{ "metadata": { "name": "" }, "nbformat": 3, "nbformat_minor": 0, "worksheets": [ { "cells": [ { "cell_type": "code", "collapsed": false, "input": [ "from sklearn.datasets import fetch_mldata" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 1 }, { "cell_type": "code", "collapsed": false, "input": [ "mnist = fetch_mldata('MNIST Original')" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 2 }, { "cell_type": "code", "collapsed": false, "input": [ "# normalize and use the native DT precision level \n", "X = (mnist.data / 255.).astype(np.float32)\n", "X_train, y_train = X[:60000], mnist.target[:60000]\n", "X_test, y_test = X[60000:], mnist.target[60000:]" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 3 }, { "cell_type": "code", "collapsed": false, "input": [ "from IPython.parallel import Client\n", "\n", "client = Client()\n", "lb_view = client.load_balanced_view()\n", "len(lb_view)" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 4, "text": [ "95" ] } ], "prompt_number": 4 }, { "cell_type": "code", "collapsed": false, "input": [ "from sklearn.ensemble import ExtraTreesClassifier\n", "from pyrallel.model_selection import RandomizedGridSeach\n", "from pyrallel.mmap_utils import persist_cv_splits\n", "from sklearn.cross_validation import ShuffleSplit" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 5 }, { "cell_type": "code", "collapsed": false, "input": [ "n_samples_dev = 60000 # make it possible to use a subsample of the trainingset\n", "X_dev, y_dev = X_train[:n_samples_dev], y_train[:n_samples_dev]\n", "\n", "cv_split_filenames = persist_cv_splits(X_dev, y_dev, n_cv_iter=2,\n", " test_size=0.25, random_state=0)" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 6 }, { "cell_type": "code", "collapsed": false, "input": [ "params = {\n", " 'criterion': ['gini', 'entropy'],\n", " 'max_features': [10, 20, 30, 50, 100, 200, 500, 768],\n", " 'min_samples_split': [2, 5, 10, 15, 20, 25, 30, 40, 50, 75, 100, 150, 200],\n", "}\n", "\n", "et = ExtraTreesClassifier(n_estimators=100, random_state=0)\n", "rgs = RandomizedGridSeach(lb_view, random_state=0)" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 7 }, { "cell_type": "code", "collapsed": false, "input": [ "rgs.launch_for_splits(et, params, cv_split_filenames)" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 8, "text": [ "Progress: 00% (000/416)\n" ] } ], "prompt_number": 8 }, { "cell_type": "code", "collapsed": false, "input": [ "print(rgs.report(n_top=100))" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "Progress: 100% (416/416)\n", "\n", "Rank 1: validation: 0.97377 (+/-0.00103) train: 1.00000 (+/-0.00000):\n", " {'max_features': 100, 'min_samples_split': 2, 'criterion': 'gini'}\n", "Rank 2: validation: 0.97273 (+/-0.00107) train: 1.00000 (+/-0.00000):\n", " {'max_features': 50, 'min_samples_split': 2, 'criterion': 'gini'}\n", "Rank 3: validation: 0.97253 (+/-0.00047) train: 1.00000 (+/-0.00000):\n", " {'max_features': 30, 'min_samples_split': 2, 'criterion': 'gini'}\n", "Rank 4: validation: 0.97247 (+/-0.00133) train: 1.00000 (+/-0.00000):\n", " {'max_features': 200, 'min_samples_split': 2, 'criterion': 'entropy'}\n", "Rank 5: validation: 0.97223 (+/-0.00150) train: 1.00000 (+/-0.00000):\n", " {'max_features': 100, 'min_samples_split': 2, 'criterion': 'entropy'}\n", "Rank 6: validation: 0.97193 (+/-0.00067) train: 1.00000 (+/-0.00000):\n", " {'max_features': 100, 'min_samples_split': 5, 'criterion': 'gini'}\n", "Rank 7: validation: 0.97183 (+/-0.00083) train: 1.00000 (+/-0.00000):\n", " {'max_features': 200, 'min_samples_split': 2, 'criterion': 'gini'}\n", "Rank 8: validation: 0.97177 (+/-0.00097) train: 1.00000 (+/-0.00000):\n", " {'max_features': 50, 'min_samples_split': 2, 'criterion': 'entropy'}\n", "Rank 9: validation: 0.97167 (+/-0.00080) train: 1.00000 (+/-0.00000):\n", " {'max_features': 20, 'min_samples_split': 2, 'criterion': 'entropy'}\n", "Rank 10: validation: 0.97157 (+/-0.00123) train: 1.00000 (+/-0.00000):\n", " {'max_features': 200, 'min_samples_split': 5, 'criterion': 'gini'}\n", "Rank 11: validation: 0.97143 (+/-0.00163) train: 1.00000 (+/-0.00000):\n", " {'max_features': 100, 'min_samples_split': 5, 'criterion': 'entropy'}\n", "Rank 12: validation: 0.97143 (+/-0.00143) train: 1.00000 (+/-0.00000):\n", " {'max_features': 50, 'min_samples_split': 5, 'criterion': 'gini'}\n", "Rank 13: validation: 0.97143 (+/-0.00083) train: 1.00000 (+/-0.00000):\n", " {'max_features': 50, 'min_samples_split': 5, 'criterion': 'entropy'}\n", "Rank 14: validation: 0.97130 (+/-0.00077) train: 1.00000 (+/-0.00000):\n", " {'max_features': 30, 'min_samples_split': 2, 'criterion': 'entropy'}\n", "Rank 15: validation: 0.97123 (+/-0.00037) train: 1.00000 (+/-0.00000):\n", " {'max_features': 30, 'min_samples_split': 5, 'criterion': 'gini'}\n", "Rank 16: validation: 0.97117 (+/-0.00023) train: 1.00000 (+/-0.00000):\n", " {'max_features': 20, 'min_samples_split': 2, 'criterion': 'gini'}\n", "Rank 17: validation: 0.97107 (+/-0.00133) train: 1.00000 (+/-0.00000):\n", " {'max_features': 200, 'min_samples_split': 5, 'criterion': 'entropy'}\n", "Rank 18: validation: 0.97103 (+/-0.00123) train: 1.00000 (+/-0.00000):\n", " {'max_features': 500, 'min_samples_split': 2, 'criterion': 'gini'}\n", "Rank 19: validation: 0.97100 (+/-0.00133) train: 1.00000 (+/-0.00000):\n", " {'max_features': 500, 'min_samples_split': 2, 'criterion': 'entropy'}\n", "Rank 20: validation: 0.97070 (+/-0.00083) train: 1.00000 (+/-0.00000):\n", " {'max_features': 20, 'min_samples_split': 5, 'criterion': 'gini'}\n", "Rank 21: validation: 0.97057 (+/-0.00083) train: 1.00000 (+/-0.00000):\n", " {'max_features': 768, 'min_samples_split': 2, 'criterion': 'gini'}\n", "Rank 22: validation: 0.97053 (+/-0.00053) train: 1.00000 (+/-0.00000):\n", " {'max_features': 500, 'min_samples_split': 5, 'criterion': 'gini'}\n", "Rank 23: validation: 0.97047 (+/-0.00100) train: 1.00000 (+/-0.00000):\n", " {'max_features': 768, 'min_samples_split': 2, 'criterion': 'entropy'}\n", "Rank 24: validation: 0.97043 (+/-0.00110) train: 1.00000 (+/-0.00000):\n", " {'max_features': 500, 'min_samples_split': 5, 'criterion': 'entropy'}\n", "Rank 25: validation: 0.97040 (+/-0.00113) train: 0.99992 (+/-0.00001):\n", " {'max_features': 50, 'min_samples_split': 10, 'criterion': 'gini'}\n", "Rank 26: validation: 0.97040 (+/-0.00080) train: 0.99999 (+/-0.00001):\n", " {'max_features': 200, 'min_samples_split': 10, 'criterion': 