Exemplo n.º 1
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def test_frienemy_safe_region():
    ds_test = DS(create_pool_classifiers(), safe_k=3)
    ds_test.processed_dsel = dsel_processed_ex1
    ds_test.DSEL_target = y_dsel_ex1
    ds_test.DSEL_data = X_dsel_ex1
    ds_test.neighbors = np.array([0, 1, 2, 6, 7, 8, 14])
    result = ds_test._frienemy_pruning()
    assert np.array_equal(result, np.array([[1, 1, 1]]))
Exemplo n.º 2
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def test_frienemy_not_all_classifiers_crosses():
    ds_test = DS(create_pool_classifiers(), safe_k=3)
    ds_test.processed_dsel = dsel_processed_ex1
    ds_test.DSEL_target = y_dsel_ex1
    ds_test.DSEL_data = X_dsel_ex1
    ds_test.neighbors = neighbors_ex1[0, :]
    result = ds_test._frienemy_pruning()
    assert np.array_equal(result, np.array([[1, 1, 0]]))
Exemplo n.º 3
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def test_frienemy_all_classifiers_crosses(index):
    ds_test = DS(create_pool_classifiers())
    ds_test.processed_dsel = dsel_processed_all_ones
    ds_test.DSEL_target = y_dsel_ex1
    ds_test.DSEL_data = X_dsel_ex1
    ds_test.neighbors = neighbors_ex1[index, :]
    result = ds_test._frienemy_pruning()
    assert result.all() == 1.0
Exemplo n.º 4
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def test_frienemy_no_classifier_crosses():
    X = X_dsel_ex1
    y = y_dsel_ex1
    ds_test = DS(create_pool_classifiers())
    ds_test.fit(X, y)
    ds_test.neighbors = neighbors_ex1[0, :]
    mask = ds_test._frienemy_pruning()
    assert mask.shape == (1, 3) and np.allclose(mask, 1)
Exemplo n.º 5
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def test_frienemy_no_classifier_crosses():
    X = X_dsel_ex1
    y = y_dsel_ex1
    ds_test = DS(create_pool_classifiers())
    ds_test.fit(X, y)
    ds_test.neighbors = neighbors_ex1[0, :]
    mask = ds_test._frienemy_pruning()
    assert mask.size == 3 and mask.all() == 1
Exemplo n.º 6
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def test_frienemy_not_all_classifiers_crosses_batch():
    expected = np.array([[1, 1, 0], [0, 1, 0], [1, 1, 1]])
    ds_test = DS(create_pool_classifiers(), safe_k=3)
    ds_test.processed_dsel = dsel_processed_ex1
    ds_test.DSEL_target = y_dsel_ex1
    ds_test.DSEL_data = X_dsel_ex1
    # passing three samples to compute the DFP at the same time
    ds_test.neighbors = neighbors_ex1
    result = ds_test._frienemy_pruning()
    assert np.array_equal(result, expected)
Exemplo n.º 7
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def test_frienemy_safe_region_batch():
    n_samples = 10
    n_classifiers = 3
    expected = np.ones((n_samples, n_classifiers))
    ds_test = DS(create_pool_classifiers(), safe_k=3)
    ds_test.processed_dsel = dsel_processed_ex1
    ds_test.DSEL_target = y_dsel_ex1
    ds_test.DSEL_data = X_dsel_ex1
    ds_test.neighbors = np.tile(np.array([0, 1, 2, 6, 7, 8, 14]),
                                (n_samples, 1))
    result = ds_test._frienemy_pruning()

    assert np.array_equal(result, expected)