Conditional mean risk sharing in the individual model with graphical dependencies

IF 1.5 Q3 BUSINESS, FINANCE Annals of Actuarial Science Pub Date : 2021-06-17 DOI:10.1017/S1748499521000166
M. Denuit, C. Robert
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Abstract

Abstract Conditional mean risk sharing appears to be effective to distribute total losses amongst participants within an insurance pool. This paper develops analytical results for this allocation rule in the individual risk model with dependence induced by the respective position within a graph. Precisely, losses are modelled by zero-augmented random variables whose joint occurrence distribution and individual claim amount distributions are based on network structures and can be characterised by graphical models. The Ising model is adopted for occurrences and loss amounts obey decomposable graphical models that are specific to each participant. Two graphical structures are thus used: the first one to describe the contagion amongst member units within the insurance pool and the second one to model the spread of losses inside each participating unit. The proposed individual risk model is typically useful for modelling operational risks, catastrophic risks or cybersecurity risks.
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具有图形依赖性的单个模型中的条件平均风险分担
摘要条件平均风险分担似乎是有效的分配总损失之间的参与者之间的保险池。本文在具有图内各自位置依赖性的个体风险模型中,给出了该分配规则的分析结果。准确地说,损失是由零增广随机变量建模的,这些随机变量的共同发生分布和个人索赔金额分布是基于网络结构的,可以用图形模型来表征。发生次数和损失金额采用Ising模型,服从每个参与者特定的可分解图形模型。因此使用了两种图形结构:第一个用于描述保险池内成员单位之间的传染,第二个用于模拟每个参与单位内部损失的扩散。所提出的个体风险模型通常适用于操作风险、灾难性风险或网络安全风险的建模。
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来源期刊
CiteScore
3.10
自引率
5.90%
发文量
22
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