{ "metadata": { "name": "", "signature": "sha256:d93d805b747dacda9f0b495c10a8afc098e49517fdabf0e352e71195de9fb7a5" }, "nbformat": 3, "nbformat_minor": 0, "worksheets": [ { "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "This notebook was put together by [Jake Vanderplas](http://www.vanderplas.com) for PyData Seattle 2015. Source and license info is on [GitHub](https://github.com/jakevdp/sklearn_pydata2015/)." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Density Estimation: Gaussian Mixture Models" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Here we'll explore **Gaussian Mixture Models**, which is an unsupervised clustering & density estimation technique.\n", "\n", "We'll start with our standard set of initial imports" ] }, { "cell_type": "code", "collapsed": false, "input": [ "%matplotlib inline\n", "import numpy as np\n", "import matplotlib.pyplot as plt\n", "from scipy import stats\n", "\n", "# use seaborn plotting defaults\n", "import seaborn as sns; sns.set()" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 1 }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Introducing Gaussian Mixture Models\n", "\n", "We previously saw an example of K-Means, which is a clustering algorithm which is most often fit using an expectation-maximization approach.\n", "\n", "Here we'll consider an extension to this which is suitable for both **clustering** and **density estimation**.\n", "\n", "For example, imagine we have some one-dimensional data in a particular distribution:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "np.random.seed(2)\n", "x = np.concatenate([np.random.normal(0, 2, 2000),\n", " np.random.normal(5, 5, 2000),\n", " np.random.normal(3, 0.5, 600)])\n", "plt.hist(x, 80, normed=True)\n", "plt.xlim(-10, 20);" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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"text": [ "" ] } ], "prompt_number": 2 }, { "cell_type": "markdown", "metadata": {}, "source": [ "Gaussian mixture models will allow us to approximate this density:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "from sklearn.mixture import GMM\n", "clf = GMM(4, n_iter=500, random_state=3).fit(x)\n", "xpdf = np.linspace(-10, 20, 1000)\n", "density = np.exp(clf.score(xpdf))\n", "\n", "plt.hist(x, 80, normed=True, alpha=0.5)\n", "plt.plot(xpdf, density, '-r')\n", "plt.xlim(-10, 20);" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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81V5DXQ3Xz5pAUVFxSr9mbk0wvnqZvftPSkb9+Ti2b0tpPSLS+3Qa1qZpxoC7jzi86Sjv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\n8UdBvF5323rejlAj1zzyX+SbH2GefSE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"text": [ "" ] } ], "prompt_number": 3 }, { "cell_type": "markdown", "metadata": {}, "source": [ "Note that this density is fit using a **mixture of Gaussians**, which we can examine by looking at the ``means_``, ``covars_``, and ``weights_`` attributes:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "clf.means_" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 4, "text": [ "array([[ 4.5601338 ],\n", " [ 0.0861325 ],\n", " [ 3.01890623],\n", " [ 6.87627234]])" ] } ], "prompt_number": 4 }, { "cell_type": "code", "collapsed": false, "input": [ "clf.covars_" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 5, "text": [ "array([[ 30.34748627],\n", " [ 4.30521863],\n", " [ 0.19750802],\n", " [ 14.78230876]])" ] } ], "prompt_number": 5 }, { "cell_type": "code", "collapsed": false, "input": [ "clf.weights_" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 6, "text": [ "array([ 0.27613209, 0.48308463, 0.11612442, 0.12465886])" ] } ], "prompt_number": 6 }, { "cell_type": "code", "collapsed": false, "input": [ "plt.hist(x, 80, normed=True, alpha=0.3)\n", "plt.plot(xpdf, density, '-r')\n", "\n", "for i in range(clf.n_components):\n", " pdf = clf.weights_[i] * stats.norm(clf.means_[i, 0],\n", " np.sqrt(clf.covars_[i, 0])).pdf(xpdf)\n", " plt.fill(xpdf, pdf, facecolor='gray',\n", " edgecolor='none', alpha=0.3)\n", "plt.xlim(-10, 20);" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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U9fZZg4K1SCtSsJZ5Fb3rDgBeWXdq2fOS8dkPUJlUvGLzdKPMpBk8EJv7PnYR\nmV8K1jKvInffiWcG2LXmxGnPyWSSZLOZWa+L52bJzlF2XXFBllLN4PmlTpVZi7QeBWuZN0Z/P+HH\n/8jgEUdPBKJSUom5W7Urk5qbXa2qyayLNvMYbwYfVmYt0moUrGXehO5ej+H77CyTVWezmTkdqe15\nLpl0ctbfp1KfdalzdvdZK1iLtBoFa5k34fW3A5QN1nOV6RZKJecgk6+ib7xo563u/NQtNYOLtBwF\na5kf6TRt996Ns/8BjO1zQMlTXDeLOwd91VNlnTTOLGfzVWXW3jTN4JpnLdJyyq4NblmWCVwNHAWk\ngYts295SUH4G8HkgC3zPtu3v5K/5DvAqwAM+YNu2PUv1lwWq7Q8bMONjjL77PDCMkuc46cQc12q3\ndGKUtp7wrN3f971pv+9xnj95pbasmsFFWlalzPpsIGTb9lrgEuDK8QLLstqArwCnACcCH7QsawVw\nKtBh2/bxwL8Dl89GxWVhC62/DYDkm0tP2fI8d85GZpeSyaRwZ7CrVzmVdtyaOG9qZt2Zn7qlZnCR\nllMpWB8H3A5g2/ZDwOqCssOAZ2zbHrFt2wEeANYBSaDHsiwD6AHmvh1TmpvvE15/B15XN6nVry95\nSnoO5zyX5pOepf7yaprAS54XCOBEO9VnLdKCKm2R2Q0U7snnWpZl2rbt5csKf2uMkgvONwLtwGZg\nGXBGNRXp6+uqts4tbVE8pyeegG3Pwbnn0rfXMnpGskSiuzfw8H0fJzVANBrCMEyi0VDRLTy3fBlQ\n13WFZabp0N3djmEYuNkIhmnS0zN5o5Hpjpcry2adqr63zo4QHV1Tru1ZQnh0pKE/B4viZ2qO6FlV\nR8+p8SoF6xhQ+NTHAzXkAnVhWRcwDHwG2GDb9qWWZe0N3GNZ1hG2bZfNsPv7524u7ULV19e1KJ5T\n5Lob6ARi697MYP8oI7EkGWd3/20mk2RsNEEikcEwTQyz+EenUllHRzuJRO3XTS3zjUHC7VFisdz+\n2aY5eVrXdMfLlWWdTFX1iMUSZL3JwTzd0UX4pecb9nOwWH6