Pitfalls in Backtesting Historical Simulation VAR Models

J. Escanciano, Pei Pei
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引用次数: 45

Abstract

Historical Simulation (HS) and its variant, the Filtered Historical Simulation (FHS), are the most popular Value-at-Risk forecast methods at commercial banks. These forecast methods are traditionally evaluated by means of the unconditional backtest. This paper formally shows that the unconditional backtest is always inconsistent for backtesting HS and FHS models, with a power function that can be even smaller than the nominal level in large samples. Our findings have fundamental implications in the determination of market risk capital requirements, and also explain Monte Carlo and empirical findings in previous studies. We also propose a data-driven weighted backtest with good power properties to evaluate HS and FHS forecasts. A Monte Carlo study and an empirical application with three US stocks confirm our theoretical findings. The empirical application shows that multiplication factors computed under the current regulatory framework are downward biased, as they inherit the inconsistency of the unconditional backtest.
回溯测试历史模拟VAR模型的陷阱
历史模拟(HS)及其变体滤波历史模拟(FHS)是商业银行最常用的风险价值预测方法。这些预测方法传统上是用无条件回归检验的方法来评价的。本文正式证明了HS和FHS模型的无条件回测总是不一致的,并且在大样本中幂函数甚至可以小于标称水平。我们的研究结果对市场风险资本要求的确定具有根本性的意义,并解释了以往研究中的蒙特卡罗和实证结果。我们还提出了一种具有良好功率特性的数据驱动加权回测来评估HS和FHS预测。蒙特卡洛研究和对三只美国股票的实证应用证实了我们的理论发现。实证应用表明,由于继承了无条件回测的不一致性,在现行监管框架下计算的乘法因子具有向下偏差。
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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