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A MapReduce Framework for Analysing Portfolios of Catastrophic Risk with Secondary Uncertainty

机译:用于分析具有二次不确定性的巨灾风险投资组合的MapReduce框架

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The design and implementation of an extensible framework for performing exploratory analysis of complex property portfolios of catastrophe insurance treaties on the Map-Reduce model is presented in this paper. The framework implements Aggregate Risk Analysis, a Monte Carlo simulation technique, which is at the heart of the analytical pipeline of the modern quantitative insurance/reinsurance pipeline. A key feature of the framework is the support for layering advanced types of analysis, such as portfolio or program level aggregate risk analysis with secondary uncertainty (i.e. computing Probable Maximum Loss (PML) based on a distribution rather than mean values). Such in-depth analysis is not supported by production-based risk management systems since they are constrained by hard response time requirements placed on them. On the other hand, this paper reports preliminary experimental results to demonstrate that in-depth aggregate risk analysis can be realized using a framework based on the MapReduce model.
机译:本文提出了一种可扩展框架的设计和实现,该框架可在Map-Reduce模型上进行巨灾保险条约的复杂财产组合的探索性分析。该框架实现了蒙特卡洛模拟技术“汇总风险分析”,这是现代定量保险/再保险管道分析管道的核心。该框架的主要功能是支持对高级分析类型进行分层,例如具有次要不确定性的投资组合或计划级集合风险分析(即根据分布而不是平均值计算可能的最大损失(PML))。基于生产的风险管理系统不支持这种深度分析,因为它们受到硬响应时间要求的约束。另一方面,本文报告了初步的实验结果,以证明使用基于MapReduce模型的框架可以实现深入的汇总风险分析。

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