Пример #1
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def test_skope_rules():
    """Check various parameter settings."""
    X_train = [[-2, -1], [-1, -1], [-1, -2], [1, 1], [1, 2], [2, 1], [6, 3],
               [-4, -7]]
    y_train = [0] * 6 + [1] * 2
    X_test = np.array([[2, 1], [1, 1]])

    grid = ParameterGrid({
        "feature_names": [None, ['a', 'b']],
        "precision_min": [0.],
        "recall_min": [0.],
        "n_estimators": [1],
        "max_samples": [0.5, 4],
        "max_samples_features": [0.5, 2],
        "bootstrap": [True, False],
        "bootstrap_features": [True, False],
        "max_depth": [2],
        "max_features": ["auto", 1, 0.1],
        "min_samples_split": [2, 0.1],
        "n_jobs": [-1, 2]
    })

    with suppress_warnings():
        for params in grid:
            SkopeRulesClassifier(random_state=rng,
                                 **params).fit(X_train,
                                               y_train).predict(X_test)

    # additional parameters:
    SkopeRulesClassifier(n_estimators=50,
                         max_samples=1.,
                         recall_min=0.,
                         precision_min=0.).fit(X_train,
                                               y_train).predict(X_test)
Пример #2
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def test_f1_score():
    clf = SkopeRulesClassifier()
    rule0 = ('a > 0', (0, 0, 0))
    rule1 = ('a > 0', (0.5, 0.5, 0))
    rule2 = ('a > 0', (0.5, 0, 0))

    assert clf.f1_score(rule0) == 0
    assert clf.f1_score(rule1) == 0.5
    assert clf.f1_score(rule2) == 0
Пример #3
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def test_max_samples_attribute():
    X = iris.data
    y = iris.target
    y = (y != 0)

    clf = SkopeRulesClassifier(max_samples=1.).fit(X, y)
    assert clf.max_samples_ == X.shape[0]

    clf = SkopeRulesClassifier(max_samples=500)
    assert_warns(UserWarning, clf.fit, X, y)
    assert clf.max_samples_ == X.shape[0]

    clf = SkopeRulesClassifier(max_samples=0.4).fit(X, y)
    assert clf.max_samples_ == 0.4 * X.shape[0]
Пример #4
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def test_performances():
    X, y = make_blobs(n_samples=1000, random_state=0, centers=2)

    # make labels imbalanced by remove all but 100 instances from class 1
    indexes = np.ones(X.shape[0]).astype(bool)
    ind = np.array([False] * 100 + list(((y == 1)[100:])))
    indexes[ind] = 0
    X = X[indexes]
    y = y[indexes]
    n_samples, n_features = X.shape

    clf = SkopeRulesClassifier()
    # fit
    clf.fit(X, y)
    # with lists
    clf.fit(X.tolist(), y.tolist())
    y_pred = clf.predict(X)
    assert y_pred.shape == (n_samples, )
    # training set performance
    assert accuracy_score(y, y_pred) > 0.83

    # decision_function agrees with predict
    decision = -clf.decision_function(X)
    assert decision.shape == (n_samples, )
    dec_pred = (decision.ravel() < 0).astype(np.int)
    assert_array_equal(dec_pred, y_pred)
Пример #5
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def test_deduplication_works():
    # toy sample (the last two samples are outliers)
    X = [[-2, -1], [-1, -1], [-1, -2], [1, 1], [1, 2], [2, 1], [6, 3], [4, -7]]
    y = [0] * 6 + [1] * 2
    X_test = [[-2, -1], [-1, -1], [-1, -2], [1, 1], [1, 2], [2, 1], [10, 5],
              [5, -7]]
    # Test LOF
    clf = SkopeRulesClassifier(random_state=rng,
                               max_samples=1.,
                               max_depth_duplication=3)
    clf.fit(X, y)
    decision_func = clf.decision_function(X_test)
    rules_vote = clf.rules_vote(X_test)
    score_top_rules = clf.score_top_rules(X_test)
    pred = clf.predict(X_test)
    pred_score_top_rules = clf.predict_top_rules(X_test, 1)
    assert True, 'deduplication works'
Пример #6
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def test_skope_rules_works():
    # toy sample (the last two samples are outliers)
    X = [[-2, -1], [-1, -1], [-1, -2], [1, 1], [1, 2], [2, 1], [6, 3], [4, -7]]
    y = [0] * 6 + [1] * 2
    X_test = [[-2, -1], [-1, -1], [-1, -2], [1, 1], [1, 2], [2, 1], [10, 5],
              [5, -7]]
    # Test LOF
    clf = SkopeRulesClassifier(random_state=rng, max_samples=1.)
    clf.fit(X, y)
    decision_func = clf.decision_function(X_test)
    rules_vote = clf.rules_vote(X_test)
    score_top_rules = clf.score_top_rules(X_test)
    pred = clf.predict(X_test)
    pred_score_top_rules = clf.predict_top_rules(X_test, 1)
    # assert detect outliers:
    assert np.min(decision_func[-2:]) > np.max(decision_func[:-2])
    assert np.min(rules_vote[-2:]) > np.max(rules_vote[:-2])
    assert np.min(score_top_rules[-2:]) > np.max(score_top_rules[:-2])
    assert_array_equal(pred, 6 * [0] + 2 * [1])
    assert_array_equal(pred_score_top_rules, 6 * [0] + 2 * [1])
Пример #7
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def test_skope_rules_error():
    """Test that it gives proper exception on deficient input."""
    X = iris.data
    y = iris.target
    y = (y != 0)

    # Test max_samples
    assert_raises(ValueError, SkopeRulesClassifier(max_samples=-1).fit, X, y)
    assert_raises(ValueError, SkopeRulesClassifier(max_samples=0.0).fit, X, y)
    assert_raises(ValueError, SkopeRulesClassifier(max_samples=2.0).fit, X, y)
    # explicitly setting max_samples > n_samples should result in a warning.
    assert_warns(UserWarning, SkopeRulesClassifier(max_samples=1000).fit, X, y)
    assert_no_warnings(SkopeRulesClassifier(max_samples=np.int64(2)).fit, X, y)
    assert_raises(ValueError,
                  SkopeRulesClassifier(max_samples='foobar').fit, X, y)
    assert_raises(ValueError, SkopeRulesClassifier(max_samples=1.5).fit, X, y)
    assert_raises(ValueError,
                  SkopeRulesClassifier(max_depth_duplication=1.5).fit, X, y)
    assert_raises(ValueError,
                  SkopeRulesClassifier().fit(X, y).predict, X[:, 1:])
    assert_raises(ValueError,
                  SkopeRulesClassifier().fit(X, y).decision_function, X[:, 1:])
    assert_raises(ValueError,
                  SkopeRulesClassifier().fit(X, y).rules_vote, X[:, 1:])
    assert_raises(ValueError,
                  SkopeRulesClassifier().fit(X, y).score_top_rules, X[:, 1:])