{ "metadata": { "name": "" }, "nbformat": 3, "nbformat_minor": 0, "worksheets": [ { "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "#Agenda\n", "\n", "- Define the problem and the approach\n", "- Data basics: loading data, looking at your data, basic commands\n", "- Handling missing values\n", "- Intro to scikit-learn\n", "- Grouping and aggregating data\n", "-

Feature selection

\n", "- Fitting and evaluating a model\n", "- Deploying your work" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "#In this workbook you will\n", "- Use RandomForest to calculate the best features for your model\n", "- Handling outlying data using `apply` and `groupby`\n", "- Discretize (or bucket) data into groups\n", "- Make your own features for your model" ] }, { "cell_type": "code", "collapsed": false, "input": [ "import pandas as pd\n", "import numpy as np\n", "import pylab as pl" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 1 }, { "cell_type": "code", "collapsed": false, "input": [ "df = pd.read_csv(\"./data/credit-data-trainingset.csv\")" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 2 }, { "cell_type": "code", "collapsed": false, "input": [ "df.head()" ], "language": "python", "metadata": {}, "outputs": [ { "html": [ "
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serious_dlqin2yrsrevolving_utilization_of_unsecured_linesagenumber_of_time30-59_days_past_due_not_worsedebt_ratiomonthly_incomenumber_of_open_credit_lines_and_loansnumber_of_times90_days_latenumber_real_estate_loans_or_linesnumber_of_time60-89_days_past_due_not_worsenumber_of_dependents
0 1 0.766127 45 2 0.802982 9120 13 0 6 0 2
1 0 0.957151 40 0 0.121876 2600 4 0 0 0 1
2 0 0.658180 38 1 0.085113 3042 2 1 0 0 0
3 0 0.907239 49 1 0.024926 63588 7 0 1 0 0
4 0 0.213179 74 0 0.375607 3500 3 0 1 0 1
\n", "
" ], "metadata": {}, "output_type": "pyout", "prompt_number": 3, "text": [ " serious_dlqin2yrs revolving_utilization_of_unsecured_lines age \\\n", "0 1 0.766127 45 \n", "1 0 0.957151 40 \n", "2 0 0.658180 38 \n", "3 0 0.907239 49 \n", "4 0 0.213179 74 \n", "\n", " number_of_time30-59_days_past_due_not_worse debt_ratio monthly_income \\\n", "0 2 0.802982 9120 \n", "1 0 0.121876 2600 \n", "2 1 0.085113 3042 \n", "3 1 0.024926 63588 \n", "4 0 0.375607 3500 \n", "\n", " number_of_open_credit_lines_and_loans number_of_times90_days_late \\\n", "0 13 0 \n", "1 4 0 \n", "2 2 1 \n", "3 7 0 \n", "4 3 0 \n", "\n", " number_real_estate_loans_or_lines \\\n", "0 6 \n", "1 0 \n", "2 0 \n", "3 1 \n", "4 1 \n", "\n", " number_of_time60-89_days_past_due_not_worse number_of_dependents \n", "0 0 2 \n", "1 0 1 \n", "2 0 0 \n", "3 0 0 \n", "4 0 1 " ] } ], "prompt_number": 3 }, { "cell_type": "markdown", "metadata": {}, "source": [ "##Finding Important Features\n", "We're going to let scikit-learn help us determine which variables are the best at predicting risk. To do this, we're going to use an algorithm called `RandomForest`. `RandomForest` randomly generates a \"forest\" of decision trees. As the trees are randomly generated, the algorithm takes turns leaving out each variable in fitting the model. This allows the `RandomForest` to calculate just how much worse a model does when each variable is left out." ] }, { "cell_type": "code", "collapsed": false, "input": [ "from sklearn.ensemble import RandomForestClassifier\n", "\n", "features = np.array(['revolving_utilization_of_unsecured_lines',\n", " 'age', 'number_of_time30-59_days_past_due_not_worse',\n", " 'debt_ratio', 'monthly_income','number_of_open_credit_lines_and_loans', \n", " 'number_of_times90_days_late', 'number_real_estate_loans_or_lines',\n", " 'number_of_time60-89_days_past_due_not_worse', 