对风险价值方法的全面回顾

Pilar Abad , Sonia Benito , Carmen López
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引用次数: 140

摘要

在本文中,我们对风险价值(VaR)的现有文献进行了理论回顾,特别关注其估计新方法的发展。我们从衡量风险价值的标准方法到更先进的方法,对目前的现状进行了深入分析,同时强调了它们的相对优势和劣势。我们还将回顾用于评估VaR方法性能的回测程序。从实践的角度来看,经验文献表明,基于极值理论和滤波历史模拟的方法是预测VaR的最佳方法。偏态和厚尾分布下的参数方法也提供了很好的结果,特别是当抛开标准化收益独立且同分布的假设以及在条件高阶矩下考虑时间变化时。最后,似乎CaViaR方法的一些非对称扩展也提供了有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comprehensive review of Value at Risk methodologies

In this article we present a theoretical review of the existing literature on Value at Risk (VaR) specifically focussing on the development of new approaches for its estimation. We effect a deep analysis of the State of the Art, from standard approaches for measuring VaR to the more evolved, while highlighting their relative strengths and weaknesses. We will also review the backtesting procedures used to evaluate VaR approach performance. From a practical perspective, empirical literature shows that approaches based on the Extreme Value Theory and the Filtered Historical Simulation are the best methods for forecasting VaR. The Parametric method under skewed and fat-tail distributions also provides promising results especially when the assumption that standardised returns are independent and identically distributed is set aside and when time variations are considered in conditional high-order moments. Lastly, it appears that some asymmetric extensions of the CaViaR method provide results that are also promising.

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