具有依赖性的集体风险模型

Hélène Cossette, É. Marceau, Itre Mtalai
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引用次数: 14

摘要

摘要在精算科学中,集体风险模型起着至关重要的作用。在集体风险模型中,一个投资组合的总索赔金额是用随机和来定义的。在这些模型中,通常假设索赔的数量及其金额是独立的,即使情况并非总是如此。我们考虑具有不同依赖结构的集体风险模型。由于这种风险模型在精算环境中的重要性,我们首先研究了一个涉及多元混合Erlang分布家族的具有依赖性的集体风险模型。然后,在更一般的情况下,提出了基于二元和多元copuls混合的其他模型。这些不同的结构允许将索赔数量与每个索赔金额联系起来,并量化总索赔损失。然后,我们在集体风险模型中使用阿基米德和分层阿基米德联结,对随机和中涉及的索赔数随机变量和索赔金额随机变量之间的依赖关系进行建模。这种依赖结构使我们能够得出一种计算方法来评估索赔总额。虽然非常灵活,但这种方法易于实现,并且可以很容易地适应更复杂的层次结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collective Risk Models with Dependence
Abstract In actuarial science, collective risk models, in which the aggregate claim amount of a portfolio is defined in terms of random sums, play a crucial role. In these models, it is common to assume that the number of claims and their amounts are independent, even if this might not always be the case. We consider collective risk models with different dependence structures. Due to the importance of such risk models in an actuarial setting, we first investigate a collective risk model with dependence involving the family of multivariate mixed Erlang distributions. Other models based on mixtures involving bivariate and multivariate copulas in a more general setting are then presented. These different structures allow to link the number of claims to each claim amount, and to quantify the aggregate claim loss. Then, we use Archimedean and hierarchical Archimedean copulas in collective risk models, to model the dependence between the claim number random variable and the claim amount random variables involved in the random sum. Such dependence structures allow us to derive a computational methodology for the assessment of the aggregate claim amount. While being very flexible, this methodology is easy to implement, and can easily fit more complicated hierarchical structures.
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