'number_of_dependents'])" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 4 }, { "cell_type": "code", "collapsed": false, "input": [ "clf = RandomForestClassifier(compute_importances=True)\n", "clf.fit(df[features], df['serious_dlqin2yrs'])" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stderr", "text": [ "/usr/local/lib/python2.7/site-packages/sklearn/ensemble/forest.py:783: DeprecationWarning: Setting compute_importances is no longer required as version 0.14. Variable importances are now computed on the fly when accessing the feature_importances_ attribute. This parameter will be removed in 0.16.\n", " DeprecationWarning)\n" ] }, { "metadata": {}, "output_type": "pyout", "prompt_number": 5, "text": [ "RandomForestClassifier(bootstrap=True, compute_importances=None,\n", " criterion='gini', max_depth=None, max_features='auto',\n", " min_density=None, min_samples_leaf=1, min_samples_split=2,\n", " n_estimators=10, n_jobs=1, oob_score=False, random_state=None,\n", " verbose=0)" ] } ], "prompt_number": 5 }, { "cell_type": "code", "collapsed": false, "input": [ "# from the calculated importances, order them from most to least important\n", "# and make a barplot so we can visualize what is/isn't important\n", "importances = clf.feature_importances_\n", "sorted_idx = np.argsort(importances)" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 6 }, { "cell_type": "code", "collapsed": false, "input": [ "padding = np.arange(len(features)) + 0.5\n", "pl.barh(padding, importances[sorted_idx], align='center')\n", "pl.yticks(padding, features[sorted_idx])\n", "pl.xlabel(\"Relative Importance\")\n", "pl.title(\"Variable Importance\")\n", "pl.show()" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "png": 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QqzoZY4y9fY3usmPXrl0hlUoxf/58HD16FBKJBEBJD8HNmzfh4+ODx48f48GDB3j8+DF0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\n9evXIRKJoNVqIZFIzOabkZGB2bNnQyQSoWfPnvD29saZM2c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"text": [ "" ] } ], "prompt_number": 7 }, { "cell_type": "markdown", "metadata": {}, "source": [ "So you can see that the best variable is `revolving_utilization_of_unsecured_lines` while the worst is `number_real_estate_loans_or_lines`. There's also a dramatic drop off after `number_of_open_credit_lines_and_loans`. This is where you need to use your own discretion. How many variables should you include in your model?" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "###Engineering Additional Features\n", "Feature selection/engineering will likely have the biggest impact in determining the success/failure of your model. Even if you're using the latest and greatest algorithm, if you put in non-important features you're going to get poor results. Remember, it's math, not magic.\n", "\n", "Feature engineering is a skill that will take time to get the hang of. Sometimes the best way is to just talk to people. Ask questions, brainstorm with others, etc. Oftentimes 2 features might not be helpful when used individually, but when combined they can be extremely powerful.\n", "\n" ] }, { "cell_type": "code", "collapsed": false, "input": [ "df['income_bins'] = pd.cut(df.monthly_income, bins=15)\n", "pd.value_counts(df['income_bins'])\n", "# not very helpful" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 8, "text": [ "(-3008.75, 200583.333] 112392\n", "(200583.333, 401166.667] 11\n", "(601750, 802333.333] 5\n", "(401166.667, 601750] 4\n", "(1404083.333, 1604666.667] 1\n", "(802333.333, 1002916.667] 1\n", "(2808166.667, 3008750] 1\n", "dtype: int64" ] } ], "prompt_number": 8 }, { "cell_type": "markdown", "metadata": {}, "source": [ "###Bucketing Continuous Values" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "####Use