2862 lines
257 KiB
Plaintext
2862 lines
257 KiB
Plaintext
{
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"cells": [
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{
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"cell_type": "markdown",
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"metadata": {
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"deletable": true,
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"source": [
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"**Chapter 1 – The Machine Learning landscape**\n",
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"\n",
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"_This is the code used to generate some of the figures in chapter 1._"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {
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"deletable": true,
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"editable": true
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},
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"source": [
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"# Setup"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {
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"deletable": true,
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"editable": true
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},
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"source": [
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"First, let's make sure this notebook works well in both python 2 and 3, import a few common modules, ensure MatplotLib plots figures inline and prepare a function to save the figures:"
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]
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},
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{
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"cell_type": "code",
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"execution_count": 1,
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"metadata": {
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"collapsed": false,
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"deletable": true,
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"editable": true,
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"slideshow": {
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"slide_type": "-"
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}
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},
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"outputs": [],
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"source": [
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"# To support both python 2 and python 3\n",
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"from __future__ import division, print_function, unicode_literals\n",
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"\n",
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"# Common imports\n",
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"import numpy as np\n",
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"import numpy.random as rnd\n",
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"import os\n",
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"\n",
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"# to make this notebook's output stable across runs\n",
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"rnd.seed(42)\n",
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"\n",
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"# To plot pretty figures\n",
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"%matplotlib inline\n",
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"import matplotlib\n",
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"import matplotlib.pyplot as plt\n",
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"plt.rcParams['axes.labelsize'] = 14\n",
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"plt.rcParams['xtick.labelsize'] = 12\n",
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"plt.rcParams['ytick.labelsize'] = 12\n",
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"\n",
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"# Where to save the figures\n",
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"PROJECT_ROOT_DIR = \".\"\n",
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"CHAPTER_ID = \"fundamentals\"\n",
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"\n",
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"def save_fig(fig_id, tight_layout=True):\n",
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" path = os.path.join(PROJECT_ROOT_DIR, \"images\", CHAPTER_ID, fig_id + \".png\")\n",
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" print(\"Saving figure\", fig_id)\n",
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" if tight_layout:\n",
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" plt.tight_layout()\n",
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" plt.savefig(path, format='png', dpi=300)"
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]
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},
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{
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||
"cell_type": "markdown",
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||
"metadata": {
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||
"deletable": true,
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"editable": true
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},
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"source": [
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"# Load and prepare Life satisfaction data"
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]
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},
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{
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"cell_type": "code",
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"execution_count": 2,
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"metadata": {
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"collapsed": false,
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"deletable": true,
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"editable": true
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},
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"outputs": [
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{
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"data": {
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"text/html": [
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"<div>\n",
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"<table border=\"1\" class=\"dataframe\">\n",
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" <thead>\n",
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" <tr style=\"text-align: right;\">\n",
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" <th>Indicator</th>\n",
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" <th>Air pollution</th>\n",
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||
" <th>Assault rate</th>\n",
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||
" <th>Consultation on rule-making</th>\n",
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||
" <th>Dwellings without basic facilities</th>\n",
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||
" <th>Educational attainment</th>\n",
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||
" <th>Employees working very long hours</th>\n",
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||
" <th>Employment rate</th>\n",
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||
" <th>Homicide rate</th>\n",
|
||
" <th>Household net adjusted disposable income</th>\n",
|
||
" <th>Household net financial wealth</th>\n",
|
||
" <th>...</th>\n",
|
||
" <th>Long-term unemployment rate</th>\n",
|
||
" <th>Personal earnings</th>\n",
|
||
" <th>Quality of support network</th>\n",
|
||
" <th>Rooms per person</th>\n",
|
||
" <th>Self-reported health</th>\n",
|
||
" <th>Student skills</th>\n",
|
||
" <th>Time devoted to leisure and personal care</th>\n",
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||
" <th>Voter turnout</th>\n",
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||
" <th>Water quality</th>\n",
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" <th>Years in education</th>\n",
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||
" </tr>\n",
|
||
" <tr>\n",
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||
" <th>Country</th>\n",
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||
" <th></th>\n",
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||
" <th></th>\n",
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||
" <th></th>\n",
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||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" </tr>\n",
|
||
" </thead>\n",
|
||
" <tbody>\n",
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||
" <tr>\n",
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||
" <th>Australia</th>\n",
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||
" <td>13.0</td>\n",
|
||
" <td>2.1</td>\n",
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||
" <td>10.5</td>\n",
|
||
" <td>1.1</td>\n",
|
||
" <td>76.0</td>\n",
|
||
" <td>14.02</td>\n",
|
||
" <td>72.0</td>\n",
|
||
" <td>0.8</td>\n",
|
||
" <td>31588.0</td>\n",
|
||
" <td>47657.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>1.08</td>\n",
|
||
" <td>50449.0</td>\n",
|
||
" <td>92.0</td>\n",
|
||
" <td>2.3</td>\n",
|
||
" <td>85.0</td>\n",
|
||
" <td>512.0</td>\n",
|
||
" <td>14.41</td>\n",
|
||
" <td>93.0</td>\n",
|
||
" <td>91.0</td>\n",
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||
