An Application of Geographically Weighted Quantile Lasso to Weather Index Insurance Design

Daniel Lima Miquelluti, V. Ozaki, D. J. Miquelluti
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Abstract

ABSTRACT Objective: this article studies the efficiency of a novel regression approach, the geographically weighted quantile lasso (GWQlasso), in the modeling of yield-index relationship for weather index insurance products. GWQlasso allows regression coefficients to vary spatially, while using the information from neighboring locations to derive robust estimates. The lasso component of the model facilitates the selection of relevant explanatory variables. Methodology: a weather index insurance (WII) product is developed based on one-month standardized precipitation index (SPI) derived from a daily precipitation dataset for 41 weather stations in the state of Paraná (Brazil) for the period from 1979 to 2015. Soybean yield data are also used for the 41 municipalities from 1980 to 2015. The effectiveness of the GWQlasso product is evaluated against a classic quantile regression approach and a traditional yield insurance product using the spectral risk measure (SRM) and the mean semi-deviation. Results: while GWQlasso proved as effective as quantile regression, it outperformed the yield insurance product. Conclusion: the GWQlasso is an alternative to the crop insurance market in Brazil and other locations with limited data.
地理加权分位数套索在天气指数保险设计中的应用
摘要目的:研究地理加权分位数套索(GWQlasso)在天气指数保险产品收益-指数关系建模中的有效性。GWQlasso允许回归系数在空间上变化,同时使用来自邻近位置的信息来获得稳健的估计。模型的套索成分便于选择相关的解释变量。方法:基于一个月标准化降水指数(SPI),开发了一个天气指数保险(WII)产品,该指数来源于1979 - 2015年巴西帕拉纳州41个气象站的日降水数据集。还使用了1980年至2015年41个直辖市的大豆产量数据。利用谱风险度量(SRM)和平均半偏差,对比经典分位数回归方法和传统收益保险产品,对GWQlasso产品的有效性进行了评估。结果:GWQlasso在与分位数回归一样有效的同时,优于收益型保险产品。结论:GWQlasso是巴西和其他数据有限的地区农作物保险市场的替代方案。
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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