Impact of combination methods on extreme precipitation projections

IF 1.5 Q3 BUSINESS, FINANCE
Sébastien Jessup, M. Mailhot, M. Pigeon
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引用次数: 1

Abstract

Climate change is expected to increase the frequency and intensity of extreme weather events. To properly assess the increased economical risk of these events, actuaries can gain in relying on expert models/opinions from multiple different sources, which requires the use of model combination techniques. From non-parametric to Bayesian approaches, different methods rely on varying assumptions potentially leading to very different results. In this paper, we apply multiple model combination methods to an ensemble of 24 experts in a pooling approach and use the differences in outputs from the different combinations to illustrate how one can gain additional insight from using multiple methods. The densities obtained from pooling in Montreal and Quebec City highlight the significant changes in higher quantiles obtained through different combination approaches. Areal reduction factor and quantile projected changes are used to show that consistency, or lack thereof, across approaches reflects the uncertainty of combination methods. This shows how an actuary using multiple expert models should consider more than one combination method to properly assess the impact of climate change on loss distributions, seeing as a single method can lead to overconfidence in projections.
组合方法对极端降水预测的影响
预计气候变化将增加极端天气事件的频率和强度。为了正确评估这些事件增加的经济风险,精算师可以依靠来自多个不同来源的专家模型/意见,这需要使用模型组合技术。从非参数方法到贝叶斯方法,不同的方法依赖于不同的假设,可能导致非常不同的结果。在本文中,我们将多种模型组合方法应用于池化方法中的24位专家的集合,并使用不同组合的输出差异来说明如何通过使用多种方法获得额外的见解。从蒙特利尔和魁北克市收集得到的密度突出了通过不同组合方法获得的较高分位数的显著变化。面积缩减因子和分位数预估变化表明,不同方法之间的一致性或缺乏一致性反映了组合方法的不确定性。这表明,使用多个专家模型的精算师应该考虑多种组合方法来正确评估气候变化对损失分布的影响,因为单一方法可能导致对预测的过度自信。
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
CiteScore
3.10
自引率
5.90%
发文量
22
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