论文标题
通过替代建模为大型保险投资组合的有效经验评级
Effective experience rating for large insurance portfolios via surrogate modeling
论文作者
论文摘要
保险中的经验评级使用贝叶斯信誉模型,通过考虑承保人的属性及其索赔历史来升级合同的当前保费。大多数用于此任务的数据驱动模型在数学上是棘手的,并且必须通过数值方法(例如通过MCMC仿真)获得保费。但是,当在保单持有人级别应用时,这些方法在计算上可能很昂贵,甚至对于大型投资组合而言甚至可能是过高的。此外,这些计算成为``黑盒子''的程序,因为没有分析表达表达方式表明保单持有人的主张历史记录是如何用于升级其保费的。解决这些挑战。本文提出了一种廉价的替代模型,以促进一种分析性的表达方式,用于计算任何给定模型的贝叶斯级别,概述的是,概述了一定的部分。保单持有人的索赔历史的统计学是代孕模型的主要投入,这对于某些分配家庭来说足够,包括指数分散家族。
Experience rating in insurance uses a Bayesian credibility model to upgrade the current premiums of a contract by taking into account policyholders' attributes and their claim history. Most data-driven models used for this task are mathematically intractable, and premiums must be obtained through numerical methods such as simulation via MCMC. However, these methods can be computationally expensive and even prohibitive for large portfolios when applied at the policyholder level. Additionally, these computations become ``black-box" procedures as there is no analytical expression showing how the claim history of policyholders is used to upgrade their premiums. To address these challenges, this paper proposes a surrogate modeling approach to inexpensively derive an analytical expression for computing the Bayesian premiums for any given model, approximately. As a part of the methodology, the paper introduces a \emph{likelihood-based summary statistic} of the policyholder's claim history that serves as the main input of the surrogate model and that is sufficient for certain families of distribution, including the exponential dispersion family. As a result, the computational burden of experience rating for large portfolios is reduced through the direct evaluation of such analytical expression, which can provide a transparent and interpretable way of computing Bayesian premiums.