the cap_value function you wrote previously to cap monthly_income at $15,000" ] }, { "cell_type": "code", "collapsed": false, "input": [ "def cap_values(x, cap):\n", " if x > cap:\n", " return cap\n", " else:\n", " return x\n", " \n", "df.monthly_income = df.monthly_income.apply(lambda x: cap_values(x, 15000))" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 9 }, { "cell_type": "code", "collapsed": false, "input": [ "df.monthly_income.describe()" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 10, "text": [ "count 112415.000000\n", "mean 5916.167344\n", "std 3644.715884\n", "min 0.000000\n", "25% 3235.000000\n", "50% 5200.000000\n", "75% 8000.000000\n", "max 15000.000000\n", "dtype: float64" ] } ], "prompt_number": 10 }, { "cell_type": "code", "collapsed": false, "input": [ "df['income_bins'] = pd.cut(df.monthly_income, bins=15, labels=False)\n", "pd.value_counts(df.income_bins)" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 11, "text": [ "3 14614\n", "4 14412\n", "2 13192\n", "5 12034\n", "6 10713\n", "1 8042\n", "7 7839\n", "8 5743\n", "9 5597\n", "14 5439\n", "0 4465\n", "10 4307\n", "11 2536\n", "12 1959\n", "13 1523\n", "dtype: int64" ] } ], "prompt_number": 11 }, { "cell_type": "code", "collapsed": false, "input": [ "df[[\"income_bins\", \"serious_dlqin2yrs\"]].groupby(\"income_bins\").mean()" ], "language": "python", "metadata": {}, "outputs": [ { "html": [ "
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" ], "metadata": {}, "output_type": "pyout", "prompt_number": 12, "text": [ " serious_dlqin2yrs\n", "income_bins \n", "0 0.047256\n", "1 0.098980\n", "2 0.092480\n", "3 0.079239\n", "4 0.068485\n", "5 0.067309\n", "6 0.057220\n", "7 0.056767\n", "8 0.053108\n", "9 0.048061\n", "10 0.042721\n", "11 0.041009\n", "12 0.040327\n", "13 0.042679\n", "14 0.048538" ] } ], "prompt_number": 12 }, { "cell_type": "code", "collapsed": false, "input": [ "cols = [\"income_bins\", \"serious_dlqin2yrs\"]\n", "df[cols].groupby(\"income_bins\").mean().plot()" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 13, "text": [ "" ] }, { "metadata": {}, "output_type": "display_data", "png": 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"text": [ "" ] } ], "prompt_number": 13 }, { "cell_type": "code", "collapsed": false, "input": [ "cols = ['age', 'serious_dlqin2yrs']\n", "age_means = df[cols].groupby(\"age\").mean()\n", "age_means.plot()" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 14, "text": [ "" ] }, { "metadata": {}, "output_type": "display_data", "png": 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p4UceAZYvt7wNq1ZVJ9yasZ0+zcsro0cDGzfyhGoujYZ/cu7cmb8h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\n0dFYvHgxxo8fjxdffBH9+vXD+fPnMWz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"text": [ "" ] } ], "prompt_number": 14 }, { "cell_type": "markdown", "metadata": {}, "source": [ "####Bin `age` into 14 different groups. Then make a frequency table that shows the number of customers that were/were not delinquent for each bin.\n", "*HINT: You might want to have larger bins near the min/max values to account for outliers.*" ] }, { "cell_type": "code", "collapsed": false, "input": [ "mybins = [0] + range(20, 80, 5) + [120]\n", "df['age_bucket'] = pd.cut(df.age, bins=mybins)\n", "pd.value_counts(df['age_bin'])" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 24, "text": [ "(45, 50] 14112\n", "(50, 55] 13390\n", "(55, 60] 12629\n", "(60, 65] 12317\n", "(40, 45] 12053\n", "(35, 40] 10241\n", "(65, 70] 8315\n", "(30, 35] 8123\n", "(75, 120] 7581\n", "(25, 30] 5803\n", "(70, 75] 5600\n", "(20, 25] 2250\n", "dtype: int64" ] } ], "prompt_number": 24 }, { "cell_type": "markdown", "metadata": {}, "source": [ "####Using the age bins, calculate the percent of customers that were delinquent for each bucket" ] }, { "cell_type": "code", "collapsed": false, "input": [ "df[[\"age_bucket\", \"serious_dlqin2yrs\"]].groupby(\"age_bucket\").mean()" ], "language": "python", "metadata": {}, "outputs": [ { "html": [ "
