具有长记忆的半参数GARCH模型在风险价值和预期缺口中的应用

Sebastian Letmathe, Yuanhua Feng, André Uhde
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引用次数: 1

摘要

本文介绍了一种新的具有长记忆的半参数GARCH模型。非参数尺度函数的估计是由SEMIFAR算法的改编版本进行的(Beran et al., 2002)。根据巴塞尔委员会在银行交易账簿中衡量市场风险的修订建议(巴塞尔银行监管委员会,2013年),半参数GARCH模型被应用于获得市场风险资产的风险价值(VaR)和预期缺口(ES)的滚动一步预测。此外,对所有模型都进行了标准监管红绿灯测试(巴塞尔银行监管委员会,1996年)和新引入的ES红绿灯测试。一项比较研究证明了我们建议的实际意义。我们的研究结果表明,半参数长记忆GARCH模型是传统参数模型的一个有吸引力的替代方案。
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Semiparametric GARCH Models with Long Memory Applied to Value at Risk and Expected Shortfall
In this paper new semiparametric GARCH models with long memory are introduced. The estimation of the nonparametric scale function is carried out by an adapted version of the SEMIFAR algorithm (Beran et al., 2002). Recurring on the revised recommendations by the Basel Committee to measure market risk in the banks' trading books (Basel Committee on Banking Supervision, 2013), the semi- parametric GARCH models are applied to obtain rolling one-step ahead forecasts for the Value at Risk (VaR) and Expected Shortfall (ES) for market risk assets. In addition, standard regulatory traffic light tests (Basel Committee on Banking Supervision, 1996) and a newly introduced traffic light test for the ES are carried out for all models. The practical relevance of our proposal is demonstrated by a comparative study. Our results indicate that semiparametric long memory GARCH models are an attractive alternative to their conventional, parametric counterparts.
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