""" The :mod:`sklearn.metrics` module includes score functions, performance metrics and pairwise metrics and distance computations. """ from ._ranking import auc from ._ranking import average_precision_score from ._ranking import coverage_error from ._ranking import det_curve from ._ranking import dcg_score from ._ranking import label_ranking_average_precision_score from ._ranking import label_ranking_loss from ._ranking import ndcg_score from ._ranking import precision_recall_curve from ._ranking import roc_auc_score from ._ranking import roc_curve from ._ranking import top_k_accuracy_score from ._classification import accuracy_score from ._classification import balanced_accuracy_score from ._classification import class_likelihood_ratios from ._classification import classification_report from ._classification import cohen_kappa_score from ._classification import confusion_matrix from ._classification import f1_score from ._classification import fbeta_score from ._classification import hamming_loss from ._classification import hinge_loss from ._classification import jaccard_score from ._classification import log_loss from ._classification import matthews_corrcoef from ._classification import precision_recall_fscore_support from ._classification import precision_score from ._classification import recall_score from ._classification import zero_one_loss from ._classification import brier_score_loss from ._classification import multilabel_confusion_matrix from ._dist_metrics import DistanceMetric from . import cluster from .cluster import adjusted_mutual_info_score from .cluster import adjusted_rand_score from .cluster import rand_score from .cluster import pair_confusion_matrix from .cluster import completeness_score from .cluster import consensus_score from .cluster import homogeneity_completeness_v_measure from .cluster import homogeneity_score from .cluster import mutual_info_score from .cluster import normalized_mutual_info_score from .cluster import fowlkes_mallows_score from .cluster import silhouette_samples from .cluster import silhouette_score from .cluster import calinski_harabasz_score from .cluster import v_measure_score from .cluster import davies_bouldin_score from .pairwise import euclidean_distances from .pairwise import nan_euclidean_distances from .pairwise import pairwise_distances from .pairwise import pairwise_distances_argmin from .pairwise import pairwise_distances_argmin_min from .pairwise import pairwise_kernels from .pairwise import pairwise_distances_chunked from ._regression import explained_variance_score from ._regression import max_error from ._regression import mean_absolute_error from ._regression import mean_squared_error from ._regression import mean_squared_log_error from ._regression import median_absolute_error from ._regression import mean_absolute_percentage_error from ._regression import mean_pinball_loss from ._regression import r2_score from ._regression import mean_tweedie_deviance from ._regression import mean_poisson_deviance from ._regression import mean_gamma_deviance from ._regression import d2_tweedie_score from ._regression import d2_pinball_score from ._regression import d2_absolute_error_score from ._scorer import check_scoring from ._scorer import make_scorer from ._scorer import SCORERS from ._scorer import get_scorer from ._scorer import get_scorer_names from ._plot.det_curve import DetCurveDisplay from ._plot.roc_curve import RocCurveDisplay from ._plot.precision_recall_curve import PrecisionRecallDisplay from ._plot.confusion_matrix import ConfusionMatrixDisplay from ._plot.regression import PredictionErrorDisplay __all__ = [ "accuracy_score", "adjusted_mutual_info_score", "adjusted_rand_score", "auc", "average_precision_score", "balanced_accuracy_score", "calinski_harabasz_score", "check_scoring", "class_likelihood_ratios", "classification_report", "cluster", "cohen_kappa_score", "completeness_score", "ConfusionMatrixDisplay", "confusion_matrix", "consensus_score", "coverage_error", "d2_tweedie_score", "d2_absolute_error_score", "d2_pinball_score", "dcg_score", "davies_bouldin_score", "DetCurveDisplay", "det_curve", "DistanceMetric", "euclidean_distances", "explained_variance_score", "f1_score", "fbeta_score", "fowlkes_mallows_score", "get_scorer", "hamming_loss", "hinge_loss", "homogeneity_completeness_v_measure", "homogeneity_score", "jaccard_score", "label_ranking_average_precision_score", "label_ranking_loss", "log_loss", "make_scorer", "nan_euclidean_distances", "matthews_corrcoef", "max_error", "mean_absolute_error", "mean_squared_error", "mean_squared_log_error", "mean_pinball_loss", "mean_poisson_deviance", "mean_gamma_deviance", "mean_tweedie_deviance", "median_absolute_error", "mean_absolute_percentage_error", "multilabel_confusion_matrix", "mutual_info_score", "ndcg_score", "normalized_mutual_info_score", "pair_confusion_matrix", "pairwise_distances", "pairwise_distances_argmin", "pairwise_distances_argmin_min", "pairwise_distances_chunked", "pairwise_kernels", "PrecisionRecallDisplay", "precision_recall_curve", "precision_recall_fscore_support", "precision_score", "PredictionErrorDisplay", "r2_score", "rand_score", "recall_score", "RocCurveDisplay", "roc_auc_score", "roc_curve", "SCORERS", "get_scorer_names", "silhouette_samples", "silhouette_score", "top_k_accuracy_score", "v_measure_score", "zero_one_loss", "brier_score_loss", ]