Optimal Scenario-Dependent Multivariate Shortfall Risk Measure and its Application in Capital Allocation

Wei Wang, Huifu Xu, Tiejun Ma
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引用次数: 7

Abstract

In this paper, we consider a multivariate shortfall risk measure with scenario-dependent allocation weights and examine its properties such as convexity and quasi-convexity. For fixed allocation weights, we show that the resulting risk measure is a convex systemic risk measure in which case the property of translation invariance is dependent on the allocation weights. However, if the allocation weights are chosen optimally on a feasible set, then the resulting risk measure is a quasi-convex systemic risk measure. To evaluate the systemic risk of a financial system with the proposed risk measure computationally, we reformulate it as a two-stage stochastic program which is a finite convex program when the underlying uncertainty is discretely distributed. In the case when the uncertainty is continuously distributed, we propose a polynomial decision rule to tackle the semi-infinite two-stage stochastic program which restricts the scenario-dependent allocation weights to be a class of polynomials of the underlying uncertainty parameters and subsequently reformulate the evaluation problem as a tractable optimization problem. Some convergence results are established for the approximation scheme. Moreover, we apply the proposed risk measure to capital allocation problem and introduce scenario-dependent allocation strategy and deterministic allocation strategy. Finally, we carry out some preliminary tests on the proposed computational schemes for a continuous system, a discrete system and a capital allocation example for a life insurance company.
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最优情景依赖的多元短缺风险测度及其在资本配置中的应用
本文考虑了一种具有场景依赖分配权的多元短缺风险度量,并研究了其凸性和拟凸性等性质。对于固定分配权,我们证明了得到的风险测度是一个凸系统风险测度,在这种情况下,平移不变性的性质依赖于分配权。然而,如果在可行集上最优地选择分配权重,则得到的风险测度是拟凸系统风险测度。为了用所提出的风险度量方法计算评估金融系统的系统性风险,我们将其重新表述为两阶段随机规划,即当潜在不确定性是离散分布时的有限凸规划。在不确定性连续分布的情况下,我们提出了一个多项式决策规则来解决半无限两阶段随机规划问题,该问题将场景相关的分配权重限制为底层不确定性参数的一类多项式,并将评估问题重新表述为一个可处理的优化问题。给出了该近似格式的一些收敛性结果。在此基础上,将风险测度应用于资本配置问题,并引入情景依赖配置策略和确定性配置策略。最后,我们针对连续系统、离散系统和人寿保险公司的资本配置实例对所提出的计算方案进行了一些初步的测试。
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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