" <td>19.4</td>\n",
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||
" </tr>\n",
|
||
" <tr>\n",
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||
" <th>Austria</th>\n",
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||
" <td>27.0</td>\n",
|
||
" <td>3.4</td>\n",
|
||
" <td>7.1</td>\n",
|
||
" <td>1.0</td>\n",
|
||
" <td>83.0</td>\n",
|
||
" <td>7.61</td>\n",
|
||
" <td>72.0</td>\n",
|
||
" <td>0.4</td>\n",
|
||
" <td>31173.0</td>\n",
|
||
" <td>49887.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>1.19</td>\n",
|
||
" <td>45199.0</td>\n",
|
||
" <td>89.0</td>\n",
|
||
" <td>1.6</td>\n",
|
||
" <td>69.0</td>\n",
|
||
" <td>500.0</td>\n",
|
||
" <td>14.46</td>\n",
|
||
" <td>75.0</td>\n",
|
||
" <td>94.0</td>\n",
|
||
" <td>17.0</td>\n",
|
||
" </tr>\n",
|
||
" </tbody>\n",
|
||
"</table>\n",
|
||
"<p>2 rows × 24 columns</p>\n",
|
||
"</div>"
|
||
],
|
||
"text/plain": [
|
||
"Indicator Air pollution Assault rate Consultation on rule-making \\\n",
|
||
"Country \n",
|
||
"Australia 13.0 2.1 10.5 \n",
|
||
"Austria 27.0 3.4 7.1 \n",
|
||
"\n",
|
||
"Indicator Dwellings without basic facilities Educational attainment \\\n",
|
||
"Country \n",
|
||
"Australia 1.1 76.0 \n",
|
||
"Austria 1.0 83.0 \n",
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||
"\n",
|
||
"Indicator Employees working very long hours Employment rate Homicide rate \\\n",
|
||
"Country \n",
|
||
"Australia 14.02 72.0 0.8 \n",
|
||
"Austria 7.61 72.0 0.4 \n",
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||
"\n",
|
||
"Indicator Household net adjusted disposable income \\\n",
|
||
"Country \n",
|
||
"Australia 31588.0 \n",
|
||
"Austria 31173.0 \n",
|
||
"\n",
|
||
"Indicator Household net financial wealth ... \\\n",
|
||
"Country ... \n",
|
||
"Australia 47657.0 ... \n",
|
||
"Austria 49887.0 ... \n",
|
||
"\n",
|
||
"Indicator Long-term unemployment rate Personal earnings \\\n",
|
||
"Country \n",
|
||
"Australia 1.08 50449.0 \n",
|
||
"Austria 1.19 45199.0 \n",
|
||
"\n",
|
||
"Indicator Quality of support network Rooms per person Self-reported health \\\n",
|
||
"Country \n",
|
||
"Australia 92.0 2.3 85.0 \n",
|
||
"Austria 89.0 1.6 69.0 \n",
|
||
"\n",
|
||
"Indicator Student skills Time devoted to leisure and personal care \\\n",
|
||
"Country \n",
|
||
"Australia 512.0 14.41 \n",
|
||
"Austria 500.0 14.46 \n",
|
||
"\n",
|
||
"Indicator Voter turnout Water quality Years in education \n",
|
||
"Country \n",
|
||
"Australia 93.0 91.0 19.4 \n",
|
||
"Austria 75.0 94.0 17.0 \n",
|
||
"\n",
|
||
"[2 rows x 24 columns]"
|
||
]
|
||
},
|
||
"execution_count": 2,
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||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"import pandas as pd\n",
|
||
"\n",
|
||
"# Download CSV from http://stats.oecd.org/index.aspx?DataSetCode=BLI\n",
|
||
"datapath = \"datasets/lifesat/\"\n",
|
||
"\n",
|
||
"oecd_bli = pd.read_csv(datapath+\"oecd_bli_2015.csv\", thousands=',')\n",
|
||
"oecd_bli = oecd_bli[oecd_bli[\"INEQUALITY\"]==\"TOT\"]\n",
|
||
"oecd_bli = oecd_bli.pivot(index=\"Country\", columns=\"Indicator\", values=\"Value\")\n",
|
||
"oecd_bli.head(2)"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 3,
|
||
"metadata": {
|
||
"collapsed": false,
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"deletable": true,
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"editable": true
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||
},
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"outputs": [
|
||
{
|
||
"data": {
|
||
"text/plain": [
|
||
"Country\n",
|
||
"Australia 7.3\n",
|
||
"Austria 6.9\n",
|
||
"Belgium 6.9\n",
|
||
"Brazil 7.0\n",
|
||
"Canada 7.3\n",
|
||
"Name: Life satisfaction, dtype: float64"
|
||
]
|
||
},
|
||
"execution_count": 3,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"oecd_bli[\"Life satisfaction\"].head()"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "markdown",
|
||
"metadata": {
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"source": [
|
||
"# Load and prepare GDP per capita data"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 4,
|
||
"metadata": {
|
||
"collapsed": false,
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"deletable": true,
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"editable": true
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},
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"outputs": [
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{
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"data": {
|
||
"text/html": [
|
||
"<div>\n",
|
||
"<table border=\"1\" class=\"dataframe\">\n",
|
||
" <thead>\n",
|
||
" <tr style=\"text-align: right;\">\n",
|
||
" <th></th>\n",
|
||
" <th>Subject Descriptor</th>\n",
|
||
" <th>Units</th>\n",
|
||
" <th>Scale</th>\n",
|
||
" <th>Country/Series-specific Notes</th>\n",
|
||
" <th>GDP per capita</th>\n",
|
||
" <th>Estimates Start After</th>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Country</th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" </tr>\n",
|
||
" </thead>\n",
|
||
" <tbody>\n",
|
||
" <tr>\n",
|
||
" <th>Afghanistan</th>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>599.994</td>\n",
|
||
" <td>2013.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Albania</th>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>3995.383</td>\n",
|
||
" <td>2010.0</td>\n",
|
||
" </tr>\n",
|
||
" </tbody>\n",
|
||
"</table>\n",
|
||
"</div>"
|
||
],
|
||
"text/plain": [
|
||
" Subject Descriptor Units \\\n",
|
||
"Country \n",
|
||
"Afghanistan Gross domestic product per capita, current prices U.S. dollars \n",
|
||
"Albania Gross domestic product per capita, current prices U.S. dollars \n",
|
||
"\n",
|
||
" Scale Country/Series-specific Notes \\\n",
|
||
"Country \n",
|
||
"Afghanistan Units See notes for: Gross domestic product, curren... \n",
|
||
"Albania Units See notes for: Gross domestic product, curren... \n",
|
||
"\n",
|
||
" GDP per capita Estimates Start After \n",
|
||
"Country \n",
|
||
"Afghanistan 599.994 2013.0 \n",
|
||
"Albania 3995.383 2010.0 "
|
||
]
|
||
},
|
||
"execution_count": 4,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
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}
|
||
],
|
||
"source": [
|
||
"# Download data from http://goo.gl/j1MSKe (=> imf.org)\n",
|
||
"gdp_per_capita = pd.read_csv(datapath+\"gdp_per_capita.csv\", thousands=',', delimiter='\\t',\n",
|
||
" encoding='latin1', na_values=\"n/a\")\n",
|
||
"gdp_per_capita.rename(columns={\"2015\": \"GDP per capita\"}, inplace=True)\n",
|
||
"gdp_per_capita.set_index(\"Country\", inplace=True)\n",
|
||
"gdp_per_capita.head(2)"
|
||
]
|
||
},
|
||
{
|
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"cell_type": "code",
|
||
"execution_count": 5,
|
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"deletable": true,
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"<div>\n",
|
||
"<table border=\"1\" class=\"dataframe\">\n",
|
||
" <thead>\n",
|
||
" <tr style=\"text-align: right;\">\n",
|
||
" <th></th>\n",
|
||
" <th>Air pollution</th>\n",
|
||
" <th>Assault rate</th>\n",
|
||
" <th>Consultation on rule-making</th>\n",
|
||
" <th>Dwellings without basic facilities</th>\n",
|
||
" <th>Educational attainment</th>\n",
|
||
" <th>Employees working very long hours</th>\n",
|
||
" <th>Employment rate</th>\n",
|
||
" <th>Homicide rate</th>\n",
|
||
" <th>Household net adjusted disposable income</th>\n",
|
||
" <th>Household net financial wealth</th>\n",
|
||
" <th>...</th>\n",
|
||
" <th>Time devoted to leisure and personal care</th>\n",
|
||
" <th>Voter turnout</th>\n",
|
||
" <th>Water quality</th>\n",
|
||
" <th>Years in education</th>\n",
|
||
" <th>Subject Descriptor</th>\n",
|
||
" <th>Units</th>\n",
|
||
" <th>Scale</th>\n",
|
||
" <th>Country/Series-specific Notes</th>\n",
|
||
" <th>GDP per capita</th>\n",
|
||
" <th>Estimates Start After</th>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Country</th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" </tr>\n",
|
||
" </thead>\n",
|
||
" <tbody>\n",
|
||
" <tr>\n",
|
||
" <th>Brazil</th>\n",
|
||
" <td>18.0</td>\n",
|
||
" <td>7.9</td>\n",
|
||
" <td>4.0</td>\n",
|
||
" <td>6.7</td>\n",
|
||
" <td>45.0</td>\n",
|
||
" <td>10.41</td>\n",
|
||
" <td>67.0</td>\n",
|
||
" <td>25.5</td>\n",
|
||
" <td>11664.0</td>\n",
|
||
" <td>6844.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.97</td>\n",
|
||
" <td>79.0</td>\n",
|
||
" <td>72.0</td>\n",
|
||
" <td>16.3</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>8669.998</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Mexico</th>\n",
|
||
" <td>30.0</td>\n",
|
||
" <td>12.8</td>\n",
|
||
" <td>9.0</td>\n",
|
||
" <td>4.2</td>\n",
|
||
" <td>37.0</td>\n",
|
||
" <td>28.83</td>\n",
|
||
" <td>61.0</td>\n",
|
||
" <td>23.4</td>\n",
|
||
" <td>13085.0</td>\n",
|
||
" <td>9056.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>13.89</td>\n",
|
||
" <td>63.0</td>\n",
|
||
" <td>67.0</td>\n",
|
||
" <td>14.4</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>9009.280</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Russia</th>\n",
|
||
" <td>15.0</td>\n",
|
||
" <td>3.8</td>\n",
|
||
" <td>2.5</td>\n",
|
||
" <td>15.1</td>\n",
|
||
" <td>94.0</td>\n",
|
||
" <td>0.16</td>\n",
|
||
" <td>69.0</td>\n",
|
||
" <td>12.8</td>\n",
|
||
" <td>19292.0</td>\n",
|
||
" <td>3412.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.97</td>\n",
|
||
" <td>65.0</td>\n",
|
||
" <td>56.0</td>\n",
|
||
" <td>16.0</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>9054.914</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Turkey</th>\n",
|
||
" <td>35.0</td>\n",
|
||
" <td>5.0</td>\n",
|
||
" <td>5.5</td>\n",
|
||
" <td>12.7</td>\n",
|
||
" <td>34.0</td>\n",
|
||
" <td>40.86</td>\n",
|
||
" <td>50.0</td>\n",
|
||
" <td>1.2</td>\n",
|
