""" Testing for the partial dependence module. """ import numpy as np import pytest import sklearn from sklearn.inspection import partial_dependence from sklearn.inspection._partial_dependence import ( _grid_from_X, _partial_dependence_brute, _partial_dependence_recursion ) from sklearn.ensemble import GradientBoostingClassifier from sklearn.ensemble import GradientBoostingRegressor from sklearn.ensemble import RandomForestRegressor from sklearn.experimental import enable_hist_gradient_boosting # noqa from sklearn.ensemble import HistGradientBoostingClassifier from sklearn.ensemble import HistGradientBoostingRegressor from sklearn.linear_model import LinearRegression from sklearn.linear_model import LogisticRegression from sklearn.linear_model import MultiTaskLasso from sklearn.tree import DecisionTreeRegressor from sklearn.datasets import load_iris from sklearn.datasets import make_classification, make_regression from sklearn.cluster import KMeans from sklearn.compose import make_column_transformer from sklearn.metrics import r2_score from sklearn.preprocessing import PolynomialFeatures from sklearn.preprocessing import StandardScaler from sklearn.preprocessing import RobustScaler from sklearn.preprocessing import scale from sklearn.pipeline import make_pipeline from sklearn.dummy import DummyClassifier from sklearn.base import BaseEstimator, ClassifierMixin, clone from sklearn.exceptions import NotFittedError from sklearn.utils._testing import assert_allclose from sklearn.utils._testing import assert_array_equal from sklearn.utils import _IS_32BIT from sklearn.utils.validation import check_random_state from sklearn.tree.tests.test_tree import assert_is_subtree # toy sample X = [[-2, -1], [-1, -1], [-1, -2], [1, 1], [1, 2], [2, 1]] y = [-1, -1, -1, 1, 1, 1] # (X, y), n_targets <-- as expected in the output of partial_dep() binary_classification_data = (make_classification(n_samples=50, random_state=0), 1) multiclass_classification_data = (make_classification(n_samples=50, n_classes=3, n_clusters_per_class=1, random_state=0), 3) regression_data = (make_regression(n_samples=50, random_state=0), 1) multioutput_regression_data = (make_regression(n_samples=50, n_targets=2, random_state=0), 2) # iris iris = load_iris() @pytest.mark.filterwarnings("ignore:A Bunch will be returned") @pytest.mark.parametrize('Estimator, method, data', [ (GradientBoostingClassifier, 'auto', binary_classification_data), (GradientBoostingClassifier, 'auto', multiclass_classification_data), (GradientBoostingClassifier, 'brute', binary_classification_data), (GradientBoostingClassifier, 'brute', multiclass_classification_data), (GradientBoostingRegressor, 'auto', regression_data), (GradientBoostingRegressor, 'brute', regression_data), (DecisionTreeRegressor, 'brute', regression_data), (LinearRegression, 'brute', regression_data), (LinearRegression, 'brute', multioutput_regression_data), (LogisticRegression, 'brute', binary_classification_data), (LogisticRegression, 'brute', multiclass_classification_data), (MultiTaskLasso, 'brute', multioutput_regression_data), ]) @pytest.mark.parametrize('grid_resolution', (5, 10)) @pytest.mark.parametrize('features', ([1], [1, 2])) @pytest.mark.parametrize('kind', ('legacy', 'average', 'individual', 'both')) def test_output_shape(Estimator, method, data, grid_resolution, features, kind): # Check that partial_dependence has consistent output shape for different # kinds of estimators: # - classifiers with binary and multiclass settings # - regressors # - multi-task regressors est = Estimator() # n_target corresponds to the number of classes (1 for binary classif) or # the number of tasks / outputs in multi task settings. It's equal to 1 for # classical regression_data. (X, y), n_targets = data n_instances = X.shape[0] est.fit(X, y) result = partial_dependence( est, X=X, features=features, method=method, kind=kind, grid_resolution=grid_resolution ) # FIXME: Remove 'legacy' support in 1.1 pdp, axes = result if kind == 'legacy' else (result, result["values"]) expected_pdp_shape = (n_targets, *[grid_resolution for _ in