m5oKeVXX0nKpT6weaSs3gG4DTACzL\nWgNsKijbDBxiWdZSy7JC5JrA/wB0sDsbHwLagEBNtZJFLbz+NnzTJDNNf/Vs7KxVr3RqrOH3rLsZ\nnNySo2YiARn1Lom0kkrB+kYgZVnWBnKDy/4/y7LOsyzrA/l+6k8AdwAbge/atv0ScAWwxrKs+4G7\ngc/atj3mCevkAAAgAElEQVT7q0zIgmAMDBB89GGyq1+Pv2xZUbnnurO6YUetsk4aN9vY/aO9SkuN\nljkv05VfcnRosKF1EpHmVrYZ3LZtH7h4yuGnCspvAW6Zcs0wcE6jKigLn+d5JJO5z2sdv70Zw/MY\nPfnNxONxEonEpAwyN6hrPgeWFWv0QLOZZNaZJUuB3IceVu7R0HqJSPOq1GctMmPJZJJHnthOuD3C\nMTfdCsCfDzmW0S0DjAwP0h6JEs3vjjlbI7BnIpNO4NNG+VnR1as6WJfKrHvymfXgAG5RqYgsVgrW\nMifC7RGiwSArHt1AYs99yB56JBHDIJXcvfCJk0nhebMzt3kmPM/F9XzMQPGI73pU3HFr/LwSU9fS\nPb0AmAO7GlIXEVkYtNyozJklmx6lLT7GrrVvKrl6V2YeVyyrxMk0bthFtfPHSzaD5zNrY2CgYfUR\nkeanYC1zpu+BuwHoP+5NRWW+583Jblf1ymYzVWfEldTSZz01sGeUWYu0JAVrmRu+T9+Ge8hGOhh6\nbfGqZZlMsuogNi98H6dBy5/WEvSLg/XuPmsRaR0K1jInOl94luiLzzPwhhPwQ8UbZGRSzdsEPq5R\nTeG1fCiZeu54n7WhzFqkpShYy5xY+eDvAehfW9wE7nnurG9J2Qiem23InOuagvWULNzpzmfWA5pn\nLdJKFKxlTqx88Pf4hsGutScVlWUzKZptbvV00g0YBFftoihQHNi9UAivq0t91iItRsFaZp05PETv\nX//EyKtfi7N0eVF5o/qC50Ijmutr2U2sVBbuLu3FUJ+1SEtRsJZZF/n9vZieW3IUuOtm8WZp3+jZ\n4HlZsjNoss8F3xqCdYks3Otdlsus53ULURGZSwrWMusi99wFwK4SwTq7gLLqcTNpCve92gJsqSzc\n7e3FcByMMe1sJNIqFKxldjkOkd/dQ2LFKsYOOrSoONtEm3ZUy0kna2rKLlTr9LSSzeC9uQ1QtDCK\nSOtQsJZZ1fbIQwRiI+xcc2LRqmVZJ4PnLbwVrj3Prbsp3KsxWJc631uqhVFEWo2Ctcyq0B23AbBj\nzUlFZc28vGgl9da91lXQSp0/nllrYRSR1qFgLbMqdOfteNEoA689tqhsYQfr+prCa72m1Plefh9w\nY5cya5FWoWAtsyaw9RmCzzxN8vh1eFNWLXOc9IJsAh/n+15dU84a0mfd1wdAYOeOmt9fRBYmBWuZ\nNaH1twOQfNMpRWVOE2/aUa16voeGNIOvWAmAqWAt0jIUrGXW7A7WbykqW8hN4OPqaQpvRGadXbEH\nAOYOBWuRVhGc7wrI4uB5Hsnk7kzTjI2w/MGNpI96LaMdnfgj8Ymyhd4EPs73PVw3gxmI1HBNA/qs\ne3vxg0Fl1iItRMFaGiKZTPLIE9sJt+cC15733sa+2SzPvu54HnvyRdojUaLR3LmLIasel3VStIVr\nCda1Z9a+72MUTnszTbwVKxWsRVqImsGlYcLtESKRKJFIlD0f3QDA8IlvJRxun3TeYuivHpd1MrWt\n9V1jnzVMk12vzAdrLTkq0hIUrKXhjGyW5X/4Ham+PRg95NWTyhZLE/g43/dws5mazq/nPabyVq7C\nyGQwhrRVpkgrULCWhut54k+EYsPsWnty0apliymrHlfLamZ1zc0uyMY9zyORSJDOz7VOP/cc8Xh8\n4quW7TdFZOFQn7U03PINdwPQf/ybi8oWU3/1uKyTKu5XnsZMM+tMOsUf7RhmWzfdwLbHn6I/mJt3\nnU4lOfbwveno6Kj5PUSkuSlYS8P1bbgXN9zO4DFrJx1fqGuBV+L7PlknTVuoveK59WS+U7PxcLgd\nb+VeAHSNxhiLRGu+p4gsLGoGl4aKvLiNzueeZnD1cXhTBpYtxqx6XKaK5v1a97KefN1k6eUrAAjv\n2lnz/URk4SmbWVuWZQJXA0cBaeAi27a3FJSfAXweyALfs237O/njnwXOANqAq2zb/uHsVF+azfKN\n9wDQX2Lvaiez+PqrxzmZJL6/pGxTeCO31dwdrF+p654isrBUyqzPBkK2ba8FLgGuHC+wLKsN+Apw\nCnAi8EHLslZYlnUS8Mb8NScBB85CvaVJ9T2Q66/etfbkScfdrIPrZuejSnOimm0z65m2lbuuOMgr\nsxZpLZWC9XHA7QC2bT8ErC4oOwx4xrbtEdu2HeABYB1wKvAXy7J+DdwM3NTwWktTCsbHWPr4w8Ss\nI0j37TGprN79nxeSTIWWg3oGl013XWbJMry2EO39WhhFpBVUCtbdQKzgtZtvGh8vGykoGwV6gOXk\ngvq7gA8DP21MVaXZ9T22ETPrlGwCz9axQ9VCU2lamtfAYI1pklq5ivaXt9d1TxFZWCqNBo8BXQWv\nTdu2x39zjEwp6wKGgQFgs23bWeApy7JSlmUtt2277Oa7fX1d5Yolr1mfUzRq0v7IfQAk33oaPT27\nl+DMpNrwnADRaKjoOs8NYRhmw8tydZr995t6PBoxactvB+pmIximOfEsUkkPzwnV/F7t7aGJexTe\n09l7X6IP3s/SkI8XiRJq8+nr66p56laz/kw1Iz2r6ug5NV6lYL2B3ECx6y3LWgNsKijbDBxiWdZS\nIE6uCfwKIAV8DPiKZVl7Ah3kAnhZ/f2jtde+xfT1dTXtc4qPjLDnA/eSWr6Sl/c6BEZ2Z5lDg8Nk\nMhkMs3ilr0Qig2GaDS/r6GgnkZj995t63OsfJNq5BIBYLIlhmphm7lmkkomJOtXyXo5jQiBZdM+x\n5avoAdJPbyWx30Ekk0n6+0dJJKrP4Jv5Z6rZ6FlVR8+pOrV+oKkUrG8ETrEsa0P+9QWWZZ0HdNq2\n/W3Lsj4B3EGuOf27tm2/DNxqWdY6y7Iezh//J9u2tYDxIhf+46OERkd44c2nF61a1gr91eNyI96X\nlCyrt896uubz5Kq9AYi8vJ3EfgfVdW8RWRjKBut8kL14yuGnCspvAW4pcd1nGlI7WTCid60HYNdx\nk1ctc90srutgmK0xpd91s2SzGYLB4ubt+keDl74utUduYZSI+q1FFr3W+A0qsy5613qy7ZGiVcsW\n41rglUz3PTdynjVAMh+s23e8WNd9RWThULCWGQs88zRtz26hf/VavHB4Ulml6UyL0XSrmdU/dat0\nkE/uuQ8AkZe21XVfEVk4FKxlxkJ33AbAjjUnTTqeWyik+u0jFwvXdXBdp+h4vcEa/JJN4enlK3Hb\nI3Rse7bO+4rIQqFgLTMWWn8bvmGw8w3rJh3PZZitObawVHZdb581TDPIzDSJ73MA0e3PgbbGFFnU\nFKxlRozBAdoe+gPpo48hs3TZpLJW7K8eV+p7r7fPOn9xycOJfQ4gkEpq2VGRRU7BWmYkdNd6DM8j\n+ZZTJx33PA+nhaZsTZXNFm8HWn8z+PTTtxL7HABA9AU1hYssZgrWMiOh9bcDkJgSrHPzjVuzCXzc\n1PnlM2kGn+7axL65YN2xbWvd9xaR5qdgLfVLpwndcxfufvvjHPyqSUXV7O+82BUGa9/38Wfw4WW6\nrDy+X25Tu45nn6n73iLS/BSspW5tGx/AHBsl/bbTJq1a5nse2czi37ijEregKXwmTeDlrh874FX4\npknXM0/O6P4i0twUrKVu4fW5KVuZt5426biTSc0oi1xMxrPrmTSB564v/Ty99giJvfenc8vmaQeh\nicjCp2At9fE8Qr+9BW/JEpw3vHFSUSsuhDKdiWA9w0BaLjMfPfgw2sZGibzy8ozeQ0Sal4K11CX4\np8cIvPxSLqtua5s47vsejprAJ+Sawr1ZawYHGDv4UAC6t9gzeg8RaV4K1lKX8K03A5A+/cxJx51M\nesaBabFxMskGNINPf33sVYcDsOSpJ2b0HiLSvBSspXa+T+jWm/CjHWROPHlSUSadmKdKNa9MOjnt\nPOlqlbt+5PCjAeh94vEZvYeINC8Fa6lZ4G9PEHx2K+lT3gqRyMRx3/fVBF6Ck0nhuW7lE8so1+ed\n7e5hbP+DWbp5E8zwfUSkOSlYS83Ct94EQOb0MyYdzzpqAi/Nn/Ggu0rN6CNHHE0wmSBkawqXyGKk\nYC01C996M34oRKZo1TJl1dOZafdApQ9BQ0cdC0D7HzbM6H1EpDkpWEtNAlufIfjkE2ROehN+Z9fE\ncd/3yToK1tPJZlLTzpWuhu97ZZvCB19/PACR399b93uISPNSsJaahG69BYD0O86adDyVSs14xPNi\n5vse2ezM9vYul12n+/YgdsAhhB9+CJKa5y6y2ChYS03Ct/4GPxAgc+rbJh1PJjUKvBzf93FnuAtZ\npabwna8/ATOdIvS7e2b0PiLSfBSspWrmSy/S9sfHcNaegN+7e+9q3/cVrCvIZdbOjFYyq9SM/tK6\n3BiC8G9uqPs9RKQ5Bee7ArJwhG+6EYD0OyYvhJJKJYv2bpbJxnfdcp0MwVC4zntUGGR28GFk9tmX\n0G23kti5E7+zc1J5JBLBNPX5XGQh0v9cqVr41zfgBwJF/dXxeHyearSA5DPqqXtc13SLCmMCMpk0\nTx53CmYyyci3f8imLQMTX488sZ2k+rJFFiwFa6mK+dyztP3xMVJrj2csGiUejxOPxxkbG2NwcBfp\ndFo7bU3D972JJ5PNOnWPCq9mFbTnT/97vGAbB950HZFwO5FIlEgkSrg9UvFaEWleagaXqow3gf/1\ndet4ecvAxHEnkyIxOkI8PkYoHCZcXwvvolbYT+3j1z0qvJoFZ9K9y3n51DPZ67c3sMedN7HjrWfX\n9V4i0lyUWcsknudNZM2FX6EbrscPtvHKSW+dyNYikSim4RMKh2kr2HlLJps6qKzepvBqp8Zt/ceP\n47WFOPi/r8TIzGwEuog0h7KZtWVZJnA1cBSQBi6ybXtLQfkZwOeBLPA927a/U1C2AngMeLNt20/N\nQt1lFiSTSR55YvukZtPO57ew/5NP8MLqtSRC7YTyx7UWeHWmZsTZrANGEGOG95lOao+9eOHvzme/\n677LgT+4ii0f/GSN7yQizaZSZn02ELJtey1wCXDleIFlWW3AV4BTgBOBD+YD9HjZtwCNPFqAwu2R\nSdnzfhvuBuDFEyfPrXYyKa0FXoXi6Vo+nuvUfp8aFp3ZcuFHSa7amwN+fA09mx6t+b1EpLlUCtbH\nAbcD2Lb9ELC6oOww4Bnbtkds23aAB4B1+bIrgGuAlxtbXZlzvs8ed92CG27npTesm1Sk7TCrVGJu\ntVtHv3Ut22y6HV389XNfBuA1n/sIkZ0v1fx+FeszTZfJ+JenFe1EGqZSsO4GYgWv3XzT+HjZSEHZ\nKNBjWdb7gX7bttfnj9fa2idNpPOZzXRs20r/cW8iG4lOHPc9DyetqUDVKNX64LrZmuem17qc6/Br\nX4/90c8RHuhnzWc/RGBHYz87j3eZFE4R01QxkdlRaTR4DOgqeG3atj3+G2NkSlkXMAx8FPAty3oL\n8Frgh5ZlnWXb9s5yb9TX11WuWPJm+zlFoyY9/Qki0Vyf9T733gzA6BnvpLs7gmGa9PRESCbGiER3\nDyrz3BCGYRKNhoruOR9lue9l9t+vmmtME/An/1fzvSChNqOm9woEgpjB9ol/g6ncbKSoLHbRxbwU\nG2DP732Tjvecg3n33XDQQZOuq/dnKho1WbGil0g0WlSWTCTo6+uio6Ojrns3K/2eqo6eU+NVCtYb\ngDOA6y3LWgNsKijbDBxiWdZScn3T64ArbNueWOvQsqx7gQ9VCtQA/f2jtda95fT1dc36c4rH44zE\nkmQcAyObpffmX+J09fD8a48jFhvFME1MM8noyCBOZndTbiKRwTBNDLO4eXc+yjo62kkkZv/9qrkm\nYPg4TnZSWTqdJZuNE27vrvq9DBwI+BP/BlPFYsmSZSMXfoIRx+OwH1+De+yx9H/1m6ROPBnY/TNV\nz+pmhT8rUyWTSfr7R0kkFk9T+Fz8/1sM9JyqU+sHmkr/O28EUpZlbSA3uOz/syzrPMuyPpDvp/4E\ncAewEfiubdvqo15Elj18P+HBXew45Qz8giUyPc/F0ZSgqk23WIznuTU1hfv49a0tbhj85dwLePDD\nn4KxMVZe8F7Sn/8Cf7F38OjfdqrJWmQBKJtZ27btAxdPOfxUQfktwC1lrj95RrWTebXq9txCKC+9\n/e8mHc8NLNNqZdUq19eczaQJtRc3I097L98DAnXV44Uz3o2x+jiO+txHsH7y/9jzwd+x7T+/ysjy\nfeq6n4jMHS2KIiUFR2P03b+esf0OInbYUZPKMimNAq9FuWy41gVSZrJrF0DssKN48Ae3sv3M99D1\nzGZe/Q+n85orLyOwc8eM7isis0vBWkpaec+tBDIZXn77O8HY3Sfpudm6l8tsWWUCrOu5uNnstOXF\nt5p5H3C2q5snP/O/efS/fkrywEPY77ZfsddJb6Tj8i9gvPLKjO8vIo2nYC0l7Xnbr/ANg5enrC2t\nFctqVynAOk4Nz3SGmXWhoWPeyF9/eRePf+Lf8Lp7iH79SpYdczidn/wYgWeebtj7iMjMKVhLkY7t\nz7PkL48xeMxa0itWTSqrKbBIfh/r8lwnU3XzdsNXjAsG2Xbau3jxdxsZ/eKVeHusIvLj79O79hh6\nzno74Z9fC9oCVWTeKVhLkX3W/xqAl06bPLAsm83g17iQR6urJrh6voebrW750VoXRqmWH4mSuvAD\nDD74J0a+80Myx68j9IcNdP/PD7PsiEPo+sD7Cd/4S4zRWOWbiUjDaYtMmcxx2Pf2G3E6u3jlxLdO\nKsqqCbx2VWbM2UyKYFvxAinFt5vlecuBAJkzzyFz5jmYzz1L+3U/pf2GX9D+m1/R/ptf4YdCZE44\nEeekN5E5dg0Els9ufUQEULCWKaJ33UH74C62vet9eAU7b/m+R9ZJTRpsJpX5vl/VertO1iHseRgV\nFiaZ6WjwWnj7H0Diks+R+MylBP72BOHf3kz4t7cQvvtOwnffSSewrHc5Q6uPY3D1WgZf90ZSq/ae\ns/qJtBIFa5mk69ofA7D9rPMmHc+kk7nAo2BdE5/qgjX4OE6aULh4GdFJZ83HLmeGgXv4ESQOP4LE\npz6L+eJ22u7/PebddxK87/esWv8bVq3/DQDJPfZi6Og17DzydQTOOAWsQ2t6K8/zyi7QUs9KayKL\ngYK1TDCf3UrkgfsYOPxo4ge+alJZOqVBRnXx/aq3sslmUvMSrD3PI5GYfu781ADp7bU36fe8l/gZ\nZ7PpmV0s37Gd3kc3svRPD7H08YfZ87Yb2PO2G+D/Xoq77344a48ns/Z4nOPX4e1dfgGWUvupj0un\nkhx7+N6Lbr1xkWooWLeg6bKXpd//DgDPnf6uScdd16l58Q7J8X2v6q6DauZcz8YAs0w6xR/tGN3d\nS4rKKgZIwyB+oEX8QIsXzr0API/OrTadD93Hgc/8mcjDD+b6va/7KQDuvvuTOe54nPHgvVdxs/n4\nfuoispuCdQsqlb0YjsOp111LurOL59acSOH2Eumksup65fqYq+86qDQ1brb6rMPh9pIBslzWnUgk\nijN902Ts4MPo32s/ug76OB2RCIG/PUFo4/20PXA/bX/YQORnPyHys58A4O63P5njTsgF7+NOgCVL\nG/69