Ejemplo n.º 1
0
class ClassifierBaseExplainerTestsPipeline(unittest.TestCase):
    def setUp(self):
        #X, y = fetch_openml("titanic", version=1, as_frame=True, return_X_y=True)
        df = pd.read_csv(Path.cwd() / "tests" / "test_assets" /
                         "pipeline_data.csv")
        X = df[['age', 'fare', 'embarked', 'sex', 'pclass']]
        y = df['survived'].astype(int)

        numeric_features = ['age', 'fare']
        numeric_transformer = Pipeline(
            steps=[('imputer', SimpleImputer(
                strategy='median')), ('scaler', StandardScaler())])

        categorical_features = ['embarked', 'sex', 'pclass']
        categorical_transformer = Pipeline(
            steps=[('imputer', SimpleImputer(
                strategy='most_frequent')), ('ordinal', OrdinalEncoder())])

        preprocessor = ColumnTransformer(
            transformers=[('num', numeric_transformer, numeric_features),
                          ('cat', categorical_transformer,
                           categorical_features)])

        # Append classifier to preprocessing pipeline.
        # Now we have a full prediction pipeline.
        clf = Pipeline(
            steps=[('preprocessor',
                    preprocessor), ('classifier', RandomForestClassifier())])

        X_train, X_test, y_train, y_test = train_test_split(X,
                                                            y,
                                                            test_size=0.2)

        clf.fit(X_train, y_train)

        self.explainer = ClassifierExplainer(clf, X_test, y_test)

    def test_columns_ranked_by_shap(self):
        self.assertIsInstance(self.explainer.columns_ranked_by_shap(), list)

    def test_permutation_importances(self):
        self.assertIsInstance(self.explainer.get_permutation_importances_df(),
                              pd.DataFrame)

    def test_metrics(self):
        self.assertIsInstance(self.explainer.metrics(), dict)
        self.assertIsInstance(self.explainer.metrics_descriptions(), dict)

    def test_mean_abs_shap_df(self):
        self.assertIsInstance(self.explainer.get_mean_abs_shap_df(),
                              pd.DataFrame)

    def test_contrib_df(self):
        self.assertIsInstance(self.explainer.get_contrib_df(0), pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_df(X_row=self.explainer.X.iloc[[0]]),
            pd.DataFrame)

    def test_shap_base_value(self):
        self.assertIsInstance(self.explainer.shap_base_value(),
                              (np.floating, float))

    def test_shap_values_shape(self):
        self.assertTrue(self.explainer.get_shap_values_df().shape == (
            len(self.explainer), len(self.explainer.merged_cols)))

    def test_shap_values(self):
        self.assertIsInstance(self.explainer.get_shap_values_df(),
                              pd.DataFrame)

    def test_pdp_df(self):
        self.assertIsInstance(self.explainer.pdp_df("age"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("sex"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("age", index=0),
                              pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("sex", index=0),
                              pd.DataFrame)
Ejemplo n.º 2
0
class LogisticRegressionTests(unittest.TestCase):
    def setUp(self):
        X_train, y_train, X_test, y_test = titanic_survive()
        train_names, test_names = titanic_names()

        model = LogisticRegression()
        model.fit(X_train, y_train)

        self.explainer = ClassifierExplainer(
            model,
            X_test,
            y_test,
            shap='linear',
            cats=['Sex', 'Deck', 'Embarked'],
            labels=['Not survived', 'Survived'],
            idxs=test_names)

    def test_preds(self):
        self.assertIsInstance(self.explainer.preds, np.ndarray)

    def test_pred_percentiles(self):
        self.assertIsInstance(self.explainer.pred_percentiles(), np.ndarray)

    def test_columns_ranked_by_shap(self):
        self.assertIsInstance(self.explainer.columns_ranked_by_shap(), list)

    def test_permutation_importances(self):
        self.assertIsInstance(self.explainer.get_permutation_importances_df(),
                              pd.DataFrame)

    def test_metrics(self):
        self.assertIsInstance(self.explainer.metrics(), dict)
        self.assertIsInstance(self.explainer.metrics_descriptions(), dict)

    def test_mean_abs_shap_df(self):
        self.assertIsInstance(self.explainer.get_mean_abs_shap_df(),
                              pd.DataFrame)

    def test_contrib_df(self):
        self.assertIsInstance(self.explainer.get_contrib_df(0), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_contrib_df(0, topx=3),
                              pd.DataFrame)

    def test_shap_base_value(self):
        self.assertIsInstance(self.explainer.shap_base_value(),
                              (np.floating, float))

