Keep this comment in this issue updated with metrics to add to xskillscore. Consolidate from other issues as well as comments that appear below. The format for inputting will be:
- METRIC_API_NAME (LONG_METRIC_NAME) [RELATED ISSUE (IF EXISTS)] {METRIC SOURCE/EQUATION}
The full list of metrics current in xskillscore can be found here. Remove issues from here once they are added.
Correlation Metrics
Distance Metrics
Probabilistic Metrics
Dichotomous-Only (yes/no) Metrics
Multi-Category Metrics
Comparative
Resampling
Metric glossaries:
Keep this comment in this issue updated with metrics to add to xskillscore. Consolidate from other issues as well as comments that appear below. The format for inputting will be:
The full list of metrics current in xskillscore can be found here. Remove issues from here once they are added.
Correlation Metrics
pearson_r_auto(Pearson R Autocorrelation) [autocorrelation? #205] {https://github.com/bradyrx/esmtools/blob/master/esmtools/stats.py#L171 }Distance Metrics
medape(Median Absolute Percentage Error)rmspe(Root Mean Square Percentage Error) [Feature request: Root Mean Square Percentage Error #46] {https://www.kaggle.com/c/rossmann-store-sales/overview/evaluation }msle(Mean Squared Log Error) [Feature request: Mean Squared Logarithmic Error #47] {https://scikit-learn.org/stable/modules/generated/sklearn.metrics.mean_squared_log_error.html }crmse(Centered Root Mean Square Error) {https://solarforecastarbiter.org/metrics/#crmse}maape(Mean Arctangent Absolute Percentage Error) [Feature request: MAAPE #85] {Feature request: MAAPE #85 (comment) }explained_var(Explained Variance Score) [Feature request: Explained variance score #213] {https://scikit-learn.org/stable/modules/model_evaluation.html#explained-variance-score }mean_pinball(Mean Pinball Loss) [Add mean_pinball_loss #274] {https://scikit-learn.org/dev/modules/generated/sklearn.metrics.mean_pinball_loss.html}Probabilistic Metrics
brier_skill_score(Brier Skill Score) [Feature request: Skill Scores #49] {Feature request: Skill Scores #49 (comment) }fairarg tocrps_ensemble[add fair crps_ensemble #260] {? }crpss(Continuous Ranked Probability Skill Score) [Feature request: Skill Scores #49] {https://github.com/pangeo-data/climpred/blob/main/climpred/metrics.py#L2176}rpss(Ranked Probability Skill Score) [Feature request: Skill Scores #49] {https://github.com/pangeo-data/climpred/blob/main/climpred/tests/test_probabilistic.py#L252}Dichotomous-Only (yes/no) Metrics
f1(f1 Score) [Implement more dichotomous contingency scores #138] {https://scikit-learn.org/stable/modules/generated/sklearn.metrics.f1_score.html#sklearn.metrics.f1_score }tpr(True Positive Rate/Recall Score) [Implement more dichotomous contingency scores #138] {https://scikit-learn.org/stable/modules/generated/sklearn.metrics.recall_score.html#sklearn.metrics.recall_score }precision(Positive Predictive Value/Precision Score) {https://scikit-learn.org/stable/modules/generated/sklearn.metrics.precision_score.html#sklearn.metrics.precision_score }rel_value(Relative Value Score) [Feature request: relative value score #229] {https://www.ecmwf.int/sites/default/files/elibrary/2007/15489-verification-probability-forecasts.pdf }Multi-Category Metrics
mc_threat_score(Multi-Category Threat Score) [Non-dichotomous threat scores #187] {?}Comparative
ttest_ind(T-test for the means of two independent samples of scores) [Feature request: ttest_ind #175] {https://docs.scipy.org/doc/scipy/reference/generated/scipy.stats.ttest_ind.html }Resampling
Metric glossaries: