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引用次数: 165
摘要
摘要研究随机依赖下系统风险测度的一致性问题。它比较了当前文献中可用的条件风险价值(CoVaR)的两种替代概念。这些概念都是基于给定随机变量X的压力事件的随机变量Y的条件分布,但它们使用不同类型的压力事件。我们推导了这些备选CoVaR概念在copula中的表示,研究了它们的一般依赖一致性,并比较了它们在几个随机模型中的表现。我们的中心发现是,条件X≥VaR α (X)比条件X = VaR α (X)对X和Y之间的依赖性有更好的反应。我们证明了在X≥VaR α (X)条件下CoVaR的依赖一致性与多元分布或它们的联结的一致性排序的一般结果。这些结果也适用于其他一些系统性风险指标,如边际预期缺口(MES)和系统影响指数(SII)。我们提供了反例,表明基于应力事件X = VaR α (X)的CoVaR不是依赖一致的。特别是,如果(X, Y)是二元正态,则基于X = VaR α (X)的CoVaR不是相关参数的递增函数。类似的问题也出现在双变量t模型和有t个边距和一个Gumbel copula的模型中。在所有这些情况下,基于X≥VaR α (X)的CoVaR是依赖参数的递增函数。
On dependence consistency of CoVaR and some other systemic risk measures
Abstract This paper is dedicated to the consistency of systemic risk measures with respect to stochastic dependence. It compares two alternative notions of Conditional Value-at-Risk (CoVaR) available in the current literature. These notions are both based on the conditional distribution of a random variable Y given a stress event for a random variable X , but they use different types of stress events. We derive representations of these alternative CoVaR notions in terms of copulas, study their general dependence consistency and compare their performance in several stochastic models. Our central finding is that conditioning on X ≥ VaR α ( X ) gives a much better response to dependence between X and Y than conditioning on X = VaR α ( X ). We prove general results that relate the dependence consistency of CoVaR using conditioning on X ≥ VaR α ( X ) to well established results on concordance ordering of multivariate distributions or their copulas. These results also apply to some other systemic risk measures, such as the Marginal Expected Shortfall (MES) and the Systemic Impact Index (SII). We provide counterexamples showing that CoVaR based on the stress event X = VaR α ( X ) is not dependence consistent. In particular, if ( X , Y ) is bivariate normal, then CoVaR based on X = VaR α ( X ) is not an increasing function of the correlation parameter. Similar issues arise in the bivariate t model and in the model with t margins and a Gumbel copula. In all these cases, CoVaR based on X ≥ VaR α ( X ) is an increasing function of the dependence parameter.
期刊介绍:
Statistics & Risk Modeling (STRM) aims at covering modern methods of statistics and probabilistic modeling, and their applications to risk management in finance, insurance and related areas. The journal also welcomes articles related to nonparametric statistical methods and stochastic processes. Papers on innovative applications of statistical modeling and inference in risk management are also encouraged. Topics Statistical analysis for models in finance and insurance Credit-, market- and operational risk models Models for systemic risk Risk management Nonparametric statistical inference Statistical analysis of stochastic processes Stochastics in finance and insurance Decision making under uncertainty.