A Marginal Indemnity Function Approach to Optimal Reinsurance under the Vajda Condition

T. Boonen, Wenjun Jiang
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引用次数: 3

Abstract

To manage the risk of insurance companies, a reinsurance transaction is among the myriad risk management mechanisms the top ranked choice. In this paper, we study the design of optimal reinsurance contracts within a risk measure minimization framework and subject to the Vajda condition. The Vajda condition requires the reinsurer to take an increasing proportion of the loss when it increases and therefore imposes constraints on the indemnity function. The distortion-risk-measure-based objective function is very generic, and allows for various constraints, an objective to minimize the risk-adjusted value of the insurer's liability, and for heterogeneous beliefs regarding the distribution function of the underlying loss by the insurer and reinsurer. Under a mild condition, we propose a backward-forward optimization method that is based on a marginal indemnification function formulation. To show the applicability and simplicity of our strategy, we provide three concrete examples with the VaR: one with the risk-adjusted value of the insurer's liability, one with an objective function that follows from imposing Pareto-optimality, and one with heterogeneous beliefs.
Vajda条件下最优再保险的边际补偿函数方法
为了管理保险公司的风险,再保险交易是众多风险管理机制中的首选。本文研究了风险测度最小化框架下的Vajda条件下最优再保险合同的设计问题。Vajda条件要求再保险人在损失增加时承担越来越大的损失比例,因此对赔偿功能施加了约束。基于扭曲风险度量的目标函数是非常通用的,并且允许各种约束、最小化保险人责任的风险调整值的目标,以及关于保险人和再保险人对潜在损失的分布函数的异质信念。在温和条件下,我们提出了一种基于边际补偿函数公式的后向优化方法。为了证明我们的策略的适用性和简单性,我们提供了三个VaR的具体例子:一个是保险公司责任的风险调整值,一个是强加帕累托最优的目标函数,一个是异质信念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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