iSwGCtYtamr2ssf9vyE8PMhTZ74HL9w+cdz3/fxa4FKXGoNr1knjE5w2vPu+N6eDzMpl3SPD\ng7RHopTYIXM308Q94kiSRxxJ8oP/BK67O3hveCAXvK/9MZH8WInu/fbHePXriB17PIPHHkemt2+W\nvjORhUXBWsD32ffn38M3DJ5+x7mTipxMsqadoWSyWjfe8H0fz3MwA9NfM9eDzKbLulPJOj7EBQK4\nRx5F8sijSH7oI+C6BP/2V9o23E/bxgcIbtzAfrf9CvIr6A0f+Tr6TziVV9adSnKZAre0LgVroecv\nj9Gz+S+8csIpxFftPSmrUxP4zNSTBWedDMFQ+7Tl8zIifLYEAmSPfA3ZI19D8sP/TDwW47k7/8Ce\nT/yJvgfuYsmmR1m66TFe9c3/Q2z/Q/DecTre378H97BXz3fNReaUgrWw3y++D8C2d1846bjrOlpe\ndIbqCdael8Vzpx9o5nvNvz1pub5uLz9IrtQUrEQ6zcjBFs5Rx/D8eRfRNjRA34a7WXHfnfQ+fD+B\nq74GV32NzKGvZuysc4ifcTZufpCapnXJYqZg3eLad7zIit/fQeyQVzP02tfD0MBEmbLqmfF9v+6N\nN8rtbOb7zd8tUamv2zDNqvrBnaXLeOkd5/LSO85l9MVtLH/o9xzy4O9Z+dB99H7pcnq/dDkDRx7D\nc+tOZfkH30901aqie4osBgrWLW6fX/4Iw/NyWXXBFCPf9zS3esbqz4BdJ4Pv+Rhm8VCzuRxgNhPl\n+roN06y5HzwbibLzTaeTfuf5bI6NsPJ3t7HH+pvoffwhlv3lMbzvfpXMWe8k+d73kX3DGq22J4uK\n2oxaWHA0xl43/Yx073J2vPn0SWWZVIlpOVKTmQbV6bogZmszj4Uk293Di2e+h8euupb7f/UAf/vH\nj+Ou3IP2n1/L0jPfytLjjyVy9Tcwdu2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bz7+M9X/8CdjcVz+mVjEIlZKmjZrP7UrNMKRZ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\nShRVEAjj+vS89vAkWPab8VXIatQMuVBx3YAL4SAclzSJjYt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"text": [ "" ] } ], "prompt_number": 7 }, { "cell_type": "markdown", "metadata": {}, "source": [ "These individual Gaussian distributions are fit using an expectation-maximization method, much as in K means, except that rather than explicit cluster assignment, the **posterior probability** is used to compute the weighted mean and covariance.\n", "Somewhat surprisingly, this algorithm **provably** converges to the optimum (though the optimum is not necessarily global)." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## How many Gaussians?\n", "\n", "Given a model, we can use one of several means to evaluate how well it fits the data.\n", "For example, there is the Aikaki Information Criterion (AIC) and the Bayesian Information Criterion (BIC)" ] }, { "cell_type": "code", "collapsed": false, "input": [ "print(clf.bic(x))\n", "print(clf.aic(x))" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "25696.4735953\n", "25625.7016679\n" ] } ], "prompt_number": 8 }, { "cell_type": "markdown", "metadata": {}, "source": [ "Let's take a look at these as a function of the number of gaussians:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "n_estimators = np.arange(1, 10)\n", "clfs = [GMM(n, n_iter=1000).fit(x) for n in n_estimators]\n", "bics = [clf.bic(x) for clf in clfs]\n", "aics = [clf.aic(x) for clf in clfs]\n", "\n", "plt.plot(n_estimators, bics, label='BIC')\n", "plt.plot(n_estimators, aics, label='AIC')\n", "plt.legend();" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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FLIovoC2zHyI9GlIXEZGcVzAhDmD8IfVYXSvrtzSTcd2AKxIRERm/ggrxvsltVTPbaOtM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\n37vW75Ev5fglwS3RKjKUvpX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"text": [ "" ] } ], "prompt_number": 9 }, { "cell_type": "markdown", "metadata": {}, "source": [ "It appears that for both the AIC and BIC, 4 components is preferred." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Example: GMM For Outlier Detection\n", "\n", "GMM is what's known as a **Generative Model**: it's a probabilistic model from which a dataset can be generated.\n", "One thing that generative models can be useful for is **outlier detection**: we can simply evaluate the likelihood of each point under the generative model; the points with a suitably low likelihood (where \"suitable\" is up to your own bias/variance preference) can be labeld outliers.\n", "\n", "Let's take a look at this by defining a new dataset with some outliers:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "np.random.seed(0)\n", "\n", "# Add 20 outliers\n", "true_outliers = np.sort(np.random.randint(0, len(x), 20))\n", "y = x.copy()\n", "y[true_outliers] += 50 * np.random.randn(20)" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 10 }, { "cell_type": "code", "collapsed": false, "input": [ "clf = GMM(4, n_iter=500, random_state=0).fit(y)\n", "xpdf = np.linspace(-10, 20, 1000)\n", "density_noise = np.exp(clf.score(xpdf))\n", "\n", "plt.hist(y, 80, normed=True, alpha=0.5)\n", "plt.plot(xpdf, density_noise, '-r')\n", "#plt.xlim(-10, 20);" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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"text": [ "" ] } ], "prompt_number": 11 }, { "cell_type": "markdown", "metadata": {}, "source": [ "Now let's evaluate the log-likelihood of each point under the model, and plot these as a function of ``y``:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "log_likelihood = clf.score_samples(y)[0]\n", "plt.plot(y, log_likelihood, '.k');" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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"text": [ "" ] } ], "prompt_number": 12 }, { "cell_type": "code", "collapsed": false, "input": [ "detected_outliers = np.where(log_likelihood < -9)[0]\n", "\n", "print(\"true outliers:\")\n", "print(true_outliers)\n", "print(\"\\ndetected outliers:\")\n", "print(detected_outliers)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "true outliers:\n", "[ 99 537 705 1033 1653 1701 1871 2046 2135 2163 2222 2496 2599 2607 2732\n", " 2893 2897 3264 3468 4373]\n", "\n", "detected outliers:\n", "[ 537 705 1653 2046 2135 2163 2496 2732 2893 2897 3067 3468 4373]\n" ] } ], "prompt_number": 13 }, { "cell_type": "markdown", "metadata": {}, "source": [ "The algorithm misses a few of these points, which is to be expected (some of the \"outliers\" actually land in the middle of the distribution!)\n", "\n", "Here are the outliers that were missed:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "set(true_outliers) - set(detected_outliers)" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 14, "text": [ "{99, 1033, 1701, 1871, 2222, 2599, 2607, 3264}" ] } ], "prompt_number": 14 }, { "cell_type": "markdown", "metadata": {}, "source": [ "And here are the non-outliers which were spuriously labeled outliers:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "set(detected_outliers) - set(true_outliers)" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 15, "text": [ "{3067}" ] } ], "prompt_number": 15 }, { "cell_type": "markdown", "metadata": {}, "source": [ "Finally, we should note that although all of the above is done in one dimension, GMM does generalize to multiple dimensions, as we'll see in the breakout session." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Other Density Estimators\n", "\n", "The other main density estimator that you might find useful is *Kernel Density Estimation*, which is available via ``sklearn.neighbors.KernelDensity``. In some ways, this can be thought of as a generalization of GMM where there is a gaussian placed at the location of *every* training point!" ] }, { "cell_type": "code", "collapsed": false, "input": [ "from sklearn.neighbors import KernelDensity\n", "kde = KernelDensity(0.15).fit(x[:, None])\n", "density_kde = np.exp(kde.score_samples(xpdf[:, None]))\n", "\n", "plt.hist(x, 80, normed=True, alpha=0.5)\n", "plt.plot(xpdf, density, '-b', label='GMM')\n", "plt.plot(xpdf, density_kde, '-r', label='KDE')\n", "plt.xlim(-10, 20)\n", "plt.legend();" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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bcSW7MBFJe1oURWSIhPY1kEUn7UVj+t02mmM907qjTj1rEVFYiwyZ+P7u27bKKvrdNua1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\nPr7+gJ5HGrag5u6d7F+8mRM6V8atmAfA0UfH0K9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"text": [ "" ] } ], "prompt_number": 16 }, { "cell_type": "markdown", "metadata": {}, "source": [ "All of these density estimators can be viewed as **Generative models** of the data: that is, that is, the model tells us how more data can be created which fits the model." ] } ], "metadata": {} } ] }