波动性聚类
分位数
自回归模型
计量经济学
波动性(金融)
异方差
风险价值
ARCH模型
计算机科学
财务困境
经济
财务
风险管理
金融体系
作者
Giovanni Bonaccolto,Massimiliano Caporin,Sandra Paterlini
标识
DOI:10.1016/j.jbankfin.2019.105659
摘要
We introduce the Conditional Autoregressive Quantile–Located VaR (QL–CoCaViaR), which extends the Conditional Value–at–Risk (Adrian and Brunnermeier, 2016) by using an estimation process capturing the state in which the financial system and a conditioning company are jointly in distress. Furthermore, we include autoregressive components of conditional quantiles to explicitly model volatility clustering and heteroskedasticity. We support our model with a large empirical analysis, in which we use both classical and novel backtesting methods. Our results show that the quantile–located relationships lead to relevant improvements in terms of predictive accuracy during stressed periods, providing a valuable tool for regulators to assess systemic events.
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