Mercurial > hg > tvii
annotate tests/test_logistic_regression.py @ 65:16bd13cd58bc
add bounding box functions
author | Jeff Hammel <k0scist@gmail.com> |
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date | Sun, 17 Dec 2017 12:46:20 -0800 |
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11 | 1 #!/usr/bin/env python |
2 | |
3 """ | |
4 test logistic regression | |
5 """ | |
6 | |
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7 import numpy as np |
11 | 8 import os |
9 import unittest | |
10 from tvii import logistic_regression | |
11 | |
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11 | 13 class LogisticRegresionTests(unittest.TestCase): |
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14 |
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15 def compare_arrays(self, a, b): |
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16 assert a.shape == b.shape |
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17 for x, y in zip(a.flatten(), |
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18 b.flatten()): |
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19 self.assertAlmostEqual(x, y) |
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20 |
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21 |
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22 def test_cost(self): |
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23 """test cost function""" |
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24 |
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25 w, b, X, Y = (np.array([[1],[2]]), |
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26 2, |
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27 np.array([[1,2],[3,4]]), |
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28 np.array([[1,0]])) |
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29 |
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30 expected_cost = 6.000064773192205 |
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31 cost = logistic_regression.cost_function(w, b, X, Y) |
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32 assert abs(cost - expected_cost) < 1e-6 |
11 | 33 |
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34 def test_propagate(self): |
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35 """test canned logistic regression example""" |
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36 |
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37 # sample variables |
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38 w = np.array([[1],[2]]) |
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39 b = 2 |
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40 X = np.array([[1,2],[3,4]]) |
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41 Y = np.array([[1,0]]) |
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42 |
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43 # calculate gradient and cost |
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44 grads, cost = logistic_regression.propagate(w, b, X, Y) |
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45 |
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46 # compare to expected, |
29 | 47 dw_expected = np.array([[ 0.99993216], [ 1.99980262]]) |
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48 db_expected = 0.499935230625 |
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49 cost_expected = 6.000064773192205 |
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50 |
29 | 51 self.assertAlmostEqual(cost_expected, cost) |
52 self.assertAlmostEqual(grads['db'], db_expected) | |
53 assert grads['dw'].shape == dw_expected.shape | |
54 for a, b in zip(grads['dw'].flatten(), | |
55 dw_expected.flatten()): | |
56 self.assertAlmostEqual(a, b) | |
57 | |
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58 def test_optimize(self): |
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59 """test gradient descent method""" |
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60 |
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61 # test examples |
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62 w, b, X, Y = (np.array([[1],[2]]), 2, np.array([[1,2],[3,4]]), np.array([[1,0]])) |
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63 |
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64 params, grads, costs = logistic_regression.optimize(w, b, X, Y, num_iterations= 100, learning_rate = 0.009, print_cost = False) |
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65 |
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66 # expected output |
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67 w_expected = np.array([[0.1124579 ], |
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68 [0.23106775]]) |
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69 dw_expected = np.array([[ 0.90158428], |
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70 [ 1.76250842]]) |
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71 b_expected = 1.55930492484 |
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72 db_expected = 0.430462071679 |
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73 |
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74 # compare output |
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75 self.assertAlmostEqual(params['b'], b_expected) |
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76 self.assertAlmostEqual(grads['db'], db_expected) |
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77 self.compare_arrays(w_expected, params['w']) |
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78 self.compare_arrays(dw_expected, grads['dw']) |
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79 |
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80 def test_predict(self): |
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81 |
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82 w, b, X, Y = (np.array([[1],[2]]), 2, np.array([[1,2],[3,4]]), np.array([[1,0]])) |
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83 |
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84 predictions = logistic_regression.predict(w, b, X) |
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85 |
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86 assert predictions[0][0] == 1 |
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87 assert predictions[0][1] == 1 |
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88 |
11 | 89 if __name__ == '__main__': |
90 unittest.main() |