range(len(features))]) expected_ice_shape = (n_targets, n_instances, *[grid_resolution for _ in range(len(features))]) if kind == 'legacy': assert pdp.shape == expected_pdp_shape elif kind == 'average': assert pdp.average.shape == expected_pdp_shape elif kind == 'individual': assert pdp.individual.shape == expected_ice_shape else: # 'both' assert pdp.average.shape == expected_pdp_shape assert pdp.individual.shape == expected_ice_shape expected_axes_shape = (len(features), grid_resolution) assert axes is not None assert np.asarray(axes).shape == expected_axes_shape def test_grid_from_X(): # tests for _grid_from_X: sanity check for output, and for shapes. # Make sure that the grid is a cartesian product of the input (it will use # the unique values instead of the percentiles) percentiles = (.05, .95) grid_resolution = 100 X = np.asarray([[1, 2], [3, 4]]) grid, axes = _grid_from_X(X, percentiles, grid_resolution) assert_array_equal(grid, [[1, 2], [1, 4], [3, 2], [3, 4]]) assert_array_equal(axes, X.T) # test shapes of returned objects depending on the number of unique values # for a feature. rng = np.random.RandomState(0) grid_resolution = 15 # n_unique_values > grid_resolution X = rng.normal(size=(20, 2)) grid, axes = _grid_from_X(X, percentiles, grid_resolution=grid_resolution) assert grid.shape == (grid_resolution * grid_resolution, X.shape[1]) assert np.asarray(axes).shape == (2, grid_resolution) # n_unique_values < grid_resolution, will use actual values n_unique_values = 12 X[n_unique_values - 1:, 0] = 12345 rng.shuffle(X) # just to make sure the order is irrelevant grid, axes = _grid_from_X(X, percentiles, grid_resolution=grid_resolution) assert grid.shape == (n_unique_values * grid_resolution, X.shape[1]) # axes is a list of arrays of different shapes assert axes[0].shape == (n_unique_values,) assert axes[1].shape == (grid_resolution,) @pytest.mark.parametrize( "grid_resolution, percentiles, err_msg", [(2, (0, 0.0001), "percentiles are too close"), (100, (1, 2, 3, 4), "'percentiles' must be a sequence of 2 elements"), (100, 12345, "'percentiles' must be a sequence of 2 elements"), (100, (-1, .95), r"'percentiles' values must be in \[0, 1\]"), (100, (.05, 2), r"'percentiles' values must be in \[0, 1\]"), (100, (.9, .1), r"percentiles\[0\] must be strictly less than"), (1, (0.05, 0.95), "'grid_resolution' must be strictly greater than 1")] ) def test_grid_from_X_error(grid_resolution, percentiles, err_msg): X = np.asarray([[1, 2], [3, 4]]) with pytest.raises(ValueError, match=err_msg): _grid_from_X( X, grid_resolution=grid_resolution, percentiles=percentiles ) @pytest.mark.parametrize('target_feature', range(5)) @pytest.mark.parametrize('est, method', [ (LinearRegression(), 'brute'), (GradientBoostingRegressor(random_state=0), 'brute'), (GradientBoostingRegressor(random_state=0), 'recursion'), (HistGradientBoostingRegressor(random_state=0), 'brute'), (HistGradientBoostingRegressor(random_state=0), 'recursion')] ) def test_partial_dependence_helpers(est, method, target_feature): # Check that what is returned by _partial_dependence_brute or # _partial_dependence_recursion is equivalent to manually setting a target # feature to a given value, and computing the average prediction over all # samples. # This also checks that the brute and recursion methods give the same # output. # Note that even on the trainset, the brute and the recursion methods # aren't always strictly equivalent, in particular when the slow method # generates unrealistic samples that have low mass in the joint # distribution of the input features, and when some of the features are # dependent. Hence the high tolerance on the checks. X, y = make_regression(random_state=0, n_features=5, n_informative=5) # The 'init' estimator for GBDT (here the average prediction) isn't taken # into account with the recursion method, for technical reasons. We set # the mean to 0 to that this 'bug' doesn't have any effect. y = y - y.mean() est.fit(X, y) # target feature will be set to .5 and then to 123 features = np.array([target_feature], dtype=np.int32) grid = np.array([[.5], [123]]) if method == 