    def test_shap_values_shape(self):
        self.assertTrue(self.explainer.get_shap_values_df().shape == (
            len(self.explainer), len(self.explainer.merged_cols)))

    def test_shap_values(self):
        self.assertIsInstance(self.explainer.get_shap_values_df(),
                              pd.DataFrame)

    def test_mean_abs_shap(self):
        self.assertIsInstance(self.explainer.get_mean_abs_shap_df(),
                              pd.DataFrame)

    def test_calculate_properties(self):
        self.explainer.calculate_properties(include_interactions=False)

    def test_pdp_df(self):
        self.assertIsInstance(self.explainer.pdp_df("Age"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Sex"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Deck"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Age", index=0),
                              pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Sex", index=0),
                              pd.DataFrame)

    def test_pos_label(self):
        self.explainer.pos_label = 1
        self.explainer.pos_label = "Not survived"
        self.assertIsInstance(self.explainer.pos_label, int)
        self.assertIsInstance(self.explainer.pos_label_str, str)
        self.assertEqual(self.explainer.pos_label, 0)
        self.assertEqual(self.explainer.pos_label_str, "Not survived")

    def test_pred_probas(self):
        self.assertIsInstance(self.explainer.pred_probas(), np.ndarray)

    def test_metrics(self):
        self.assertIsInstance(self.explainer.metrics(), dict)
        self.assertIsInstance(self.explainer.metrics(cutoff=0.9), dict)

    def test_precision_df(self):
        self.assertIsInstance(self.explainer.get_precision_df(), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_precision_df(multiclass=True),
                              pd.DataFrame)
        self.assertIsInstance(self.explainer.get_precision_df(quantiles=4),
                              pd.DataFrame)

    def test_lift_curve_df(self):
        self.assertIsInstance(self.explainer.get_liftcurve_df(), pd.DataFrame)
class ClassifierBaseExplainerTests(unittest.TestCase):
    def setUp(self):
        X_train, y_train, X_test, y_test = titanic_survive()
        train_names, test_names = titanic_names()

        model = RandomForestClassifier(n_estimators=5, max_depth=2)
        model.fit(X_train, y_train)

        self.explainer = ClassifierExplainer(
            model,
            X_test,
            y_test,
            cats=[{
                'Gender': ['Sex_female', 'Sex_male', 'Sex_nan']
            }, 'Deck', 'Embarked'],
            target='Survival',
            labels=['Not survived', 'Survived'],
            idxs=test_names)

    def test_explainer_len(self):
        self.assertEqual(len(self.explainer), len(titanic_survive()[2]))

    def test_int_idx(self):
        self.assertEqual(self.explainer.get_idx(titanic_names()[1][0]), 0)

    def test_random_index(self):
        self.assertIsInstance(self.explainer.random_index(), int)
        self.assertIsInstance(self.explainer.random_index(return_str=True),
                              str)

    def test_preds(self):
        self.assertIsInstance(self.explainer.preds, np.ndarray)

    def test_row_from_input(self):
        input_row = self.explainer.get_row_from_input(
            self.explainer.X.iloc[[0]].values.tolist())
        self.assertIsInstance(input_row, pd.DataFrame)

        input_row = self.explainer.get_row_from_input(
            self.explainer.X_merged.iloc[[0]].values.tolist())
        self.assertIsInstance(input_row, pd.DataFrame)

        input_row = self.explainer.get_row_from_input(self.explainer.X_merged[
            self.explainer.columns_ranked_by_shap()].iloc[[0]].values.tolist(),
                                                      ranked_by_shap=True)
        self.assertIsInstance(input_row, pd.DataFrame)

    def test_pred_percentiles(self):
        self.assertIsInstance(self.explainer.pred_percentiles(), np.ndarray)

    def test_columns_ranked_by_shap(self):
        self.assertIsInstance(self.explainer.columns_ranked_by_shap(), list)

    def test_get_col(self):
        self.assertIsInstance(self.explainer.get_col("Gender"), pd.Series)
        self.assertTrue(is_categorical_dtype(self.explainer.get_col("Gender")))

        self.assertIsInstance(self.explainer.get_col("Deck"), pd.Series)
        self.assertTrue(is_categorical_dtype(self.explainer.get_col("Deck")))

        self.assertIsInstance(self.explainer.get_col("Age"), pd.Series)
        self.assertTrue(is_numeric_dtype(self.explainer.get_col("Age")))