||
" <td>14095.0</td>\n",
|
||
" <td>3251.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>13.42</td>\n",
|
||
" <td>88.0</td>\n",
|
||
" <td>62.0</td>\n",
|
||
" <td>16.4</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>9437.372</td>\n",
|
||
" <td>2013.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Hungary</th>\n",
|
||
" <td>15.0</td>\n",
|
||
" <td>3.6</td>\n",
|
||
" <td>7.9</td>\n",
|
||
" <td>4.8</td>\n",
|
||
" <td>82.0</td>\n",
|
||
" <td>3.19</td>\n",
|
||
" <td>58.0</td>\n",
|
||
" <td>1.3</td>\n",
|
||
" <td>15442.0</td>\n",
|
||
" <td>13277.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>15.04</td>\n",
|
||
" <td>62.0</td>\n",
|
||
" <td>77.0</td>\n",
|
||
" <td>17.6</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>12239.894</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Poland</th>\n",
|
||
" <td>33.0</td>\n",
|
||
" <td>1.4</td>\n",
|
||
" <td>10.8</td>\n",
|
||
" <td>3.2</td>\n",
|
||
" <td>90.0</td>\n",
|
||
" <td>7.41</td>\n",
|
||
" <td>60.0</td>\n",
|
||
" <td>0.9</td>\n",
|
||
" <td>17852.0</td>\n",
|
||
" <td>10919.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.20</td>\n",
|
||
" <td>55.0</td>\n",
|
||
" <td>79.0</td>\n",
|
||
" <td>18.4</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>12495.334</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Chile</th>\n",
|
||
" <td>46.0</td>\n",
|
||
" <td>6.9</td>\n",
|
||
" <td>2.0</td>\n",
|
||
" <td>9.4</td>\n",
|
||
" <td>57.0</td>\n",
|
||
" <td>15.42</td>\n",
|
||
" <td>62.0</td>\n",
|
||
" <td>4.4</td>\n",
|
||
" <td>14533.0</td>\n",
|
||
" <td>17733.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.41</td>\n",
|
||
" <td>49.0</td>\n",
|
||
" <td>73.0</td>\n",
|
||
" <td>16.5</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>13340.905</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Slovak Republic</th>\n",
|
||
" <td>13.0</td>\n",
|
||
" <td>3.0</td>\n",
|
||
" <td>6.6</td>\n",
|
||
" <td>0.6</td>\n",
|
||
" <td>92.0</td>\n",
|
||
" <td>7.02</td>\n",
|
||
" <td>60.0</td>\n",
|
||
" <td>1.2</td>\n",
|
||
" <td>17503.0</td>\n",
|
||
" <td>8663.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.99</td>\n",
|
||
" <td>59.0</td>\n",
|
||
" <td>81.0</td>\n",
|
||
" <td>16.3</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>15991.736</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Czech Republic</th>\n",
|
||
" <td>16.0</td>\n",
|
||
" <td>2.8</td>\n",
|
||
" <td>6.8</td>\n",
|
||
" <td>0.9</td>\n",
|
||
" <td>92.0</td>\n",
|
||
" <td>6.98</td>\n",
|
||
" <td>68.0</td>\n",
|
||
" <td>0.8</td>\n",
|
||
" <td>18404.0</td>\n",
|
||
" <td>17299.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.98</td>\n",
|
||
" <td>59.0</td>\n",
|
||
" <td>85.0</td>\n",
|
||
" <td>18.1</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>17256.918</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Estonia</th>\n",
|
||
" <td>9.0</td>\n",
|
||
" <td>5.5</td>\n",
|
||
" <td>3.3</td>\n",
|
||
" <td>8.1</td>\n",
|
||
" <td>90.0</td>\n",
|
||
" <td>3.30</td>\n",
|
||
" <td>68.0</td>\n",
|
||
" <td>4.8</td>\n",
|
||
" <td>15167.0</td>\n",
|
||
" <td>7680.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.90</td>\n",
|
||
" <td>64.0</td>\n",
|
||
" <td>79.0</td>\n",
|
||
" <td>17.5</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>17288.083</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Greece</th>\n",
|
||
" <td>27.0</td>\n",
|
||
" <td>3.7</td>\n",
|
||
" <td>6.5</td>\n",
|
||
" <td>0.7</td>\n",
|
||
" <td>68.0</td>\n",
|
||
" <td>6.16</td>\n",
|
||
" <td>49.0</td>\n",
|
||
" <td>1.6</td>\n",
|
||
" <td>18575.0</td>\n",
|
||
" <td>14579.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.91</td>\n",
|
||
" <td>64.0</td>\n",
|
||
" <td>69.0</td>\n",
|
||
" <td>18.6</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>18064.288</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Portugal</th>\n",
|
||
" <td>18.0</td>\n",
|
||
" <td>5.7</td>\n",
|
||
" <td>6.5</td>\n",
|
||
" <td>0.9</td>\n",
|
||
" <td>38.0</td>\n",
|
||
" <td>9.62</td>\n",
|
||
" <td>61.0</td>\n",
|
||
" <td>1.1</td>\n",
|
||
" <td>20086.0</td>\n",
|
||
" <td>31245.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.95</td>\n",
|
||
" <td>58.0</td>\n",
|
||
" <td>86.0</td>\n",
|
||
" <td>17.6</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>19121.592</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Slovenia</th>\n",
|
||
" <td>26.0</td>\n",
|
||
" <td>3.9</td>\n",
|
||
" <td>10.3</td>\n",
|
||
" <td>0.5</td>\n",
|
||
" <td>85.0</td>\n",
|
||
" <td>5.63</td>\n",
|
||
" <td>63.0</td>\n",
|
||
" <td>0.4</td>\n",
|
||
" <td>19326.0</td>\n",
|
||
" <td>18465.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.62</td>\n",
|
||
" <td>52.0</td>\n",
|
||
" <td>88.0</td>\n",
|
||
" <td>18.4</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>20732.482</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Spain</th>\n",
|
||
" <td>24.0</td>\n",
|
||
" <td>4.2</td>\n",
|
||
" <td>7.3</td>\n",
|
||
" <td>0.1</td>\n",
|
||
" <td>55.0</td>\n",
|
||
" <td>5.89</td>\n",
|
||
" <td>56.0</td>\n",
|
||
" <td>0.6</td>\n",
|
||
" <td>22477.0</td>\n",
|
||
" <td>24774.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>16.06</td>\n",
|
||
" <td>69.0</td>\n",
|
||
" <td>71.0</td>\n",
|
||
" <td>17.6</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>25864.721</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Korea</th>\n",
|
||
" <td>30.0</td>\n",
|
||
" <td>2.1</td>\n",
|
||
" <td>10.4</td>\n",
|
||
" <td>4.2</td>\n",
|
||
" <td>82.0</td>\n",
|
||
" <td>18.72</td>\n",
|
||
" <td>64.0</td>\n",
|
||
" <td>1.1</td>\n",
|
||
" <td>19510.0</td>\n",
|
||
" <td>29091.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.63</td>\n",
|
||
" <td>76.0</td>\n",
|
||
" <td>78.0</td>\n",
|
||
" <td>17.5</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>27195.197</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Italy</th>\n",
|
||
" <td>21.0</td>\n",
|
||
" <td>4.7</td>\n",
|
||
" <td>5.0</td>\n",
|
||
" <td>1.1</td>\n",
|
||
" <td>57.0</td>\n",
|
||
" <td>3.66</td>\n",
|
||
" <td>56.0</td>\n",
|
||
" <td>0.7</td>\n",
|
||
" <td>25166.0</td>\n",
|
||
" <td>54987.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.98</td>\n",
|
||
" <td>75.0</td>\n",
|
||
" <td>71.0</td>\n",
|
||
" <td>16.8</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>29866.581</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Japan</th>\n",
|
||
" <td>24.0</td>\n",
|
||
" <td>1.4</td>\n",
|
||
" <td>7.3</td>\n",
|
||
" <td>6.4</td>\n",
|
||
" <td>94.0</td>\n",
|
||
" <td>22.26</td>\n",
|
||
" <td>72.0</td>\n",
|
||
" <td>0.3</td>\n",
|
||
" <td>26111.0</td>\n",
|
||
" <td>86764.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.93</td>\n",
|
||
" <td>53.0</td>\n",
|
||
" <td>85.0</td>\n",
|
||
" <td>16.3</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>32485.545</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Israel</th>\n",
|
||
" <td>21.0</td>\n",
|
||
" <td>6.4</td>\n",
|
||
" <td>2.5</td>\n",
|
||
" <td>3.7</td>\n",
|
||
" <td>85.0</td>\n",
|
||
" <td>16.03</td>\n",
|
||
" <td>67.0</td>\n",
|
||
" <td>2.3</td>\n",
|
||
" <td>22104.0</td>\n",
|
||
" <td>52933.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.48</td>\n",
|
||
" <td>68.0</td>\n",
|
||
" <td>68.0</td>\n",
|
||
" <td>15.8</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>35343.336</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>New Zealand</th>\n",
|
||
" <td>11.0</td>\n",
|
||
" <td>2.2</td>\n",
|
||
" <td>10.3</td>\n",
|
||
" <td>0.2</td>\n",
|
||
" <td>74.0</td>\n",
|
||
" <td>13.87</td>\n",
|
||
" <td>73.0</td>\n",
|
||
" <td>1.2</td>\n",
|
||
" <td>23815.0</td>\n",
|
||
" <td>28290.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.87</td>\n",
|
||
" <td>77.0</td>\n",
|
||
" <td>89.0</td>\n",
|
||
" <td>18.1</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>37044.891</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>France</th>\n",
|
||
" <td>12.0</td>\n",
|
||
" <td>5.0</td>\n",
|
||
" <td>3.5</td>\n",
|
||
" <td>0.5</td>\n",
|
||
" <td>73.0</td>\n",
|
||
" <td>8.15</td>\n",
|
||
" <td>64.0</td>\n",
|
||
" <td>0.6</td>\n",
|
||
" <td>28799.0</td>\n",
|
||
" <td>48741.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>15.33</td>\n",
|
||
" <td>80.0</td>\n",
|
||
" <td>82.0</td>\n",
|
||
" <td>16.4</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>37675.006</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Belgium</th>\n",
|
||
" <td>21.0</td>\n",
|
||
" <td>6.6</td>\n",
|
||
" <td>4.5</td>\n",
|
||
" <td>2.0</td>\n",
|
||
" <td>72.0</td>\n",
|
||
" <td>4.57</td>\n",
|
||
" <td>62.0</td>\n",
|
||
" <td>1.1</td>\n",
|
||
" <td>28307.0</td>\n",
|
||
" <td>83876.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>15.71</td>\n",
|
||
" <td>89.0</td>\n",
|
||
" <td>87.0</td>\n",
|
||
" <td>18.9</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>40106.632</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Germany</th>\n",
|
||
" <td>16.0</td>\n",
|
||
" <td>3.6</td>\n",
|
||
" <td>4.5</td>\n",
|
||
" <td>0.1</td>\n",
|
||
" <td>86.0</td>\n",
|
||
" <td>5.25</td>\n",
|
||
" <td>73.0</td>\n",
|
||
" <td>0.5</td>\n",
|
||
" <td>31252.0</td>\n",
|
||
" <td>50394.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>15.31</td>\n",
|
||
" <td>72.0</td>\n",
|
||
" <td>95.0</td>\n",
|
||
" <td>18.2</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>40996.511</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Finland</th>\n",
|
||
" <td>15.0</td>\n",
|
||
" <td>2.4</td>\n",
|
||
" <td>9.0</td>\n",
|
||
" <td>0.6</td>\n",
|
||
" <td>85.0</td>\n",
|
||
" <td>3.58</td>\n",
|
||
" <td>69.0</td>\n",
|
||
" <td>1.4</td>\n",
|
||
" <td>27927.0</td>\n",
|
||
" <td>18761.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.89</td>\n",
|
||
" <td>69.0</td>\n",
|
||
" <td>94.0</td>\n",
|