'brute': pdp, predictions = _partial_dependence_brute(est, grid, features, X, response_method='auto') else: pdp = _partial_dependence_recursion(est, grid, features) mean_predictions = [] for val in (.5, 123): X_ = X.copy() X_[:, target_feature] = val mean_predictions.append(est.predict(X_).mean()) pdp = pdp[0] # (shape is (1, 2) so make it (2,)) # allow for greater margin for error with recursion method rtol = 1e-1 if method == 'recursion' else 1e-3 assert np.allclose(pdp, mean_predictions, rtol=rtol) @pytest.mark.parametrize('seed', range(1)) def test_recursion_decision_tree_vs_forest_and_gbdt(seed): # Make sure that the recursion method gives the same results on a # DecisionTreeRegressor and a GradientBoostingRegressor or a # RandomForestRegressor with 1 tree and equivalent parameters. rng = np.random.RandomState(seed) # Purely random dataset to avoid correlated features n_samples = 1000 n_features = 5 X = rng.randn(n_samples, n_features) y = rng.randn(n_samples) * 10 # The 'init' estimator for GBDT (here the average prediction) isn't taken # into account with the recursion method, for technical reasons. We set # the mean to 0 to that this 'bug' doesn't have any effect. y = y - y.mean() # set max_depth not too high to avoid splits with same gain but different # features max_depth = 5 tree_seed = 0 forest = RandomForestRegressor(n_estimators=1, max_features=None, bootstrap=False, max_depth=max_depth, random_state=tree_seed) # The forest will use ensemble.base._set_random_states to set the # random_state of the tree sub-estimator. We simulate this here to have # equivalent estimators. equiv_random_state = check_random_state(tree_seed).randint( np.iinfo(np.int32).max) gbdt = GradientBoostingRegressor(n_estimators=1, learning_rate=1, criterion='mse', max_depth=max_depth, random_state=equiv_random_state) tree = DecisionTreeRegressor(max_depth=max_depth, random_state=equiv_random_state) forest.fit(X, y) gbdt.fit(X, y) tree.fit(X, y) # sanity check: if the trees aren't the same, the PD values won't be equal try: assert_is_subtree(tree.tree_, gbdt[0, 0].tree_) assert_is_subtree(tree.tree_, forest[0].tree_) except AssertionError: # For some reason the trees aren't exactly equal on 32bits, so the PDs # cannot be equal either. See # https://github.com/scikit-learn/scikit-learn/issues/8853 assert _IS_32BIT, "this should only fail on 32 bit platforms" return grid = rng.randn(50).reshape(-1, 1) for f in range(n_features): features = np.array([f], dtype=np.int32) pdp_forest = _partial_dependence_recursion(forest, grid, features) pdp_gbdt = _partial_dependence_recursion(gbdt, grid, features) pdp_tree = _partial_dependence_recursion(tree, grid, features) np.testing.assert_allclose(pdp_gbdt, pdp_tree) np.testing.assert_allclose(pdp_forest, pdp_tree) @pytest.mark.parametrize('est', ( GradientBoostingClassifier(random_state=0), HistGradientBoostingClassifier(random_state=0), )) @pytest.mark.parametrize('target_feature', (0, 1, 2, 3, 4, 5)) def test_recursion_decision_function(est, target_feature): # Make sure the recursion method (implicitly uses decision_function) has # the same result as using brute method with # response_method=decision_function X, y = make_classification(n_classes=2, n_clusters_per_class=1, random_state=1) assert np.mean(y) == .5 # make sure the init estimator predicts 0 anyway est.fit(X, y) preds_1 = partial_dependence( est, X, [target_feature], response_method='decision_function', method='recursion', kind='average' ) preds_2 = partial_dependence( est, X, [target_feature], response_method='decision_function', method='brute', kind='average' ) assert_allclose(preds_1['average'], preds_2['average'], atol=1e-7) @pytest.mark.parametrize('est', ( LinearRegression(), GradientBoostingRegressor(random_state=0), HistGradientBoostingRegressor(random_state=0, min_samples_leaf=1, max_leaf_nodes=None, max_iter=1), DecisionTreeRegressor(random_state=0), )) @pytest.mark.parametrize('power', (1, 2)) def test_partial_dependence_easy_target(est, power): # If the target y only depends on one feature in an obvious way (linear or # quadratic) then