mirror of
https://github.com/gsi-upm/soil
synced 2024-11-14 15:32:29 +00:00
335 lines
225 KiB
Plaintext
335 lines
225 KiB
Plaintext
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{
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"cells": [
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{
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"cell_type": "code",
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"execution_count": null,
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"metadata": {
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"ExecuteTime": {
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"start_time": "2017-11-02T09:48:41.843Z"
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},
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"scrolled": false
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},
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"outputs": [],
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"source": [
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"import soil\n",
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"import networkx as nx\n",
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" \n",
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"%load_ext autoreload\n",
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"%autoreload 2\n",
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"\n",
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"# To display plots in the notebook\n",
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"%pylab inline\n",
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"\n",
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"from soil import *"
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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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"source": [
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"# News Spreading example with SOIL"
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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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"source": [
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"In this example we three different kinds of models, which we combine in five types of simulation"
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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": null,
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"metadata": {
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"ExecuteTime": {
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"start_time": "2017-11-02T09:48:43.440Z"
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}
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},
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"outputs": [],
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"source": [
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"!cat NewsSpread.yml"
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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": null,
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"metadata": {
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"ExecuteTime": {
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"start_time": "2017-11-02T09:48:43.879Z"
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}
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},
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"outputs": [],
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"source": [
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"evodumb = analysis.read_data('soil_output/Sim_all_dumb/', group=True, process=analysis.get_count, keys=['id']);"
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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": null,
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"metadata": {
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"ExecuteTime": {
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"start_time": "2017-11-02T09:48:45.458Z"
