# Copyright (c) Microsoft Corporation. All rights reserved. # Licensed under the MIT License. """Functionality for computing metrics, with a particular focus on group metrics. For our purpose, a metric is a function with signature ``f(y_true, y_pred, ....)`` where ``y_true`` are the set of true values and ``y_pred`` are values predicted by a machine learning algorithm. Other arguments may be present (most often sample weights), which will affect how the metric is calculated. The group metrics in this module have signatures ``g(y_true, y_pred, group_membership, ...)`` where ``group_membership`` is an array of values indicating a group to which each pair of true and predicted values belong. The metric is evaluated for the entire set of data, and also for each subgroup identified in ``group_membership``. """ from ._extra_metrics import balanced_root_mean_squared_error, fallout_rate # noqa: F401 from ._extra_metrics import mean_overprediction, mean_prediction # noqa: F401 from ._extra_metrics import mean_underprediction, miss_rate # noqa: F401 from ._extra_metrics import selection_rate, specificity_score # noqa: F401 from ._extra_metrics import group_fallout_rate # noqa: F401 from ._extra_metrics import group_miss_rate # noqa: F401 from ._extra_metrics import group_specificity_score # noqa: F401 from ._extra_metrics import group_balanced_root_mean_squared_error # noqa: F401 from ._extra_metrics import group_mean_overprediction # noqa: F401 from ._extra_metrics import group_mean_prediction # noqa: F401 from ._extra_metrics import group_mean_underprediction # noqa: F401 from ._selection_rate import group_selection_rate # noqa: F401 from ._skm_wrappers import group_accuracy_score, group_confusion_matrix # noqa: F401 from ._skm_wrappers import group_precision_score, group_recall_score # noqa: F401 from ._skm_wrappers import group_roc_auc_score, group_zero_one_loss # noqa: F401 from ._skm_wrappers import group_max_error # noqa: F401 from ._skm_wrappers import group_mean_absolute_error # noqa: F401 from ._skm_wrappers import group_mean_squared_error # noqa: F401 from ._skm_wrappers import group_mean_squared_log_error # noqa: F401 from ._skm_wrappers import group_median_absolute_error # noqa: F401 from ._skm_wrappers import group_root_mean_squared_error # noqa: F401 from ._skm_wrappers import group_r2_score # noqa: F401 from ._group_metric_result import GroupMetricResult # noqa: F401 from ._group_metric_set import GroupMetricSet # noqa: F401 from ._metrics_engine import make_group_metric, metric_by_group # noqa: F401 # ------------------------------------------- _extra_metrics = [ "balanced_root_mean_squared_error", "fallout_rate", "mean_prediction", "mean_overprediction", "mean_underprediction", "miss_rate", "selection_rate", "specificity_score" ] _group_metrics = [ "group_accuracy_score", "group_balanced_root_mean_squared_error", "group_confusion_matrix", "group_fallout_rate", "group_max_error", "group_mean_absolute_error", "group_mean_prediction", "group_mean_overprediction", "group_mean_squared_error", "group_mean_squared_log_error", "group_mean_underprediction", "group_median_absolute_error", "group_miss_rate", "group_precision_score", "group_r2_score", "group_recall_score", "group_roc_auc_score", "group_root_mean_squared_error", "group_selection_rate", "group_specificity_score", "group_zero_one_loss" ] _engine = [ "GroupMetricResult", "make_group_metric", "metric_by_group" ] __all__ = _engine + _extra_metrics + _group_metrics