Estimation of Value at Risk (VaR) Based On Lévy-GARCH Models: Evidence from Tehran Stock Exchange

Hossein Amiri, Mahmood Najafi Nejad, Seyede Mohadese Mousavi
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Abstract

This paper aims to estimate the Value-at-Risk (VaR) using GARCH type models with improved return distribution. Value at Risk (VaR) is an essential benchmark for measuring the risk of financial markets quantitatively. The parametric method, historical simulation, and Monte Carlo simulation have been proposed in several financial mathematics and engineering studies to calculate VaR, that each of them has some limitations. Therefore, these methods are not recommended in the case of complications in financial modeling since they require considering a series of assumptions, such as symmetric distributions in return on assets. Because the stock exchange data in the present study are skewed, asymmetric distributions along with symmetric distributions have been used for estimating VaR in this study. In this paper, the performance of fifteen VaR models with a compound of three conditional volatility characteristics including GARCH, APARCH and GJR and five distributional assumptions (normal, Student’s t, skewed Student’s t and two different Lévy distributions, include normal-inverse Gaussian (NIG) and generalized hyperbolic (GHyp)) for return innovations are investigated in the chemical, base metals, automobile, and cement industries. To do so, daily data from of Tehran Stock Exchange are used from 2013 to 2020. The results show that the GJR model with NIG distribution is more accurate than other models. According to the industry index loss function, the highest and lowest risks are related to the automotive and cement industries.
基于lcv - garch模型的风险价值估计:来自德黑兰证券交易所的证据
本文旨在利用改进收益分布的GARCH模型估计风险价值(VaR)。风险价值(VaR)是定量衡量金融市场风险的重要指标。在一些金融数学和工程研究中提出了参数法、历史模拟法和蒙特卡罗模拟法来计算VaR,但每种方法都有一定的局限性。因此,在金融建模复杂的情况下,不建议使用这些方法,因为它们需要考虑一系列假设,例如资产回报的对称分布。由于本研究中的证券交易所数据是偏斜的,因此本研究中使用了不对称分布和对称分布来估计VaR。本文研究了化学、基本金属、汽车和水泥行业的15个VaR模型的绩效,这些VaR模型具有三个条件波动特征(GARCH、APARCH和GJR)和五个分布假设(正态、Student’s t、偏态Student’s t和两个不同的lsamvy分布,包括正态-逆高斯分布(NIG)和广义双曲分布(GHyp))的复合,用于回报创新。为此,我们使用了2013年至2020年德黑兰证券交易所的每日数据。结果表明,具有NIG分布的GJR模型比其他模型精度更高。根据行业指数损失函数,风险最高和最低的行业分别是汽车和水泥行业。
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