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}
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},
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"outputs": [],
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"source": [
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"evodumb['mean'].plot(yerr=evodumb['std'])"
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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": 5,
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"metadata": {
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"ExecuteTime": {
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"end_time": "2017-11-01T13:26:19.361423Z",
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"start_time": "2017-11-01T14:25:57.017418+01:00"
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}
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},
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"outputs": [],
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"source": [
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"evodumb = analysis.read_data('soil_output/Sim_all_dumb/', group=True, process=analysis.get_count, keys=['id']);\n",
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"evohalfherd = analysis.read_data('soil_output/Sim_half_herd/', group=True, process=analysis.get_count, keys=['id'])\n",
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"evoherd = analysis.read_data('soil_output/Sim_all_herd/', group=True, process=analysis.get_count, keys=['id'])\n",
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"evoherdwise = analysis.read_data('soil_output/Sim_wise_herd/', group=True, process=analysis.get_count, keys=['id'])\n",
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"evowise = analysis.read_data('soil_output/Sim_all_wise/', group=True, process=analysis.get_count, keys=['id'])"
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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": 6,
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"metadata": {
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"ExecuteTime": {
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"end_time": "2017-11-01T13:26:20.461665Z",
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"start_time": "2017-11-01T14:26:19.363815+01:00"
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}
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},
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"outputs": [
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{
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"data": {
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"image/png": "iVBORw0KGgoAAAANSUhEUgAAAX0AAAEKCAYAAAD+XoUoAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAIABJREFUeJzt3Xl8FfW9//HX52QlJCGERVFQXKjXLSLGDZequNTW1qW4\nVWURi6UubbULrfdesY+2Wmvd6u96XaBViytaq1770xbh56VaISAiigq2qBEkISEhe05yvr8/Zs7J\nSXKSnED2eT8fj/OYOXNm5nyHo+/55jvf+Y455xARkWAI9XcBRESk7yj0RUQCRKEvIhIgCn0RkQBR\n6IuIBIhCX0QkQBT6IiIBotAXEQkQhb6ISICk9ncBAEaPHu0mTpzY38UQERlUVq9evd05N6Y72wyI\n0J84cSJFRUX9XQwRkUHFzD7p7jZq3hERCRCFvohIgCj0RUQCRKEvIhIgCn0RkQBJKvTNbLOZvWtm\na82syF+Wb2Z/NbON/nSkv9zM7F4z22Rm68xsSm8egIiIJK87Nf1TnXOTnXOF/vv5wFLn3CRgqf8e\n4Gxgkv+aC9zfU4UVEZHdszv99M8FTvHnHwGWAz/xlz/qvOcw/sPM8sxsnHNua0c7+uCLKs69bwWj\nszO8V056y3x2BmP89yOGpWFmu1FkEZFgSzb0HfCqmTngAefcg8Ae0SB3zm01s7H+unsDn8VtW+wv\naxX6ZjYX7y8BRuy1PyOy0tlaWc+7n1dSVtNIc6T9s3sNSE0xDh6Xy9icDMbkZDI2J4OxuRmMyc5g\nbG6mvzyDtBRdrhARaSvZ0D/BObfFD/a/mtkHnaybqCreLsH9E8eDAIWFhe7RK4+JfRaJOCrqwmyv\nbmB7VQOl1Q1sr26ktKrBe1U3ULyjjrc/raCspjHxgYWMtJQQR+6TR/7wdEYNTyd/eAb52dH5lmle\nVjopIf0FISJDX1Kh75zb4k9LzOxPwDHAtmizjZmNA0r81YuBCXGbjwe2dKdQoZCR7wfyl/bI6XTd\ncHOEsupGSqrqKdnZQElVAyVV9Tz+1qeEmyM0NEV4b8tOyqob2FnflHAfZpBiRmqKUbC3d5IYGXdS\nGJWdzsislvnrH3+bUMh46urju3NYIiL9rsvQN7PhQMg5V+XPnwn8HHgBmAnc5k//7G/yAnCtmT0J\nHAtUdtaev7vSUkLsOSKTPUdktlr+/dO/1G7dcHOEHTWNlNU0Uh6dVjdQXtPIk6s+I9wcwQw+Lq2m\nfHMjO2obSdDKBEBKyJj22+WMzclkbG6G18wUm29Zlp2RqusQIjJgJFPT3wP4kx9cqcDjzrn/a2ar\ngKfNbA7wKXChv/7LwFeBTUAtMLvHS72L0lJCXrt/bma7z24486B2yyIRR2VdOHaSiL7+a/kmws0R\nvrRHDiVVDaz5dAclOxtoaIq020fIvO89fO8RjPGvN3gXp73rEPHL0lN1HUJEepd5nWz6V2FhoRvs\no2w659hZ30Rpm2amRSs2E26OcNCeObHrERW14YT7SA15TUyTJ+TF9VzKYNRwvzdTTgajs735mYtW\nAqiJSSTAzGx1XDf65LZR6Pe9hqZmytpcmC6tauCP//iEcHOEA8dms726ke1VDVQ1JL4OEb0Gcdje\nI2IXpUdlexerW+bTGTU8g+ueWEPIdA1CZKhR6A9B9eFmymq8E8D26uirkUff3ExTs+PfxuVQVt1y\nnSJRV1fwrkGMG5HJiGFp7V65/jQvy5v++i8fkJoS4umrj1eTk8gAptAPuEjEsbPeuwZRVt1IeU0D\nZTWN3L/sY8KRCCccMJrKujCVdWEq/GllXZjGBNciokZmpTE2JzN27WFMTkbsXogx2Rnc+pcPSEsx\nlnxnKiF1exXpU7sS+gPiyVnSM0IhIy/Lu+/ggLgHqL2w1usxe+fFkxNuVx9ujp0AKuvC3PTcu4Sb\nI5w/ZTwlVfWxZqhVm2sorUp8wfrAm16OdWvNb9O8FJ2/77VNpKUYD804mrysNDLTUjo8losfeBPQ\nNQuRnqaavnSLc46qhiZKqxoo2dnAfzz/LuFmxzcm7+V3gY12h/W6wlbUhenoP7HMtBAj/ZNU3rA0\nRg5Pi82/tG4LqaEQ88/+N/9E1tIc1fZkoROEBJWad2TAaWqOUFEXprymke898TZNEcfsE/ZjR20j\nFbWNVNSG2VEb9ubrvOmO2nCH1ybAO1nkDUv3TgJZaWzcVkVqKMSFheMZld3Sw2l0dkbsxrroHdc6\nQchQotCXIcE5x/T/foOmZscvzz+citowFXXeCSJ2TaK25f264kqaIhEijoQni5ARa2raWllHWkqI\ncwrGkZeVzsisNEb6Q3Hk+39RjByezvD0FC558B+AThAycCn0JZCitfcnvn0cO+vDsR5OZdWNbK9u\noKy6ge1+D6g3Pi4j3BwhMy2FyrrE90sApKV4fxmkhkJMnpDXesym7IxW4zeNys4gb1galz6kk4T0\nLYW+SBfim3ea/Tuuy2saY81KO2ob2VHjzT+7upimSIQDxmTHhu3o6EQRMgiZN8jf4eNHMCpu/KaR\nWa3Hb8ofns73nkh+/CY1SUlH1HtHpAvxwZkSN7BfIm9/uqPdNm3Hb9ruj91UXtPIU/74TQCbSqop\nr+l8/KaQwdRbl8YuVI/MSmdEVprX5JTlXbMYmZVOVX2Y1FCIkqp6cjPV60l2j0JfpAOJgrOz8ZtW\n/qu83XbR8ZvKa1vGbtpR08h9yzbR1OyYeuDo2PWJD77Y6V+/SHwh+5hfLgUgPTVEbmYaucNS/Wka\nuZmpjBiWxqfltaSGjKeLPiM/K71Vs1Tbwf90gggmNe+I9IPOAjfaLbaixmtu+vGSd2iOOGadsB87\n672L1zvrmthZH2ZnXZid9U1U1YW9G/OqG9s/vMKXnhJi5PA077kSw9P4YGsVqSnGxYUTvBPHsDRy\nM6N3aafG7tbOTk/t9vUKnVD6hpp3RAaJzsLQzLwafGYa+4zKIi/La366/Lh9u9zvRf/9BhEHd108\nOfaXRZn/14XXJNXSHFXd0ERTxPG7ZZs6vJcCvGYoMyM1ZHzjvhX+kB3+vRVZaYzw5/Oyoq90ws0R\nUpO8Q1sniL6l0BcZ4LoThk9/Z2psfkJ+Vqfrxvd6qm5sorI23PovibqW908XfUZTsyN/eDoVtWGK\nd9Sxo9a7sN3ZCePwBa/Erle0PVFEr11U1DaSmhLis/Ja8oenk5We0uEzKHSC2H0KfZGAig/O6F8W\nHYler/jD7GNaLY9EHFX1TbH7KKI32N356kc0RRxnHLJHrGdURV2YT8pq2FHTmPApdifdvgzwrlnk\nZ3m9n/KHeyeGaG+oL3bWkxYyVmzczkj/s/zh6QkvbnfnBBGkk4lCX0S61FEYhkLGiCzvzuh9R7Us\nf/ytTwFY8I1DE24X7S5bUdvItY+voSniuOqk/dlR00i532022gy1pWIn5W26y16+8K1W+8tMC/k3\n10Wfe53G5u01pKYYi1b8K9b05A3l0TKsR1pK90eRHewnCIW+iPS4rgIxvrtsjv8XxkWFEzrdpqk5\nwkUPvEm42fHvXzu45b6KuHsroieNzyvq2O4PNf7zl97vcJ/ZGd4F6x21jaSGjGsWr0nYbXbkcO9k\nMTIrDedctx6BOtBOEgp9EelXyYZhakqItJQQaSlw7P6julz/4gfexDnHgzMKY01P0b8uvGk4NsTH\nax+U0NTsuuw2G5USMk647TWyM1LJyUwlOzOVnMw0sjNSyc1MjVueRnlNIykh493iSnIyU/1XWsJn\nVexKk1R3KfRFZNDobm3ZrGW48c60Ddu23WYr4sZ7evD1f9IUiXD8AaOoqg9TVd9EeU0jn5TVUlXf\nRFV9OOHw41+/b0Wr9xmpIXIyvXsssv2TwUfbqkgNGbe8+B45Gd7y7Iy0lhNLbFkqTc0dPwejMwp9\nERmSunOCaLtu226z8V5+dysAd1x4RIf7a2yKUN3QRHV9E99dvJrmiOMHZ3yJ6oam2Imhqr7Ju8fC\nn6+qD1MfjtAccSwpKqa
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"text/plain": [
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"<matplotlib.figure.Figure at 0x7fa48c26df98>"
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]
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},
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"metadata": {},
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"output_type": "display_data"
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},
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{
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"data": {
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},
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"output_type": "display_data"
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{
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]
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},
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"metadata": {},
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"output_type": "display_data"
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},
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{
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"data": {
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||
|
