具有重尾风险因素的风险价值

P. Glasserman, P. Heidelberger, P. Shahabuddin
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引用次数: 3

摘要

本文提出了在存在重尾风险因素的情况下,有效计算风险价值(VAR)的方法。该方法通过多元t分布模型对市场风险因素进行建模,该模型既有重尾,又有经验支持。我们的关键数学结果是多元t随机变量中二次型的变换分析。利用这一结果,我们发展了两种计算方法。第一种方法使用傅里叶变换反演来建立一个重尾delta-gamma近似;这个方法非常快,但是像任何的-方法一样,它只能和二次逼近一样精确。为了提高准确性,我们开发了一种有效的蒙特卡罗方法;该方法使用我们的重尾delta-gamma近似作为减少方差的基础。具体来说,我们使用数值近似来设计市场场景的重要抽样和分层抽样的组合,与标准蒙特卡罗相比,可以产生巨大的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Value-at-risk with heavy-tailed risk factors
This paper develops methods for computationally efficient calculation of value-at-risk (VAR) in the presence of heavy-tailed risk factors. The methods model market risk factors through a multivariate t-distribution, which has both heavy tails and empirical support. Our key mathematical result is a transform analysis of a quadratic form in multivariate t random variables. Using this result, we develop two computational methods. The first uses Fourier transform inversion to develop a heavy-tailed delta-gamma approximation; this method is extremely fast, but like any delta-gamma method is only as accurate as the quadratic approximation. For greater accuracy, we therefore develop an efficient Monte Carlo method; this method uses our heavy-tailed delta-gamma approximation as a basis for variance reduction. Specifically, we use the numerical approximation to design a combination of importance sampling and stratified sampling of market scenarios that can produce enormous speed-ups compared with standard Monte Carlo.
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