    def test_permutation_importances(self):
        self.assertIsInstance(self.explainer.permutation_importances(),
                              pd.DataFrame)

    def test_X_cats(self):
        self.assertIsInstance(self.explainer.X_cats, pd.DataFrame)

    def test_metrics(self):
        self.assertIsInstance(self.explainer.metrics(), dict)

    def test_mean_abs_shap_df(self):
        self.assertIsInstance(self.explainer.mean_abs_shap_df(), pd.DataFrame)

    def test_top_interactions(self):
        self.assertIsInstance(self.explainer.top_shap_interactions("Age"),
                              list)
        self.assertIsInstance(
            self.explainer.top_shap_interactions("Age", topx=4), list)

    def test_permutation_importances_df(self):
        self.assertIsInstance(self.explainer.get_permutation_importances_df(),
                              pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_permutation_importances_df(topx=3),
            pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_permutation_importances_df(cutoff=0.01),
            pd.DataFrame)

    def test_contrib_df(self):
        self.assertIsInstance(self.explainer.get_contrib_df(0), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_contrib_df(0, topx=3),
                              pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_df(0, sort='high-to-low'), pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_df(0, sort='low-to-high'), pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_df(0, sort='importance'), pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_df(X_row=self.explainer.X.iloc[[0]]),
            pd.DataFrame)

    def test_contrib_summary_df(self):
        self.assertIsInstance(self.explainer.get_contrib_summary_df(0),
                              pd.DataFrame)
        self.assertIsInstance(self.explainer.get_contrib_summary_df(0, topx=3),
                              pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_summary_df(0, round=3), pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_summary_df(0, sort='low-to-high'),
            pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_summary_df(0, sort='high-to-low'),
            pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_summary_df(0, sort='importance'),
            pd.DataFrame)
        self.assertIsInstance(
            self.explainer.get_contrib_summary_df(
                X_row=self.explainer.X.iloc[[0]]), pd.DataFrame)

    def test_shap_base_value(self):
        self.assertIsInstance(self.explainer.shap_base_value(),
                              (np.floating, float))

    def test_shap_values_shape(self):
        self.assertTrue(self.explainer.get_shap_values_df().shape == (
            len(self.explainer), len(self.explainer.merged_cols)))

    def test_shap_values(self):
        self.assertIsInstance(self.explainer.get_shap_values_df(),
                              pd.DataFrame)

    def test_shap_interaction_values(self):
        self.assertIsInstance(self.explainer.shap_interaction_values(),
                              np.ndarray)

    def test_mean_abs_shap_df(self):
        self.assertIsInstance(self.explainer.mean_abs_shap_df(), pd.DataFrame)

    def test_calculate_properties(self):
        self.explainer.calculate_properties()

    def test_shap_interaction_values_by_col(self):
        self.assertIsInstance(
            self.explainer.shap_interaction_values_for_col("Age"), np.ndarray)
        self.assertEqual(
            self.explainer.shap_interaction_values_for_col("Age").shape,
            self.explainer.get_shap_values_df().shape)

    def test_prediction_result_df(self):
        df = self.explainer.prediction_result_df(0)
        self.assertIsInstance(df, pd.DataFrame)

    def test_pdp_df(self):
        self.assertIsInstance(self.explainer.pdp_df("Age"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Gender"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Deck"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Age", index=0),
                              pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Gender", index=0),
                              pd.DataFrame)
        self.assertIsInstance(
            self.explainer.pdp_df("Age", X_row=self.explainer.X.iloc[[0]]),
            pd.DataFrame)

    def test_memory_usage(self):
        self.assertIsInstance(self.explainer.memory_usage(), pd.DataFrame)
        self.assertIsInstance(self.explainer.memory_usage(cutoff=1000),
                              pd.DataFrame)

    def test_plot_importances(self):
        fig = self.explainer.plot_importances()
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_importances(kind='permutation')
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_importances(topx=3)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_interactions(self):
        fig = self.explainer.plot_interactions_importance("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interactions_importance("Gender")
        self.assertIsInstance(fig, go.Figure)

    def test_plot_contributions(self):
        fig = self.explainer.plot_contributions(0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_contributions(0, topx=3)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_contributions(0, cutoff=0.05)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_contributions(0, sort='high-to-low')
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_contributions(0, sort='low-to-high')
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_contributions(0, sort='importance')
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_contributions(
            X_row=self.explainer.X.iloc[[0]], sort='importance')
        self.assertIsInstance(fig, go.Figure)

