04 +SZCOMP,China,2006.00,1687.14,3.23,0.02,61.96,7.97,0.13,2099.00,0.04,893.13,208.92,0.05 +SZCOMP,China,2007.00,4329.44,3.64,0.05,91.69,7.61,0.14,2694.00,0.04,1149.72,308.04,0.05 +SZCOMP,China,2008.00,2912.90,3.46,0.06,41.12,6.95,0.10,3468.00,0.04,1475.66,348.83,0.04 +SZCOMP,China,2009.00,2737.01,3.44,-0.01,74.47,6.83,0.09,3832.00,0.04,1611.95,220.13,0.03 +SZCOMP,China,2010.00,2795.88,3.45,0.03,89.15,6.77,0.11,4550.00,0.04,1924.32,222.40,0.03 +SZCOMP,China,2011.00,2639.19,3.42,0.06,98.56,6.46,0.10,5618.00,0.04,2421.37,180.89,0.03 +SZCOMP,China,2012.00,2211.11,3.34,0.03,87.86,6.31,0.08,6317.00,0.04,2690.09,231.87,0.02 +SZCOMP,China,2013.00,2182.52,3.34,0.03,97.63,6.15,0.08,7051.00,0.05,2935.34,234.87,0.02 +SZCOMP,China,2014.00,2279.75,3.36,0.02,59.29,6.16,0.07,7679.00,0.05,3184.24,221.55,0.03 +SZCOMP,China,2015.00,3657.40,3.56,0.01,37.19,6.28,0.07,8067.00,0.05,3202.50,358.84,0.02 +SZCOMP,China,2016.00,2978.14,3.47,0.02,51.97,6.64,0.07,8148.00,0.05,3153.12,255.48,0.02 +SZCOMP,China,2017.00,3257.35,3.51,0.02,57.88,6.76,0.07,8879.00,0.04,3460.33,215.70,0.02 +SZCOMP,China,2018.00,2920.18,3.47,0.02,49.52,6.61,0.07,9977.00,0.04,3868.46,106.71,0.03 +SZCOMP,China,2019.00,2928.94,3.47,0.03,59.88,6.91,0.06,10217.00,0.05,3823.41,164.99,0.02 +SZCOMP,China,2020.00,3109.78,3.49,0.02,47.02,6.90,0.02,10500.00,0.05,3853.81,366.14,0.01 +DAX 30,Germany,1980.00,480.90,2.68,0.05,21.59,1.82,0.01,6206.00,0.03,,-22.41,0.11 +DAX 30,Germany,1981.00,490.40,2.69,0.06,31.77,2.26,0.01,5220.00,0.05,,-16.02,0.14 +DAX 30,Germany,1982.00,552.80,2.74,0.05,28.52,2.43,,5069.00,0.07,,-10.51,0.13 +DAX 30,Germany,1983.00,774.00,2.89,0.03,26.19,2.55,0.02,5044.00,0.08,,-11.79,0.11 +DAX 30,Germany,1984.00,820.90,2.91,0.02,25.88,2.85,0.03,4762.00,0.08,,-10.35,0.12 +DAX 30,Germany,1985.00,1366.20,3.14,0.02,24.09,2.94,0.02,4821.00,0.08,,-7.63,0.11 +DAX 30,Germany,1986.00,1432.30,3.16,,12.51,2.17,0.02,6883.00,0.08,,-1.98,0.08 +DAX 30,Germany,1987.00,1000.00,3.00,,15.40,1.80,0.01,8527.00,0.08,,-2.15,0.08 +DAX 30,Germany,1988.00,1327.87,3.12,0.01,12.58,1.76,0.04,9168.00,0.08,,-2.48,0.09 +DAX 30,Germany,1989.00,1790.37,3.25,0.03,15.86,1.88,0.04,9083.00,0.07,,-4.41,0.08 +DAX 30,Germany,1990.00,1398.20,3.15,0.03,27.28,1.62,0.05,11404.00,0.06,,-1.74,0.09 +DAX 30,Germany,1991.00,1578.00,3.20,0.04,19.50,1.66,0.05,11942.00,0.06,237.43,-4.66,0.08 +DAX 30,Germany,1992.00,1545.10,3.19,0.05,19.41,1.56,0.02,13518.00,0.08,254.79,-5.47,0.07 +DAX 30,Germany,1993.00,2266.70,3.36,0.04,14.52,1.65,-0.01,13049.00,0.09,225.80,0.53,0.06 +DAX 30,Germany,1994.00,2106.60,3.32,0.03,17.16,1.62,0.02,13844.00,0.10,234.55,1.84,0.07 +DAX 30,Germany,1995.00,2253.90,3.35,0.02,19.03,1.43,0.02,16186.00,0.09,271.52,5.38,0.07 +DAX 30,Germany,1996.00,2888.70,3.46,0.01,25.23,1.50,0.01,15588.00,0.10,256.13,9.12,0.06 +DAX 30,Germany,1997.00,4224.30,3.63,0.02,18.33,1.73,0.02,13786.00,0.11,228.78,12.19,0.06 +DAX 30,Germany,1998.00,5002.39,3.70,0.01,11.35,1.76,0.02,13953.00,0.11,233.65,14.07,0.05 +DAX 30,Germany,1999.00,6958.14,3.84,0.01,26.10,1.07,0.02,26735.00,0.11,438.87,12.13,0.06 +DAX 30,Germany,2000.00,6433.61,3.81,0.01,28.44,0.92,0.03,23695.00,0.10,400.23,3.30,0.06 +DAX 30,Germany,2001.00,5160.10,3.71,0.02,19.39,0.90,0.02,23628.00,0.09,395.80,31.65,0.05 +DAX 30,Germany,2002.00,2892.63,3.46,0.01,29.46,0.95,,25197.00,0.10,411.33,88.34,0.05 +DAX 30,Germany,2003.00,3965.16,3.60,0.01,32.13,1.13,-0.01,30310.00,0.11,496.31,94.41,0.04 +DAX 30,Germany,2004.00,4256.08,3.63,0.02,43.15,1.24,0.01,34107.00,0.11,563.82,146.36,0.04 +DAX 30,Germany,2005.00,5408.25,3.73,0.02,59.41,1.24,0.01,34520.00,0.12,571.36,148.05,0.04 +DAX 30,Germany,2006.00,6596.91,3.82,0.02,61.96,1.26,0.04,36354.00,0.11,618.70,162.20,0.05 +DAX 30,Germany,2007.00,8067.31,3.91,0.02,91.69,1.37,0.03,41640.00,0.09,714.38,231.95,0.05 +DAX 30,Germany,2008.00,4810.20,3.68,0.03,41.12,1.47,0.01,45613.00,0.08,750.91,227.47,0.04 +DAX 30,Germany,2009.00,5957.43,3.78,,74.47,1.39,-0.06,41650.00,0.08,603.23,170.94,0.03 +DAX 30,Germany,2010.00,6914.19,3.84,0.01,89.15,1.33,0.04,41572.00,0.08,669.57,178.90,0.03 +DAX 30,Germany,2011.00,5898.35,3.77,0.02,98.56,1.39,0.04,46706.00,0.07,758.60,184.02,0.03 +DAX 30,Germany,2012.00,7612.39,3.88,0.02,87.86,1.29,,43856.00,0.07,710.95,215.16,0.02 +DAX 30,Germany,2013.00,9552.16,3.98,0.02,97.63,1.33,,46299.00,0.07,743.97,215.01,0.02 +DAX 30,Germany,2014.00,9805.55,3.99,0.01,59.29,1.33,0.02,48024.00,0.07,786.55,257.40,0.03 +DAX 30,Germany,2015.00,10743.01,4.03,0.01,37.19,1.11,0.01,41103.00,0.06,683.20,255.02,0.02 +DAX 30,Germany,2016.00,11481.06,4.06,,51.97,1.11,0.02,42136.00,0.06,716.94,255.97,0.02 +DAX 30,Germany,2017.00,12917.64,4.11,0.02,57.88,1.13,0.03,44553.00,0.06,752.02,257.66,0.02 +DAX 30,Germany,2018.00,10558.96,4.02,0.02,49.52,1.18,0.01,47811.00,0.05,795.96,243.72,0.03 +DAX 