'gini'}\n", "Rank 27: validation: 0.97037 (+/-0.00097) train: 0.99997 (+/-0.00001):\n", " {'max_features': 100, 'min_samples_split': 10, 'criterion': 'gini'}\n", "Rank 28: validation: 0.97020 (+/-0.00080) train: 1.00000 (+/-0.00000):\n", " {'max_features': 20, 'min_samples_split': 5, 'criterion': 'entropy'}\n", "Rank 29: validation: 0.97010 (+/-0.00083) train: 1.00000 (+/-0.00000):\n", " {'max_features': 30, 'min_samples_split': 5, 'criterion': 'entropy'}\n", "Rank 30: validation: 0.97000 (+/-0.00147) train: 0.99997 (+/-0.00001):\n", " {'max_features': 50, 'min_samples_split': 10, 'criterion': 'entropy'}\n", "Rank 31: validation: 0.96950 (+/-0.00097) train: 1.00000 (+/-0.00000):\n", " {'max_features': 768, 'min_samples_split': 5, 'criterion': 'gini'}\n", "Rank 32: validation: 0.96950 (+/-0.00090) train: 1.00000 (+/-0.00000):\n", " {'max_features': 10, 'min_samples_split': 2, 'criterion': 'entropy'}\n", "Rank 33: validation: 0.96930 (+/-0.00123) train: 1.00000 (+/-0.00000):\n", " {'max_features': 768, 'min_samples_split': 5, 'criterion': 'entropy'}\n", "Rank 34: validation: 0.96920 (+/-0.00193) train: 1.00000 (+/-0.00000):\n", " {'max_features': 200, 'min_samples_split': 10, 'criterion': 'entropy'}\n", "Rank 35: validation: 0.96907 (+/-0.00127) train: 1.00000 (+/-0.00000):\n", " {'max_features': 10, 'min_samples_split': 2, 'criterion': 'gini'}\n", "Rank 36: validation: 0.96897 (+/-0.00050) train: 1.00000 (+/-0.00000):\n", " {'max_features': 500, 'min_samples_split': 10, 'criterion': 'entropy'}\n", "Rank 37: validation: 0.96897 (+/-0.00110) train: 0.99989 (+/-0.00002):\n", " {'max_features': 20, 'min_samples_split': 10, 'criterion': 'gini'}\n", "Rank 38: validation: 0.96887 (+/-0.00087) train: 0.99974 (+/-0.00001):\n", " {'max_features': 200, 'min_samples_split': 15, 'criterion': 'gini'}\n", "Rank 39: validation: 0.96883 (+/-0.00043) train: 1.00000 (+/-0.00000):\n", " {'max_features': 100, 'min_samples_split': 10, 'criterion': 'entropy'}\n", "Rank 40: validation: 0.96877 (+/-0.00043) train: 0.99997 (+/-0.00001):\n", " {'max_features': 30, 'min_samples_split': 10, 'criterion': 'gini'}\n", "Rank 41: validation: 0.96873 (+/-0.00100) train: 0.99997 (+/-0.00001):\n", " {'max_features': 500, 'min_samples_split': 10, 'criterion': 'gini'}\n", "Rank 42: validation: 0.96847 (+/-0.00107) train: 1.00000 (+/-0.00000):\n", " {'max_features': 10, 'min_samples_split': 5, 'criterion': 'entropy'}\n", "Rank 43: validation: 0.96847 (+/-0.00093) train: 0.99994 (+/-0.00001):\n", " {'max_features': 30, 'min_samples_split': 10, 'criterion': 'entropy'}\n", "Rank 44: validation: 0.96843 (+/-0.00123) train: 1.00000 (+/-0.00000):\n", " {'max_features': 10, 'min_samples_split': 5, 'criterion': 'gini'}\n", "Rank 45: validation: 0.96843 (+/-0.00037) train: 0.99944 (+/-0.00004):\n", " {'max_features': 50, 'min_samples_split': 15, 'criterion': 'gini'}\n", "Rank 46: validation: 0.96810 (+/-0.00163) train: 0.99968 (+/-0.00006):\n", " {'max_features': 100, 'min_samples_split': 15, 'criterion': 'gini'}\n", "Rank 47: validation: 0.96810 (+/-0.00050) train: 0.99996 (+/-0.00000):\n", " {'max_features': 768, 'min_samples_split': 10, 'criterion': 'gini'}\n", "Rank 48: validation: 0.96783 (+/-0.00097) train: 