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首页> 外文期刊>Operations Research: The Journal of the Operations Research Society of America >Portfolio credit risk with extremal dependence: Asymptotic analysis and efficient simulation
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Portfolio credit risk with extremal dependence: Asymptotic analysis and efficient simulation

机译:具有极端依赖关系的投资组合信用风险:渐近分析和有效模拟

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摘要

We consider the risk of a portfolio comprising loans, bonds, and financial instruments that are subject to possible default. In particular, we are interested in performance measures such as the probability that the portfolio incurs large losses over a fixed time horizon, and the expected excess loss given that large losses are incurred during this horizon. Contrary to the normal copula that is commonly used in practice (e. g., in the CreditMetrics system), we assume a portfolio dependence structure that is semiparametric, does not hinge solely on correlation, and supports extremal dependence among obligors. A particular instance within the proposed class of models is the so-called t-copula model that is derived from the multivariate Student t distribution and hence generalizes the normal copula model. The size of the portfolio, the heterogeneous mix of obligors, and the fact that default events are rare and mutually dependent make it quite complicated to calculate portfolio credit risk either by means of exact analysis or naive Monte Carlo simulation. The main contributions of this paper are twofold. We first derive sharp asymptotics for portfolio credit risk that illustrate the implications of extremal dependence among obligors. Using this as a stepping stone, we develop importance-sampling algorithms that are shown to be asymptotically optimal and can be used to efficiently compute portfolio credit risk via Monte Carlo simulation.
机译:我们考虑了包含贷款,债券和金融工具的投资组合的风险,这些投资组合可能会发生违约。尤其是,我们对绩效指标很感兴趣,例如投资组合在固定时间范围内蒙受重大损失的可能性,以及在此期间蒙受大量损失的情况下的预期超额损失。与实践中通常使用的普通语系相反(例如,在CreditMetrics系统中),我们假定投资组合依赖结构是半参数的,不仅仅取决于相关性,并且支持债务人之间的极端依赖。所提出的模型类别中的一个特定实例是所谓的t-copula模型,它是从多元Student t分布派生的,因此可以推广正常copula模型。投资组合的规模,债务人的不同组合以及违约事件很少发生且相互依赖的事实使得通过精确分析或朴素的蒙特卡洛模拟法计算投资组合信贷风险变得相当复杂。本文的主要贡献是双重的。我们首先得出关于投资组合信用风险的清晰渐近性,这些渐进性说明了债务人之间极端依赖的含义。我们以此为基础,开发了重要性抽样算法,该算法被证明是渐近最优的,可用于通过蒙特卡洛模拟有效地计算投资组合信用风险。

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