Beispiel #1
0
def test_iwe_logistic_discrimination():
    """Test for estimating through logistic classifier."""
    X = rnd.randn(10, 2)
    Z = rnd.randn(10, 2) + 1
    clf = ImportanceWeightedClassifier()
    iw = clf.iwe_logistic_discrimination(X, Z)
    assert np.all(iw >= 0)
Beispiel #2
0
               accuracy_targ = sum((target_probas_>0.5)==classes_test)/(1.0*n_test_samples)           
               print (subject,target_subj,index,l,iw,accuracy_org,accuracy_targ)

    elif mode==3:            # Evaluation of classifiers using the full training set as test set
       y = classes_train
       nsamples = y.shape[0]
       n_test_samples = classes_test.shape[0]
       for index in  [1,2,6,7,8,9,10,11,12,13]:  #range(1,n_classifiers):          
          for iw  in [0,1,2,3]:
             iwe = weighting_functions[iw] 
             w_clf = ImportanceWeightedClassifier(iwe=iwe)
             X = np.asarray(MEG_data_train)
             Y = np.asarray(MEG_data_test)
             w_clf.fit(X,y,Y)
             if iwe == 'lr':
                w = w_clf.iwe_logistic_discrimination(X, Y)
             elif iwe == 'rg':
                w = w_clf.iwe_ratio_gaussians(X, Y)
             elif iwe == 'nn':
                w = w_clf.iwe_nearest_neighbours(X, Y)
             elif iwe == 'kde':
                w = w_clf.iwe_kernel_densities(X, Y)
             elif iwe == 'kmm':
                w = w_clf.iwe_kernel_mean_matching(X, Y)
             else:
                raise NotImplementedError('Estimator not implemented.')

             clf = Weighted_InitClassifier(index)             
              # Find importance-weights            

             probas_ = clf.fit(X, y, sample_weight=w).predict(X)