the partial dependence for that feature should reflect # it. # We here fit a linear regression_data model (with polynomial features if # needed) and compute r_squared to check that the partial dependence # correctly reflects the target. rng = np.random.RandomState(0) n_samples = 200 target_variable = 2 X = rng.normal(size=(n_samples, 5)) y = X[:, target_variable]**power est.fit(X, y) pdp = partial_dependence( est, features=[target_variable], X=X, grid_resolution=1000, kind='average' ) new_X = pdp["values"][0].reshape(-1, 1) new_y = pdp['average'][0] # add polynomial features if needed new_X = PolynomialFeatures(degree=power).fit_transform(new_X) lr = LinearRegression().fit(new_X, new_y) r2 = r2_score(new_y, lr.predict(new_X)) assert r2 > .99 @pytest.mark.parametrize('Estimator', (sklearn.tree.DecisionTreeClassifier, sklearn.tree.ExtraTreeClassifier, sklearn.ensemble.ExtraTreesClassifier, sklearn.neighbors.KNeighborsClassifier, sklearn.neighbors.RadiusNeighborsClassifier, sklearn.ensemble.RandomForestClassifier)) def test_multiclass_multioutput(Estimator): # Make sure error is raised for multiclass-multioutput classifiers # make multiclass-multioutput dataset X, y = make_classification(n_classes=3, n_clusters_per_class=1, random_state=0) y = np.array([y, y]).T est = Estimator() est.fit(X, y) with pytest.raises( ValueError, match="Multiclass-multioutput estimators are not supported"): partial_dependence(est, X, [0]) class NoPredictProbaNoDecisionFunction(ClassifierMixin, BaseEstimator): def fit(self, X, y): # simulate that we have some classes self.classes_ = [0, 1] return self @pytest.mark.filterwarnings("ignore:A Bunch will be returned") @pytest.mark.parametrize( "estimator, params, err_msg", [(KMeans(), {'features': [0]}, "'estimator' must be a fitted regressor or classifier"), (LinearRegression(), {'features': [0], 'response_method': 'predict_proba'}, 'The response_method parameter is ignored for regressors'), (GradientBoostingClassifier(random_state=0), {'features': [0], 'response_method': 'predict_proba', 'method': 'recursion'}, "'recursion' method, the response_method must be 'decision_function'"), (GradientBoostingClassifier(random_state=0), {'features': [0], 'response_method': 'predict_proba', 'method': 'auto'}, "'recursion' method, the response_method must be 'decision_function'"), (GradientBoostingClassifier(random_state=0), {'features': [0], 'response_method': 'blahblah'}, 'response_method blahblah is invalid. Accepted response_method'), (NoPredictProbaNoDecisionFunction(), {'features': [0], 'response_method': 'auto'}, 'The estimator has no predict_proba and no decision_function method'), (NoPredictProbaNoDecisionFunction(), {'features': [0], 'response_method': 'predict_proba'}, 'The estimator has no predict_proba method.'), (NoPredictProbaNoDecisionFunction(), {'features': [0], 'response_method': 'decision_function'}, 'The estimator has no decision_function method.'), (LinearRegression(), {'features': [0], 'method': 'blahblah'}, 'blahblah is invalid. Accepted method names are brute, recursion, auto'), (LinearRegression(), {'features': [0], 'method': 'recursion', 'kind': 'individual'}, "The 'recursion' method only applies when 'kind' is set to 'average'"), (LinearRegression(), {'features': [0], 'method': 'recursion', 'kind': 'both'}, "The 'recursion' method only applies when 'kind' is set to 'average'"), (LinearRegression(), {'features': [0], 'method': 'recursion'}, "Only the following estimators support the 'recursion' method:")] ) def test_partial_dependence_error(estimator, params, err_msg): X, y = make_classification(random_state=0) estimator.fit(X, y) with pytest.raises(ValueError, match=err_msg): partial_dependence(estimator, X, **params) @pytest.mark.parametrize( "with_dataframe, err_msg", [(True, "Only array-like or scalar are supported"), (False, "Only array-like or scalar are supported")] ) def test_partial_dependence_slice_error(with_dataframe, err_msg): X, y = make_classification(random_state=0) if with_dataframe: pd = pytest.importorskip('pandas') X = pd.DataFrame(X) estimator = LogisticRegression().fit(X, y) with