||
" <td>19.7</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>41973.988</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Canada</th>\n",
|
||
" <td>15.0</td>\n",
|
||
" <td>1.3</td>\n",
|
||
" <td>10.5</td>\n",
|
||
" <td>0.2</td>\n",
|
||
" <td>89.0</td>\n",
|
||
" <td>3.94</td>\n",
|
||
" <td>72.0</td>\n",
|
||
" <td>1.5</td>\n",
|
||
" <td>29365.0</td>\n",
|
||
" <td>67913.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.25</td>\n",
|
||
" <td>61.0</td>\n",
|
||
" <td>91.0</td>\n",
|
||
" <td>17.2</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>43331.961</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Netherlands</th>\n",
|
||
" <td>30.0</td>\n",
|
||
" <td>4.9</td>\n",
|
||
" <td>6.1</td>\n",
|
||
" <td>0.0</td>\n",
|
||
" <td>73.0</td>\n",
|
||
" <td>0.45</td>\n",
|
||
" <td>74.0</td>\n",
|
||
" <td>0.9</td>\n",
|
||
" <td>27888.0</td>\n",
|
||
" <td>77961.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>15.44</td>\n",
|
||
" <td>75.0</td>\n",
|
||
" <td>92.0</td>\n",
|
||
" <td>18.7</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>43603.115</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Austria</th>\n",
|
||
" <td>27.0</td>\n",
|
||
" <td>3.4</td>\n",
|
||
" <td>7.1</td>\n",
|
||
" <td>1.0</td>\n",
|
||
" <td>83.0</td>\n",
|
||
" <td>7.61</td>\n",
|
||
" <td>72.0</td>\n",
|
||
" <td>0.4</td>\n",
|
||
" <td>31173.0</td>\n",
|
||
" <td>49887.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.46</td>\n",
|
||
" <td>75.0</td>\n",
|
||
" <td>94.0</td>\n",
|
||
" <td>17.0</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>43724.031</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>United Kingdom</th>\n",
|
||
" <td>13.0</td>\n",
|
||
" <td>1.9</td>\n",
|
||
" <td>11.5</td>\n",
|
||
" <td>0.2</td>\n",
|
||
" <td>78.0</td>\n",
|
||
" <td>12.70</td>\n",
|
||
" <td>71.0</td>\n",
|
||
" <td>0.3</td>\n",
|
||
" <td>27029.0</td>\n",
|
||
" <td>60778.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.83</td>\n",
|
||
" <td>66.0</td>\n",
|
||
" <td>88.0</td>\n",
|
||
" <td>16.4</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>43770.688</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Sweden</th>\n",
|
||
" <td>10.0</td>\n",
|
||
" <td>5.1</td>\n",
|
||
" <td>10.9</td>\n",
|
||
" <td>0.0</td>\n",
|
||
" <td>88.0</td>\n",
|
||
" <td>1.13</td>\n",
|
||
" <td>74.0</td>\n",
|
||
" <td>0.7</td>\n",
|
||
" <td>29185.0</td>\n",
|
||
" <td>60328.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>15.11</td>\n",
|
||
" <td>86.0</td>\n",
|
||
" <td>95.0</td>\n",
|
||
" <td>19.3</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>49866.266</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Iceland</th>\n",
|
||
" <td>18.0</td>\n",
|
||
" <td>2.7</td>\n",
|
||
" <td>5.1</td>\n",
|
||
" <td>0.4</td>\n",
|
||
" <td>71.0</td>\n",
|
||
" <td>12.25</td>\n",
|
||
" <td>82.0</td>\n",
|
||
" <td>0.3</td>\n",
|
||
" <td>23965.0</td>\n",
|
||
" <td>43045.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.61</td>\n",
|
||
" <td>81.0</td>\n",
|
||
" <td>97.0</td>\n",
|
||
" <td>19.8</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>50854.583</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Australia</th>\n",
|
||
" <td>13.0</td>\n",
|
||
" <td>2.1</td>\n",
|
||
" <td>10.5</td>\n",
|
||
" <td>1.1</td>\n",
|
||
" <td>76.0</td>\n",
|
||
" <td>14.02</td>\n",
|
||
" <td>72.0</td>\n",
|
||
" <td>0.8</td>\n",
|
||
" <td>31588.0</td>\n",
|
||
" <td>47657.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.41</td>\n",
|
||
" <td>93.0</td>\n",
|
||
" <td>91.0</td>\n",
|
||
" <td>19.4</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>50961.865</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Ireland</th>\n",
|
||
" <td>13.0</td>\n",
|
||
" <td>2.6</td>\n",
|
||
" <td>9.0</td>\n",
|
||
" <td>0.2</td>\n",
|
||
" <td>75.0</td>\n",
|
||
" <td>4.20</td>\n",
|
||
" <td>60.0</td>\n",
|
||
" <td>0.8</td>\n",
|
||
" <td>23917.0</td>\n",
|
||
" <td>31580.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>15.19</td>\n",
|
||
" <td>70.0</td>\n",
|
||
" <td>80.0</td>\n",
|
||
" <td>17.6</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>51350.744</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Denmark</th>\n",
|
||
" <td>15.0</td>\n",
|
||
" <td>3.9</td>\n",
|
||
" <td>7.0</td>\n",
|
||
" <td>0.9</td>\n",
|
||
" <td>78.0</td>\n",
|
||
" <td>2.03</td>\n",
|
||
" <td>73.0</td>\n",
|
||
" <td>0.3</td>\n",
|
||
" <td>26491.0</td>\n",
|
||
" <td>44488.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>16.06</td>\n",
|
||
" <td>88.0</td>\n",
|
||
" <td>94.0</td>\n",
|
||
" <td>19.4</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>52114.165</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>United States</th>\n",
|
||
" <td>18.0</td>\n",
|
||
" <td>1.5</td>\n",
|
||
" <td>8.3</td>\n",
|
||
" <td>0.1</td>\n",
|
||
" <td>89.0</td>\n",
|
||
" <td>11.30</td>\n",
|
||
" <td>67.0</td>\n",
|
||
" <td>5.2</td>\n",
|
||
" <td>41355.0</td>\n",
|
||
" <td>145769.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.27</td>\n",
|
||
" <td>68.0</td>\n",
|
||
" <td>85.0</td>\n",
|
||
" <td>17.2</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>55805.204</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Norway</th>\n",
|
||
" <td>16.0</td>\n",
|
||
" <td>3.3</td>\n",
|
||
" <td>8.1</td>\n",
|
||
" <td>0.3</td>\n",
|
||
" <td>82.0</td>\n",
|
||
" <td>2.82</td>\n",
|
||
" <td>75.0</td>\n",
|
||
" <td>0.6</td>\n",
|
||
" <td>33492.0</td>\n",
|
||
" <td>8797.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>15.56</td>\n",
|
||
" <td>78.0</td>\n",
|
||
" <td>94.0</td>\n",
|
||
" <td>17.9</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>74822.106</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Switzerland</th>\n",
|
||
" <td>20.0</td>\n",
|
||
" <td>4.2</td>\n",
|
||
" <td>8.4</td>\n",
|
||
" <td>0.0</td>\n",
|
||
" <td>86.0</td>\n",
|
||
" <td>6.72</td>\n",
|
||
" <td>80.0</td>\n",
|
||
" <td>0.5</td>\n",
|
||
" <td>33491.0</td>\n",
|
||
" <td>108823.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>14.98</td>\n",
|
||
" <td>49.0</td>\n",
|
||
" <td>96.0</td>\n",
|
||
" <td>17.3</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>80675.308</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Luxembourg</th>\n",
|
||
" <td>12.0</td>\n",
|
||
" <td>4.3</td>\n",
|
||
" <td>6.0</td>\n",
|
||
" <td>0.1</td>\n",
|
||
" <td>78.0</td>\n",
|
||
" <td>3.47</td>\n",
|
||
" <td>66.0</td>\n",
|
||
" <td>0.4</td>\n",
|
||
" <td>38951.0</td>\n",
|
||
" <td>61765.0</td>\n",
|
||
" <td>...</td>\n",
|
||
" <td>15.12</td>\n",
|
||
" <td>91.0</td>\n",
|
||
" <td>86.0</td>\n",
|
||
" <td>15.1</td>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>101994.093</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" </tbody>\n",
|
||
"</table>\n",
|
||
"<p>36 rows × 30 columns</p>\n",
|
||
"</div>"
|
||
],
|
||
"text/plain": [
|
||
" Air pollution Assault rate Consultation on rule-making \\\n",
|
||
"Country \n",
|
||
"Brazil 18.0 7.9 4.0 \n",
|
||
"Mexico 30.0 12.8 9.0 \n",
|
||
"Russia 15.0 3.8 2.5 \n",
|
||
"Turkey 35.0 5.0 5.5 \n",
|
||
"Hungary 15.0 3.6 7.9 \n",
|
||
"Poland 33.0 1.4 10.8 \n",
|
||
"Chile 46.0 6.9 2.0 \n",
|
||
"Slovak Republic 13.0 3.0 6.6 \n",
|
||
"Czech Republic 16.0 2.8 6.8 \n",
|
||
"Estonia 9.0 5.5 3.3 \n",
|
||
"Greece 27.0 3.7 6.5 \n",
|
||
"Portugal 18.0 5.7 6.5 \n",
|
||
"Slovenia 26.0 3.9 10.3 \n",
|
||
"Spain 24.0 4.2 7.3 \n",
|
||
"Korea 30.0 2.1 10.4 \n",
|
||
"Italy 21.0 4.7 5.0 \n",
|
||
"Japan 24.0 1.4 7.3 \n",
|
||
"Israel 21.0 6.4 2.5 \n",
|
||
"New Zealand 11.0 2.2 10.3 \n",
|
||
"France 12.0 5.0 3.5 \n",
|
||
"Belgium 21.0 6.6 4.5 \n",
|
||
"Germany 16.0 3.6 4.5 \n",
|
||
"Finland 15.0 2.4 9.0 \n",
|
||
"Canada 15.0 1.3 10.5 \n",
|
||
"Netherlands 30.0 4.9 6.1 \n",
|
||
"Austria 27.0 3.4 7.1 \n",
|
||
"United Kingdom 13.0 1.9 11.5 \n",
|
||
"Sweden 10.0 5.1 10.9 \n",
|
||
"Iceland 18.0 2.7 5.1 \n",
|
||
"Australia 13.0 2.1 10.5 \n",
|
||
"Ireland 13.0 2.6 9.0 \n",
|
||
"Denmark 15.0 3.9 7.0 \n",
|
||
"United States 18.0 1.5 8.3 \n",
|
||
"Norway 16.0 3.3 8.1 \n",
|
||
"Switzerland 20.0 4.2 8.4 \n",
|
||
"Luxembourg 12.0 4.3 6.0 \n",
|
||
"\n",
|
||
" Dwellings without basic facilities Educational attainment \\\n",
|
||
"Country \n",
|
||
"Brazil 6.7 45.0 \n",
|
||
"Mexico 4.2 37.0 \n",
|
||
"Russia 15.1 94.0 \n",
|
||
"Turkey 12.7 34.0 \n",
|
||
"Hungary 4.8 82.0 \n",
|
||
"Poland 3.2 90.0 \n",
|
||
"Chile 9.4 57.0 \n",
|
||
"Slovak Republic 0.6 92.0 \n",
|
||
"Czech Republic 0.9 92.0 \n",
|
||
"Estonia 8.1 90.0 \n",
|
||
"Greece 0.7 68.0 \n",
|
||
"Portugal 0.9 38.0 \n",
|
||
"Slovenia 0.5 85.0 \n",
|
||
"Spain 0.1 55.0 \n",
|
||
"Korea 4.2 82.0 \n",
|
||
"Italy 1.1 57.0 \n",
|
||
"Japan 6.4 94.0 \n",
|
||
"Israel 3.7 85.0 \n",
|
||
"New Zealand 0.2 74.0 \n",
|
||
"France 0.5 73.0 \n",
|
||
"Belgium 2.0 72.0 \n",
|
||
"Germany 0.1 86.0 \n",
|
||
"Finland 0.6 85.0 \n",
|
||
"Canada 0.2 89.0 \n",
|
||
"Netherlands 0.0 73.0 \n",
|
||
"Austria 1.0 83.0 \n",
|
||
"United Kingdom 0.2 78.0 \n",
|
||
"Sweden 0.0 88.0 \n",
|
||
"Iceland 0.4 71.0 \n",
|
||
"Australia 1.1 76.0 \n",
|
||
"Ireland 0.2 75.0 \n",
|
||
"Denmark 0.9 78.0 \n",
|
||
"United States 0.1 89.0 \n",
|
||
"Norway 0.3 82.0 \n",
|
||
"Switzerland 0.0 86.0 \n",
|
||
"Luxembourg 0.1 78.0 \n",
|
||
"\n",
|
||
" Employees working very long hours Employment rate \\\n",
|
||
"Country \n",
|
||
"Brazil 10.41 67.0 \n",
|
||
"Mexico 28.83 61.0 \n",
|
||
"Russia 0.16 69.0 \n",
|
||
"Turkey 40.86 50.0 \n",
|
||
"Hungary 3.19 58.0 \n",
|
||
"Poland 7.41 60.0 \n",
|
||
"Chile 15.42 62.0 \n",
|
||
"Slovak Republic 7.02 60.0 \n",
|
||
"Czech Republic 6.98 68.0 \n",
|
||
"Estonia 3.30 68.0 \n",
|
||
"Greece 6.16 49.0 \n",
|
||
"Portugal 9.62 61.0 \n",
|
||
"Slovenia 5.63 63.0 \n",
|
||
"Spain 5.89 56.0 \n",
|
||
"Korea 18.72 64.0 \n",
|
||
"Italy 3.66 56.0 \n",