1.00000 (+/-0.00000):\n", " {'max_features': 768, 'min_samples_split': 10, 'criterion': 'entropy'}\n", "Rank 49: validation: 0.96780 (+/-0.00060) train: 0.99979 (+/-0.00003):\n", " {'max_features': 200, 'min_samples_split': 15, 'criterion': 'entropy'}\n", "Rank 50: validation: 0.96747 (+/-0.00107) train: 0.99908 (+/-0.00003):\n", " {'max_features': 200, 'min_samples_split': 20, 'criterion': 'gini'}\n", "Rank 51: validation: 0.96733 (+/-0.00107) train: 0.99973 (+/-0.00004):\n", " {'max_features': 500, 'min_samples_split': 15, 'criterion': 'gini'}\n", "Rank 52: validation: 0.96723 (+/-0.00057) train: 0.99972 (+/-0.00003):\n", " {'max_features': 100, 'min_samples_split': 15, 'criterion': 'entropy'}\n", "Rank 53: validation: 0.96713 (+/-0.00053) train: 0.99992 (+/-0.00003):\n", " {'max_features': 20, 'min_samples_split': 10, 'criterion': 'entropy'}\n", "Rank 54: validation: 0.96700 (+/-0.00093) train: 0.99988 (+/-0.00001):\n", " {'max_features': 500, 'min_samples_split': 15, 'criterion': 'entropy'}\n", "Rank 55: validation: 0.96693 (+/-0.00073) train: 0.99892 (+/-0.00006):\n", " {'max_features': 20, 'min_samples_split': 15, 'criterion': 'gini'}\n", "Rank 56: validation: 0.96690 (+/-0.00030) train: 0.99879 (+/-0.00006):\n", " {'max_features': 100, 'min_samples_split': 20, 'criterion': 'gini'}\n", "Rank 57: validation: 0.96680 (+/-0.00047) train: 0.99832 (+/-0.00003):\n", " {'max_features': 50, 'min_samples_split': 20, 'criterion': 'gini'}\n", "Rank 58: validation: 0.96680 (+/-0.00073) train: 0.99929 (+/-0.00009):\n", " {'max_features': 50, 'min_samples_split': 15, 'criterion': 'entropy'}\n", "Rank 59: validation: 0.96667 (+/-0.00033) train: 0.99914 (+/-0.00006):\n", " {'max_features': 30, 'min_samples_split': 15, 'criterion': 'entropy'}\n", "Rank 60: validation: 0.96663 (+/-0.00050) train: 0.99924 (+/-0.00011):\n", " {'max_features': 30, 'min_samples_split': 15, 'criterion': 'gini'}\n", "Rank 61: validation: 0.96657 (+/-0.00103) train: 0.99981 (+/-0.00003):\n", " {'max_features': 768, 'min_samples_split': 15, 'criterion': 'entropy'}\n", "Rank 62: validation: 0.96653 (+/-0.00093) train: 0.99782 (+/-0.00016):\n", " {'max_features': 30, 'min_samples_split': 20, 'criterion': 'gini'}\n", "Rank 63: validation: 0.96617 (+/-0.00143) train: 0.99969 (+/-0.00000):\n", " {'max_features': 768, 'min_samples_split': 15, 'criterion': 'gini'}\n", "Rank 64: validation: 0.96617 (+/-0.00070) train: 0.99810 (+/-0.00006):\n", " {'max_features': 200, 'min_samples_split': 25, 'criterion': 'gini'}\n", "Rank 65: validation: 0.96587 (+/-0.00040) train: 0.99977 (+/-0.00008):\n", " {'max_features': 10, 'min_samples_split': 10, 'criterion': 'gini'}\n", "Rank 66: validation: 0.96587 (+/-0.00040) train: 0.99971 (+/-0.00004):\n", " {'max_features': 10, 'min_samples_split': 10, 'criterion': 'entropy'}\n", "Rank 67: validation: 0.96550 (+/-0.00150) train: 0.99880 (+/-0.00009):\n", " {'max_features': 200, 'min_samples_split': 20, 'criterion': 'entropy'}\n", "Rank 68: validation: 0.96547 (+/-0.00153) train: 0.99848 (+/-0.00008):\n", " {'max_features': 100, 'min_samples_split': 20, 'criterion': 'entropy'}\n", "Rank 69: validation: 0.96540 (+/-0.00007) train: 0.99774 (+/-0.00001):\n", " {'max_features': 50, 