    def test_plot_shap_detailed(self):
        fig = self.explainer.plot_importances_detailed()
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_importances_detailed(topx=3)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_interactions_detailed(self):
        fig = self.explainer.plot_interactions_detailed("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interactions_detailed("Age", topx=3)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interactions_detailed("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interactions_detailed("Gender")
        self.assertIsInstance(fig, go.Figure)

    def test_plot_dependence(self):
        fig = self.explainer.plot_dependence("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_dependence("Age", "Gender")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_dependence("Age", highlight_index=0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_dependence("Gender", highlight_index=0)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_interaction(self):

        fig = self.explainer.plot_interaction("Gender", "Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interaction("Age",
                                              "Gender",
                                              highlight_index=0)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_pdp(self):
        fig = self.explainer.plot_pdp("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_pdp("Gender")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_pdp("Gender", index=0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_pdp("Age", index=0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_pdp("Age", X_row=self.explainer.X.iloc[[0]])
        self.assertIsInstance(fig, go.Figure)

    def test_yaml(self):
        yaml = self.explainer.to_yaml()
        self.assertIsInstance(yaml, str)
class MultiClassClassifierBunchTests(unittest.TestCase):
    def setUp(self):
        X_train, y_train, X_test, y_test = titanic_embarked()
        train_names, test_names = titanic_names()

        model = RandomForestClassifier(n_estimators=5, max_depth=2)
        model.fit(X_train, y_train)

        self.explainer = ClassifierExplainer(model, X_test, y_test,  
                            cats=[{'Gender': ['Sex_female', 'Sex_male', 'Sex_nan']}, 
                                                'Deck'],
                            idxs=test_names, 
                            labels=['Queenstown', 'Southampton', 'Cherbourg'])

    def test_preds(self):
        self.assertIsInstance(self.explainer.preds, np.ndarray)

    def test_pred_percentiles(self):
        self.assertIsInstance(self.explainer.pred_percentiles(), np.ndarray)

    def test_columns_ranked_by_shap(self):
        self.assertIsInstance(self.explainer.columns_ranked_by_shap(), list)

    def test_permutation_importances(self):
        self.assertIsInstance(self.explainer.get_permutation_importances_df(), pd.DataFrame)
        
    def test_X_cats(self):
        self.assertIsInstance(self.explainer.X_cats, pd.DataFrame)

    def test_metrics(self):
        self.assertIsInstance(self.explainer.metrics(), dict)
        self.assertIsInstance(self.explainer.metrics_descriptions(), dict)

    def test_mean_abs_shap_df(self):
        self.assertIsInstance(self.explainer.get_mean_abs_shap_df(), pd.DataFrame)

    def test_top_interactions(self):
        self.assertIsInstance(self.explainer.top_shap_interactions("Age"), list)
        self.assertIsInstance(self.explainer.top_shap_interactions("Age", topx=4), list)

    def test_permutation_importances_df(self):
        self.assertIsInstance(self.explainer.get_permutation_importances_df(), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_permutation_importances_df(topx=3), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_permutation_importances_df(cutoff=0.01), pd.DataFrame)

    def test_contrib_df(self):
        self.assertIsInstance(self.explainer.get_contrib_df(0), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_contrib_df(0, topx=3), pd.DataFrame)

    def test_contrib_summary_df(self):
        self.assertIsInstance(self.explainer.get_contrib_summary_df(0), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_contrib_summary_df(0, topx=3), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_contrib_summary_df(0, round=3), pd.DataFrame)

    def test_shap_base_value(self):
        self.assertIsInstance(self.explainer.shap_base_value(), (np.floating, float))

    def test_shap_values_shape(self):
        self.assertTrue(self.explainer.get_shap_values_df().shape == (len(self.explainer), len(self.explainer.merged_cols)))

    def test_shap_values(self):
        self.assertIsInstance(self.explainer.get_shap_values_df(), pd.DataFrame)

    def test_shap_interaction_values(self):
        self.assertIsInstance(self.explainer.shap_interaction_values(), np.ndarray)

    def test_mean_abs_shap(self):
        self.assertIsInstance(self.explainer.get_mean_abs_shap_df(), pd.DataFrame)

    def test_calculate_properties(self):
        self.explainer.calculate_properties()

    def test_shap_interaction_values_by_col(self):
        self.assertIsInstance(self.explainer.shap_interaction_values_for_col("Age"), np.ndarray)
        self.assertEqual(self.explainer.shap_interaction_values_for_col("Age").shape, 
                        self.explainer.get_shap_values_df().shape)

