This paper introduces a fully Bayesian analysis of mixture autoregressive models with Student t components. With the capacity of capturing the behaviour in the tails of the distribution, the Student t MAR model provides a more flexible modelling framework than its Gaussian counterpart, leading to fitted models with fewer parameters and of easier interpretation. The degrees of freedom are also treated as random variables, and hence are included in the estimation process.
翻译:本文件全面介绍了对含有学生 t 成分的混合自动递减模型的全巴伊西亚分析。学生 t MAR模型具备捕捉分布尾部行为的能力,因此提供了一个比高西亚模型更灵活的建模框架,使得模型的参数较少,解释更简单。自由度也被视为随机变量,因此被纳入估算过程。