2022-2023/2nd/12_Indicateurs_statistiques/5E_temperature_age.ipynb

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{
"cells": [
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Etudes statistiques\n",
"\n",
"Dans ce TP, vous allez réaliser 2 études statistiques basées sur des données issues de l'INSEE ([LInstitut national de la statistique et des études économiques](https://www.insee.fr/fr/accueil))\n",
"\n",
"- [Températures moyennes entre 1900 et 2017](#Temperature)\n",
"- [Population totale par sexe et âge au 1er janvier 2019, France](#Population)\n",
"\n",
"Vous trouverez en fin de TP, un [mémo sur les graphiques](#Graphiques)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Temperature\n",
"\n",
"Voici les données des températures moyenne en France de 1900 à 2017 ([source](https://www.insee.fr/fr/statistiques/3676581?sommaire=3696937))"
]
},
{
"cell_type": "code",
"execution_count": 3,
"metadata": {},
"outputs": [],
"source": [
"temperature = [\n",
"12.14413, 11.11613, 11.18313, 11.48013, 11.93013, 11.22013, 11.75313, 11.44013,\n",
"11.35113, 10.82313, 11.37413, 12.32013, 11.37913, 11.89413, 11.48813, 11.43513,\n",
"11.59413, 10.57213, 11.64313, 11.09013, 11.83913, 12.42113, 11.11913, 11.71713,\n",
"11.43513, 11.16313, 12.10113, 11.67313, 12.27613, 11.56013, 12.16513, 11.19613,\n",
"11.54013, 11.59013, 12.20913, 11.72313, 11.77113, 12.28713, 11.73213, 11.51313,\n",
"10.85413, 10.87613, 11.43513, 12.52613, 11.41213, 12.37413, 11.47213, 12.59313,\n",
"12.11813, 12.62013, 12.03913, 11.69713, 11.85613, 11.85013, 11.34113, 11.84213,\n",
"10.58113, 11.84313, 11.77313, 12.59413, 11.79813, 12.58413, 11.03513, 10.68313,\n",
"11.71513, 11.29313, 12.02013, 11.92813, 11.59013, 11.57513, 11.66613, 11.57613,\n",
"11.34313, 11.62213, 11.89313, 11.77913, 12.08513, 11.88713, 11.38613, 11.59513,\n",
"11.16713, 11.91113, 12.63613, 12.36213, 11.61013, 11.34313, 11.64413, 11.65413,\n",
"12.46513, 12.95013, 12.99913, 11.99113, 12.31813, 12.04713, 13.29813, 12.83713,\n",
"11.85613, 13.12113, 12.53113, 12.99513, 13.12313, 12.76313, 13.14513, 13.48113,\n",
"12.59113, 12.58813, 13.23913, 12.91113, 12.54513, 12.96413, 11.86613, 13.60113,\n",
"12.79113, 12.38113, 13.72713, 13.512, 13, 13.4\n",
"]"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Pour toutes les questions suivantes, les réponses doivent être données par votre programme.\n",
"\n",
"1. Décrire la série statistique (population, individus, caractère)\n",
"2. Quelle a été la température en 1900, 1918, 1945, 1990 et en 2000?\n",
"3. Calculer les 5 indicateurs et donner une interprétation de chacun de ces indicateurs.\n",
"4. Tracer la courbe d'évolution des températures.\n",
"\n",
"Vous pouvez utiliser la commande suivante pour générer les années."
