We study the prediction of Value at Risk (VaR) for cryptocurrencies. In contrast to classic assets, returns of cryptocurrencies are often highly volatile and characterized by large fluctuations around single events. Analyzing a comprehensive set of 105 major cryptocurrencies, we show that Generalized Random Forests (GRF) (Athey et al., 2019) adapted to quantile prediction have superior performance over other established methods such as quantile regression, GARCH-type and CAViaR models. This advantage is especially pronounced in unstable times and for classes of highly-volatile cryptocurrencies. Furthermore, we identify important predictors during such times and show their influence on forecasting over time. Moreover, a comprehensive simulation study also indicates that the GRF methodology is at least on par with existing methods in VaR predictions for standard types of financial returns and clearly superior in the cryptocurrency setup.
翻译:我们研究了风险价值预测(VaR)对于加密的预测。与经典资产相比,加密回报往往高度波动,其特点是单一事件周围的波动很大。我们分析了一套105大加密的综合数据,发现适应量化预测的通用随机森林(AYEM等人,2019年)的性能优于其他既定方法,如四分回归、GARCH类型和CAVAR模型。这一优势在不稳定的时期和高度挥发性加密的类别中尤为明显。此外,我们确定了这些时期的重要预测数据,并展示了它们对预测时间的影响。此外,一项全面的模拟研究还表明,通用随机森林(GRF)方法至少与VaR预测中标准金融回报类型的现有方法相当,在加密货币设置中明显高于现有方法。