eXsight: An Analytical Framework for Quantifying Financial Loss in the Aftermath of Catastrophic Events

M. Coelho, A. Rau-Chaplin
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引用次数: 3

Abstract

In this paper we explore the design of an analytical framework for quantifying financial loss in the aftermath of catastrophic events. The idea is to aggregate the thousands of exposure databases received by a single reinsurer into a giant loosely structured exposure portfolio and then use Big Data analysis technology, originally developed in the context of web-scale analytics, to rapidly perform natural but ad-hoc loss analysis immediately after an event. As in many situational analysis problems, the challenge here is to work with both categorical and geospatial data, deal with partial data often at varying levels of aggregation, integrate data from many sources, and provide an analysis framework in which analyses can be rapidly performed in the hours, days, and weeks immediately after an event.
展望:灾难性事件后经济损失量化的分析框架
在本文中,我们探讨了灾难性事件后量化经济损失的分析框架的设计。其理念是将单个再保险公司收到的数千个风险敞口数据库汇总成一个庞大的松散结构的风险敞口组合,然后使用大数据分析技术(最初是在网络规模分析的背景下开发的),在事件发生后立即快速执行自然但临时的损失分析。与许多情景分析问题一样,这里的挑战是处理分类数据和地理空间数据,处理不同聚合级别的部分数据,集成来自许多来源的数据,并提供一个分析框架,在该框架中,可以在事件发生后的数小时、数天和数周内立即执行分析。
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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