]
},
{
"cell_type": "code",
"execution_count": 4,
"metadata": {},
"outputs": [],
"source": [
"annee = list(range(1900, 2018))"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Population\n",
"\n",
"Voici l'estimation de la population totale par sexe et âge au 1er janvier 2019. Chaque élément de la liste correspond à une tranche d'age.\n",
"\n",
"- le premier élément (347749 pour les femmes) correspond au nombre de personnes ayant 0 an (nés en 2018)\n",
"- le deuxime élément (370453 pour les hommes) correspond au nombre de personnes ayant 1 an (nés en 2019)\n",
"- le dernier élément correspon au nombre de personnes ayant plus de 100ans (nés avant 1918)"
]
},
{
"cell_type": "code",
"execution_count": 1,
"metadata": {},
"outputs": [],
"source": [
"femmes = [\n",
"347749, 355472, 363162, 372402, 387042, 389920, 396835, 403349, 412555, 408232,\n",
"410703, 408166, 415280, 405218, 403761, 402532, 403441, 409037, 412560, 390002,\n",
"384532, 370258, 374177, 367951, 358614, 357966, 376224, 385366, 397080, 405038,\n",
"409842, 413955, 422167, 420790, 417815, 414133, 438390, 442482, 448307, 424441,\n",
"414208, 413671, 404350, 413722, 435157, 460384, 469527, 466462, 457896, 452879,\n",
"450472, 447421, 457665, 459310, 464153, 460412, 445047, 444896, 444709, 442263,\n",
"433635, 430912, 427893, 424094, 421875, 413428, 418007, 408050, 422019, 413673,\n",
"409072, 400876, 378561, 286325, 279055, 269401, 249057, 221914, 231318, 239598,\n",
"232663, 226088, 222853, 213902, 210980, 195596, 192550, 175872, 164803, 139226,\n",
"124322, 105456, 91072, 76447, 61235, 48398, 37882, 27754, 19813, 8273, 12670\n",
"]\n",
"hommes = [\n",
"364155, 370453, 378518, 387906, 399232, 407611, 417471, 418623,\n",
"429919, 427917, 430934, 426744, 433073, 424141, 422877, 422127,\n",
"423901, 431086, 433377, 410714, 398993, 384384, 381869, 371731,\n",
"357849, 356195, 373660, 377772, 384835, 385034, 390899, 392786,\n",
"397979, 398786, 396435, 391214, 416777, 421707, 427643, 405581,\n",
"399149, 404816, 390441, 404346, 426173, 448213, 459886, 457822,\n",
"448697, 441572, 434971, 432749, 441979, 442828, 444960, 438142,\n",
"422099, 421161, 416331, 410415, 400042, 395817, 390345, 382395,\n",
"381146, 371165, 374781, 364694, 374817, 364312, 361485, 350179,\n",
"327085, 242793, 234112, 224687, 204674, 177799, 179151, 182015,\n",
"171854, 160969, 153145, 139041, 131872, 116712, 108339, 95104,\n",
"83373, 66602, 55382, 44797, 34519, 27317, 20525, 14477, 10101, \n",
"7239, 4977, 2058, 2976\n",
"]"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"1. Décrire les séries statistiques (population, individues, caractères)\n",
"\n",
"2. Combien y a-t-il d'homme en tout? De femmes? De personnes?\n",
"\n",
"3. Sur un même graphique tracer la répartition en fonction de l'age de la population féminine et masculine.\n",
"\n",
"4. Pour comparer la **répartition** de la population les **quantités** ne sont pas adapté, on préfèrera la **fréquence** (effectif divisé par l'effectif total). Créer 2 autres listes pour calculer la fréquence de chaque classe d'age pour les hommes et les femmes. Tracer à nouveau la répartition selon les ages.\n",
"\n",
"5. Calculer les 5 indicateurs pour les 2 séries. Interpréter."
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Graphiques\n",
"\n",
"Pour tracer des graphiques, on utilisera la librairie Maplotlib."
