KRIGING METHODS FOR MODELING SPATIAL BASIS RISK IN WEATHER INDEX INSURANCES: A TECHNICAL NOTE

IF 0.5 Q4 BUSINESS, FINANCE
YIPING GUO, JOHNNY SIU-HANG LI
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引用次数: 0

Abstract

The use of weather index insurances is subject to spatial basis risk, which arises from the fact that the location of the user’s risk exposure is not the same as the location of any of the weather stations where an index can be measured. To gauge the effectiveness of weather index insurances, spatial interpolation techniques such as kriging can be adopted to estimate the relevant weather index from observations taken at nearby locations. In this paper, we study the performance of various statistical methods, ranging from simple nearest neighbor to more advanced trans-Gaussian kriging, in spatial interpolations of daily precipitations with data obtained from the US National Oceanic and Atmospheric Administration. We also investigate how spatial interpolations should be implemented in practice when the insurance is linked to popular weather indexes including annual consecutive dry days (CDD) and maximum five-day precipitation in one month (MFP). It is found that although spatially interpolating the raw weather variables on a daily basis is more sophisticated and computationally demanding, it does not necessarily yield superior results compared to direct interpolations of CDD/MFP on a yearly/monthly basis. This intriguing outcome can be explained by the statistical properties of the weather indexes and the underlying weather variables.

用于天气指数保险空间基础风险建模的克里金方法:技术说明
天气指数保险的使用受到空间基础风险的影响,这是因为用户面临风险的地点与可以测量指数的任何气象站的地点都不相同。为衡量天气指数保险的有效性,可采用克里格法等空间插值技术,根据附近地点的观测数据估算相关天气指数。在本文中,我们利用从美国国家海洋和大气管理局获得的数据,研究了各种统计方法(从简单的最近邻法到更先进的跨高斯克里金法)在日降水量空间插值中的性能。我们还研究了当保险与流行的天气指数(包括年连续干旱日(CDD)和一个月内最大五天降水量(MFP))相关联时,在实践中应如何实施空间插值。研究发现,虽然按日对原始天气变量进行空间内插更为复杂,计算要求更高,但与按年/月对 CDD/MFP 进行直接内插相比,其结果并不一定更优。天气指数和相关天气变量的统计特性可以解释这一有趣的结果。
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
1.10
自引率
20.00%
发文量
28
期刊介绍: The shift of the financial market towards the general use of advanced mathematical methods has led to the introduction of state-of-the-art quantitative tools into the world of finance. The International Journal of Theoretical and Applied Finance (IJTAF) brings together international experts involved in the mathematical modelling of financial instruments as well as the application of these models to global financial markets. The development of complex financial products has led to new challenges to the regulatory bodies. Financial instruments that have been designed to serve the needs of the mature capitals market need to be adapted for application in the emerging markets.
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