Statistics Research Division, Institut Teknologi Bandung, Bandung, Indonesia.
PLoS One. 2020 Dec 23;15(12):e0242102. doi: 10.1371/journal.pone.0242102. eCollection 2020.
Risk in finance may come from (negative) asset returns whilst payment loss is a typical risk in insurance. It is often that we encounter several risks, in practice, instead of single risk. In this paper, we construct a dependence modeling for financial risks and form a portfolio risk of cryptocurrencies. The marginal risk model is assumed to follow a heteroscedastic process of GARCH(1,1) model. The dependence structure is presented through vine copula. We carry out numerical analysis of cryptocurrencies returns and compute Value-at-Risk (VaR) forecast along with its accuracy assessed through different backtesting methods. It is found that the VaR forecast of returns, by considering vine copula-based dependence among different returns, has higher forecast accuracy than that of returns under prefect dependence assumption as benchmark. In addition, through vine copula, the aggregate VaR forecast has not only lower value but also higher accuracy than the simple sum of individual VaR forecasts. This shows that vine copula-based forecasting procedure not only performs better but also provides a well-diversified portfolio.
金融风险可能来自(负)资产回报,而支付损失是保险中的典型风险。在实践中,我们经常会遇到多种风险,而不是单一风险。本文构建了金融风险的相依模型,并形成了加密货币的投资组合风险。边缘风险模型假设遵循 GARCH(1,1)模型的异方差过程。相依结构通过 vine copula 呈现。我们对加密货币收益进行数值分析,并计算风险价值 (VaR)预测,同时通过不同的回溯测试方法评估其准确性。结果表明,在考虑不同收益之间基于 vine copula 的相依性的情况下,收益的 VaR 预测比基准的完美相依假设下的收益的 VaR 预测具有更高的预测准确性。此外,通过 vine copula,总 VaR 预测不仅价值更低,而且准确性更高,优于单个 VaR 预测的简单总和。这表明基于 vine copula 的预测程序不仅表现更好,而且提供了一个良好分散的投资组合。