]
},
{
"cell_type": "code",
"execution_count": 10,
"metadata": {},
"outputs": [],
"source": [
"import matplotlib.pyplot as plt"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Pour tracer une courbe"
]
},
{
"cell_type": "code",
"execution_count": 27,
"metadata": {},
"outputs": [
{
"data": {
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"text/plain": [
"<Figure size 432x288 with 1 Axes>"
]
},
"metadata": {
"needs_background": "light"
},
"output_type": "display_data"
}
],
"source": [
"# le graphique\n",
"fig, ax = plt.subplots()\n",
"# Abscisses\n",
"x = [10, 100, 1000, 10000]\n",
"# Ordonnées\n",
"y = [1, 2, 3, 4]\n",
"# On ajoute la courbe\n",
"ax.plot(x, y)\n",
"# On affiche\n",
"plt.show()"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Pour mettre plusieurs courbes sur le même graphique"
]
},
{
"cell_type": "code",
"execution_count": 30,
"metadata": {},
"outputs": [
{
"data": {
"image/png": "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
"text/plain": [
"<Figure size 432x288 with 1 Axes>"
]
},
"metadata": {
"needs_background": "light"
},
"output_type": "display_data"
}
],
"source": [
"# le graphique\n",
"fig, ax = plt.subplots()\n",
"# Abscisses\n",
"x = [1000, 3000, 6000, 10000]\n",
"# Ordonnées\n",
"y = [1, 2, 3, 4]\n",
"# On ajoute la courbe\n",
"ax.plot(x, y)\n",
"# On ajoute une autre courbe\n",
"x = [10, 100, 1000, 10000]\n",
"y2 = [4, 3, 2, 1]\n",
"ax.plot(x, y2)\n",
"# On affiche\n",
"plt.show()"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Pour faire des barres"
]
},
{
"cell_type": "code",
"execution_count": 35,
"metadata": {},
"outputs": [
{
"data": {
"image/png": "iVBORw0KGgoAAAANSUhEUgAAAYIAAAEICAYAAABS0fM3AAAAOXRFWHRTb2Z0d2FyZQBNYXRwbG90bGliIHZlcnNpb24zLjUuMiwgaHR0cHM6Ly9tYXRwbG90bGliLm9yZy8qNh9FAAAACXBIWXMAAAsTAAALEwEAmpwYAAAbmUlEQVR4nO3deZhU9Z3v8ffHZo24RGiX0GwuMUbARtHgkoxb4parE6MTvI67QyZGJ96smuvKkzsuuZE7hpkYR4y4jHEiiaIxihMxRhMloIAC8tBqjzQhgCgoigvyvX+cAynKaqoa+lR19fm8nqeePsvvnPP99faps9Q5igjMzCy/tql1AWZmVlsOAjOznHMQmJnlnIPAzCznHARmZjnnIDAzyzkHgZlZzjkILHckrZG0ewXt+kp6StIJ1airnRq+JmlZWnN/SYdKWpSO/20nbmdwus6GdHwXSU9IekvSjzprO9Y1OQgsc5LOlvS8pHck/UXSv0naoUrbflzS+YXTIqJfRLyczr9N0g/aWfynwA0R8est3Pbhktq2ZNl0+Z7ADcAX0ppXAuOBien4fVux7lZJR28Yj4hX03V+mE4aB7wGbB8R39rS7Vh9cBBYpiR9C7gO+A6wAzAGGApMS//RdVkRcWZETKlhCbsAfYB5BdOGFI1nZQgwP3zrgXyICL/8yuQFbA+sAf6uaHo/YAVwVjp+G/CDgvmHA20F45cALwFvAfOBLxXMOxt4Evi/wBvAK8Bx6bz/A3wIvJvWMTGdHsCeJO96PwDeT+c/kM7/BDAlrfEV4J8208fe6bZfBZYBNwF9gW2BtcD6dN1rgE90YPlPAm+nta4BHku/B+vT9a5Jl90BmAQsBZYAPwAaCtb/D8CCgu/d/sAdRev5Lkk4B9Aj/XkUfl+OBg4CZgJvpnXeUOvfL7868W+11gX41X1fwLHAOqBHiXmTgbvS4XJBcGr6z3kb4CvpP8jd0nlnp/+0/gFoAL4G/BlQOv9x4PyibQewZzvb3gaYBVwB9AJ2B14GjmmnjxOAqcBOwHbAA8A1pfqxBctv/Odc0L4VOLpg/Fckh7C2BXYGZgBfLfi+LQEOBEQSfkPaWc8m2yrxffkjcEY63A8YU+vfL7867+VDQ5alAcBrEbGuxLylQGMlK4mIX0TEnyNifUTcAywieYe6wX9HxL9Hcnx7MrAbyWGVLXEg0BgR4yPi/UjOJfw7MLa4oSSR7FX8r4h4PSLeAv65VNtSOmH5XYDjgYsj4u2IWE4SLBuWPx+4PiL+FImWiPjvStZdwgfAnpIGRMSaiHh6C9djXVCPWhdg3dprwABJPUqEwW7p/LIknQl8k+RdKyTvSAcUNPnLhoGIeCf5/0q/Lax5CPAJSasKpjUAvy/RthH4GDAr3SYk77wbKtzW1i4/BOgJLC1YfhtgcTo8iORwUmc4j+RE9YuSXgGujogHO2ndVmMOAsvSH4H3gJOB/9wwUVI/4DjgsnTS2yT/EDfYtaDtEJJ35EcBf4yIDyXNJvmHWYlyJzuL5y8GXomIvSpY92skx9n3jYglW7DtcsuXs5jk+zugnb2uxcAe7SzboZPAEbEIOE3SNiQ/z3sl9Y+ItzuyHuuafGjIMhMRq4GrgR9LOlZST0lDSULhNeCutOls4HhJO0naFbi4YDXbkvzTWgEg6RxgeAfKWEZynL/S+TOAtyR9L/0cQYOk4ZIOLNG/9SQhNUHSzml9AyUdU7Du/u1dKlvB8psVEUuBacCPJG0vaRtJe0j6m7TJLcC3JR2gxJ5psJbq92ZJ+ntJjWnNq9LJ6ytd3ro2B4FlKiKuB75PcmXMWyRX4XyM5ETlhneTdwBzSE5gTgPuKVh+PvAjkr2LZcAI4KkOlPAvwCmS3pB0Y4n5k4BPS1ol6b70PMMXgea01tdI/qG297mH7wEtwNOS3gT+C9g7rf1F4G7g5XT9n+jI8hU6k+Sk9nySq6buJTnsRkT8guTKqf8g+d7fR3JSGuAa4LK0rm9XsJ1jgXmS1pB8T8dGxNoO1Gld2IYrK8yqIn1HPx44NCJerXU9ZuYgsBqQdAbwQUT8vNa1mJmDwMws93yOwMws5+ru8tEBAwbE0KFDa12GmVldmTVr1msRUfJDnHUXBEOHDmXmzJm1LsPMrK5IavdT5T40ZGaWcw4CM7OccxCYmeVc3Z0jMLP698EHH9DW1sa7775b61K6nT59+tDU1ETPnpU/98lBYGZV19bWxnbbbcfQoUMpuHOqbaWIYOXKlbS1tTFs2LCKl/OhITOrunfffZf+/fs7BDqZJPr379/hPa3MgkBSH0kzJM2RNE/S1SXa9JZ0j6QWSc+kd6Y0sxxwCGRjS76vWe4RvAccGRH7kdzJ8VhJY4ranAe8ERF7kjxZ6boM6zEzsxIyC4L00Xhr0tGe6av4xkYnkTxaEJLb5x4lv00wsww0NDTQ3NzM8OHDOfXUU3nnnXe2aD2HHHJIJ1dWe5meI0gf6jEbWA48GhHPFDUZSPpYvfQJS6uB/iXWM07STEkzV6xYkWXJZrk29JJfb/LqTvr27cvs2bN54YUX6NWrFzfddNMWrecPf/hDxW0jgvXru/7zezINgoj4MCKagSbgIEkdebJU4XpujojRETG6sbGi552bmbXrs5/9LC0tLTzwwAN85jOfYdSoURx99NEsW7YMgKuuuopzzz2Xww8/nN13350bb/zrM4369fvr47B/+MMfcuCBBzJy5EiuvPJKAFpbW9l7770588wzGT58OIsXL6arq8pVQxGxCphO8pSjQktIHrCNpB4kT4FaWY2azCyf1q1bx29+8xtGjBjBYYcdxtNPP