|
||
"Japan 22.26 72.0 \n",
|
||
"Israel 16.03 67.0 \n",
|
||
"New Zealand 13.87 73.0 \n",
|
||
"France 8.15 64.0 \n",
|
||
"Belgium 4.57 62.0 \n",
|
||
"Germany 5.25 73.0 \n",
|
||
"Finland 3.58 69.0 \n",
|
||
"Canada 3.94 72.0 \n",
|
||
"Netherlands 0.45 74.0 \n",
|
||
"Austria 7.61 72.0 \n",
|
||
"United Kingdom 12.70 71.0 \n",
|
||
"Sweden 1.13 74.0 \n",
|
||
"Iceland 12.25 82.0 \n",
|
||
"Australia 14.02 72.0 \n",
|
||
"Ireland 4.20 60.0 \n",
|
||
"Denmark 2.03 73.0 \n",
|
||
"United States 11.30 67.0 \n",
|
||
"Norway 2.82 75.0 \n",
|
||
"Switzerland 6.72 80.0 \n",
|
||
"Luxembourg 3.47 66.0 \n",
|
||
"\n",
|
||
" Homicide rate Household net adjusted disposable income \\\n",
|
||
"Country \n",
|
||
"Brazil 25.5 11664.0 \n",
|
||
"Mexico 23.4 13085.0 \n",
|
||
"Russia 12.8 19292.0 \n",
|
||
"Turkey 1.2 14095.0 \n",
|
||
"Hungary 1.3 15442.0 \n",
|
||
"Poland 0.9 17852.0 \n",
|
||
"Chile 4.4 14533.0 \n",
|
||
"Slovak Republic 1.2 17503.0 \n",
|
||
"Czech Republic 0.8 18404.0 \n",
|
||
"Estonia 4.8 15167.0 \n",
|
||
"Greece 1.6 18575.0 \n",
|
||
"Portugal 1.1 20086.0 \n",
|
||
"Slovenia 0.4 19326.0 \n",
|
||
"Spain 0.6 22477.0 \n",
|
||
"Korea 1.1 19510.0 \n",
|
||
"Italy 0.7 25166.0 \n",
|
||
"Japan 0.3 26111.0 \n",
|
||
"Israel 2.3 22104.0 \n",
|
||
"New Zealand 1.2 23815.0 \n",
|
||
"France 0.6 28799.0 \n",
|
||
"Belgium 1.1 28307.0 \n",
|
||
"Germany 0.5 31252.0 \n",
|
||
"Finland 1.4 27927.0 \n",
|
||
"Canada 1.5 29365.0 \n",
|
||
"Netherlands 0.9 27888.0 \n",
|
||
"Austria 0.4 31173.0 \n",
|
||
"United Kingdom 0.3 27029.0 \n",
|
||
"Sweden 0.7 29185.0 \n",
|
||
"Iceland 0.3 23965.0 \n",
|
||
"Australia 0.8 31588.0 \n",
|
||
"Ireland 0.8 23917.0 \n",
|
||
"Denmark 0.3 26491.0 \n",
|
||
"United States 5.2 41355.0 \n",
|
||
"Norway 0.6 33492.0 \n",
|
||
"Switzerland 0.5 33491.0 \n",
|
||
"Luxembourg 0.4 38951.0 \n",
|
||
"\n",
|
||
" Household net financial wealth ... \\\n",
|
||
"Country ... \n",
|
||
"Brazil 6844.0 ... \n",
|
||
"Mexico 9056.0 ... \n",
|
||
"Russia 3412.0 ... \n",
|
||
"Turkey 3251.0 ... \n",
|
||
"Hungary 13277.0 ... \n",
|
||
"Poland 10919.0 ... \n",
|
||
"Chile 17733.0 ... \n",
|
||
"Slovak Republic 8663.0 ... \n",
|
||
"Czech Republic 17299.0 ... \n",
|
||
"Estonia 7680.0 ... \n",
|
||
"Greece 14579.0 ... \n",
|
||
"Portugal 31245.0 ... \n",
|
||
"Slovenia 18465.0 ... \n",
|
||
"Spain 24774.0 ... \n",
|
||
"Korea 29091.0 ... \n",
|
||
"Italy 54987.0 ... \n",
|
||
"Japan 86764.0 ... \n",
|
||
"Israel 52933.0 ... \n",
|
||
"New Zealand 28290.0 ... \n",
|
||
"France 48741.0 ... \n",
|
||
"Belgium 83876.0 ... \n",
|
||
"Germany 50394.0 ... \n",
|
||
"Finland 18761.0 ... \n",
|
||
"Canada 67913.0 ... \n",
|
||
"Netherlands 77961.0 ... \n",
|
||
"Austria 49887.0 ... \n",
|
||
"United Kingdom 60778.0 ... \n",
|
||
"Sweden 60328.0 ... \n",
|
||
"Iceland 43045.0 ... \n",
|
||
"Australia 47657.0 ... \n",
|
||
"Ireland 31580.0 ... \n",
|
||
"Denmark 44488.0 ... \n",
|
||
"United States 145769.0 ... \n",
|
||
"Norway 8797.0 ... \n",
|
||
"Switzerland 108823.0 ... \n",
|
||
"Luxembourg 61765.0 ... \n",
|
||
"\n",
|
||
" Time devoted to leisure and personal care Voter turnout \\\n",
|
||
"Country \n",
|
||
"Brazil 14.97 79.0 \n",
|
||
"Mexico 13.89 63.0 \n",
|
||
"Russia 14.97 65.0 \n",
|
||
"Turkey 13.42 88.0 \n",
|
||
"Hungary 15.04 62.0 \n",
|
||
"Poland 14.20 55.0 \n",
|
||
"Chile 14.41 49.0 \n",
|
||
"Slovak Republic 14.99 59.0 \n",
|
||
"Czech Republic 14.98 59.0 \n",
|
||
"Estonia 14.90 64.0 \n",
|
||
"Greece 14.91 64.0 \n",
|
||
"Portugal 14.95 58.0 \n",
|
||
"Slovenia 14.62 52.0 \n",
|
||
"Spain 16.06 69.0 \n",
|
||
"Korea 14.63 76.0 \n",
|
||
"Italy 14.98 75.0 \n",
|
||
"Japan 14.93 53.0 \n",
|
||
"Israel 14.48 68.0 \n",
|
||
"New Zealand 14.87 77.0 \n",
|
||
"France 15.33 80.0 \n",
|
||
"Belgium 15.71 89.0 \n",
|
||
"Germany 15.31 72.0 \n",
|
||
"Finland 14.89 69.0 \n",
|
||
"Canada 14.25 61.0 \n",
|
||
"Netherlands 15.44 75.0 \n",
|
||
"Austria 14.46 75.0 \n",
|
||
"United Kingdom 14.83 66.0 \n",
|
||
"Sweden 15.11 86.0 \n",
|
||
"Iceland 14.61 81.0 \n",
|
||
"Australia 14.41 93.0 \n",
|
||
"Ireland 15.19 70.0 \n",
|
||
"Denmark 16.06 88.0 \n",
|
||
"United States 14.27 68.0 \n",
|
||
"Norway 15.56 78.0 \n",
|
||
"Switzerland 14.98 49.0 \n",
|
||
"Luxembourg 15.12 91.0 \n",
|
||
"\n",
|
||
" Water quality Years in education \\\n",
|
||
"Country \n",
|
||
"Brazil 72.0 16.3 \n",
|
||
"Mexico 67.0 14.4 \n",
|
||
"Russia 56.0 16.0 \n",
|
||
"Turkey 62.0 16.4 \n",
|
||
"Hungary 77.0 17.6 \n",
|
||
"Poland 79.0 18.4 \n",
|
||
"Chile 73.0 16.5 \n",
|
||
"Slovak Republic 81.0 16.3 \n",
|
||
"Czech Republic 85.0 18.1 \n",
|
||
"Estonia 79.0 17.5 \n",
|
||
"Greece 69.0 18.6 \n",
|
||
"Portugal 86.0 17.6 \n",
|
||
"Slovenia 88.0 18.4 \n",
|
||
"Spain 71.0 17.6 \n",
|
||
"Korea 78.0 17.5 \n",
|
||
"Italy 71.0 16.8 \n",
|
||
"Japan 85.0 16.3 \n",
|
||
"Israel 68.0 15.8 \n",
|
||
"New Zealand 89.0 18.1 \n",
|
||
"France 82.0 16.4 \n",
|
||
"Belgium 87.0 18.9 \n",
|
||
"Germany 95.0 18.2 \n",
|
||
"Finland 94.0 19.7 \n",
|
||
"Canada 91.0 17.2 \n",
|
||
"Netherlands 92.0 18.7 \n",
|
||
"Austria 94.0 17.0 \n",
|
||
"United Kingdom 88.0 16.4 \n",
|
||
"Sweden 95.0 19.3 \n",
|
||
"Iceland 97.0 19.8 \n",
|
||
"Australia 91.0 19.4 \n",
|
||
"Ireland 80.0 17.6 \n",
|
||
"Denmark 94.0 19.4 \n",
|
||
"United States 85.0 17.2 \n",
|
||
"Norway 94.0 17.9 \n",
|
||
"Switzerland 96.0 17.3 \n",
|
||
"Luxembourg 86.0 15.1 \n",
|
||
"\n",
|
||
" Subject Descriptor \\\n",
|
||
"Country \n",
|
||
"Brazil Gross domestic product per capita, current prices \n",
|
||
"Mexico Gross domestic product per capita, current prices \n",
|
||
"Russia Gross domestic product per capita, current prices \n",
|
||
"Turkey Gross domestic product per capita, current prices \n",
|
||
"Hungary Gross domestic product per capita, current prices \n",
|
||
"Poland Gross domestic product per capita, current prices \n",
|
||
"Chile Gross domestic product per capita, current prices \n",
|
||
"Slovak Republic Gross domestic product per capita, current prices \n",
|
||
"Czech Republic Gross domestic product per capita, current prices \n",
|
||
"Estonia Gross domestic product per capita, current prices \n",
|
||
"Greece Gross domestic product per capita, current prices \n",
|
||
"Portugal Gross domestic product per capita, current prices \n",
|
||
"Slovenia Gross domestic product per capita, current prices \n",
|
||
"Spain Gross domestic product per capita, current prices \n",
|
||
"Korea Gross domestic product per capita, current prices \n",
|
||
"Italy Gross domestic product per capita, current prices \n",
|
||
"Japan Gross domestic product per capita, current prices \n",
|
||
"Israel Gross domestic product per capita, current prices \n",
|
||
"New Zealand Gross domestic product per capita, current prices \n",
|
||
"France Gross domestic product per capita, current prices \n",
|
||
"Belgium Gross domestic product per capita, current prices \n",
|
||
"Germany Gross domestic product per capita, current prices \n",
|
||
"Finland Gross domestic product per capita, current prices \n",
|
||
"Canada Gross domestic product per capita, current prices \n",
|
||
"Netherlands Gross domestic product per capita, current prices \n",
|
||
"Austria Gross domestic product per capita, current prices \n",
|
||
"United Kingdom Gross domestic product per capita, current prices \n",
|
||
"Sweden Gross domestic product per capita, current prices \n",
|
||
"Iceland Gross domestic product per capita, current prices \n",
|
||
"Australia Gross domestic product per capita, current prices \n",
|
||
"Ireland Gross domestic product per capita, current prices \n",
|
||
"Denmark Gross domestic product per capita, current prices \n",
|
||
"United States Gross domestic product per capita, current prices \n",
|
||
"Norway Gross domestic product per capita, current prices \n",
|
||
"Switzerland Gross domestic product per capita, current prices \n",
|
||
"Luxembourg Gross domestic product per capita, current prices \n",
|
||
"\n",
|
||
" Units Scale \\\n",
|
||
"Country \n",
|
||
"Brazil U.S. dollars Units \n",
|
||
"Mexico U.S. dollars Units \n",
|
||
"Russia U.S. dollars Units \n",
|
||
"Turkey U.S. dollars Units \n",
|
||
"Hungary U.S. dollars Units \n",
|
||
"Poland U.S. dollars Units \n",
|
||
"Chile U.S. dollars Units \n",
|
||
"Slovak Republic U.S. dollars Units \n",
|
||
"Czech Republic U.S. dollars Units \n",
|
||
"Estonia U.S. dollars Units \n",
|
||
"Greece U.S. dollars Units \n",
|
||
"Portugal U.S. dollars Units \n",
|
||
"Slovenia U.S. dollars Units \n",
|
||
"Spain U.S. dollars Units \n",
|
||
"Korea U.S. dollars Units \n",
|
||
"Italy U.S. dollars Units \n",
|
||
"Japan U.S. dollars Units \n",
|
||
"Israel U.S. dollars Units \n",
|
||
"New Zealand U.S. dollars Units \n",
|
||
"France U.S. dollars Units \n",
|
||
"Belgium U.S. dollars Units \n",
|
||
"Germany U.S. dollars Units \n",
|
||
"Finland U.S. dollars Units \n",
|
||
"Canada U.S. dollars Units \n",
|
||
"Netherlands U.S. dollars Units \n",
|
||
"Austria U.S. dollars Units \n",
|
||
"United Kingdom U.S. dollars Units \n",
|
||
"Sweden U.S. dollars Units \n",
|
||
"Iceland U.S. dollars Units \n",
|
||
"Australia U.S. dollars Units \n",
|
||
"Ireland U.S. dollars Units \n",
|
||
"Denmark U.S. dollars Units \n",
|
||
"United States U.S. dollars Units \n",
|
||
"Norway U.S. dollars Units \n",
|
||
"Switzerland U.S. dollars Units \n",
|
||
"Luxembourg U.S. dollars Units \n",
|
||
"\n",
|
||
" Country/Series-specific Notes \\\n",
|
||
"Country \n",
|
||
"Brazil See notes for: Gross domestic product, curren... \n",
|
||
"Mexico See notes for: Gross domestic product, curren... \n",
|
||
"Russia See notes for: Gross domestic product, curren... \n",
|
||
"Turkey See notes for: Gross domestic product, curren... \n",
|
||
"Hungary See notes for: Gross domestic product, curren... \n",
|
||
