Value at Risk estimation using GAS models with heavy tailed distributions for cryptocurrencies

Stephanie Danielle Subramoney, Knowledge Chinhamu, R. Chifurira
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Abstract

  Risk management and prediction of market losses of cryptocurrencies are of notable value to risk managers, portfolio managers, financial market researchers and academics. One of the most common measures of an asset’s risk is Value-at-Risk (VaR). This paper evaluates and compares the performance of generalized autoregressive score (GAS) combined with heavy-tailed distributions, in estimating the VaR of two well-known cryptocurrencies’ returns, namely Bitcoin returns and Ethereum returns. In this paper, we proposed a VaR model for Bitcoin and Ethereum returns, namely the GAS model combined with the generalized lambda distribution (GLD), referred to as the GAS-GLD model. The relative performance of the GAS-GLD models was compared to the models proposed by Troster et al. (2018), in other words, GAS models combined with asymmetric Laplace distribution (ALD), the asymmetric Student’s t-distribution (AST) and the skew Student’s t-distribution (SSTD). The Kupiec likelihood ratio test was used to assess the adequacy of the proposed models. The principal findings suggest that the GAS models with heavy-tailed innovation distributions are, in fact, appropriate for modelling cryptocurrency returns, with the GAS-GLD being the most adequate for the Bitcoin returns at various VaR levels, and both GAS-SSTD, GAS-ALD and GAS-GLD models being the most appropriate for the Ethereum returns at the VaR levels used in this study.    
使用带有重尾分布的GAS模型对加密货币进行风险值估计
加密货币的风险管理和市场损失预测对于风险经理、投资组合经理、金融市场研究人员和学者来说具有重要的价值。衡量资产风险的最常用方法之一是风险价值(VaR)。本文评估和比较了广义自回归评分(GAS)结合重尾分布在估计两种知名加密货币回报(即比特币回报和以太坊回报)的VaR中的表现。本文提出了比特币和以太坊收益的VaR模型,即结合广义lambda分布(GLD)的GAS模型,简称GAS-GLD模型。将GAS- gld模型的相对性能与Troster等人(2018)提出的模型进行了比较,即GAS模型结合了不对称拉普拉斯分布(ALD)、不对称Student 's t分布(AST)和偏态Student 's t分布(SSTD)。使用Kupiec似然比检验来评估所提出模型的充分性。主要研究结果表明,具有重尾创新分布的GAS模型实际上适合模拟加密货币的回报,GAS- gld模型最适合于各种VaR水平下的比特币回报,GAS- sstd、GAS- ald和GAS- gld模型最适合于本研究中使用的VaR水平下的以太坊回报。
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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