pytest.raises(TypeError, match=err_msg): partial_dependence(estimator, X, features=slice(0, 2, 1)) @pytest.mark.parametrize( 'estimator', [LinearRegression(), GradientBoostingClassifier(random_state=0)] ) @pytest.mark.parametrize('features', [-1, 10000]) def test_partial_dependence_unknown_feature_indices(estimator, features): X, y = make_classification(random_state=0) estimator.fit(X, y) err_msg = 'all features must be in' with pytest.raises(ValueError, match=err_msg): partial_dependence(estimator, X, [features]) @pytest.mark.parametrize( 'estimator', [LinearRegression(), GradientBoostingClassifier(random_state=0)] ) def test_partial_dependence_unknown_feature_string(estimator): pd = pytest.importorskip("pandas") X, y = make_classification(random_state=0) df = pd.DataFrame(X) estimator.fit(df, y) features = ['random'] err_msg = 'A given column is not a column of the dataframe' with pytest.raises(ValueError, match=err_msg): partial_dependence(estimator, df, features) @pytest.mark.parametrize( 'estimator', [LinearRegression(), GradientBoostingClassifier(random_state=0)] ) def test_partial_dependence_X_list(estimator): # check that array-like objects are accepted X, y = make_classification(random_state=0) estimator.fit(X, y) partial_dependence(estimator, list(X), [0], kind='average') def test_warning_recursion_non_constant_init(): # make sure that passing a non-constant init parameter to a GBDT and using # recursion method yields a warning. gbc = GradientBoostingClassifier(init=DummyClassifier(), random_state=0) gbc.fit(X, y) with pytest.warns( UserWarning, match='Using recursion method with a non-constant init predictor'): partial_dependence(gbc, X, [0], method='recursion', kind='average') with pytest.warns( UserWarning, match='Using recursion method with a non-constant init predictor'): partial_dependence(gbc, X, [0], method='recursion', kind='average') def test_partial_dependence_sample_weight(): # Test near perfect correlation between partial dependence and diagonal # when sample weights emphasize y = x predictions # non-regression test for #13193 # TODO: extend to HistGradientBoosting once sample_weight is supported N = 1000 rng = np.random.RandomState(123456) mask = rng.randint(2, size=N, dtype=bool) x = rng.rand(N) # set y = x on mask and y = -x outside y = x.copy() y[~mask] = -y[~mask] X = np.c_[mask, x] # sample weights to emphasize data points where y = x sample_weight = np.ones(N) sample_weight[mask] = 1000. clf = GradientBoostingRegressor(n_estimators=10, random_state=1) clf.fit(X, y, sample_weight=sample_weight) pdp = partial_dependence(clf, X, features=[1], kind='average') assert np.corrcoef(pdp['average'], pdp["values"])[0, 1] > 0.99 def test_hist_gbdt_sw_not_supported(): # TODO: remove/fix when PDP supports HGBT with sample weights clf = HistGradientBoostingRegressor(random_state=1) clf.fit(X, y, sample_weight=np.ones(len(X))) with pytest.raises(NotImplementedError, match="does not support partial dependence"): partial_dependence(clf, X, features=[1]) def test_partial_dependence_pipeline(): # check that the partial dependence support pipeline iris = load_iris() scaler = StandardScaler() clf = DummyClassifier(random_state=42) pipe = make_pipeline(scaler, clf) clf.fit(scaler.fit_transform(iris.data), iris.target) pipe.fit(iris.data, iris.target) features = 0 pdp_pipe = partial_dependence( pipe, iris.data, features=[features], grid_resolution=10, kind='average' ) pdp_clf = partial_dependence( clf, scaler.transform(iris.data), features=[features], grid_resolution=10, kind='average' ) assert_allclose(pdp_pipe['average'], pdp_clf['average']) assert_allclose( pdp_pipe["values"][0], pdp_clf["values"][0] * scaler.scale_[features] + scaler.mean_[features] ) @pytest.mark.parametrize( "estimator", [LogisticRegression(max_iter=1000, random_state=0), GradientBoostingClassifier(random_state=0, n_estimators=5)], ids=['estimator-brute', 'estimator-recursion'] ) @pytest.mark.parametrize( "preprocessor", [None, make_column_transformer( (StandardScaler(), [iris.feature_names[i] for i in (0, 2)]), (RobustScaler(), [iris.feature_names[i] for