Bayesian Subset Selection of Seasonal Autoregressive Models

Author:

Amin Ayman A.1ORCID,Emam Walid2ORCID,Tashkandy Yusra2ORCID,Chesneau Christophe3

Affiliation:

1. Department of Statistics, Mathematics, and Insurance, Faculty of Commerce, Menoufia University, Menoufia 32952, Egypt

2. Department of Statistics and Operation Research, Faculty of Science, King Saud University, P.O. Box 2455, Riyadh 11451, Saudi Arabia

3. Department of Mathematics, University of Caen-Normandie, 14000 Caen, France

Abstract

Seasonal autoregressive (SAR) models have many applications in different fields, such as economics and finance. It is well known in the literature that these models are nonlinear in their coefficients and that their Bayesian analysis is complicated. Accordingly, choosing the best subset of these models is a challenging task. Therefore, in this paper, we tackled this problem by introducing a Bayesian method for selecting the most promising subset of the SAR models. In particular, we introduced latent variables for the SAR model lags, assumed model errors to be normally distributed, and adopted and modified the stochastic search variable selection (SSVS) procedure for the SAR models. Thus, we derived full conditional posterior distributions of the SAR model parameters in the closed form, and we then introduced the Gibbs sampler, along with SSVS, to present an efficient algorithm for the Bayesian subset selection of the SAR models. In this work, we employed mixture–normal, inverse gamma, and Bernoulli priors for the SAR model coefficients, variance, and latent variables, respectively. Moreover, we introduced a simulation study and a real-world application to evaluate the accuracy of the proposed algorithm.

Funder

King Saud University

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference28 articles.

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3. Sensitivity to prior specification in Bayesian identification of autoregressive time series models;Amin;Pak. J. Stat. Oper. Res.,2017

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