30,Germany,2019.00,13249.01,4.12,0.01,59.88,1.12,0.01,46468.00,0.05,737.94,223.82,0.02 +DAX 30,Germany,2020.00,13718.78,4.14,0.01,47.02,1.14,-0.05,45724.00,0.06,678.29,221.53,0.01 +CAC 40,France,1980.00,394.44,2.60,0.14,21.59,4.23,0.02,1938.00,,19.77,-1.64,0.11 +CAC 40,France,1981.00,325.88,2.51,0.13,31.77,5.43,0.01,1693.00,,16.94,-1.38,0.14 +CAC 40,France,1982.00,353.24,2.55,0.12,28.52,6.58,0.03,1600.00,,15.58,-2.19,0.13 +CAC 40,France,1983.00,552.60,2.74,0.09,26.19,7.62,0.01,1524.00,0.09,14.93,-0.23,0.11 +CAC 40,France,1984.00,643.20,2.81,0.08,25.88,8.74,0.02,1436.00,0.10,13.97,0.10,0.12 +CAC 40,France,1985.00,930.21,2.97,0.06,24.09,8.99,0.02,1488.00,0.10,14.60,-0.31,0.11 +CAC 40,France,1986.00,1403.64,3.15,0.03,12.51,6.93,0.02,2064.00,0.11,19.92,-0.14,0.08 +CAC 40,France,1987.00,1000.00,3.00,0.03,15.40,6.01,0.03,2485.00,0.11,23.51,-1.56,0.08 +CAC 40,France,1988.00,1573.94,3.20,0.03,12.58,5.96,0.05,2695.00,0.10,25.43,-1.02,0.09 +CAC 40,France,1989.00,2001.08,3.30,0.03,15.86,6.38,0.04,2697.00,0.10,25.28,-1.07,0.08 +CAC 40,France,1990.00,1509.00,3.18,0.03,27.28,5.44,0.03,3322.00,0.09,31.36,-1.52,0.09 +CAC 40,France,1991.00,1765.70,3.25,0.03,19.50,5.64,0.01,3304.00,0.10,30.80,-0.61,0.08 +CAC 40,France,1992.00,1857.80,3.27,0.02,19.41,5.30,0.02,3630.00,0.11,33.31,1.43,0.07 +CAC 40,France,1993.00,2268.20,3.36,0.02,14.52,5.66,-0.01,3412.00,0.12,30.38,3.39,0.06 +CAC 40,France,1994.00,1881.20,3.27,0.02,17.16,5.55,0.02,3582.00,0.12,31.23,3.18,0.07 +CAC 40,France,1995.00,1872.00,3.27,0.02,19.03,4.99,0.02,4099.00,0.12,36.32,3.90,0.07 +CAC 40,France,1996.00,2315.70,3.36,0.02,25.23,5.12,0.01,4097.00,0.12,35.44,4.36,0.06 +CAC 40,France,1997.00,2998.90,3.48,0.01,18.33,5.84,0.02,3694.00,0.12,32.50,6.67,0.06 +CAC 40,France,1998.00,3942.66,3.60,0.01,11.35,5.90,0.04,3807.00,0.12,33.61,6.29,0.05 +CAC 40,France,1999.00,5958.32,3.78,0.01,26.10,1.07,0.03,24682.00,0.11,215.66,35.72,0.06 +CAC 40,France,2000.00,5926.42,3.77,0.02,28.44,0.92,0.04,22420.00,0.10,197.71,18.15,0.06 +CAC 40,France,2001.00,4624.58,3.67,0.02,19.39,0.90,0.02,22453.00,0.09,193.29,21.66,0.05 +CAC 40,France,2002.00,3063.91,3.49,0.02,29.46,0.95,0.01,24293.00,0.09,203.97,29.88,0.05 +CAC 40,France,2003.00,3557.90,3.55,0.02,32.13,1.13,0.01,29634.00,0.09,241.52,26.31,0.04 +CAC 40,France,2004.00,3821.16,3.58,0.02,43.15,1.24,0.03,33803.00,0.09,268.87,21.46,0.04 +CAC 40,France,2005.00,4715.23,3.67,0.02,59.41,1.24,0.02,34773.00,0.09,269.11,1.88,0.04 +CAC 40,France,2006.00,5541.75,3.74,0.02,61.96,1.26,0.02,36474.00,0.09,272.13,-5.41,0.05 +CAC 40,France,2007.00,5614.08,3.75,0.01,91.69,1.37,0.02,41561.00,0.08,309.42,-19.00,0.05 +CAC 40,France,2008.00,3217.97,3.51,0.03,41.12,1.47,,45519.00,0.07,325.40,-33.94,0.04 +CAC 40,France,2009.00,3936.33,3.60,,74.47,1.39,-0.03,41740.00,0.09,286.02,-21.37,0.03 +CAC 40,France,2010.00,3804.78,3.58,0.02,89.15,1.33,0.02,40678.00,0.09,273.17,-34.15,0.03 +CAC 40,France,2011.00,3159.81,3.50,0.02,98.56,1.39,0.02,43848.00,0.09,297.86,-55.81,0.03 +CAC 40,France,2012.00,3641.07,3.56,0.02,87.86,1.29,,40872.00,0.10,278.07,-34.78,0.02 +CAC 40,France,2013.00,4295.95,3.63,0.01,97.63,1.33,0.01,42605.00,0.10,291.15,-29.09,0.02 +CAC 40,France,2014.00,4272.75,3.63,0.01,59.29,1.33,0.01,43069.00,0.10,293.61,-32.71,0.03 +CAC 40,France,2015.00,4637.06,3.67,,37.19,1.11,0.01,36653.00,0.10,254.50,-13.82,0.02 +CAC 40,France,2016.00,4862.31,3.69,,51.97,1.11,0.01,37063.00,0.10,254.30,-14.96,0.02 +CAC 40,France,2017.00,5312.56,3.73,0.01,57.88,1.13,0.02,38781.00,0.09,263.05,-27.63,0.02 +CAC 40,France,2018.00,4730.69,3.67,0.02,49.52,1.18,0.02,41547.00,0.09,275.76,-29.02,0.03 +CAC 40,France,2019.00,5978.06,3.78,0.01,59.88,1.12,0.02,40380.00,0.08,266.63,-26.59,0.02 +CAC 40,France,2020.00,5551.41,3.74,,47.02,1.14,-0.08,38625.00,0.08,241.71,-57.65,0.01 +IEX 35,Spain,1980.00,,3.38,0.16,21.59,71.78,0.02,37.00,,,-0.04,0.11 +IEX 35,Spain,1981.00,,3.38,0.15,31.77,92.33,,32.00,,,-0.03,0.14 +IEX 35,Spain,1982.00,,3.38,0.14,28.52,109.92,0.01,31.00,,,-0.03,0.13 +IEX 35,Spain,1983.00,,3.38,0.12,26.19,143.54,0.02,27.00,,,-0.02,0.11 +IEX 35,Spain,1984.00,,3.38,0.11,25.88,160.91,0.02,27.00,,,0.01,0.12 +IEX 35,Spain,1985.00,,3.38,0.09,24.09,170.20,0.02,28.00,,,0.01,0.11 +IEX 35,Spain,1986.00,,3.38,0.09,12.51,140.14,0.03,39.00,,,0.02,0.08 +IEX 35,Spain,1987.00,2407.10,3.38,0.05,15.40,123.51,0.06,50.00,0.20,,-0.02,0.08 +IEX 35,Spain,1988.00,2727.50,3.44,0.05,12.58,116.49,0.05,58.00,0.19,,-0.05,0.09 +IEX 35,Spain,1989.00,3000.00,3.48,0.07,15.86,118.34,0.05,64.00,0.17,,-0.10,0.08 +IEX 35,Spain,1990.00,2248.80,3.35,0.07,27.28,101.95,0.04,83.00,0.15,,-0.13,0.09 +IEX 35,Spain,1991.00,2603.30,3.42,0.06,19.50,103.87,0.03,89.00,0.16,,-0.14,0.08 +IEX 35,Spain,1992.00,2344.57,3.37,0.06,19.41,102.47,0.01,97.00,0.17,,-0.14,0.07 +IEX 35,Spain,1993.00,3615.22,3.56,0.05,14.52,127.31,-0.01,80.00,0.21,,-0.05,0.06 +IEX 35,Spain,1994.00,3087.68,3.49,0.05,17.16,133.89,0.02,81.00,0.22,,-0.03,0.07 +IEX 35,Spain,1995.00,3630.76,3.56,0.05,19.03,124.68,0.03,93.00,0.21,0.60,-0.04,0.07 +IEX 35,Spain,1996.00,5154.77,3.71,0.04,25.23,126.68,0.03,97.00,0.20,0.63,-0.01,0.06 +IEX 35,Spain,1997.00,7255.40,3.86,0.02,18.33,146.45,0.04,89.00,0.18,0.59,0.01,0.06 +IEX 35,Spain,1998.00,9836.60,3.99,0.02,11.35,149.37,0.04,93.00,0.16,0.62,-0.02,0.05 +IEX 35,Spain,1999.00,11641.40,4.07,0.02,26.10,1.07,0.04,15721.00,0.14,103.49,-12.28,0.06 +IEX 35,Spain,2000.00,9109.80,3.96,0.03,28.44,0.92,0.05,14750.00,0.12,97.13,-17.69,0.06 +IEX 35,Spain,2001.00,8397.60,3.92,0.04,19.39,0.90,0.04,15369.00,0.11,99.40,-14.28,0.05 +IEX 35,Spain,2002.00,6036.90,3.78,0.03,29.46,0.95,0.03,17107.00,0.11,108.02,-14.11,0.05 +IEX 35,Spain,2003.00,7737.20,3.89,0.03,32.13,1.13,0.03,21511.00,0.11,133.45,-20.02,0.04 +IEX 35,Spain,2004.00,9080.80,3.96,0.03,43.15,1.24,0.03,24907.00,0.11,151.49,-39.56,0.04 +IEX 35,Spain,2005.00,10733.90,4.03,0.03,59.41,1.24,0.04,26429.00,0.09,158.16,-55.42,0.04 +IEX 35,Spain,2006.00,14146.50,4.15,0.04,61.96,1.26,0.04,28389.00,0.08,168.08,-71.77,0.05 +IEX 35,Spain,2007.00,15182.29,4.18,0.03,91.69,1.37,0.04,32591.00,0.08,190.13,-85.17,0.05 +IEX 35,Spain,2008.00,9195.80,3.96,0.04,41.12,1.47,0.01,35511.00,0.11,207.17,-77.28,0.04 +IEX 35,Spain,2009.00,11940.00,4.08,,74.47,1.39,-0.04,32170.00,0.18,172.86,-13.00,0.03 +IEX 35,Spain,2010.00,9859.10,3.99,0.02,89.15,1.33,,30532.00,0.20,162.09,-14.57,0.03 +IEX 35,Spain,2011.00,8566.30,3.93,0.03,98.56,1.39,-0.01,31678.00,0.21,170.26,4.10,0.03 +IEX 35,Spain,2012.00,8167.50,3.91,0.02,87.86,1.29,-0.03,28323.00,0.25,147.38,27.36,0.02 +IEX 35,Spain,2013.00,9916.70,4.00,0.01,97.63,1.33,-0.01,29068.00,0.26,151.68,53.24,0.02 +IEX 35,Spain,2014.00,10279.50,4.01,,59.29,1.33,0.01,29501.00,0.24,155.09,42.50,0.03 +IEX 35,Spain,2015.00,9544.20,3.98,-0.01,37.19,1.11,0.04,25742.00,0.22,135.11,36.35,0.02 +IEX 35,Spain,2016.00,9352.10,3.97,,51.97,1.11,0.03,26523.00,0.20,139.01,49.16,0.02 +IEX 35,Spain,2017.00,10043.90,4.00,0.02,57.88,1.13,0.03,28170.00,0.17,148.80,47.33,0.02 +IEX 35,Spain,2018.00,8539.90,3.93,0.02,49.52,1.18,0.02,30389.00,0.15,158.33,38.70,0.03 +IEX 35,Spain,2019.00,9549.20,3.98,0.01,59.88,1.12,0.02,29565.00,0.14,155.49,41.94,0.02 +IEX 35,Spain,2020.00,8073.70,3.91,,47.02,1.14,-0.11,27057.00,0.16,143.05,19.10,0.01