Point forecasting and forecast evaluation with generalized Huber loss

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Abstract

Huber loss, its asymmetric variants and their associated func-tionals (here named Huber functionals) are studied in the context of point forecasting and forecast evaluation. The Huber functional of a distribution is the set of minimizers of the expected (asymmetric) Huber loss, is an inter-mediary between a quantile and corresponding expectile, and also arises in M-estimation. Each Huber functional is elicitable, generating the precise set of minimizers of an expected score, subject to weak regularity conditions on the class of probability distributions, and has a complete characterization of its consistent scoring functions. Such scoring functions admit a mixture representation as a weighted average of elementary scoring functions. Each elementary score can be interpreted as the relative economic loss of using a particular forecast for a class of investment decisions where profits and losses are capped. The relevance of this theory for comparative assessment of weather forecasts is also discussed.

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APA

Taggart, R. J. (2022). Point forecasting and forecast evaluation with generalized Huber loss. Electronic Journal of Statistics, 16(1), 201–231. https://doi.org/10.1214/21-EJS1957

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