Modelling Crude Oil Returns Using the NRIG Distribution

Knowledge Chinhamu, Nompilo Mabaso, R. Chifurira
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引用次数: 1

Abstract

Over the past decade, crude oil prices have risen dramatically, making the oil market very volatile and risky; hence, implementing an efficient risk management tool against market risk is crucial. Value-at-risk (VaR) has become the most common tool in this context to quantify market risk. Financial data typically have certain features such as volatility clustering, asymmetry, and heavy and semi-heavy tails, making it hard, if not impossible, to model them by using a normal distribution. In this paper, we propose the subclasses of the generalised hyperbolic distributions (GHDs), as appropriate models for capturing these characteristics for the crude oil and gasoline returns. We also introduce the new subclass of GHDs, namely normal reciprocal inverse Gaussian distribution (NRIG), in evaluating the VaR for the crude oil and gasoline market. Furthermore, VaR estimation and backtesting procedures using the Kupiec likelihood ratio test are conducted to test the extreme tails of these models. The main findings from the Kupiec likelihood test statistics suggest that the best GHD model should be chosen at various VaR levels. Thus, the final results of this research allow risk managers, financial analysts, and energy market academics to be flexible in choosing a robust risk quantification model for crude oil and gasoline returns at their specific VaR levels of interest. Particularly for NRIG, the results suggest that a better VaR estimation is provided at the long positions.
用NRIG分布模拟原油收益
在过去的十年里,原油价格大幅上涨,使得石油市场非常不稳定,风险很大;因此,针对市场风险实施有效的风险管理工具至关重要。在这种情况下,风险价值(VaR)已成为量化市场风险的最常用工具。金融数据通常具有某些特征,如波动性聚类、不对称、重尾和半重尾,这使得使用正态分布来建模变得困难(如果不是不可能的话)。在本文中,我们提出了广义双曲分布(GHDs)的子类,作为捕获原油和汽油收益的这些特征的适当模型。我们还引入了GHDs的新子类,即正态倒易逆高斯分布(NRIG),用于评估原油和汽油市场的VaR。此外,使用Kupiec似然比检验进行VaR估计和回验程序,以检验这些模型的极端尾。Kupiec似然检验统计量的主要发现表明,在不同的VaR水平上应该选择最佳的GHD模型。因此,本研究的最终结果使风险管理人员、金融分析师和能源市场学者能够灵活地选择原油和汽油收益在其特定VaR水平下的稳健风险量化模型。特别是对于NRIG,结果表明,在多头位置提供了更好的VaR估计。
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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