i in (1, 3)])), make_column_transformer( (StandardScaler(), [iris.feature_names[i] for i in (0, 2)]), remainder='passthrough')], ids=['None', 'column-transformer', 'column-transformer-passthrough'] ) @pytest.mark.parametrize( "features", [[0, 2], [iris.feature_names[i] for i in (0, 2)]], ids=['features-integer', 'features-string'] ) def test_partial_dependence_dataframe(estimator, preprocessor, features): # check that the partial dependence support dataframe and pipeline # including a column transformer pd = pytest.importorskip("pandas") df = pd.DataFrame(scale(iris.data), columns=iris.feature_names) pipe = make_pipeline(preprocessor, estimator) pipe.fit(df, iris.target) pdp_pipe = partial_dependence( pipe, df, features=features, grid_resolution=10, kind='average' ) # the column transformer will reorder the column when transforming # we mixed the index to be sure that we are computing the partial # dependence of the right columns if preprocessor is not None: X_proc = clone(preprocessor).fit_transform(df) features_clf = [0, 1] else: X_proc = df features_clf = [0, 2] clf = clone(estimator).fit(X_proc, iris.target) pdp_clf = partial_dependence( clf, X_proc, features=features_clf, method='brute', grid_resolution=10, kind='average' ) assert_allclose(pdp_pipe['average'], pdp_clf['average']) if preprocessor is not None: scaler = preprocessor.named_transformers_['standardscaler'] assert_allclose( pdp_pipe["values"][1], pdp_clf["values"][1] * scaler.scale_[1] + scaler.mean_[1] ) else: assert_allclose(pdp_pipe["values"][1], pdp_clf["values"][1]) @pytest.mark.parametrize( "features, expected_pd_shape", [(0, (3, 10)), (iris.feature_names[0], (3, 10)), ([0, 2], (3, 10, 10)), ([iris.feature_names[i] for i in (0, 2)], (3, 10, 10)), ([True, False, True, False], (3, 10, 10))], ids=['scalar-int', 'scalar-str', 'list-int', 'list-str', 'mask'] ) def test_partial_dependence_feature_type(features, expected_pd_shape): # check all possible features type supported in PDP pd = pytest.importorskip("pandas") df = pd.DataFrame(iris.data, columns=iris.feature_names) preprocessor = make_column_transformer( (StandardScaler(), [iris.feature_names[i] for i in (0, 2)]), (RobustScaler(), [iris.feature_names[i] for i in (1, 3)]) ) pipe = make_pipeline( preprocessor, LogisticRegression(max_iter=1000, random_state=0) ) pipe.fit(df, iris.target) pdp_pipe = partial_dependence( pipe, df, features=features, grid_resolution=10, kind='average' ) assert pdp_pipe['average'].shape == expected_pd_shape assert len(pdp_pipe["values"]) == len(pdp_pipe['average'].shape) - 1 @pytest.mark.parametrize( "estimator", [LinearRegression(), LogisticRegression(), GradientBoostingRegressor(), GradientBoostingClassifier()] ) def test_partial_dependence_unfitted(estimator): X = iris.data preprocessor = make_column_transformer( (StandardScaler(), [0, 2]), (RobustScaler(), [1, 3]) ) pipe = make_pipeline(preprocessor, estimator) with pytest.raises(NotFittedError, match="is not fitted yet"): partial_dependence(pipe, X, features=[0, 2], grid_resolution=10) with pytest.raises(NotFittedError, match="is not fitted yet"): partial_dependence(estimator, X, features=[0, 2], grid_resolution=10) @pytest.mark.parametrize('Estimator, data', [ (LinearRegression, multioutput_regression_data), (LogisticRegression, binary_classification_data)]) def test_kind_average_and_average_of_individual(Estimator, data): est = Estimator() (X, y), n_targets = data est.fit(X, y) pdp_avg = partial_dependence( est, X=X, features=[1, 2], kind='average' ) pdp_ind = partial_dependence( est, X=X, features=[1, 2], kind='individual' ) avg_ind = np.mean(pdp_ind['individual'], axis=1) assert_allclose(avg_ind, pdp_avg['average']) def test_warning_for_kind_legacy(): est = LogisticRegression() (X, y), n_targets = binary_classification_data est.fit(X, y) err_msg = ("A Bunch will be returned in place of 'predictions' from " "version 1.1") with pytest.warns(FutureWarning, match=err_msg): partial_dependence(est, X=X, features=[1, 2]) with pytest.warns(FutureWarning, match=err_msg): partial_dependence(est, X=X, features=[1, 2], kind='legacy')