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Main Authors: Olafsdottir, Helga Kristin, Rootzén, Holger, Bolin, David
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2306.15088
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author Olafsdottir, Helga Kristin
Rootzén, Holger
Bolin, David
author_facet Olafsdottir, Helga Kristin
Rootzén, Holger
Bolin, David
contents Statistical analysis of extremes can be used to predict the probability of future extreme events, such as large rainfalls or devastating windstorms. The quality of these forecasts can be measured through scoring rules. Locally scale invariant scoring rules give equal importance to the forecasts at different locations regardless of differences in the prediction uncertainty. This is a useful feature when computing average scores but can be an unnecessarily strict requirement when mostly concerned with extremes. We propose the concept of local weight-scale invariance, describing scoring rules fulfilling local scale invariance in a certain region of interest, and as a special case local tail-scale invariance, for large events. Moreover, a new version of the weighted Continuous Ranked Probability score (wCRPS) called the scaled wCRPS (swCRPS) that possesses this property is developed and studied. The score is a suitable alternative for scoring extreme value models over areas with varying scale of extreme events, and we derive explicit formulas of the score for the Generalised Extreme Value distribution. The scoring rules are compared through simulation, and their usage is illustrated in modelling of extreme water levels, annual maximum rainfalls, and in an application to non-extreme forecast for the prediction of air pollution.
format Preprint
id arxiv_https___arxiv_org_abs_2306_15088
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Locally tail-scale invariant scoring rules for evaluation of extreme value forecasts
Olafsdottir, Helga Kristin
Rootzén, Holger
Bolin, David
Methodology
Statistics Theory
Statistical analysis of extremes can be used to predict the probability of future extreme events, such as large rainfalls or devastating windstorms. The quality of these forecasts can be measured through scoring rules. Locally scale invariant scoring rules give equal importance to the forecasts at different locations regardless of differences in the prediction uncertainty. This is a useful feature when computing average scores but can be an unnecessarily strict requirement when mostly concerned with extremes. We propose the concept of local weight-scale invariance, describing scoring rules fulfilling local scale invariance in a certain region of interest, and as a special case local tail-scale invariance, for large events. Moreover, a new version of the weighted Continuous Ranked Probability score (wCRPS) called the scaled wCRPS (swCRPS) that possesses this property is developed and studied. The score is a suitable alternative for scoring extreme value models over areas with varying scale of extreme events, and we derive explicit formulas of the score for the Generalised Extreme Value distribution. The scoring rules are compared through simulation, and their usage is illustrated in modelling of extreme water levels, annual maximum rainfalls, and in an application to non-extreme forecast for the prediction of air pollution.
title Locally tail-scale invariant scoring rules for evaluation of extreme value forecasts
topic Methodology
Statistics Theory
url https://arxiv.org/abs/2306.15088