马尔可夫切换偏态自回归模型的贝叶斯推断

Stéphane Lhuissier
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引用次数: 1

摘要

我们研究了马尔可夫切换自回归模型,其中常用的高斯假设干扰被斜正态分布取代。这使我们不仅可以检测特定时间序列的均值和方差,还可以检测其偏度的变化。提出了一种基于马尔可夫链蒙特卡罗采样的贝叶斯框架。我们的信息先验分布导致封闭形式的完全条件后验分布,其抽样可以有效地在吉布斯抽样方案中进行。美国股市的一个真实数据例子说明了这种方法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Inference for Markov-switching Skewed Autoregressive Models
We examine Markov-switching autoregressive models where the commonly used Gaussian assumption for disturbances is replaced with a skew-normal distribution. This allows us to detect regime changes not only in the mean and the variance of a specified time series, but also in its skewness. A Bayesian framework is developed based on Markov chain Monte Carlo sampling. Our informative prior distributions lead to closed-form full conditional posterior distributions, whose sampling can be efficiently conducted within a Gibbs sampling scheme. The usefulness of the methodology is illustrated with a real-data example from U.S. stock markets.
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