Filtered Historical Simulation Value-at-Risk Models and Their Competitors

Pedro Gurrola-Perez, David Murphy
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引用次数: 40

Abstract

Financial institutions have for many years sought measures which cogently summarise the diverse market risks in portfolios of financial instruments. This quest led institutions to develop Value-at-Risk (VaR) models for their trading portfolios in the 1990s. Subsequently, so-called filtered historical simulation VaR models have become popular tools due to their ability to incorporate information on recent market returns and thus produce risk estimates conditional on them. These estimates are often superior to the unconditional ones produced by the first generation of VaR models. This paper explores the properties of various filtered historical simulation models. We explain how these models are constructed and illustrate their performance, examining in particular how filtering transforms various properties of return distribution. The procyclicality of filtered historical simulation models is also discussed and compared to that of unfiltered VaR. A key consideration in the design of risk management models is whether the model’s purpose is simply to estimate some percentile of the return distribution, or whether its aims are broader. We discuss this question and relate it to the design of the model testing framework. Finally, we discuss some recent developments in the filtered historical simulation paradigm and draw some conclusions about the use of models in this tradition for the estimation of initial margin requirements.
过滤历史模拟风险值模型及其竞争对手
多年来,金融机构一直在寻求能够准确总结金融工具投资组合中各种市场风险的措施。这种追求促使机构在20世纪90年代为其交易组合开发了风险价值(VaR)模型。随后,所谓的过滤历史模拟VaR模型已经成为流行的工具,因为它们能够结合最近市场回报的信息,从而产生有条件的风险估计。这些估计通常优于第一代VaR模型产生的无条件估计。本文探讨了各种滤波历史仿真模型的性质。我们解释了这些模型是如何构建的,并说明了它们的性能,特别是检查了过滤如何转换返回分布的各种属性。还讨论了过滤后的历史模拟模型的顺周期性,并将其与未过滤的VaR进行了比较。风险管理模型设计中的一个关键考虑因素是,模型的目的是否仅仅是估计收益分布的某个百分位数,还是其目标是否更广泛。我们讨论了这个问题,并将其与模型测试框架的设计联系起来。最后,我们讨论了过滤历史模拟范式的一些最新发展,并得出了一些关于在这一传统中使用模型来估计初始保证金要求的结论。
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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