Esempio n. 1
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def experiment2_1(train, test, f):
    over_sampled_train = SMOTEOverSampling(train)
    keep = decisionTreeFSelect(over_sampled_train, 1000)
    keep = f(over_sampled_train[keep])
    train = Standardization(over_sampled_train[keep])
    test = Standardization(test[keep])
    return svm(train, test)
Esempio n. 2
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def experiment3_2(train, test, variance):
    over_sampled_train = SMOTEOverSampling(train)
    keep = lowVarianceElimination(over_sampled_train, variance)
    keep = decisionTreeFSelect(over_sampled_train[keep], 1000)
    train = Standardization(over_sampled_train[keep])
    test = Standardization(test[keep])
    return svm(train, test)
Esempio n. 3
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def experiment10_1(train, test, f):
    over_sampled_train = SMOTEOverSampling(train)
    keep = decisionTreeFSelect(over_sampled_train)
    keep = f(over_sampled_train[keep])
    train = over_sampled_train[keep]
    test = test[keep]
    return svm(train, test)
Esempio n. 4
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def experiment16_1(train, test, f):
    keep = decisionTreeFSelect(train)
    keep = f(train[keep])
    train = Standardization(train[keep])
    test = Standardization(test[keep])
    return svm(train, test)
Esempio n. 5
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def experiment20_1(train, test, f):
    keep = decisionTreeFSelect(train)
    keep = f(train[keep])
    train = Standardization(train[keep])
    test = Standardization(test[keep])
    return feedForwardNN(train, test)
Esempio n. 6
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def experiment12_1(train, test, f):
    over_sampled_train = SMOTEOverSampling(train)
    keep = decisionTreeFSelect(over_sampled_train)
    keep = f(over_sampled_train[keep])
    return randomForest(over_sampled_train[keep], test[keep])