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Minimizing Trigger Error in Parametric Earthquake Catastrophe Bonds via Statistical Approaches

机译:通过统计方法将参数化地震巨灾债券中的触发误差降至最低

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The insurance and reinsurance industry, some governments, and private entities employ catastrophe (CAT) bonds to obtain coverage for large losses induced by earthquakes. These financial instruments are designed to transfer catastrophic risks to the capital markets. When an event occurs, a Post-Event Loss Calculation (PELC) process is initiated to determine the losses to the bond and the subsequent recoveries for the bond sponsor. Given certain event parameters such as magnitude of the earthquake and the location of its epicenter, the CAT bond may pay a fixed amount or not pay at all. This paper reviews two statistical techniques for classification of events in order to identify which should trigger bond payments based on a large sample of simulated earthquakes. These statistical techniques are effective, simple to interpret and to implement. A numerical experiment is performed to illustrate their use, and to facilitate a comparison with a previously published evolutionary computation algorithm.
机译:保险和再保险行业,一些政府以及私人实体使用巨灾(CAT)债券来承保地震造成的巨大损失。这些金融工具旨在将灾难性风险转移到资本市场。发生事件时,将启动事后损失计算(PELC)过程,以确定债券的损失以及债券保荐人的随后追偿。给定某些事件参数(例如地震的震级和震中位置),CAT债券可能支付固定金额或根本不支付。本文回顾了两种用于事件分类的统计技术,以便根据大量的模拟地震来确定哪些应触发债券支付。这些统计技术是有效的,易于解释和实施的。进行了数值实验,以说明它们的使用,并便于与以前发布的进化计算算法进行比较。

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