'min_samples_split': 20, 'criterion': 'entropy'}\n", "Rank 70: validation: 0.96537 (+/-0.00117) train: 0.99771 (+/-0.00002):\n", " {'max_features': 100, 'min_samples_split': 25, 'criterion': 'gini'}\n", "Rank 71: validation: 0.96530 (+/-0.00070) train: 0.99923 (+/-0.00001):\n", " {'max_features': 500, 'min_samples_split': 20, 'criterion': 'gini'}\n", "Rank 72: validation: 0.96510 (+/-0.00137) train: 0.99902 (+/-0.00007):\n", " {'max_features': 500, 'min_samples_split': 20, 'criterion': 'entropy'}\n", "Rank 73: validation: 0.96500 (+/-0.00087) train: 0.99911 (+/-0.00007):\n", " {'max_features': 768, 'min_samples_split': 20, 'criterion': 'gini'}\n", "Rank 74: validation: 0.96497 (+/-0.00030) train: 0.99737 (+/-0.00008):\n", " {'max_features': 20, 'min_samples_split': 20, 'criterion': 'gini'}\n", "Rank 75: validation: 0.96483 (+/-0.00090) train: 0.99877 (+/-0.00008):\n", " {'max_features': 20, 'min_samples_split': 15, 'criterion': 'entropy'}\n", "Rank 76: validation: 0.96470 (+/-0.00063) train: 0.99642 (+/-0.00002):\n", " {'max_features': 100, 'min_samples_split': 25, 'criterion': 'entropy'}\n", "Rank 77: validation: 0.96467 (+/-0.00127) train: 0.99719 (+/-0.00008):\n", " {'max_features': 200, 'min_samples_split': 25, 'criterion': 'entropy'}\n", "Rank 78: validation: 0.96467 (+/-0.00153) train: 0.99720 (+/-0.00016):\n", " {'max_features': 30, 'min_samples_split': 20, 'criterion': 'entropy'}\n", "Rank 79: validation: 0.96437 (+/-0.00137) train: 0.99871 (+/-0.00009):\n", " {'max_features': 768, 'min_samples_split': 20, 'criterion': 'entropy'}\n", "Rank 80: validation: 0.96433 (+/-0.00027) train: 0.99850 (+/-0.00028):\n", " {'max_features': 10, 'min_samples_split': 15, 'criterion': 'gini'}\n", "Rank 81: validation: 0.96423 (+/-0.00130) train: 0.99678 (+/-0.00004):\n", " {'max_features': 200, 'min_samples_split': 30, 'criterion': 'gini'}\n", "Rank 82: validation: 0.96400 (+/-0.00100) train: 0.99747 (+/-0.00007):\n", " {'max_features': 500, 'min_samples_split': 25, 'criterion': 'entropy'}\n", "Rank 83: validation: 0.96390 (+/-0.00090) train: 0.99611 (+/-0.00009):\n", " {'max_features': 100, 'min_samples_split': 30, 'criterion': 'gini'}\n", "Rank 84: validation: 0.96387 (+/-0.00047) train: 0.99819 (+/-0.00001):\n", " {'max_features': 500, 'min_samples_split': 25, 'criterion': 'gini'}\n", "Rank 85: validation: 0.96370 (+/-0.00143) train: 0.99628 (+/-0.00010):\n", " {'max_features': 30, 'min_samples_split': 25, 'criterion': 'gini'}\n", "Rank 86: validation: 0.96360 (+/-0.00087) train: 0.99684 (+/-0.00013):\n", " {'max_features': 50, 'min_samples_split': 25, 'criterion': 'gini'}\n", "Rank 87: validation: 0.96357 (+/-0.00010) train: 0.99548 (+/-0.00014):\n", " {'max_features': 50, 'min_samples_split': 25, 'criterion': 'entropy'}\n", "Rank 88: validation: 0.96333 (+/-0.00140) train: 0.99488 (+/-0.00001):\n", " {'max_features': 200, 'min_samples_split': 30, 'criterion': 'entropy'}\n", "Rank 89: validation: 0.96327 (+/-0.00113) train: 0.99468 (+/-0.00017):\n", " {'max_features': 30, 'min_samples_split': 25, 'criterion': 'entropy'}\n", "Rank 90: validation: 0.96317 (+/-0.00097) train: 0.99436 (+/-0.00009):\n", " {'max_features': 100, 'min_samples_split': 30, 'criterion': 