"image/png": "iVBORw0KGgoAAAANSUhEUgAAAX0AAAEKCAYAAAD+XoUoAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nA8CT18wFoDUQYndVI9v
|
||
|
"text/plain": [
|
||
|
"<matplotlib.figure.Figure at 0x7fa460d184e0>"
|
||
|
]
|
||
|
},
|
||
|
"metadata": {},
|
||
|
"output_type": "display_data"
|
||
|
},
|
||
|
{
|
||
|
"data": {
|
||
|
"image/png": "iVBORw0KGgoAAAANSUhEUgAAAX0AAAEKCAYAAAD+XoUoAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nMnznTx/iDYS4dP4kttZ
|
||
|
"text/plain": [
|
||
|
"<matplotlib.figure.Figure at 0x7fa46017c0b8>"
|
||
|
]
|
||
|
},
|
||
|
"metadata": {},
|
||
|
"output_type": "display_data"
|
||
|
}
|
||
|
],
|
||
|
"source": [
|
||
|
"for i in [evodumb, evohalfherd, evoherd, evoherdwise, evowise]:\n",
|
||
|
" i['mean'].plot(yerr=i['std'])"
|
||
|
]
|
||
|
},
|
||
|
{
|
||
|
"cell_type": "code",
|
||
|
"execution_count": 10,
|
||
|
"metadata": {
|
||
|
"ExecuteTime": {
|
||
|
"end_time": "2017-11-01T13:27:56.226662Z",
|
||
|
"start_time": "2017-11-01T14:27:55.987887+01:00"
|
||
|
},
|
||
|
"scrolled": true
|
||
|
},
|
||
|
"outputs": [
|
||
|
{
|
||
|
"data": {
|
||
|
"image/png": "iVBORw0KGgoAAAANSUhEUgAAA2IAAAEXCAYAAADP3/fJAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nF1lGiBOIxZheZB1ZG1g
|
||
|
"text/plain": [
|
||
|
"<matplotlib.figure.Figure at 0x7fa46019e748>"
|
||
|
]
|
||
|
},
|
||
|
"metadata": {},
|
||
|
"output_type": "display_data"
|
||
|
}
|
||
|
],
|
||
|
"source": [
|
||
|
"diff = evodumb['mean']-evohalfherd['mean']\n",
|
||
|
"m = evodumb['max'].loc[0].sum()\n",
|
||
|
"diff = diff / m\n",
|
||
|
"diff.plot(yerr=(evodumb['std']+evoherd['std'])/m,\n",
|
||
|
" title='Comparing the Herd and Dumb behaviours: normalized difference and error in number of agents in each state when using 50% herd agents.');"
|
||
|
]
|
||
|
},
|
||
|
{
|
||
|
"cell_type": "code",
|
||
|
"execution_count": 11,
|
||
|
"metadata": {
|
||
|
"ExecuteTime": {
|
||
|
"end_time": "2017-11-01T13:28:05.554284Z",
|
||
|
"start_time": "2017-11-01T14:28:05.324360+01:00"
|
||
|
}
|
||
|
},
|
||
|
"outputs": [
|
||
|
{
|
||
|
"data": {
|
||
|
"image/png": "iVBORw0KGgoAAAANSUhEUgAAA2oAAAEXCAYAAADcCLc9AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nXAty//zMp/t7wP95/99
|
||
|
"text/plain": [
|
||
|
"<matplotlib.figure.Figure at 0x7fa45f75d978>"
|
||
|
]
|
||
|
},
|
||
|
"metadata": {},
|
||
|
"output_type": "display_data"
|
||
|
}
|
||
|
],
|
||
|
"source": [
|
||
|
"diff = evodumb['mean']-evoherd['mean']\n",
|
||
|
"m = evodumb['max'].loc[0].sum()\n",
|
||
|
"diff = diff / m\n",
|
||
|
"diff.plot(yerr=(evodumb['std']+evoherd['std'])/m,\n",
|
||
|
" title='Comparing the Herd and Dumb behaviours: normalized difference and error in number of agents in each state when using 100% herd agents.');"
|
||
|
]
|
||
|
},
|
||
|
{
|
||
|
"cell_type": "code",
|
||
|
"execution_count": 13,
|
||
|
"metadata": {
|
||
|
"ExecuteTime": {
|
||
|
"end_time": "2017-11-01T13:32:12.118102Z",
|
||
|
"start_time": "2017-11-01T14:32:11.479970+01:00"
|
||
|
}
|
||
|
},
|
||
|
"outputs": [
|
||
|
{
|
||
|
"data": {
|
||
|
"text/plain": [
|
||
|
"<matplotlib.axes._subplots.AxesSubplot at 0x7fa45f950e10>"
|
||
|
]
|
||
|
},
|
||
|
"execution_count": 13,
|
||
|
"metadata": {},
|
||
|
"output_type": "execute_result"
|
||
|
},
|
||
|
{
|
||
|
"data": {
|
||
|
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"text/plain": [
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"<matplotlib.figure.Figure at 0x7fa460d17c18>"
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]
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},
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"metadata": {},
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||
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"output_type": "display_data"
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},
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{
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"data": {
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"text/plain": [
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]
