Mercurial > pylearn
annotate linear_regression.py @ 406:c2e6a8fcc35e
Globals are now parameters for the RBM model
author | Joseph Turian <turian@gmail.com> |
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date | Thu, 10 Jul 2008 02:10:23 -0400 |
parents | 273e5c03003e |
children | 5175c564e37a |
rev | line source |
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1 """ |
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2 Implementation of linear regression, with or without L2 regularization. |
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3 This is one of the simplest example of L{learner}, and illustrates |
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4 the use of theano. |
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5 """ |
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6 |
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7 from pylearn.learner import OfflineLearningAlgorithm |
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8 from theano import tensor as T |
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9 from theano.others_ops import prepend_1_to_each_row |
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10 from theano.scalar import as_scalar |
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11 from common.autoname import AutoName |
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12 import theano |
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13 import numpy |
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14 |
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15 class LinearRegression(OfflineLearningAlgorithm): |
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16 """ |
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17 Implement linear regression, with or without L2 regularization |
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18 (the former is called Ridge Regression and the latter Ordinary Least Squares). |
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19 |
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20 Usage: |
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21 |
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22 linear_regressor=LinearRegression(L2_regularizer=0.1) |
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23 linear_predictor=linear_regression(training_set) |
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24 all_results_dataset=linear_predictor(test_set) # creates a dataset with "output" and "squared_error" field |
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25 outputs = linear_predictor.compute_outputs(inputs) # inputs and outputs are numpy arrays |
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26 outputs, errors = linear_predictor.compute_outputs_and_errors(inputs,targets) |
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27 errors = linear_predictor.compute_errors(inputs,targets) |
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28 mse = linear_predictor.compute_mse(inputs,targets) |
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29 |
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30 |
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31 |
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32 The training_set must have fields "input" and "target". |
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33 The test_set must have field "input", and needs "target" if |
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34 we want to compute the squared errors. |
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35 |
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36 The predictor parameters are obtained analytically from the training set. |
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37 Training can proceed sequentially (with multiple calls to update with |
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38 different disjoint subsets of the training sets). After each call to |
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39 update the predictor is ready to be used (and optimized for the union |
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40 of all the training sets passed to update since construction or since |
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41 the last call to forget). |
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42 |
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43 For each (input[t],output[t]) pair in a minibatch,:: |
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44 |
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45 output_t = b + W * input_t |
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46 |
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47 where b and W are obtained by minimizing:: |
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48 |
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49 L2_regularizer sum_{ij} W_{ij}^2 + sum_t ||output_t - target_t||^2 |
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50 |
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51 Let X be the whole training set inputs matrix (one input example per row), |
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52 with the first column full of 1's, and Let Y the whole training set |
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53 targets matrix (one example's target vector per row). |
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54 Let theta = the matrix with b in its first column and W in the others, |
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55 then each theta[:,i] is the solution of the linear system:: |
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56 |
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57 XtX * theta[:,i] = XtY[:,i] |
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58 |
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59 where XtX is a (n_inputs+1)x(n_inputs+1) matrix containing X'*X |
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60 plus L2_regularizer on the diagonal except at (0,0), |
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61 and XtY is a (n_inputs+1)*n_outputs matrix containing X'*Y. |
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62 |
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63 The dataset fields expected and produced by the learning algorithm and the trained model |
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64 are the following: |
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65 |
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66 - Input and output dataset fields (example-wise quantities): |
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67 |
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68 - 'input' (always expected as an input_dataset field) |
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69 - 'target' (always expected by the learning algorithm, optional for learned model) |
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70 - 'output' (always produced by learned model) |
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71 - 'squared_error' (optionally produced by learned model if 'target' is provided) |
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72 = example-wise squared error |
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73 """ |
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74 def __init__(self, L2_regularizer=0,minibatch_size=10000): |
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75 self.L2_regularizer=L2_regularizer |
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76 self.equations = LinearRegressionEquations() |
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77 self.minibatch_size=1000 |
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78 |
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79 def __call__(self,trainset): |
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80 first_example = trainset[0] |
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81 n_inputs = first_example['input'].size |
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82 n_outputs = first_example['target'].size |
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83 XtX = numpy.zeros((n_inputs+1,n_inputs+1)) |
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84 XtY = numpy.zeros((n_inputs+1,n_outputs)) |
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85 for i in xrange(n_inputs): |
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86 XtX[i+1,i+1]=self.L2_regularizer |
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87 mbs=min(self.minibatch_size,len(trainset)) |
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88 for inputs,targets in trainset.minibatches(["input","target"],minibatch_size=mbs): |
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89 XtX,XtY=self.equations.update(XtX,XtY,numpy.array(inputs),numpy.array(targets)) |
