Type: Article
A Bayesian Approach to Robust Skewed Autoregressive Processes
Journal: Calcutta Statistical Association Bulletin (00080683)Year: November 2017Volume: 69Issue: Pages: 165 - 182
Maleki M.a Mahmoudi M.
DOI:10.1177/0008068317732196Language: English
Abstract
This article studies autoregressive (AR) models assuming innovations with scale mixtures of skew-normal (SMSN) distributions, an attractive and flexible family of probability distributions. A Bayesian analysis considering informative prior distributions is presented. Comprehensive simulation studies are performed to support the performance of the proposed model and methods. The proposed methods are also applied on a real-time series data which has previously been analysed under Gaussian and Student-t AR models. © 2018 Calcutta Statistical Association, Kolkata.