Comparison of the accuracy of models in forecasting VAR and ES Through time

Q2 Economics, Econometrics and Finance
Sukriye Tuysuz
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Abstract

Purpose- Identify the best model/method to accurately forecast the Value-at-Risk (VaR) and the Expected Shortfall (ES) of position. Methodology- The dynamic of each retained return series was estimated with one of retained GARCH-type model combined with one of retained probability distributions (normal, fat-tailed, and skewed) in each retained sub-periods (window). In each window (sub-period), the 1-day ahead VaR and ES were forecasted by using the best selected GARCH-type model. More than 4000 1-day ahead VaR and ES were forecasted with each retained model/method. Based on 252-day rolling-window, forecasted VaR and ES with each retained model/method were backtested around 3750 times. Findings- Our results revealed that the best fitting GARCH-specifications combined with skewed Student or GED distribution enable to accurately forecast VaR more often. However, the best methods based on the best fitting GARCH-specifications combined with the best fitting probability distribution do not improve the frequency of acceptance of the null hypothesis stating the accuracy of the method. The accuracy of models tends to deteriorate during crises periods. Conclusion- Modeling and forecasting the dynamic of retained series with skewed probability distributions (skwed student or wked GED) improve the forecasting accuracy of a parametric or semi parametric model. A performan model in sample may not perform well out sample. Forecasted VaR should be complemented with Stressed VaR or ES. Keywords: VaR, ES, parametric, semi-parametric, backtesting, probability distribution, rolling-window. JEL Codes: G11, C10, C51
模型预测VAR和ES随时间变化的准确性比较
目的-确定最佳模型/方法来准确预测头寸的风险价值(VaR)和预期缺口(ES)。方法-每个保留收益序列的动态是用一个保留garch型模型结合每个保留子期(窗口)的一个保留概率分布(正态、肥尾和偏态)来估计的。在每个窗口(子周期)中,使用最佳选择的garch型模型预测1天前VaR和ES。每个保留的模型/方法预测了超过4000个1天前的VaR和ES。基于252天滚动窗口,每种保留模型/方法的预测VaR和ES进行了约3750次回测。研究结果-我们的研究结果表明,garch规范的最佳拟合与学生或GED分布的倾斜相结合,能够更准确地预测VaR。然而,基于最佳拟合garch规范和最佳拟合概率分布的最佳方法并没有提高表明该方法准确性的零假设的接受频率。在危机期间,模型的准确性往往会下降。结论:对具有偏概率分布的保留序列(skwed student或wked GED)的动态建模和预测提高了参数或半参数模型的预测精度。在样本中表现良好的模型可能在样本外表现不佳。预测的VaR应与强调的VaR或ES相辅相成。关键词:VaR, ES,参数,半参数,回测,概率分布,滚动窗口。JEL代码:G11, C10, C51
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