Benjamin Hamidi, Christophe Hurlin, P. Kouontchou, Bertrand B. Maillet
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引用次数: 4
Abstract
This paper introduces a new class of models for the Value-at-Risk (VaR) and Expected Shortfall (ES), called the Dynamic AutoRegressive Expectiles (DARE) models. Our approach is based on a weighted average of expectile-based VaR and ES models, i.e. the Conditional Autoregressive Expectile (CARE) models introduced by Taylor (2008a) and Kuan et al. (2009). First, we briefly present the main non-parametric, parametric and semi-parametric estimation methods for VaR and ES. Secondly, we detail the DARE approach and show how the expectiles can be used to estimate quantile risk measures. Thirdly, we use various backtesting tests to compare the DARE approach to other traditional methods for computing VaR forecasts on the French stock market. Finally, we evaluate the impact of several conditional weighting functions and determine the optimal weights in order to dynamically select the more relevant global quantile model.
本文介绍了一类新的风险价值(VaR)和预期缺口(ES)模型,称为动态自回归期望(DARE)模型。我们的方法是基于基于预期的VaR和ES模型的加权平均值,即Taylor (2008a)和Kuan et al.(2009)引入的条件自回归预期(CARE)模型。首先,我们简要介绍了VaR和ES的主要非参数、参数和半参数估计方法。其次,我们详细介绍了DARE方法,并展示了如何使用期望值来估计分位数风险措施。第三,我们使用各种回测测试来比较DARE方法与其他传统方法计算法国股票市场的VaR预测。最后,我们评估了几个条件加权函数的影响,并确定了最优权重,以便动态选择更相关的全局分位数模型。