Anticipating extreme losses using score-driven shape filters

IF 0.7 4区 经济学 Q3 ECONOMICS Studies in Nonlinear Dynamics and Econometrics Pub Date : 2022-10-10 DOI:10.1515/snde-2021-0102
A. Ayala, Szabolcs Blazsek, A. Escribano
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引用次数: 5

Abstract

Abstract We suggest a new value-at-risk (VaR) framework using EGARCH (exponential generalized autoregressive conditional heteroskedasticity) models with score-driven expected return, scale, and shape filters. We use the EGB2 (exponential generalized beta of the second kind), NIG (normal-inverse Gaussian), and Skew-Gen-t (skewed generalized-t) distributions, for which the score-driven shape parameters drive the skewness, tail shape, and peakedness of the distribution. We use daily data on the Standard & Poor’s 500 (S&P 500) index for the period of February 1990 to October 2021. For all distributions, likelihood-ratio (LR) tests indicate that several EGARCH models with dynamic shape are superior to the EGARCH models with constant shape. We compare the realized volatility with the conditional volatility estimates, and we find two Skew-Gen-t specifications with dynamic shape, which are superior to the Skew-Gen-t specification with constant shape. The shape parameter dynamics are associated with important events that affected the stock market in the United States (US). VaR backtesting is performed for the dot.com boom (January 1997 to October 2020), the 2008 US Financial Crisis (October 2007 to March 2009), and the coronavirus disease (COVID-19) pandemic (January 2020 to October 2021). We show that the use of the dynamic shape parameters improves the VaR measurements.
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使用分数驱动的形状过滤器预测极端损失
我们提出了一个新的风险值(VaR)框架,使用EGARCH(指数广义自回归条件异方差)模型,带有分数驱动的期望回报、规模和形状过滤器。我们使用EGB2(第二类指数广义beta)、NIG(正态-逆高斯)和Skew-Gen-t(偏态广义t)分布,其中分数驱动的形状参数驱动分布的偏度、尾部形状和峰度。我们使用1990年2月至2021年10月期间标准普尔500指数(S&P 500)的每日数据。对于所有分布,似然比(LR)检验表明,动态形状的EGARCH模型优于恒定形状的EGARCH模型。我们将实现的波动率与条件波动率估计进行了比较,发现两个具有动态形状的Skew-Gen-t规范优于具有恒定形状的Skew-Gen-t规范。形状参数动态与影响美国股票市场的重要事件有关。对互联网繁荣(1997年1月至2020年10月)、2008年美国金融危机(2007年10月至2009年3月)和冠状病毒病(COVID-19)大流行(2020年1月至2021年10月)进行了VaR回测。我们证明了动态形状参数的使用改善了VaR测量。
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来源期刊
CiteScore
1.40
自引率
12.50%
发文量
34
期刊介绍: Studies in Nonlinear Dynamics & Econometrics (SNDE) recognizes that advances in statistics and dynamical systems theory may increase our understanding of economic and financial markets. The journal seeks both theoretical and applied papers that characterize and motivate nonlinear phenomena. Researchers are required to assist replication of empirical results by providing copies of data and programs online. Algorithms and rapid communications are also published.
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