"Poland See notes for: Gross domestic product, curren... \n",
|
||
"Chile See notes for: Gross domestic product, curren... \n",
|
||
"Slovak Republic See notes for: Gross domestic product, curren... \n",
|
||
"Czech Republic See notes for: Gross domestic product, curren... \n",
|
||
"Estonia See notes for: Gross domestic product, curren... \n",
|
||
"Greece See notes for: Gross domestic product, curren... \n",
|
||
"Portugal See notes for: Gross domestic product, curren... \n",
|
||
"Slovenia See notes for: Gross domestic product, curren... \n",
|
||
"Spain See notes for: Gross domestic product, curren... \n",
|
||
"Korea See notes for: Gross domestic product, curren... \n",
|
||
"Italy See notes for: Gross domestic product, curren... \n",
|
||
"Japan See notes for: Gross domestic product, curren... \n",
|
||
"Israel See notes for: Gross domestic product, curren... \n",
|
||
"New Zealand See notes for: Gross domestic product, curren... \n",
|
||
"France See notes for: Gross domestic product, curren... \n",
|
||
"Belgium See notes for: Gross domestic product, curren... \n",
|
||
"Germany See notes for: Gross domestic product, curren... \n",
|
||
"Finland See notes for: Gross domestic product, curren... \n",
|
||
"Canada See notes for: Gross domestic product, curren... \n",
|
||
"Netherlands See notes for: Gross domestic product, curren... \n",
|
||
"Austria See notes for: Gross domestic product, curren... \n",
|
||
"United Kingdom See notes for: Gross domestic product, curren... \n",
|
||
"Sweden See notes for: Gross domestic product, curren... \n",
|
||
"Iceland See notes for: Gross domestic product, curren... \n",
|
||
"Australia See notes for: Gross domestic product, curren... \n",
|
||
"Ireland See notes for: Gross domestic product, curren... \n",
|
||
"Denmark See notes for: Gross domestic product, curren... \n",
|
||
"United States See notes for: Gross domestic product, curren... \n",
|
||
"Norway See notes for: Gross domestic product, curren... \n",
|
||
"Switzerland See notes for: Gross domestic product, curren... \n",
|
||
"Luxembourg See notes for: Gross domestic product, curren... \n",
|
||
"\n",
|
||
" GDP per capita Estimates Start After \n",
|
||
"Country \n",
|
||
"Brazil 8669.998 2014.0 \n",
|
||
"Mexico 9009.280 2015.0 \n",
|
||
"Russia 9054.914 2015.0 \n",
|
||
"Turkey 9437.372 2013.0 \n",
|
||
"Hungary 12239.894 2015.0 \n",
|
||
"Poland 12495.334 2014.0 \n",
|
||
"Chile 13340.905 2014.0 \n",
|
||
"Slovak Republic 15991.736 2015.0 \n",
|
||
"Czech Republic 17256.918 2015.0 \n",
|
||
"Estonia 17288.083 2014.0 \n",
|
||
"Greece 18064.288 2014.0 \n",
|
||
"Portugal 19121.592 2014.0 \n",
|
||
"Slovenia 20732.482 2015.0 \n",
|
||
"Spain 25864.721 2014.0 \n",
|
||
"Korea 27195.197 2014.0 \n",
|
||
"Italy 29866.581 2015.0 \n",
|
||
"Japan 32485.545 2015.0 \n",
|
||
"Israel 35343.336 2015.0 \n",
|
||
"New Zealand 37044.891 2015.0 \n",
|
||
"France 37675.006 2015.0 \n",
|
||
"Belgium 40106.632 2014.0 \n",
|
||
"Germany 40996.511 2014.0 \n",
|
||
"Finland 41973.988 2014.0 \n",
|
||
"Canada 43331.961 2015.0 \n",
|
||
"Netherlands 43603.115 2014.0 \n",
|
||
"Austria 43724.031 2015.0 \n",
|
||
"United Kingdom 43770.688 2015.0 \n",
|
||
"Sweden 49866.266 2014.0 \n",
|
||
"Iceland 50854.583 2014.0 \n",
|
||
"Australia 50961.865 2014.0 \n",
|
||
"Ireland 51350.744 2014.0 \n",
|
||
"Denmark 52114.165 2015.0 \n",
|
||
"United States 55805.204 2015.0 \n",
|
||
"Norway 74822.106 2015.0 \n",
|
||
"Switzerland 80675.308 2015.0 \n",
|
||
"Luxembourg 101994.093 2014.0 \n",
|
||
"\n",
|
||
"[36 rows x 30 columns]"
|
||
]
|
||
},
|
||
"execution_count": 5,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"full_country_stats = pd.merge(left=oecd_bli, right=gdp_per_capita, left_index=True, right_index=True)\n",
|
||
"full_country_stats.sort_values(by=\"GDP per capita\", inplace=\"True\")\n",
|
||
"full_country_stats"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 6,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"data": {
|
||
"text/plain": [
|
||
"GDP per capita 55805.204\n",
|
||
"Life satisfaction 7.200\n",
|
||
"Name: United States, dtype: float64"
|
||
]
|
||
},
|
||
"execution_count": 6,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"full_country_stats[[\"GDP per capita\", 'Life satisfaction']].loc[\"United States\"]"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 7,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [],
|
||
"source": [
|
||
"remove_indices = [0, 1, 6, 8, 33, 34, 35]\n",
|
||
"keep_indices = list(set(range(36)) - set(remove_indices))\n",
|
||
"\n",
|
||
"sample_data = full_country_stats[[\"GDP per capita\", 'Life satisfaction']].iloc[keep_indices]\n",
|
||
"missing_data = full_country_stats[[\"GDP per capita\", 'Life satisfaction']].iloc[remove_indices]"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 8,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"Saving figure money_happy_scatterplot\n"
|
||
]
|
||
},
|
||
{
|
||
"data": {
|
||
"image/png": 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JN9xwA61ateLxxx/n9ddfp0aNGkV8tz4XQGJiIitWrCA9PZ0FCxaUWlcvNTXV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\n",
|
||
"text/plain": [
|
||
"<matplotlib.figure.Figure at 0x7f9fb218c9e8>"
|
||
]
|
||
},
|
||
"metadata": {},
|
||
"output_type": "display_data"
|
||
}
|
||
],
|
||
"source": [
|
||
"sample_data.plot(kind='scatter', x=\"GDP per capita\", y='Life satisfaction', figsize=(5,3))\n",
|
||
"plt.axis([0, 60000, 0, 10])\n",
|
||
"position_text = {\n",
|
||
" \"Hungary\": (5000, 1),\n",
|
||
" \"Korea\": (18000, 1.7),\n",
|
||
" \"France\": (29000, 2.4),\n",
|
||
" \"Australia\": (40000, 3.0),\n",
|
||
" \"United States\": (52000, 3.8),\n",
|
||
"}\n",
|
||
"for country, pos_text in position_text.items():\n",
|
||
" pos_data_x, pos_data_y = sample_data.loc[country]\n",
|
||
" country = \"U.S.\" if country == \"United States\" else country\n",
|
||
" plt.annotate(country, xy=(pos_data_x, pos_data_y), xytext=pos_text,\n",
|
||
" arrowprops=dict(facecolor='black', width=0.5, shrink=0.1, headwidth=5))\n",
|
||
" plt.plot(pos_data_x, pos_data_y, \"ro\")\n",
|
||
"save_fig('money_happy_scatterplot')\n",
|
||
"plt.show()"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 9,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [],
|
||
"source": [
|
||
"sample_data.to_csv(\"life_satisfaction_vs_gdp_per_capita.csv\")"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 10,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"data": {
|
||
"text/html": [
|
||
"<div>\n",
|
||
"<table border=\"1\" class=\"dataframe\">\n",
|
||
" <thead>\n",
|
||
" <tr style=\"text-align: right;\">\n",
|
||
" <th></th>\n",
|
||
" <th>GDP per capita</th>\n",
|
||
" <th>Life satisfaction</th>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Country</th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" </tr>\n",
|
||
" </thead>\n",
|
||
" <tbody>\n",
|
||
" <tr>\n",
|
||
" <th>Hungary</th>\n",
|
||
" <td>12239.894</td>\n",
|
||
" <td>4.9</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Korea</th>\n",
|
||
" <td>27195.197</td>\n",
|
||
" <td>5.8</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Australia</th>\n",
|
||
" <td>50961.865</td>\n",
|
||
" <td>7.3</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>United States</th>\n",
|
||
" <td>55805.204</td>\n",
|
||
" <td>7.2</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>France</th>\n",
|
||
" <td>37675.006</td>\n",
|
||
" <td>6.5</td>\n",
|
||
" </tr>\n",
|
||
" </tbody>\n",
|
||
"</table>\n",
|
||
"</div>"
|
||
],
|
||
"text/plain": [
|
||
" GDP per capita Life satisfaction\n",
|
||
"Country \n",
|
||
"Hungary 12239.894 4.9\n",
|
||
"Korea 27195.197 5.8\n",
|
||
"Australia 50961.865 7.3\n",
|
||
"United States 55805.204 7.2\n",
|
||
"France 37675.006 6.5"
|
||
]
|
||
},
|
||
"execution_count": 10,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"sample_data.loc[list(position_text.keys())]"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 11,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"Saving figure tweaking_model_params_plot\n"
|
||
]
|
||
},
|
||
{
|
||
"data": {
|
||
"image/png": 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f6EGPHKQ5v8vRoQ8M1dOfP12veesanTF/hn6+5nPdXr7db5NbPY2JyJw5c7Rbtwme8Lit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\nrkJggg==\n",
|
||
"text/plain": [
|
||
"<matplotlib.figure.Figure at 0x7f9fb091c5f8>"
|
||
]
|
||
},
|
||
"metadata": {},
|
||
"output_type": "display_data"
|
||
}
|
||
],
|
||
"source": [
|
||
"import numpy as np\n",
|
||
"\n",
|
||
"sample_data.plot(kind='scatter', x=\"GDP per capita\", y='Life satisfaction', figsize=(5,3))\n",
|
||
"plt.axis([0, 60000, 0, 10])\n",
|
||
"X=np.linspace(0, 60000, 1000)\n",
|
||
"plt.plot(X, 2*X/100000, \"r\")\n",
|
||
"plt.text(40000, 2.7, r\"$\\theta_0 = 0$\", fontsize=14, color=\"r\")\n",
|
||
"plt.text(40000, 1.8, r\"$\\theta_1 = 2 \\times 10^{-5}$\", fontsize=14, color=\"r\")\n",
|
||
"plt.plot(X, 8 - 5*X/100000, \"g\")\n",
|
||
"plt.text(5000, 9.1, r\"$\\theta_0 = 8$\", fontsize=14, color=\"g\")\n",
|
||
"plt.text(5000, 8.2, r\"$\\theta_1 = -5 \\times 10^{-5}$\", fontsize=14, color=\"g\")\n",
|
||
"plt.plot(X, 4 + 5*X/100000, \"b\")\n",
|
||
"plt.text(5000, 3.5, r\"$\\theta_0 = 4$\", fontsize=14, color=\"b\")\n",
|
||
"plt.text(5000, 2.6, r\"$\\theta_1 = 5 \\times 10^{-5}$\", fontsize=14, color=\"b\")\n",
|
||
"save_fig('tweaking_model_params_plot')\n",
|
||
"plt.show()"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 12,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"data": {
|
||
"text/plain": [
|
||
"(4.8530528002664362, 4.9115445891584838e-05)"
|
||
]
|
||
},
|
||
"execution_count": 12,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"from sklearn import linear_model\n",
|
||
"lin1 = linear_model.LinearRegression()\n",
|
||
"Xsample = np.c_[sample_data[\"GDP per capita\"]]\n",
|
||
