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Bayesian realized-GARCH models for financial tail risk forecasting incorporating the two-sided Weibull distribution

机译:贝叶斯实现的金融尾风险预测模型融合了双面Weibull分布

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摘要

The realized-GARCH framework is extended to incorporate the two-sided Weibull distribution, for the purpose of volatility and tail risk forecasting in a financial time series. Further, the realized range, as a competitor for realized variance or daily returns, is employed as the realized measure in the realized-GARCH framework. Sub-sampling and scaling methods are applied to both the realized range and realized variance, to help deal with inherent micro-structure noise and inefficiency. A Bayesian Markov Chain Monte Carlo (MCMC) method is adapted and employed for estimation and forecasting, while various MCMC efficiency and convergence measures are employed to assess the validity of the method. In addition, the properties of the MCMC estimator are assessed and compared with maximum likelihood, via a simulation study. Compared to a range of well-known parametric GARCH and realized-GARCH models, tail risk forecasting results across seven market indices, as well as two individual assets, clearly favour the proposed realized-GARCH model incorporating the two-sided Weibull distribution; especially those employing the sub-sampled realized variance and sub-sampled realized range.
机译:实现了Garch框架延伸以纳入双面Weibull分布,用于在金融时序中波动和尾风险预测的目的。此外,作为实现方差或每日返回的竞争对手的实现范围是用作实现的Garch框架中的实现的衡量标准。将子采样和缩放方法应用于实现范围和实现方差,以帮助处理内在的微结构噪声和低效率。贝叶斯马尔可夫链蒙特卡罗(MCMC)方法适用于估计和预测,而采用各种MCMC效率和收敛措施来评估该方法的有效性。此外,通过模拟研究评估和比较MCMC估计器的特性并与最大可能性进行比较。与一系列着名的参数加GARCH和实现加法型号相比,尾部风险预测结果七个市场指数,以及两个个人资产,明确支持拟议的涂层威布尔分布的建议的GARCH模型;特别是那些采用子采样的实现方差和子采样的实现范围。

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