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Monte Carlo Methods for Insurance Risk Computation

机译:Monte Carlo保险风险计算方法

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In this paper we consider the problem of computing tail probabilities of the distribution of a random sum of positive random variables. We assume that the individual claim variables follow a reproducible natural exponential family (NEF) distribution, and that the random number has a NEF counting distribution with a cubic variance function. This specific modeling is supported by data of the aggregated claim distribution of an insurance company. Large tail probabilities are important as they reflect the risk of large losses, however, analytic or numerical expressions are not available. We propose several simulation algorithms which are based on an asymptotic analysis of the distribution of the counting variable and on the reproducibility property of the claim distribution. The aggregated sum is simulated efficiently by importance sampling using an exponential change of measure. We conclude by numerical experiments of these algorithms, based on real car insurance claim data.
机译:在本文中,我们考虑计算尾部概率的尾部概率的随机和随机变量的随机和。 我们假设各个主张变量遵循可重复的自然指数族(NEF)分布,并且随机数具有与立方方差函数的NEF计数分布。 该具体建模由保险公司的汇总索赔分配数据提供支持。 大尾概率很重要,因为它们反映了大损失的风险,然而,不可用分析或数值表达。 我们提出了几种基于计数变量分布的渐近分析的仿真算法以及索赔分布的再现性性能。 通过使用指数变化的指数变化,通过重视抽样有效地模拟聚合金。 我们通过基于真实汽车保险索赔数据的这些算法的数值实验结束。

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