"ysample = np.c_[sample_data[\"Life satisfaction\"]]\n",
|
||
"lin1.fit(Xsample, ysample)\n",
|
||
"t0, t1 = lin1.intercept_[0], lin1.coef_[0][0]\n",
|
||
"t0, t1"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 13,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"Saving figure best_fit_model_plot\n"
|
||
]
|
||
},
|
||
{
|
||
"data": {
|
||
"image/png": 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4sYuMmDgROnUK2yrDMLKRyGZDE5Ec4N/Ax6p6Qdw5nTx58q7j0tJSSktLM2ug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\n18t5DwAAAABJRU5ErkJggg==\n",
|
||
"text/plain": [
|
||
"<matplotlib.figure.Figure at 0x7f9fa4b907f0>"
|
||
]
|
||
},
|
||
"metadata": {},
|
||
"output_type": "display_data"
|
||
}
|
||
],
|
||
"source": [
|
||
"sample_data.plot(kind='scatter', x=\"GDP per capita\", y='Life satisfaction', figsize=(5,3))\n",
|
||
"plt.axis([0, 60000, 0, 10])\n",
|
||
"X=np.linspace(0, 60000, 1000)\n",
|
||
"plt.plot(X, t0 + t1*X, \"b\")\n",
|
||
"plt.text(5000, 3.1, r\"$\\theta_0 = 4.85$\", fontsize=14, color=\"b\")\n",
|
||
"plt.text(5000, 2.2, r\"$\\theta_1 = 4.91 \\times 10^{-5}$\", fontsize=14, color=\"b\")\n",
|
||
"save_fig('best_fit_model_plot')\n",
|
||
"plt.show()\n"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 14,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"22587.49\n"
|
||
]
|
||
},
|
||
{
|
||
"data": {
|
||
"text/plain": [
|
||
"5.9624474431881502"
|
||
]
|
||
},
|
||
"execution_count": 14,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"cyprus_gdp_per_capita = gdp_per_capita.loc[\"Cyprus\"][\"GDP per capita\"]\n",
|
||
"print(cyprus_gdp_per_capita)\n",
|
||
"cyprus_predicted_life_satisfaction = lin1.predict(cyprus_gdp_per_capita)[0][0]\n",
|
||
"cyprus_predicted_life_satisfaction"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 15,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"Saving figure cyprus_prediction_plot\n"
|
||
]
|
||
},
|
||
{
|
||
"data": {
|
||
"image/png": 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CTZvs7SVZtq5ddokr2QMPtGT6RUWW4CnT2brc75qbpBoHvAoYoKofJ5T3AF5T1SSep8yR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\nRK5CYII=\n",
|
||
"text/plain": [
|
||
"<matplotlib.figure.Figure at 0x7f9fa43dda20>"
|
||
]
|
||
},
|
||
"metadata": {},
|
||
"output_type": "display_data"
|
||
}
|
||
],
|
||
"source": [
|
||
"sample_data.plot(kind='scatter', x=\"GDP per capita\", y='Life satisfaction', figsize=(5,3), s=1)\n",
|
||
"X=np.linspace(0, 60000, 1000)\n",
|
||
"plt.plot(X, t0 + t1*X, \"b\")\n",
|
||
"plt.axis([0, 60000, 0, 10])\n",
|
||
"plt.text(5000, 7.5, r\"$\\theta_0 = 4.85$\", fontsize=14, color=\"b\")\n",
|
||
"plt.text(5000, 6.6, r\"$\\theta_1 = 4.91 \\times 10^{-5}$\", fontsize=14, color=\"b\")\n",
|
||
"plt.plot([cyprus_gdp_per_capita, cyprus_gdp_per_capita], [0, cyprus_predicted_life_satisfaction], \"r--\")\n",
|
||
"plt.text(25000, 5.0, r\"Prediction = 5.96\", fontsize=14, color=\"b\")\n",
|
||
"plt.plot(cyprus_gdp_per_capita, cyprus_predicted_life_satisfaction, \"ro\")\n",
|
||
"save_fig('cyprus_prediction_plot')\n",
|
||
"plt.show()"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 16,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"data": {
|
||
"text/html": [
|
||
"<div>\n",
|
||
"<table border=\"1\" class=\"dataframe\">\n",
|
||
" <thead>\n",
|
||
" <tr style=\"text-align: right;\">\n",
|
||
" <th></th>\n",
|
||
" <th>GDP per capita</th>\n",
|
||
" <th>Life satisfaction</th>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Country</th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" </tr>\n",
|
||
" </thead>\n",
|
||
" <tbody>\n",
|
||
" <tr>\n",
|
||
" <th>Portugal</th>\n",
|
||
" <td>19121.592</td>\n",
|
||
" <td>5.1</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Slovenia</th>\n",
|
||
" <td>20732.482</td>\n",
|
||
" <td>5.7</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Spain</th>\n",
|
||
" <td>25864.721</td>\n",
|
||
" <td>6.5</td>\n",
|
||
" </tr>\n",
|
||
" </tbody>\n",
|
||
"</table>\n",
|
||
"</div>"
|
||
],
|
||
"text/plain": [
|
||
" GDP per capita Life satisfaction\n",
|
||
"Country \n",
|
||
"Portugal 19121.592 5.1\n",
|
||
"Slovenia 20732.482 5.7\n",
|
||
"Spain 25864.721 6.5"
|
||
]
|
||
},
|
||
"execution_count": 16,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"sample_data[7:10]"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 17,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"data": {
|
||
"text/plain": [
|
||
"5.766666666666667"
|
||
]
|
||
},
|
||
"execution_count": 17,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"(5.1+5.7+6.5)/3"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 18,
|
||
"metadata": {
|
||
"collapsed": true,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [],
|
||
"source": [
|
||
"backup = oecd_bli, gdp_per_capita\n",
|
||
"\n",
|
||
"def prepare_country_stats(oecd_bli, gdp_per_capita):\n",
|
||
" return sample_data"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 19,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"data": {
|
||
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BYP90Kr4HcGdF+8qxTWbf3EjaFXgpcNckYyzU+CRdIulJYAlJorlxkjEWYnyq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\nM7NcOdGYmVmu/j/P4aLQlpv/vgAAAABJRU5ErkJggg==\n",
|
||
"text/plain": [
|
||
"<matplotlib.figure.Figure at 0x7f9fa430fcc0>"
|
||
]
|
||
},
|
||
"metadata": {},
|
||
"output_type": "display_data"
|
||
},
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"[[ 5.96242338]]\n"
|
||
]
|
||
}
|
||
],
|
||
"source": [
|
||
"# Code example\n",
|
||
"import matplotlib\n",
|
||
"import matplotlib.pyplot as plt\n",
|
||
"import numpy as np\n",
|
||
"import pandas as pd\n",
|
||
"import sklearn\n",
|
||
"\n",
|
||
"# Load the data\n",
|
||
"oecd_bli = pd.read_csv(datapath + \"oecd_bli_2015.csv\", thousands=',')\n",
|
||
"gdp_per_capita = pd.read_csv(datapath + \"gdp_per_capita.csv\",thousands=',',delimiter='\\t',\n",
|
||
" encoding='latin1', na_values=\"n/a\")\n",
|
||
"\n",
|
||
"# Prepare the data\n",
|
||
"country_stats = prepare_country_stats(oecd_bli, gdp_per_capita)\n",
|
||
"X = np.c_[country_stats[\"GDP per capita\"]]\n",
|
||
"y = np.c_[country_stats[\"Life satisfaction\"]]\n",
|
||
"\n",
|
||
"# Visualize the data\n",
|
||
"country_stats.plot(kind='scatter', x=\"GDP per capita\", y='Life satisfaction')\n",
|
||
"plt.show()\n",
|
||
"\n",
|
||
"# Select a linear model\n",
|
||
"model = sklearn.linear_model.LinearRegression()\n",
|
||
"\n",
|
||
"# Train the model\n",
|
||
"model.fit(X, y)\n",
|
||
"\n",
|
||
"# Make a prediction for Cyprus\n",
|
||
"X_new = [[22587]] # Cyprus' GDP per capita\n",
|
||
"print(model.predict(X_new)) # outputs [[ 5.96242338]]"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 20,
|
||
"metadata": {
|
||
"collapsed": true,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [],
|
||
"source": [
|
||
"oecd_bli, gdp_per_capita = backup"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 21,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"data": {
|
||
"text/html": [
|
||
"<div>\n",
|
||
"<table border=\"1\" class=\"dataframe\">\n",
|
||
" <thead>\n",
|
||
" <tr style=\"text-align: right;\">\n",
|
||
" <th></th>\n",
|
||
" <th>GDP per capita</th>\n",
|
||
" <th>Life satisfaction</th>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Country</th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" </tr>\n",
|
||
" </thead>\n",
|
||
" <tbody>\n",
|
||
" <tr>\n",
|
||
" <th>Brazil</th>\n",
|
||
" <td>8669.998</td>\n",
|
||
" <td>7.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Mexico</th>\n",
|
||
" <td>9009.280</td>\n",
|
||
" <td>6.7</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Chile</th>\n",
|
||
" <td>13340.905</td>\n",
|
||
" <td>6.7</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Czech Republic</th>\n",
|
||
" <td>17256.918</td>\n",
|
||
" <td>6.5</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Norway</th>\n",
|
||
" <td>74822.106</td>\n",
|
||
" <td>7.4</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Switzerland</th>\n",
|
||
" <td>80675.308</td>\n",
|
||
" <td>7.5</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Luxembourg</th>\n",
|
||
" <td>101994.093</td>\n",
|
||
" <td>6.9</td>\n",
|
||
" </tr>\n",
|
||
" </tbody>\n",
|
||
"</table>\n",
|
||
"</div>"
|
||
],
|
||
"text/plain": [
|
||
" GDP per capita Life satisfaction\n",
|
||
"Country \n",
|
||
"Brazil 8669.998 7.0\n",
|
||
"Mexico 9009.280 6.7\n",
|
||
"Chile 13340.905 6.7\n",
|
||
"Czech Republic 17256.918 6.5\n",
|
||
"Norway 74822.106 7.4\n",
|
||
"Switzerland 80675.308 7.5\n",
|
||
"Luxembourg 101994.093 6.9"
|
||
]
|
||
},
|
||
"execution_count": 21,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"missing_data"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 22,
|
||
"metadata": {
|
||
"collapsed": true,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [],
|
||
"source": [
|
||
"position_text2 = {\n",
|
||
" \"Brazil\": (1000, 9.0),\n",
|
||
" \"Mexico\": (11000, 9.0),\n",
|
||
" \"Chile\": (25000, 9.0),\n",
|
||
" \"Czech Republic\": (35000, 9.0),\n",
|
||
" \"Norway\": (60000, 3),\n",
|
||
" \"Switzerland\": (72000, 3.0),\n",
|
||
" \"Luxembourg\": (90000, 3.0),\n",
|
||
"}"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 23,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"Saving figure representative_training_data_scatterplot\n"
|
||
]
|
||
},
|
||
{
|
||
"data": {
|
||
"image/png": 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pFi6cV+DYiiuBLA5aa+sqoIIsWdZa5zmhtn79+oSHh980yVZWAYm/uvx6cH4G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\n",
|
||
"text/plain": [
|
||
"<matplotlib.figure.Figure at 0x7f9fae85d198>"
|
||
]
|
||
},
|
||
"metadata": {},
|
||
"output_type": "display_data"
|
||
}
|
||
],
|
||
"source": [
|
||
"sample_data.plot(kind='scatter', x=\"GDP per capita\", y='Life satisfaction', figsize=(8,3))\n",
|
||
"plt.axis([0, 110000, 0, 10])\n",