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serious_dlqin2yrs
age_bucket
(20, 25] 0.109778
(25, 30] 0.116319
(30, 35] 0.108211
(35, 40] 0.088956
(40, 45] 0.085124
(45, 50] 0.080995
(50, 55] 0.072890
(55, 60] 0.050598
(60, 65] 0.039864
(65, 70] 0.026458
(70, 75] 0.026607
(75, 120] 0.020314
\n", "
" ], "metadata": {}, "output_type": "pyout", "prompt_number": 25, "text": [ " serious_dlqin2yrs\n", "age_bucket \n", "(20, 25] 0.109778\n", "(25, 30] 0.116319\n", "(30, 35] 0.108211\n", "(35, 40] 0.088956\n", "(40, 45] 0.085124\n", "(45, 50] 0.080995\n", "(50, 55] 0.072890\n", "(55, 60] 0.050598\n", "(60, 65] 0.039864\n", "(65, 70] 0.026458\n", "(70, 75] 0.026607\n", "(75, 120] 0.020314" ] } ], "prompt_number": 25 }, { "cell_type": "code", "collapsed": false, "input": [ "df[[\"age_bucket\", \"serious_dlqin2yrs\"]].groupby(\"age_bucket\").mean().plot()" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 26, "text": [ "" ] }, { "metadata": {}, "output_type": "display_data", "png": 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JrBUjhI6eegpOn4Zly/SORBiJrBWjo8v7fEYk+dk2YwZ88AHs2VP7eBzNyPvP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\nmZmYzWb69+8PQOPGjWnUqJF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"text": [ "" ] } ], "prompt_number": 26 }, { "cell_type": "code", "collapsed": false, "input": [ "labels, levels = pd.factorize(df.age_bucket)\n", "df.age_bucket = labels" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 27 }, { "cell_type": "markdown", "metadata": {}, "source": [ "####Write something that buckets debt_ratio into 4 (nearly) equally sized groups.\n", "*Hint: use the `quantile` method for Series*" ] }, { "cell_type": "code", "collapsed": false, "input": [ "bins = []\n", "\n", "for q in [0.2, 0.4, 0.6, 0.8, 1.0]:\n", " bins.append(df.debt_ratio.quantile(q))\n", "\n", "debt_ratio_binned = pd.cut(df.debt_ratio, bins=bins)\n", "debt_ratio_binned\n", "print pd.value_counts(debt_ratio_binned)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "(0.467, 3.838] 22483\n", "(3.838, 307001] 22483\n", "(0.134, 0.287] 22483\n", "(0.287, 0.467] 22483\n", "dtype: int64\n" ] } ], "prompt_number": 34 }, { "cell_type": "markdown", "metadata": {}, "source": [ "###Scaling Features\n", "Some algorithms will work better if your data is centered around 0. The `StandardScaler` module in `scikit-learn` makes it very easy to quickly scale columns in your data frame." ] }, { "cell_type": "code", "collapsed": false, "input": [ "from sklearn.preprocessing import StandardScaler\n", "\n", "df['monthly_income_scaled'] = StandardScaler().fit_transform(df.monthly_income)" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 35 }, { "cell_type": "code", "collapsed": false, "input": [ "print df.monthly_income_scaled.describe()\n", "print\n", "print \"Mean at 0?\", round(df.monthly_income_scaled.mean(), 10)==0\n", "\n", "pl.hist(df.monthly_income_scaled)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "count 1.124150e+05\n", "mean 1.023365e-15\n", "std 1.000004e+00\n", "min -1.623225e+00\n", "25% -7.356346e-01\n", "50% -1.964956e-01\n", "75% 5.717433e-01\n", "max 2.492341e+00\n", "dtype: float64\n", "\n", "Mean at 0? True\n" ] }, { "metadata": {}, "output_type": "pyout", "prompt_number": 36, "text": [ "(array([ 8669., 15715., 22969., 17668., 15316., 10149., 7454.,\n", " 5079., 2939., 