Пример #1
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def test_pybrain_reproducibility():
    # This test fails. Because PyBrain can't reproduce training.
    X, y, _ = generate_classification_data()
    clf1 = PyBrainClassifier(layers=[4], epochs=2).fit(X, y)
    clf2 = PyBrainClassifier(layers=[4], epochs=2).fit(X, y)
    print(clf1.predict_proba(X) - clf2.predict_proba(X))
    assert numpy.allclose(clf1.predict_proba(X), clf2.predict_proba(X)), 'different predicitons'
    check_classification_reproducibility(clf1, X, y)
Пример #2
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def test_theanets_reproducibility():
    clf = TheanetsClassifier(trainers=[{
        'algo': 'nag',
        'min_improvement': 0.1,
        'max_updates': 10
    }])
    X, y, _ = generate_classification_data()
    check_classification_reproducibility(clf, X, y)
Пример #3
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def test_theanets_reproducibility():
    clf = TheanetsClassifier(trainers=[{
        'algo': 'nag',
        'min_improvement': 0.1
    }])
    X, y, _ = generate_classification_data()
    import numpy
    numpy.random.seed(43)
    check_classification_reproducibility(clf, X, y)
Пример #4
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def test_pybrain_reproducibility():
    # This test fails. Because PyBrain can't reproduce training.
    X, y, _ = generate_classification_data()
    clf1 = PyBrainClassifier(layers=[4], epochs=2).fit(X, y)
    clf2 = PyBrainClassifier(layers=[4], epochs=2).fit(X, y)
    print(clf1.predict_proba(X) - clf2.predict_proba(X))
    assert numpy.allclose(clf1.predict_proba(X),
                          clf2.predict_proba(X)), 'different predicitons'
    check_classification_reproducibility(clf1, X, y)
Пример #5
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def test_mn_reproducibility():
    clf = MatrixNetClassifier(iterations=10)
    X, y, _ = generate_classification_data()
    check_classification_reproducibility(clf, X, y)
Пример #6
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def test_neurolab_reproducibility():
    clf = NeurolabClassifier(layers=[4, 5], epochs=2, trainf=nl.train.train_gd)
    X, y, _ = generate_classification_data()
    check_classification_reproducibility(clf, X, y)
Пример #7
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def test_neurolab_reproducibility():
    clf = NeurolabClassifier(layers=[4, 5], epochs=2, trainf=nl.train.train_gd)
    X, y, _ = generate_classification_data()
    check_classification_reproducibility(clf, X, y)
Пример #8
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def test_theanets_reproducibility():
    clf = TheanetsClassifier(trainers=[{'min_improvement': 1}])
    X, y, _ = generate_classification_data()
    check_classification_reproducibility(clf, X, y)
Пример #9
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def test_theanets_reproducibility():
    clf = TheanetsClassifier(trainers=[{'min_improvement': 1}])
    X, y, _ = generate_classification_data()
    check_classification_reproducibility(clf, X, y)
Пример #10
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def test_mn_reproducibility():
    clf = MatrixNetClassifier(iterations=10)
    X, y, _ = generate_classification_data()
    check_classification_reproducibility(clf, X, y)
Пример #11
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def test_theanets_reproducibility():
    clf = TheanetsClassifier(trainers=[{'algo': 'nag', 'min_improvement': 0.1}])
    X, y, _ = generate_classification_data()
    import numpy
    numpy.random.seed(43)
    check_classification_reproducibility(clf, X, y)
Пример #12
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def test_theanets_reproducibility():
    clf = TheanetsClassifier(trainers=[{'algo': 'nag', 'min_improvement': 0.1, 'max_updates': 10}])
    X, y, _ = generate_classification_data()
    check_classification_reproducibility(clf, X, y)