Abstract
Decompositions of the score of a forecast represent useful tools for assessing its performance. We consider local score decompositions permitting detailed forecast assessments across a spectrum of conditions of interest. We derive corrections to the bias of the decomposition components in the framework of point forecasts of quantile-type functionals, and illustrate their performance by simulation. Related bias corrections have thus far only been known for squared error criteria.
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Ehm, W., & Ovcharov, E. Y. (2017). Bias-corrected score decomposition for generalized quantiles. Biometrika, 104(2), 473–480. https://doi.org/10.1093/biomet/asx004
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