'entropy'}\n", "Rank 91: validation: 0.96303 (+/-0.00123) train: 0.99816 (+/-0.00002):\n", " {'max_features': 10, 'min_samples_split': 15, 'criterion': 'entropy'}\n", "Rank 92: validation: 0.96303 (+/-0.00097) train: 0.99678 (+/-0.00004):\n", " {'max_features': 20, 'min_samples_split': 20, 'criterion': 'entropy'}\n", "Rank 93: validation: 0.96303 (+/-0.00017) train: 0.99509 (+/-0.00020):\n", " {'max_features': 50, 'min_samples_split': 30, 'criterion': 'gini'}\n", "Rank 94: validation: 0.96297 (+/-0.00230) train: 0.99801 (+/-0.00006):\n", " {'max_features': 768, 'min_samples_split': 25, 'criterion': 'gini'}\n", "Rank 95: validation: 0.96273 (+/-0.00013) train: 0.99388 (+/-0.00026):\n", " {'max_features': 200, 'min_samples_split': 40, 'criterion': 'gini'}\n", "Rank 96: validation: 0.96260 (+/-0.00013) train: 0.99421 (+/-0.00008):\n", " {'max_features': 30, 'min_samples_split': 30, 'criterion': 'gini'}\n", "Rank 97: validation: 0.96257 (+/-0.00137) train: 0.99549 (+/-0.00016):\n", " {'max_features': 20, 'min_samples_split': 25, 'criterion': 'gini'}\n", "Rank 98: validation: 0.96253 (+/-0.00133) train: 0.99700 (+/-0.00004):\n", " {'max_features': 768, 'min_samples_split': 25, 'criterion': 'entropy'}\n", "Rank 99: validation: 0.96253 (+/-0.00147) train: 0.99698 (+/-0.00007):\n", " {'max_features': 500, 'min_samples_split': 30, 'criterion': 'gini'}\n", "Rank 100: validation: 0.96233 (+/-0.00000) train: 0.99637 (+/-0.00003):\n", " {'max_features': 10, 'min_samples_split': 20, 'criterion': 'gini'}\n" ] } ], "prompt_number": 73 }, { "cell_type": "code", "collapsed": false, "input": [ "rgs.boxplot_parameters()" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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tcXV1dUhPT8fSpUv1EmBHdAcy0Ya+LhPpox1Bh8mqWLYQbXbVv0ifbeHoXLU0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\nvBzLly/HqlWrMGDAAISEhOCnn34CAGR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"text": [ "" ] } ], "prompt_number": 77 }, { "cell_type": "code", "collapsed": false, "input": [ "et_final = ExtraTreesClassifier(n_estimators=1000,\n", " max_features=100,\n", " min_samples_split=2,\n", " n_jobs=16, random_state=0)\n", "%time et_final.fit(X_train, y_train)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "CPU times: user 8.36 s, sys: 8.87 s, total: 17.2 s\n", "Wall time: 6min 58s\n" ] }, { "metadata": {}, "output_type": "pyout", "prompt_number": 74, "text": [ "ExtraTreesClassifier(bootstrap=False, compute_importances=None,\n", " criterion='gini', max_depth=None, max_features=100,\n", " min_density=None, min_samples_leaf=1, min_samples_split=2,\n", " n_estimators=1000, n_jobs=16, oob_score=False, random_state=0,\n", " verbose=0)" ] } ], "prompt_number": 74 }, { "cell_type": "code", "collapsed": false, "input": [ "%time test_score = et_final.score(X_test, y_test)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "CPU times: user 3.38 s, sys: 3.36 s, total: 6.74 s\n", "Wall time: 10.7 s\n" ] } ], "prompt_number": 75 }, { "cell_type": "code", "collapsed": false, "input": [ "test_error = 1. - test_score\n", "test_error" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 76, "text": [ "0.024299999999999988" ] } ], "prompt_number": 76 } ], "metadata": {} } ] }