def test_intercept_transformer():
    data = patsy.demo_data("x1", "x2", "x3", "y")

    # check wether X contains only the two features, no intercept
    est = PatsyTransformer("x1 + x2")
    est.fit(data)
    assert_equal(est.transform(data).shape[1], 2)

    # check wether X does contain intercept
    est = PatsyTransformer("x1 + x2", add_intercept=True)
    est.fit(data)
    data_transformed = est.transform(data)
    assert_array_equal(data_transformed[:, 0], 1)
    assert_equal(est.transform(data).shape[1], 3)
Beispiel #2
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def test_intercept_transformer():
    data = patsy.demo_data("x1", "x2", "x3", "y")

    # check wether X contains only the two features, no intercept
    est = PatsyTransformer("x1 + x2")
    est.fit(data)
    assert_equal(est.transform(data).shape[1], 2)

    # check wether X does contain intercept
    est = PatsyTransformer("x1 + x2", add_intercept=True)
    est.fit(data)
    data_transformed = est.transform(data)
    assert_array_equal(data_transformed[:, 0], 1)
    assert_equal(est.transform(data).shape[1], 3)
def test_stateful_transform():
    data_train = patsy.demo_data("x1", "x2", "y")
    data_train['x1'][:] = 1
    # mean of x1 is 1
    data_test = patsy.demo_data("x1", "x2", "y")
    data_test['x1'][:] = 0

    # center x1
    est = PatsyTransformer("center(x1) + x2")
    est.fit(data_train)
    data_trans = est.transform(data_test)
    # make sure that mean of training, not test data was removed
    assert_array_equal(data_trans[:, 0], -1)
Beispiel #4
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def test_stateful_transform():
    data_train = patsy.demo_data("x1", "x2", "y")
    data_train['x1'][:] = 1
    # mean of x1 is 1
    data_test = patsy.demo_data("x1", "x2", "y")
    data_test['x1'][:] = 0

    # center x1
    est = PatsyTransformer("center(x1) + x2")
    est.fit(data_train)
    data_trans = est.transform(data_test)
    # make sure that mean of training, not test data was removed
    assert_array_equal(data_trans[:, 0], -1)
def test_scope_transformer():
    data = patsy.demo_data("x1", "x2", "x3", "y")

    def myfunc(x):
        tmp = np.ones_like(x)
        tmp.fill(42)
        return tmp

    est = PatsyTransformer("x1 + myfunc(x2)")
    est.fit(data)
    data_trans = est.transform(data)
    assert_array_equal(data_trans[:, 1], 42)

    est = PatsyTransformer("x1 + myfunc(x2)")
    data_trans = est.fit_transform(data)
    assert_array_equal(data_trans[:, 1], 42)
def test_stateful_transform_dataframe():
    data_train = pd.DataFrame(patsy.demo_data("x1", "x2", "y"))
    data_train['x1'][:] = 1
    # mean of x1 is 1
    data_test = pd.DataFrame(patsy.demo_data("x1", "x2", "y"))
    data_test['x1'][:] = 0

    # center x1
    est = PatsyTransformer("center(x1) + x2", return_type='dataframe')
    est.fit(data_train)
    data_trans = est.transform(data_test)

    # make sure result is pandas dataframe
    assert type(data_trans) is pd.DataFrame

    # make sure that mean of training, not test data was removed
    assert_array_equal(data_trans['center(x1)'][:],-1)
Beispiel #7
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def test_stateful_transform_dataframe():
    data_train = pd.DataFrame(patsy.demo_data("x1", "x2", "y"))
    data_train['x1'][:] = 1
    # mean of x1 is 1
    data_test = pd.DataFrame(patsy.demo_data("x1", "x2", "y"))
    data_test['x1'][:] = 0

    # center x1
    est = PatsyTransformer("center(x1) + x2", return_type='dataframe')
    est.fit(data_train)
    data_trans = est.transform(data_test)

    # make sure result is pandas dataframe
    assert type(data_trans) is pd.DataFrame

    # make sure that mean of training, not test data was removed
    assert_array_equal(data_trans['center(x1)'][:], -1)
Beispiel #8
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def test_scope_transformer():
    data = patsy.demo_data("x1", "x2", "x3", "y")

    def myfunc(x):
        tmp = np.ones_like(x)
        tmp.fill(42)
        return tmp

    est = PatsyTransformer("x1 + myfunc(x2)")
    est.fit(data)
    data_trans = est.transform(data)
    assert_array_equal(data_trans[:, 1], 42)

    est = PatsyTransformer("x1 + myfunc(x2)")
    data_trans = est.fit_transform(data)
    assert_array_equal(data_trans[:, 1], 42)

    # test feature names
    assert_equal(est.feature_names_, ["x1", "myfunc(x2)"])