6457.]),\n", " array([-1.62322492, -1.21166838, -0.80011184, -0.38855529, 0.02300125,\n", " 0.4345578 , 0.84611434, 1.25767088, 1.66922743, 2.08078397,\n", " 2.49234051]),\n", " )" ] }, { "metadata": {}, "output_type": "display_data", "png": 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"text": [ "" ] } ], "prompt_number": 36 }, { "cell_type": "markdown", "metadata": {}, "source": [ "##Redo our feature importance" ] }, { "cell_type": "code", "collapsed": false, "input": [ "features = np.array(['revolving_utilization_of_unsecured_lines',\n", " 'age', 'number_of_time30-59_days_past_due_not_worse',\n", " 'debt_ratio', 'monthly_income','number_of_open_credit_lines_and_loans', \n", " 'number_of_times90_days_late', 'number_real_estate_loans_or_lines',\n", " 'number_of_time60-89_days_past_due_not_worse', 'number_of_dependents',\n", " 'income_bins', 'age_bucket', 'monthly_income_scaled'])\n", "\n", "clf = RandomForestClassifier(compute_importances=True)\n", "clf.fit(df[features], df['serious_dlqin2yrs'])\n", "\n", "importances = clf.feature_importances_\n", "sorted_idx = np.argsort(importances)\n", "\n", "padding = np.arange(len(features)) + 0.5\n", "pl.barh(padding, importances[sorted_idx], align='center')\n", "pl.yticks(padding, features[sorted_idx])\n", "pl.xlabel(\"Relative Importance\")\n", "pl.title(\"Variable Importance\")\n", "pl.show()" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stderr", "text": [ "/usr/local/lib/python2.7/site-packages/sklearn/ensemble/forest.py:783: DeprecationWarning: Setting compute_importances is no longer required as version 0.14. Variable importances are now computed on the fly when accessing the feature_importances_ attribute. This parameter will be removed in 0.16.\n", " DeprecationWarning)\n" ] }, { "metadata": {}, "output_type": "display_data", "png": 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I119/HWvWrMGZM2dw8OBBvPDCC7XOU335/v37GDRoEM6cOYNOnTph+/btSEpKQlpaGgwM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\nMxP+/v64dOkSAODXX3/FmTNnUFxcjF69emHVqlVIS0vD3/72N3z11Vf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"text": [ "" ] } ], "prompt_number": 37 }, { "cell_type": "code", "collapsed": false, "input": [ "best_features = features[sorted_idx][::-1]\n", "best_features" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "pyout", "prompt_number": 24, "text": [ "array(['revolving_utilization_of_unsecured_lines', 'debt_ratio',\n", " 'monthly_income', 'number_of_times90_days_late', 'age',\n", " 'monthly_income_scaled', 'number_of_open_credit_lines_and_loans',\n", " 'number_of_time30-59_days_past_due_not_worse',\n", " 'number_of_time60-89_days_past_due_not_worse', 'age_bucket',\n", " 'number_of_dependents', 'number_real_estate_loans_or_lines',\n", " 'income_bins'], \n", " dtype='|S43')" ] } ], "prompt_number": 24 }, { "cell_type": "markdown", "metadata": {}, "source": [ "##Test out your own features\n", "Partner with the person sitting next to you and see if you can come up with some new features that outperform the basic variables.\n", "\n", "- brainstorm new features\n", "- create them using pandas\n", "- test their effectiveness w/ scikit-learn\n", "\n", "Things you might try:\n", "\n", "- Try using some of the scikit-learn [preprecessing functions](http://scikit-learn.org/stable/modules/preprocessing.html#preprocessing)\n", "- Look at `pd.get_dummies`\n", "- Combine features together (total times late, log(monthly_income), age^2)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "##We just did the following\n", "\n", "- Ranked feature importance using RandomForest\n", "- Created some of our own features using `pandas` and `scikit-learn`\n", "- Scaled data using `scikit-learn`" ] } ], "metadata": {} } ] }