Evaluating Forecasts for High-Impact Events Using Transformed Kernel Scores

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
S. Allen, D. Ginsbourger, Johanna F. Ziegel
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引用次数: 6

Abstract

It is informative to evaluate a forecaster's ability to predict outcomes that have a large impact on the forecast user. Although weighted scoring rules have become a well-established tool to achieve this, such scores have been studied almost exclusively in the univariate case, with interest typically placed on extreme events. However, a large impact may also result from events not considered to be extreme from a statistical perspective: the interaction of several moderate events could also generate a high impact. Compound weather events provide a good example of this. To assess forecasts made for high-impact events, this work extends existing results on weighted scoring rules by introducing weighted multivariate scores. To do so, we utilise kernel scores. We demonstrate that the threshold-weighted continuous ranked probability score (twCRPS), arguably the most well-known weighted scoring rule, is a kernel score. This result leads to a convenient representation of the twCRPS when the forecast is an ensemble, and also permits a generalisation that can be employed with alternative kernels, allowing us to introduce, for example, a threshold-weighted energy score and threshold-weighted variogram score. To illustrate the additional information that these weighted multivariate scoring rules provide, results are presented for a case study in which the weighted scores are used to evaluate daily precipitation accumulation forecasts, with particular interest on events that could lead to flooding.
使用转换核分数评估高影响事件的预测
评估预测者预测对预测用户有重大影响的结果的能力是有信息的。尽管加权评分规则已经成为实现这一目标的成熟工具,但这种评分几乎只在单变量情况下进行了研究,人们通常对极端事件感兴趣。然而,从统计角度来看,不被认为是极端的事件也可能造成巨大影响:几个中等事件的相互作用也可能产生巨大影响。复合天气事件就是一个很好的例子。为了评估对高影响事件的预测,这项工作通过引入加权多元评分来扩展加权评分规则的现有结果。为此,我们使用内核分数。我们证明了阈值加权连续排序概率得分(twCRPS),可以说是最著名的加权得分规则,是一个核得分。当预测是一个集合时,这一结果导致了twCRPS的方便表示,并且还允许可以与替代核一起使用的泛化,允许我们引入例如阈值加权能量得分和阈值加权变差函数得分。为了说明这些加权多变量评分规则提供的额外信息,给出了一个案例研究的结果,在该案例研究中,加权评分用于评估每日降水量累积预测,特别关注可能导致洪水的事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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