Quintile regression based approach for dynamical VaR and CVaR forecasting using metalog distribution

G. Zrazhevsky, Vira Zrazhevska
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引用次数: 0

Abstract

The paper proposes a new method of dynamic VaR and CVaR (ES) risk measures forecasting. Quantile linear GARCH model is chosen as the main forecasting model for time series quantiles. To build a forecast, the values of quantiles are approximated by the metalog distribution, which makes it possible to use analytical formulas to evaluate risk measures. The method of VaR and CVaR forecasting is formulated as a step-by-step algorithm. At the first stage, an initial model is built to obtain variance estimates. The predicted variance values obtained from the constructed model are used at the second stage to find the QLGARCH model coefficients by solving the minimization problem. At the third stage, the QLGARCH models are estimated on a non uniform quantile grid. The obtained predicted values of quantiles are used to estimate the approximating metalog distribution. The investigated theory is applied to VaR and CVaR forecasting for time series of daily log return of the DJI index.
基于五分位回归的动态VaR和基于金属分布的CVaR预测方法
本文提出了一种新的动态VaR和CVaR (ES)风险测度预测方法。选择分位数线性GARCH模型作为时间序列分位数的主要预测模型。为了建立预测,分位数的值由金属分布近似,这使得使用分析公式来评估风险措施成为可能。VaR和CVaR的预测方法是一个循序渐进的算法。在第一阶段,建立初始模型以获得方差估计。在第二阶段,利用从构建的模型中得到的预测方差值,通过求解最小化问题来寻找QLGARCH模型系数。第三阶段,在非均匀分位数网格上对QLGARCH模型进行估计。得到的分位数预测值用于估计近似的金属分布。将所研究的理论应用于DJI指数日对数回报时间序列的VaR和CVaR预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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