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90 theta=numpy.linalg.solve(XtX,XtY) |
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91 return LinearPredictor(theta) |
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92 |
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93 class LinearPredictorEquations(AutoName): |
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94 inputs = T.matrix() # minibatchsize x n_inputs |
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95 targets = T.matrix() # minibatchsize x n_outputs |
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96 theta = T.matrix() # (n_inputs+1) x n_outputs |
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97 b = theta[0] |
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98 Wt = theta[1:,:] |
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99 outputs = T.dot(inputs,Wt) + b # minibatchsize x n_outputs |
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100 squared_errors = T.sum(T.sqr(targets-outputs),axis=1) |
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101 |
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102 __compiled = False |
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103 @classmethod |
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104 def compile(cls,linker='c|py'): |
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105 if cls.__compiled: |
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106 return |
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107 def fn(input_vars,output_vars): |
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108 return staticmethod(theano.function(input_vars,output_vars, linker=linker)) |
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109 |
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110 cls.compute_outputs = fn([cls.inputs,cls.theta],[cls.outputs]) |
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111 cls.compute_errors = fn([cls.outputs,cls.targets],[cls.squared_errors]) |
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112 |
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113 cls.__compiled = True |
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114 |
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115 def __init__(self): |
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116 self.compile() |
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117 |
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118 class LinearRegressionEquations(LinearPredictorEquations): |
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119 P = LinearPredictorEquations |
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120 XtX = T.matrix() # (n_inputs+1) x (n_inputs+1) |
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121 XtY = T.matrix() # (n_inputs+1) x n_outputs |
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122 extended_input = prepend_1_to_each_row(P.inputs) |
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123 new_XtX = T.add_inplace(XtX,T.dot(extended_input.T,extended_input)) |
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124 new_XtY = T.add_inplace(XtY,T.dot(extended_input.T,P.targets)) |
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125 |
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126 __compiled = False |
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127 |
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128 @classmethod |
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129 def compile(cls,linker='c|py'): |
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130 if cls.__compiled: |
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131 return |
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132 def fn(input_vars,output_vars): |
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133 return staticmethod(theano.function(input_vars,output_vars, linker=linker)) |
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134 |
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135 cls.update = fn([cls.XtX,cls.XtY,cls.P.inputs,cls.P.targets],[cls.new_XtX,cls.new_XtY]) |
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136 |
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137 cls.__compiled = True |
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138 |
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139 def __init__(self): |
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140 self.compile() |
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141 |
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142 class LinearPredictor(object): |
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143 """ |
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144 A linear predictor has parameters theta (a bias vector and a weight matrix) |
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145 it can use to make a linear prediction (according to the LinearPredictorEquations). |
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146 It can compute its output (bias + weight * input) and a squared error (||output - target||^2). |
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147 """ |
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148 def __init__(self, theta): |
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149 self.theta=theta |
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150 self.n_inputs=theta.shape[0]-1 |
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151 self.n_outputs=theta.shape[1] |
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152 self.equations = LinearPredictorEquations() |
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153 |
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154 def compute_outputs(self,inputs): |
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155 return self.equations.compute_outputs(inputs,self.theta) |
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156 def compute_errors(self,inputs,targets): |
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157 return self.equations.compute_errors(self.compute_outputs(inputs),targets) |
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158 def compute_outputs_and_errors(self,inputs,targets): |
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159 outputs = self.compute_outputs(inputs) |
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160 return [outputs,self.equations.compute_errors(outputs,targets)] |
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161 def compute_mse(self,inputs,targets): |
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162 errors = self.compute_errors(inputs,targets) |
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163 return numpy.sum(errors)/errors.size |
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164 |
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165 def __call__(self,dataset,output_fieldnames=None,cached_output_dataset=False): |
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166 assert dataset.hasFields(["input"]) |
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167 if output_fieldnames is None: |
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168 if dataset.hasFields(["target"]): |
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169 output_fieldnames = ["output","squared_error"] |
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170 else: |
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171 output_fieldnames = ["output"] |
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172 output_fieldnames.sort() |
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173 if output_fieldnames == ["squared_error"]: |
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174 f = self.compute_errors |
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175 elif output_fieldnames == ["output"]: |
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176 f = self.compute_outputs |
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177 elif output_fieldnames == ["output","squared_error"]: |
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178 f = self.compute_outputs_and_errors |
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179 else: |
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180 raise ValueError("unknown field(s) in output_fieldnames: "+str(output_fieldnames)) |
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181 |
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182 ds=ApplyFunctionDataSet(dataset,f,output_fieldnames) |
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183 if cached_output_dataset: |
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184 return CachedDataSet(ds) |
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185 else: |
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186 return ds |
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187 |
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188 |