def evaluation_cross_validation_multiclass_storage(traindat=traindat, label_traindat=label_traindat):
    from shogun.Evaluation import CrossValidation, CrossValidationResult
    from shogun.Evaluation import CrossValidationPrintOutput
    from shogun.Evaluation import CrossValidationMKLStorage, CrossValidationMulticlassStorage
    from shogun.Evaluation import MulticlassAccuracy, F1Measure
    from shogun.Evaluation import StratifiedCrossValidationSplitting
    from shogun.Features import MulticlassLabels
    from shogun.Features import RealFeatures, CombinedFeatures
    from shogun.Kernel import GaussianKernel, CombinedKernel
    from shogun.Classifier import MKLMulticlass
    from shogun.Mathematics import Statistics, MSG_DEBUG

    # training data, combined features all on same data
    features=RealFeatures(traindat)
    comb_features=CombinedFeatures()
    comb_features.append_feature_obj(features)
    comb_features.append_feature_obj(features)
    comb_features.append_feature_obj(features)
    labels=MulticlassLabels(label_traindat)
    
    # kernel, different Gaussians combined
    kernel=CombinedKernel()
    kernel.append_kernel(GaussianKernel(10, 0.1))
    kernel.append_kernel(GaussianKernel(10, 1))
    kernel.append_kernel(GaussianKernel(10, 2))

    # create mkl using libsvm, due to a mem-bug, interleaved is not possible
    svm=MKLMulticlass(1.0,kernel,labels);
    svm.set_kernel(kernel);

    # splitting strategy for 5 fold cross-validation (for classification its better
    # to use "StratifiedCrossValidation", but the standard
    # "StratifiedCrossValidationSplitting" is also available
    splitting_strategy=StratifiedCrossValidationSplitting(labels, 5)

    # evaluation method
    evaluation_criterium=MulticlassAccuracy()

    # cross-validation instance
    cross_validation=CrossValidation(svm, comb_features, labels,
        splitting_strategy, evaluation_criterium)
    cross_validation.set_autolock(False)

    # append cross vlaidation output classes
    #cross_validation.add_cross_validation_output(CrossValidationPrintOutput())
    #mkl_storage=CrossValidationMKLStorage()
    #cross_validation.add_cross_validation_output(mkl_storage)
    multiclass_storage=CrossValidationMulticlassStorage()
    multiclass_storage.append_binary_evaluation(F1Measure())
    cross_validation.add_cross_validation_output(multiclass_storage)
    cross_validation.set_num_runs(3)
    
    # perform cross-validation
    result=cross_validation.evaluate()

    roc_0_0_0 = multiclass_storage.get_fold_ROC(0,0,0)
    #print roc_0_0_0
    auc_0_0_0 = multiclass_storage.get_fold_evaluation_result(0,0,0,0)
    #print auc_0_0_0
    return roc_0_0_0, auc_0_0_0
Example #2
0
def evaluation_cross_validation_mkl_weight_storage(traindat=traindat, label_traindat=label_traindat):
    from shogun.Evaluation import CrossValidation, CrossValidationResult
    from shogun.Evaluation import CrossValidationPrintOutput
    from shogun.Evaluation import CrossValidationMKLStorage
    from shogun.Evaluation import ContingencyTableEvaluation, ACCURACY
    from shogun.Evaluation import StratifiedCrossValidationSplitting
    from shogun.Features import BinaryLabels
    from shogun.Features import RealFeatures, CombinedFeatures
    from shogun.Kernel import GaussianKernel, CombinedKernel
    from shogun.Classifier import LibSVM, MKLClassification
    from shogun.Mathematics import Statistics

    # training data, combined features all on same data
    features=RealFeatures(traindat)
    comb_features=CombinedFeatures()
    comb_features.append_feature_obj(features)
    comb_features.append_feature_obj(features)
    comb_features.append_feature_obj(features)
    labels=BinaryLabels(label_traindat)
    
    # kernel, different Gaussians combined
    kernel=CombinedKernel()
    kernel.append_kernel(GaussianKernel(10, 0.1))
    kernel.append_kernel(GaussianKernel(10, 1))
    kernel.append_kernel(GaussianKernel(10, 2))