|
||
"\n",
|
||
"for country, pos_text in position_text2.items():\n",
|
||
" pos_data_x, pos_data_y = missing_data.loc[country]\n",
|
||
" plt.annotate(country, xy=(pos_data_x, pos_data_y), xytext=pos_text,\n",
|
||
" arrowprops=dict(facecolor='black', width=0.5, shrink=0.1, headwidth=5))\n",
|
||
" plt.plot(pos_data_x, pos_data_y, \"rs\")\n",
|
||
"\n",
|
||
"X=np.linspace(0, 110000, 1000)\n",
|
||
"plt.plot(X, t0 + t1*X, \"b:\")\n",
|
||
"\n",
|
||
"lin_reg_full = linear_model.LinearRegression()\n",
|
||
"Xfull = np.c_[full_country_stats[\"GDP per capita\"]]\n",
|
||
"yfull = np.c_[full_country_stats[\"Life satisfaction\"]]\n",
|
||
"lin_reg_full.fit(Xfull, yfull)\n",
|
||
"\n",
|
||
"t0full, t1full = lin_reg_full.intercept_[0], lin_reg_full.coef_[0][0]\n",
|
||
"X = np.linspace(0, 110000, 1000)\n",
|
||
"plt.plot(X, t0full + t1full * X, \"k\")\n",
|
||
"\n",
|
||
"save_fig('representative_training_data_scatterplot')\n",
|
||
"plt.show()"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 24,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"name": "stderr",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"/home/ageron/dev/py/envs/ml/lib/python3.5/site-packages/numpy/core/_methods.py:116: RuntimeWarning: overflow encountered in multiply\n",
|
||
" x = um.multiply(x, x, out=x)\n"
|
||
]
|
||
},
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"Saving figure overfitting_model_plot\n"
|
||
]
|
||
},
|
||
{
|
||
"data": {
|
||
"image/png": 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4OO0mOL16wbbbhkbDcbz+OowZs5G33pqR8xGCE0aNCuPEjBhRQ2PjRcCoaEtP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\nEel2lOCIiIhIt6MER0RERLqd/w8/x+J18TQbggAAAABJRU5ErkJggg==\n",
|
||
"text/plain": [
|
||
"<matplotlib.figure.Figure at 0x7f9fa43a3eb8>"
|
||
]
|
||
},
|
||
"metadata": {},
|
||
"output_type": "display_data"
|
||
}
|
||
],
|
||
"source": [
|
||
"full_country_stats.plot(kind='scatter', x=\"GDP per capita\", y='Life satisfaction', figsize=(8,3))\n",
|
||
"plt.axis([0, 110000, 0, 10])\n",
|
||
"\n",
|
||
"from sklearn import preprocessing\n",
|
||
"from sklearn import pipeline\n",
|
||
"\n",
|
||
"poly = preprocessing.PolynomialFeatures(degree=60, include_bias=False)\n",
|
||
"scaler = preprocessing.StandardScaler()\n",
|
||
"lin_reg2 = linear_model.LinearRegression()\n",
|
||
"\n",
|
||
"pipeline_reg = pipeline.Pipeline([('poly', poly), ('scal', scaler), ('lin', lin_reg2)])\n",
|
||
"pipeline_reg.fit(Xfull, yfull)\n",
|
||
"curve = pipeline_reg.predict(X[:, np.newaxis])\n",
|
||
"plt.plot(X, curve)\n",
|
||
"save_fig('overfitting_model_plot')\n",
|
||
"plt.show()"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 25,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"data": {
|
||
"text/plain": [
|
||
"Country\n",
|
||
"New Zealand 7.3\n",
|
||
"Sweden 7.2\n",
|
||
"Norway 7.4\n",
|
||
"Switzerland 7.5\n",
|
||
"Name: Life satisfaction, dtype: float64"
|
||
]
|
||
},
|
||
"execution_count": 25,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"full_country_stats.loc[[c for c in full_country_stats.index if \"W\" in c.upper()]][\"Life satisfaction\"]"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 26,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"data": {
|
||
"text/html": [
|
||
"<div>\n",
|
||
"<table border=\"1\" class=\"dataframe\">\n",
|
||
" <thead>\n",
|
||
" <tr style=\"text-align: right;\">\n",
|
||
" <th></th>\n",
|
||
" <th>Subject Descriptor</th>\n",
|
||
" <th>Units</th>\n",
|
||
" <th>Scale</th>\n",
|
||
" <th>Country/Series-specific Notes</th>\n",
|
||
" <th>GDP per capita</th>\n",
|
||
" <th>Estimates Start After</th>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Country</th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" <th></th>\n",
|
||
" </tr>\n",
|
||
" </thead>\n",
|
||
" <tbody>\n",
|
||
" <tr>\n",
|
||
" <th>Botswana</th>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>6040.957</td>\n",
|
||
" <td>2008.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Kuwait</th>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>29363.027</td>\n",
|
||
" <td>2014.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Malawi</th>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>354.275</td>\n",
|
||
" <td>2011.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>New Zealand</th>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>37044.891</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" <tr>\n",
|
||
" <th>Norway</th>\n",
|
||
" <td>Gross domestic product per capita, current prices</td>\n",
|
||
" <td>U.S. dollars</td>\n",
|
||
" <td>Units</td>\n",
|
||
" <td>See notes for: Gross domestic product, curren...</td>\n",
|
||
" <td>74822.106</td>\n",
|
||
" <td>2015.0</td>\n",
|
||
" </tr>\n",
|
||
" </tbody>\n",
|
||
"</table>\n",
|
||
"</div>"
|
||
],
|
||
"text/plain": [
|
||
" Subject Descriptor Units \\\n",
|
||
"Country \n",
|
||
"Botswana Gross domestic product per capita, current prices U.S. dollars \n",
|
||
"Kuwait Gross domestic product per capita, current prices U.S. dollars \n",
|
||
"Malawi Gross domestic product per capita, current prices U.S. dollars \n",
|
||
"New Zealand Gross domestic product per capita, current prices U.S. dollars \n",
|
||
"Norway Gross domestic product per capita, current prices U.S. dollars \n",
|
||
"\n",
|
||
" Scale Country/Series-specific Notes \\\n",
|
||
"Country \n",
|
||
"Botswana Units See notes for: Gross domestic product, curren... \n",
|
||
"Kuwait Units See notes for: Gross domestic product, curren... \n",
|
||
"Malawi Units See notes for: Gross domestic product, curren... \n",
|
||
"New Zealand Units See notes for: Gross domestic product, curren... \n",
|
||
"Norway Units See notes for: Gross domestic product, curren... \n",
|
||
"\n",
|
||
" GDP per capita Estimates Start After \n",
|
||
"Country \n",
|
||
"Botswana 6040.957 2008.0 \n",
|
||
"Kuwait 29363.027 2014.0 \n",
|
||
"Malawi 354.275 2011.0 \n",
|
||
"New Zealand 37044.891 2015.0 \n",
|
||
"Norway 74822.106 2015.0 "
|
||
]
|
||
},
|
||
"execution_count": 26,
|
||
"metadata": {},
|
||
"output_type": "execute_result"
|
||
}
|
||
],
|
||
"source": [
|
||
"gdp_per_capita.loc[[c for c in gdp_per_capita.index if \"W\" in c.upper()]].head()"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 27,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"Saving figure ridge_model_plot\n"
|
||
]
|
||
},
|
||
{
|
||
"data": {
|
||
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RTFVTp44pCj50yP7aSy4pXXJT2taV0s47U+GTDAohhCi3TZs2sWnTphLP8zTB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\nOezgGGOMMablsINjjDHGmJbjf0eBoUblD+9ZAAAAAElFTkSuQmCC\n",
|
||
"text/plain": [
|
||
"<matplotlib.figure.Figure at 0x7f9fa4346710>"
|
||
]
|
||
},
|
||
"metadata": {},
|
||
"output_type": "display_data"
|
||
}
|
||
],
|
||
"source": [
|
||
"plt.figure(figsize=(8,3))\n",
|
||
"\n",
|
||
"plt.xlabel(\"GDP per capita\")\n",
|
||
"plt.ylabel('Life satisfaction')\n",
|
||
"\n",
|
||
"plt.plot(list(sample_data[\"GDP per capita\"]), list(sample_data[\"Life satisfaction\"]), \"bo\")\n",
|
||
"plt.plot(list(missing_data[\"GDP per capita\"]), list(missing_data[\"Life satisfaction\"]), \"rs\")\n",
|
||
"\n",
|
||
"X = np.linspace(0, 110000, 1000)\n",
|
||
"plt.plot(X, t0full + t1full * X, \"r--\", label=\"Linear model on all data\")\n",
|
||
"plt.plot(X, t0 + t1*X, \"b:\", label=\"Linear model on partial data\")\n",
|
||
"\n",
|
||
"ridge = linear_model.Ridge(alpha=10**9.5)\n",
|
||
"Xsample = np.c_[sample_data[\"GDP per capita\"]]\n",
|
||
"ysample = np.c_[sample_data[\"Life satisfaction\"]]\n",
|
||
"ridge.fit(Xsample, ysample)\n",
|
||
"t0ridge, t1ridge = ridge.intercept_[0], ridge.coef_[0][0]\n",
|
||
"plt.plot(X, t0ridge + t1ridge * X, \"b\", label=\"Regularized linear model on partial data\")\n",
|
||
"\n",
|
||
"plt.legend(loc=\"lower right\")\n",
|
||
"plt.axis([0, 110000, 0, 10])\n",
|
||
"save_fig('ridge_model_plot')\n",
|
||
"plt.show()"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 28,
|
||
"metadata": {
|
||
"collapsed": true,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [],
|
||
"source": [
|
||
"backup = oecd_bli, gdp_per_capita\n",
|
||
"\n",
|
||
"def prepare_country_stats(oecd_bli, gdp_per_capita):\n",
|
||
" return sample_data"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 29,
|
||
"metadata": {
|
||
"collapsed": true,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [],
|
||
"source": [
|
||
"# Replace this linear model:\n",
|
||
"model = sklearn.linear_model.LinearRegression()"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 30,
|
||
"metadata": {
|
||
"collapsed": true,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [],
|
||
"source": [
|
||
"# with this k-neighbors regression model:\n",
|
||
"model = sklearn.neighbors.KNeighborsRegressor(n_neighbors=3)"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": 31,
|
||
"metadata": {
|
||
"collapsed": false,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [
|
||
{
|
||
"name": "stdout",
|
||
"output_type": "stream",
|
||
"text": [
|
||
"[[ 5.76666667]]\n"
|
||
]
|
||
}
|
||
],
|
||
"source": [
|
||
"X = np.c_[country_stats[\"GDP per capita\"]]\n",
|
||
"y = np.c_[country_stats[\"Life satisfaction\"]]\n",
|
||
"\n",
|
||
"# Train the model\n",
|
||
"model.fit(X, y)\n",
|
||
"\n",
|
||
"# Make a prediction for Cyprus\n",
|
||
"X_new = np.array([[22587.0]]) # Cyprus' GDP per capita\n",
|
||
"print(model.predict(X_new)) # outputs [[ 5.76666667]]"
|
||
]
|
||
},
|
||
{
|
||
"cell_type": "code",
|
||
"execution_count": null,
|
||
"metadata": {
|
||
"collapsed": true,
|
||
"deletable": true,
|
||
"editable": true
|
||
},
|
||
"outputs": [],
|
||
"source": []
|
||
}
|
||
],
|
||
"metadata": {
|
||
"kernelspec": {
|
||
"display_name": "Python 3",
|
||
"language": "python",
|
||
"name": "python3"
|
||
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