Mercurial > pylearn
annotate linear_regression.py @ 141:f5f235bebee4
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author | Frederic Bastien <bastienf@iro.umontreal.ca> |
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date | Mon, 12 May 2008 14:13:39 -0400 |
parents | d0a1bd0378c6 |
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1 |
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2 from learner import * |
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3 from theano import tensor as t |
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4 from theano.scalar import as_scalar |
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5 |
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6 # this is one of the simplest example of learner, and illustrates |
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7 # the use of theano |
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8 class LinearRegression(MinibatchUpdatesTLearner): |
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9 """ |
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10 Implement linear regression, with or without L2 regularization |
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11 (the former is called Ridge Regression and the latter Ordinary Least Squares). |
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12 |
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13 The predictor parameters are obtained analytically from the training set. |
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14 Training can proceed sequentially (with multiple calls to update with |
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15 different disjoint subsets of the training sets). After each call to |
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16 update the predictor is ready to be used (and optimized for the union |
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17 of all the training sets passed to update since construction or since |
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18 the last call to forget). |
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19 |
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20 For each (input[t],output[t]) pair in a minibatch,:: |
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21 |
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22 output_t = b + W * input_t |
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23 |
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24 where b and W are obtained by minimizing:: |
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25 |
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26 L2_regularizer sum_{ij} W_{ij}^2 + sum_t ||output_t - target_t||^2 |
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27 |
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28 Let X be the whole training set inputs matrix (one input example per row), |
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29 with the first column full of 1's, and Let Y the whole training set |
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30 targets matrix (one example's target vector per row). |
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31 Let theta = the matrix with b in its first column and W in the others, |
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32 then each theta[:,i] is the solution of the linear system:: |
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33 |
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34 XtX * theta[:,i] = XtY[:,i] |
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35 |
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36 where XtX is a (n_inputs+1)x(n_inputs+1) matrix containing X'*X |
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37 plus L2_regularizer on the diagonal except at (0,0), |
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38 and XtY is a (n_inputs+1)*n_outputs matrix containing X'*Y. |
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39 |
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40 The fields and attributes expected and produced by use and update are the following: |
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41 |
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42 - Input and output fields (example-wise quantities): |
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43 |
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44 - 'input' (always expected by use and update as an input_dataset field) |
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45 - 'target' (optionally expected by use and update as an input_dataset field) |
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46 - 'output' (optionally produced by use as an output dataset field) |
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47 - 'squared_error' (optionally produced by use as an output dataset field, needs 'target') = example-wise squared error |
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48 |
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49 - optional attributes (optionally expected as input_dataset attributes) |
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50 (warning, this may be dangerous, the 'use' method will use those provided in the |
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51 input_dataset rather than those learned during 'update'; currently no support |
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52 for providing these to update): |
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53 |
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54 - 'L2_regularizer' |
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55 - 'b' |
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56 - 'W' |
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57 - 'parameters' = [b, W] |
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58 - 'regularization_term' |
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59 - 'XtX' |
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60 - 'XtY' |
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61 |
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62 """ |
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63 |
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64 def attributeNames(self): |
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65 return ["L2_regularizer","parameters","b","W","regularization_term","XtX","XtY"] |
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66 |
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67 def useInputAttributes(self): |
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68 return ["b","W"] |
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69 |
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70 def useOutputAttributes(self): |
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71 return [] |
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72 |
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73 def updateInputAttributes(self): |
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74 return ["L2_regularizer","XtX","XtY"] |
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75 |
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76 def updateMinibatchInputFields(self): |
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77 return ["input","target"] |
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78 |
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79 def updateMinibatchInputAttributes(self): |
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80 return ["XtX","XtY"] |
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81 |
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82 def updateMinibatchOutputAttributes(self): |
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83 return ["new_XtX","new_XtY"] |
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84 |
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85 def updateEndInputAttributes(self): |
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86 return ["theta","XtX","XtY"] |
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87 |
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88 def updateEndOutputAttributes(self): |
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89 return ["new_theta","b","W","regularization_term"] # CHECK: WILL b AND W CONTAIN OLD OR NEW THETA? @todo i.e. order of computation = ? |
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90 |
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91 def parameterAttributes(self): |
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92 return ["b","W"] |
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93 |
78 | 94 def defaultOutputFields(self, input_fields): |
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95 output_fields = ["output"] |
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96 if "target" in input_fields: |
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97 output_fields.append("squared_error") |
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98 return output_fields |
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99 |
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100 def __init__(self): |
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101 self._input = t.matrix('input') # n_examples x n_inputs |
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102 self._target = t.matrix('target') # n_examples x n_outputs |
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103 self._L2_regularizer = as_scalar(0.,'L2_regularizer') |
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104 self._theta = t.matrix('theta') |
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105 self._W = self._theta[:,1:] |
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106 self._b = self._theta[:,0] |
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107 self._XtX = t.matrix('XtX') |
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108 self._XtY = t.matrix('XtY') |
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109 self._extended_input = t.prepend_one_to_each_row(self._input) |
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110 self._output = t.dot(self._input,self._W.T) + self._b # (n_examples , n_outputs) matrix |
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111 self._squared_error = t.sum_within_rows(t.sqr(self._output-self._target)) # (n_examples ) vector |
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112 self._regularizer = self._L2_regularizer * t.dot(self._W,self._W) |
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113 self._new_XtX = add_inplace(self._XtX,t.dot(self._extended_input.T,self._extended_input)) |
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114 self._new_XtY = add_inplace(self._XtY,t.dot(self._extended_input.T,self._target)) |
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115 self._new_theta = t.solve_inplace(self._theta,self._XtX,self._XtY) |
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116 |
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117 MinibatchUpdatesTLearner.__init__(self) |
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118 |
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119 def allocate(self,minibatch): |
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120 minibatch_n_inputs = minibatch["input"].shape[1] |
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121 minibatch_n_outputs = minibatch["target"].shape[1] |
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122 if not self._n_inputs: |
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123 self._n_inputs = minibatch_n_inputs |
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124 self._n_outputs = minibatch_n_outputs |
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125 self.XtX = numpy.zeros((1+self._n_inputs,1+self._n_inputs)) |
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126 self.XtY = numpy.zeros((1+self._n_inputs,self._n_outputs)) |
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127 self.theta = numpy.zeros((self._n_outputs,1+self._n_inputs)) |
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128 self.forget() |
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129 elif self._n_inputs!=minibatch_n_inputs or self._n_outputs!=minibatch_n_outputs: |
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130 # if the input or target changes dimension on the fly, we resize and forget everything |
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131 self.forget() |
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132 |
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133 def forget(self): |
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134 if self._n_inputs and self._n_outputs: |
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135 self.XtX.resize((1+self.n_inputs,1+self.n_inputs)) |
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136 self.XtY.resize((1+self.n_inputs,self.n_outputs)) |
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137 self.XtX.data[:,:]=0 |
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138 self.XtY.data[:,:]=0 |
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139 numpy.diag(self.XtX.data)[1:]=self.L2_regularizer |
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140 |