    def test_pdp_df(self):
        self.assertIsInstance(self.explainer.pdp_df("Age"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Gender"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Deck"), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Age", index=0), pd.DataFrame)
        self.assertIsInstance(self.explainer.pdp_df("Gender", index=0), pd.DataFrame)

    def test_plot_importances(self):
        fig = self.explainer.plot_importances()
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_importances(kind='permutation')
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_importances(topx=3)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_interactions(self):
        fig = self.explainer.plot_interactions_importance("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interactions_importance("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interactions_importance("Gender")
        self.assertIsInstance(fig, go.Figure)

    def test_plot_contributions(self):
        fig = self.explainer.plot_contributions(0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_contributions(0, topx=3)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_contributions(0, cutoff=0.05)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_shap_detailed(self):
        fig = self.explainer.plot_importances_detailed()
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_importances_detailed(topx=3)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_interactions_detailed(self):
        fig = self.explainer.plot_interactions_detailed("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interactions_detailed("Age", topx=3)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interactions_detailed("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_interactions_detailed("Gender")
        self.assertIsInstance(fig, go.Figure)

    def test_plot_dependence(self):
        fig = self.explainer.plot_dependence("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_dependence("Age", "Gender")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_dependence("Age", highlight_index=0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_dependence("Gender", highlight_index=0)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_interaction(self):
        fig = self.explainer.plot_dependence("Gender", "Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_dependence("Age", "Gender")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_dependence("Age", "Gender", highlight_index=0)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_pdp(self):
        fig = self.explainer.plot_pdp("Age")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_pdp("Gender")
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_pdp("Gender", index=0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_pdp("Age", index=0)
        self.assertIsInstance(fig, go.Figure)

    def test_pos_label(self):
        self.explainer.pos_label = 1
        self.explainer.pos_label = "Southampton"
        self.assertIsInstance(self.explainer.pos_label, int)
        self.assertIsInstance(self.explainer.pos_label_str, str)
        self.assertEqual(self.explainer.pos_label, 1)
        self.assertEqual(self.explainer.pos_label_str, "Southampton")

    def test_pred_probas(self):
        self.assertIsInstance(self.explainer.pred_probas(), np.ndarray)

    
    def test_metrics(self):
        self.assertIsInstance(self.explainer.metrics(), dict)
        self.assertIsInstance(self.explainer.metrics(cutoff=0.9), dict)

    def test_precision_df(self):
        self.assertIsInstance(self.explainer.get_precision_df(), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_precision_df(multiclass=True), pd.DataFrame)
        self.assertIsInstance(self.explainer.get_precision_df(quantiles=4), pd.DataFrame)

    def test_lift_curve_df(self):
        self.assertIsInstance(self.explainer.get_liftcurve_df(), pd.DataFrame)

    def test_keep_shap_pos_label_only(self):
        self.explainer.keep_shap_pos_label_only()
        self.assertIsInstance(self.explainer.get_shap_values_df(), pd.DataFrame)

    def test_calculate_properties(self):
        self.explainer.calculate_properties()
        
    def test_plot_precision(self):
        fig = self.explainer.plot_precision()
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_precision(multiclass=True)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_precision(quantiles=10, cutoff=0.5)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_cumulative_precision(self):
        fig = self.explainer.plot_cumulative_precision()
        self.assertIsInstance(fig, go.Figure)

    def test_plot_confusion_matrix(self):
        fig = self.explainer.plot_confusion_matrix(normalized=False, binary=False)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_confusion_matrix(normalized=False, binary=True)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_confusion_matrix(normalized=True, binary=False)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_confusion_matrix(normalized=True, binary=True)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_lift_curve(self):
        fig = self.explainer.plot_lift_curve()
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_lift_curve(percentage=True)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_lift_curve(cutoff=0.5)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_lift_curve(self):
        fig = self.explainer.plot_lift_curve()
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_lift_curve(percentage=True)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_lift_curve(cutoff=0.5)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_classification(self):
        fig = self.explainer.plot_classification()
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_classification(percentage=True)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_classification(cutoff=0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_classification(cutoff=1)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_roc_auc(self):
        fig = self.explainer.plot_roc_auc(0.5)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_roc_auc(0.0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_roc_auc(1.0)
        self.assertIsInstance(fig, go.Figure)

    def test_plot_pr_auc(self):
        fig = self.explainer.plot_pr_auc(0.5)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_pr_auc(0.0)
        self.assertIsInstance(fig, go.Figure)

        fig = self.explainer.plot_pr_auc(1.0)
        self.assertIsInstance(fig, go.Figure)