An Empirical Investigation of Value at Risk (VaR) Forecasting Based on Range-Based Conditional Volatility Models

IF 2.5 3区 经济学 Q2 ECONOMICS
Lakshmi Padmakumari, Muneer Shaik
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Abstract

Value at Risk (VaR) is a widely used measure of market risk. Precision in the estimation of volatility leads to accurate VaR forecasts. As volatility is time-varying and has a clustering effect, GARCH class of volatility models is helpful in modeling volatility more precisely. Studies have also shown that range-based volatility estimates are more efficient than traditional models that use only closing prices. Therefore, this study uses the GARCH family of volatility models to model and forecast VaR. The study compares conventional models that use closing prices alone, like GARCH and TARCH, with range-based models like RGARCH and RTARCH models, where the range defined as daily high price minus low price is introduced as an exogenous variable, to explore if the latter provides better predictive accuracy. All the models are back-tested using the Kupiec (1995) unconditional coverage and Christoffersen (1998) conditional coverage tests. The data period in the study ranges from 2003-2021, and we consider five BRICS indices and three major developed economies, namely, the USA, the UK, and Germany. An empirical investigation shows that range-based models do a better job in VaR forecasting as it has more information content than daily closing prices, thereby giving more accurate VaR estimates. The study hopes this finding will greatly help stakeholders like financial institutions, regulators, and practitioners in more effective market risk management.
基于区间条件波动率模型的风险价值预测实证研究
风险价值(VaR)是一种广泛使用的市场风险度量。对波动率的精确估计导致准确的VaR预测。由于波动率具有时变和聚类效应,GARCH波动率模型有助于更精确地建模波动率。研究还表明,基于区间的波动率估计比仅使用收盘价的传统模型更有效。因此,本研究使用GARCH系列波动率模型对VaR进行建模和预测。该研究将仅使用收盘价的传统模型(如GARCH和TARCH)与基于区间的模型(如RGARCH和RTARCH模型)进行比较,RGARCH和RTARCH模型将定义为每日高价减去低价的区间作为外源变量引入,以探索后者是否提供更好的预测准确性。使用Kupiec(1995)无条件覆盖率和Christoffersen(1998)条件覆盖率测试对所有模型进行了反向测试。研究的数据期为2003-2021年,我们考虑了金砖国家的五个指数和三个主要发达经济体,即美国、英国和德国。一项实证研究表明,基于区间的模型在VaR预测方面做得更好,因为它比每日收盘价具有更多的信息内容,从而给出更准确的VaR估计。本研究希望这一发现能够极大地帮助金融机构、监管机构和从业人员等利益相关者更有效地进行市场风险管理。
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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来源期刊
CiteScore
5.20
自引率
3.60%
发文量
32
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