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},
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"metadata": {},
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||
|
"output_type": "display_data"
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||
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},
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{
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"data": {
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]
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},
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|
"metadata": {},
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||
|
"output_type": "display_data"
|
||
|
}
|
||
|
],
|
||
|
"source": [
|
||
|
"(evohalfherd['std']/m).plot()\n",
|
||
|
"(evodumb['std']/m).plot()\n",
|
||
|
"(evowise['std']/m).plot()"
|
||
|
]
|
||
|
},
|
||
|
{
|
||
|
"cell_type": "code",
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"execution_count": null,
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"metadata": {
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"collapsed": true
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},
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"outputs": [],
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||
|
"source": []
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||
|
}
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|
],
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"metadata": {
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"kernelspec": {
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"display_name": "Python 3",
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"language": "python",
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"name": "python3"
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},
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"codemirror_mode": {
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"name": "ipython",
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"version": 3
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},
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},
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"colors": {
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"navigate_num": "#000000",
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"navigate_text": "#333333",
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"running_highlight": "#FF0000",
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"selected_highlight": "#FFD700",
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"wrapper_background": "#FFFFFF"
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},
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"moveMenuLeft": true,
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"nav_menu": {
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"height": "30px",
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"width": "252px"
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},
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"navigate_menu": true,
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"number_sections": true,
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"sideBar": true,
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"threshold": 4,
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"toc_cell": false,
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"toc_section_display": "block",
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"toc_window_display": false,
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"widenNotebook": false
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}
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},
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"nbformat": 4,
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"nbformat_minor": 2
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}
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