Assessment of the size of VaR backtests for small samples

Daniel Kaszyński, B. Kamiński, Bartosz Pankratz
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引用次数: 1

Abstract

The market risk management process includes the quantification of the risk connected with defined portfolios of assets and the diagnostics of the risk model. Value at Risk (VaR) is one of the most common market risk measures. Since the distributions of the daily P&L of financial instruments are unobservable, literature presents a broad range of backtests for VaR diagnostics. In this paper, we propose a new methodological approach to the assessment of the size of VaR backtests, and use it to evaluate the size of the most distinctive and popular backtests. The focus of the paper is directed towards the evaluation of the size of the backtests for small-sample cases – a typical situation faced during VaR backtesting in banking practice. The results indicate significant differences between tests in terms of the p-value distribution. In particular, frequency-based tests exhibit significantly greater discretisation effects than duration-based tests. This difference is especially apparent in the case of small samples. Our findings prove that from among the considered tests, the Kupiec TUFF and the Haas Discrete Weibull have the best properties. On the other hand, backtests which are very popular in banking practice, that is the Kupiec POF and Christoffersen’s Conditional Coverage, show significant discretisation, hence deviations from the theoretical size.
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小样本VaR回测的规模评估
市场风险管理过程包括与已定义的资产组合相关的风险的量化和风险模型的诊断。风险价值(VaR)是最常用的市场风险度量之一。由于金融工具的日损益分布是不可观察的,文献提出了VaR诊断的广泛回测。本文提出了一种评估VaR回测试规模的新方法,并用它来评估最具特色和最受欢迎的回测试的规模。本文的重点是对小样本案例的回测规模进行评估,这是银行实践中VaR回测面临的典型情况。结果表明,在p值分布方面,检验之间存在显著差异。特别是,基于频率的测试比基于持续时间的测试表现出更大的离散效应。这种差异在小样本的情况下尤为明显。我们的研究结果证明,在考虑的测试中,Kupiec TUFF和Haas离散威布尔具有最好的性能。另一方面,银行实践中非常流行的回测,即Kupiec POF和Christoffersen的条件覆盖,显示出显著的离散化,因此偏离理论规模。
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