81zzz3H2LFjuf766ze2e/HFF3nkkUeYMWMGV199NR988MEm65k2bRqLFi1ixowZzJ49m1mzZvHEE08AsGjRIi644ALmzZvHkCFD6Ooy+xyBpEaSh4+sktQX+DwfPRk8FTiL5DGEpwCPhR+QYGYZWLt2Lc3NzUCyR3DeeeexcOFCvvKVr7B06VLef//9Ta69P+GEE+jduze9e/dm5513ZtmyZTQ1NW2cP23aNKZNm8aoUaMAWLNmDYsWLWLw4MEMGTKEMWOKr43purL8QNluwGRJDSR7Hv8ZEQ9KGg/MjIipJM+LvUNSC/A6MDbDeswsxzacIyh00UUX8c1vfpMTTzyRxx9/nKuuumrjvN69e28cbmhoYN26dZssGxFceumlfPWrX91kemtrK9tuu22n15+lzIIgIuYCo0pMv6Jg+F3g1KxqMDPbnNWrVzNw4EAAJk+eXKb1po455hguv/xyTj/9dPr168eSJUs6dFuHrsS3mDCz3Lrqqqs49dRT+fjHP86RRx7JK6+8UvGyX/jCF1iwYAEHH3wwkJxEvvPOO2loaMiq3MzU3TOLR48eHX4wjVk2ii8Zbb32hEy2s2DBAvbZZ59M1m2lv7+SZkXE6FLtfa8hM7OccxCYmeWcg8DMLOccBGZmOecgMDPLOQeBmVnO+XMEZlZznX2n06wue+2uvEdgZrnT2tpK3759N957CODcc89l5513Zvjwym6SfNdddzFy5EhGjBjBIYccwpw5c8ouc95557HffvsxcuRITjnlFNasWbPZ9o8++igHHHAAI0aM4IADDuCxxx7bOO+II46gX79+dMbnqhwEZpZLe+yxxyb3Hjr77LN5+OGHK15+2LBh/O53v+P555/n8ssvZ9y4cWWXmTBhAnPmzGHu3LkMHjyYiRMnbrb9gAEDeOCBB3j++eeZPHkyZ5xxxsZ506dPZ/Tokp8P6zAfGjIzAz73uc/R2tpacfvCJ5WNGTOGtra2sstsv/32QHLDurVr15Z9vvCGO5sC7Lvvvqxdu5b33ntvkxvidQbvEZiZbaVJkyZx3HHHVdT2nHPOYdddd+XFF1/koosuqngbU6ZMYf/99+/0EAAHgZnZVpk+fTqTJk3iuuuKH7dS2s9+9jP+/Oc/s88++3DPPfdUtMy8efP43ve+x09/+tOtKbVdDgIzsy00d+5czj//fO6//3769//I49bb1dDQwNixY5kyZUrZtm1tbXzpS1/i9ttvZ4899tiactvlcwR
"text/plain": [
"<Figure size 432x288 with 1 Axes>"
]
},
"metadata": {
"needs_background": "light"
},
"output_type": "display_data"
}
],
"source": [
"# le graphique\n",
"fig, ax = plt.subplots()\n",
"# Abscisses\n",
"x = [10, 30, 50, 70]\n",
"# Ordonnées\n",
"y = [1, 2, 3, 2]\n",
"# On ajoute la courbe\n",
"ax.bar(x, y, label=y)\n",
"# Une legende\n",
"ax.legend(title='Panier')\n",
"# Nom de l'axe des y\n",
"ax.set_ylabel('Effectif')\n",
"# Titre du graphique\n",
"ax.set_title('Quantité et effectifs')\n",
"# Afficher le graphique\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
}
],
"metadata": {
"kernelspec": {
"display_name": "Python 3 (ipykernel)",
"language": "python",
"name": "python3"
},
"language_info": {
"codemirror_mode": {
"name": "ipython",
"version": 3
},
"file_extension": ".py",
"mimetype": "text/x-python",
"name": "python",
"nbconvert_exporter": "python",
"pygments_lexer": "ipython3",
"version": "3.10.10"
}
},
"nbformat": 4,
"nbformat_minor": 2
}