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首页> 外文期刊>Journal of Mathematical Finance >Forecasting Value-at-Risk of Financial Markets under the Global Pandemic of COVID-19 Using Conditional Extreme Value Theory
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Forecasting Value-at-Risk of Financial Markets under the Global Pandemic of COVID-19 Using Conditional Extreme Value Theory

机译:使用条件极值理论预测全球Covid-19的金融市场的价值风险

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The recent global pandemic of coronavirus (COVID-19) has had an enormous impact on the financial markets across the world. It has created an unprecedented level of risk uncertainty, prompting investors to impetuously dispose of their assets leading to significant losses over a very short period. In this paper, the conditional heteroscedastic models and extreme value theory are combined to examine the extreme tail behaviour of stock indices from major economies over the period before and during the COVID-19 pandemic outbreak. Daily returns data of stock market indices from twelve different countries are used in this study. The paper implements a dynamic method for forecasting a one-day ahead Value at Risk. As a first step, a comprehensive in-sample volatility modelling is implemented with skewed Student’s-t distribution assumption and their goodness of fit is determined using information selection criteria. In the second step, the VaR quantiles are estimated with the help of conditional Extreme Value Theory framework and then used to estimate the out-of-sample VaR forecasts. Backtesting results suggest that the conditional EVT based models consistently produce a better 1-day VaR performance compared with conditional models with asymmetric probability distributions for return innovations and maybe a better option in the estimation of VaR. This emphasizes the importance of modelling extreme events in stock markets using conditional extreme value theory and shows that the ability of the model to capture volatility clustering accurately is not sufficient for a correct assessment of risk in these markets.
机译:最近的冠状病毒(Covid-19)的全球大流行对全球金融市场产生了巨大影响。它创造了一个前所未有的风险不确定性,促使投资者浮躁地处理其资产,这在很短的期间内导致显着损失。在本文中,各种条件异源模型和极值理论将在Covid-19大流行爆发之前和期间的主要经济体中股票指数的极端尾尾行为。每日退货数据来自这项研究中的12个不​​同国家的股票市场指数。本文实现了一种动态方法,用于预测风险的一天前提。作为第一步,通过偏斜的学生-T分布假设实现了全面的样品波动性建模,并且它们使用信息选择标准确定其良好性。在第二步中,借助条件极值理论框架估计了var量程,然后用于估计样本超出样本预测。逆行结果表明,与具有不对称概率分布的条件模型相比,基于eVT的基于型号的型号始终产生更好的1天VAR性能,并且可以更好地选择VAR。这强调了使用条件极值理论模拟股票市场中极端事件的重要性,并表明模型能够准确地捕获波动率聚类的能力是不足以正确评估这些市场的风险。

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