    # create mkl using libsvm, due to a mem-bug, interleaved is not possible
    svm=MKLClassification(LibSVM());
    svm.set_interleaved_optimization_enabled(False);
    svm.set_kernel(kernel);

    # splitting strategy for 5 fold cross-validation (for classification its better
    # to use "StratifiedCrossValidation", but the standard
    # "StratifiedCrossValidationSplitting" is also available
    splitting_strategy=StratifiedCrossValidationSplitting(labels, 5)

    # evaluation method
    evaluation_criterium=ContingencyTableEvaluation(ACCURACY)

    # cross-validation instance
    cross_validation=CrossValidation(svm, comb_features, labels,
        splitting_strategy, evaluation_criterium)
    cross_validation.set_autolock(False)

    # append cross vlaidation output classes
    #cross_validation.add_cross_validation_output(CrossValidationPrintOutput())
    mkl_storage=CrossValidationMKLStorage()
    cross_validation.add_cross_validation_output(mkl_storage)
    cross_validation.set_num_runs(3)
    
    # perform cross-validation
    result=cross_validation.evaluate()

    # print mkl weights
    weights=mkl_storage.get_mkl_weights()
Example #3
0
def evaluation_cross_validation_multiclass_storage(
        traindat=traindat, label_traindat=label_traindat):
    from shogun.Evaluation import CrossValidation, CrossValidationResult
    from shogun.Evaluation import CrossValidationPrintOutput
    from shogun.Evaluation import CrossValidationMKLStorage, CrossValidationMulticlassStorage
    from shogun.Evaluation import MulticlassAccuracy, F1Measure
    from shogun.Evaluation import StratifiedCrossValidationSplitting
    from shogun.Features import MulticlassLabels
    from shogun.Features import RealFeatures, CombinedFeatures
    from shogun.Kernel import GaussianKernel, CombinedKernel
    from shogun.Classifier import MKLMulticlass
    from shogun.Mathematics import Statistics, MSG_DEBUG

    # training data, combined features all on same data
    features = RealFeatures(traindat)
    comb_features = CombinedFeatures()
    comb_features.append_feature_obj(features)
    comb_features.append_feature_obj(features)
    comb_features.append_feature_obj(features)
    labels = MulticlassLabels(label_traindat)

    # kernel, different Gaussians combined
    kernel = CombinedKernel()
    kernel.append_kernel(GaussianKernel(10, 0.1))
    kernel.append_kernel(GaussianKernel(10, 1))
    kernel.append_kernel(GaussianKernel(10, 2))

    # create mkl using libsvm, due to a mem-bug, interleaved is not possible
    svm = MKLMulticlass(1.0, kernel, labels)
    svm.set_kernel(kernel)

    # splitting strategy for 5 fold cross-validation (for classification its better
    # to use "StratifiedCrossValidation", but the standard
    # "StratifiedCrossValidationSplitting" is also available
    splitting_strategy = StratifiedCrossValidationSplitting(labels, 5)

    # evaluation method
    evaluation_criterium = MulticlassAccuracy()

    # cross-validation instance
    cross_validation = CrossValidation(svm, comb_features, labels,
                                       splitting_strategy,
                                       evaluation_criterium)
    cross_validation.set_autolock(False)

    # append cross vlaidation output classes
    #cross_validation.add_cross_validation_output(CrossValidationPrintOutput())
    #mkl_storage=CrossValidationMKLStorage()
    #cross_validation.add_cross_validation_output(mkl_storage)
    multiclass_storage = CrossValidationMulticlassStorage()
    multiclass_storage.append_binary_evaluation(F1Measure())
    cross_validation.add_cross_validation_output(multiclass_storage)
    cross_validation.set_num_runs(3)

    # perform cross-validation
    result = cross_validation.evaluate()

    roc_0_0_0 = multiclass_storage.get_fold_ROC(0, 0, 0)
    #print roc_0_0_0
    auc_0_0_0 = multiclass_storage.get_fold_evaluation_result(0, 0, 0, 0)
    #print auc_0_0_0
    return roc_0_0_0, auc_0_0_0