Hierarchical Bayesian estimation for stationary autoregressive models using reversible jump MCMC algorithm

The autoregressive model is a mathematical model that is often used to model data in different areas of life. If the autoregressive model is matched against the data then the order and coefficients of the autoregressive model are unknown. This paper aims to estimate the order and coefficients of an...

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Main Authors: Suparman, S., Rusiman, Mohd Saifullah
Format: Article
Published: Science Publishing Corporation 2018
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Online Access:http://eprints.uthm.edu.my/5110/
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author Suparman, S.
Rusiman, Mohd Saifullah
author_facet Suparman, S.
Rusiman, Mohd Saifullah
author_sort Suparman, S.
building UTHM Institutional Repository
collection Online Access
description The autoregressive model is a mathematical model that is often used to model data in different areas of life. If the autoregressive model is matched against the data then the order and coefficients of the autoregressive model are unknown. This paper aims to estimate the order and coefficients of an autoregressive model based on data. The hierarchical Bayesian approach is used to estimate the order and coefficients of the autoregressive model. In the hierarchical Bayesian approach, the order and coefficients of the autoregressive model are assumed to have a prior distribution. The prior distribution is combined with the likelihood function to obtain a posterior distribution. The posterior distribution has a complex shape so that the Bayesian estimator is not analytically determined. The reversible jump Markov Chain Monte Carlo (MCMC) algorithm is proposed to obtain the Bayesian estimator. The performance of the algorithm is tested by using simulated data. The test results show that the algorithm can estimate the order and coefficients of the autoregressive model very well. Research can be further developed by comparing with other existing methods.
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institution Universiti Tun Hussein Onn Malaysia
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spelling uthm-51102022-01-05T08:38:16Z http://eprints.uthm.edu.my/5110/ Hierarchical Bayesian estimation for stationary autoregressive models using reversible jump MCMC algorithm Suparman, S. Rusiman, Mohd Saifullah TA Engineering (General). Civil engineering (General) TA329-348 Engineering mathematics. Engineering analysis The autoregressive model is a mathematical model that is often used to model data in different areas of life. If the autoregressive model is matched against the data then the order and coefficients of the autoregressive model are unknown. This paper aims to estimate the order and coefficients of an autoregressive model based on data. The hierarchical Bayesian approach is used to estimate the order and coefficients of the autoregressive model. In the hierarchical Bayesian approach, the order and coefficients of the autoregressive model are assumed to have a prior distribution. The prior distribution is combined with the likelihood function to obtain a posterior distribution. The posterior distribution has a complex shape so that the Bayesian estimator is not analytically determined. The reversible jump Markov Chain Monte Carlo (MCMC) algorithm is proposed to obtain the Bayesian estimator. The performance of the algorithm is tested by using simulated data. The test results show that the algorithm can estimate the order and coefficients of the autoregressive model very well. Research can be further developed by comparing with other existing methods. Science Publishing Corporation 2018 Article PeerReviewed Suparman, S. and Rusiman, Mohd Saifullah (2018) Hierarchical Bayesian estimation for stationary autoregressive models using reversible jump MCMC algorithm. International Journal of Engineering & Technology, 7 (4.3). pp. 64-67. ISSN 2227-524X
spellingShingle TA Engineering (General). Civil engineering (General)
TA329-348 Engineering mathematics. Engineering analysis
Suparman, S.
Rusiman, Mohd Saifullah
Hierarchical Bayesian estimation for stationary autoregressive models using reversible jump MCMC algorithm
title Hierarchical Bayesian estimation for stationary autoregressive models using reversible jump MCMC algorithm
title_full Hierarchical Bayesian estimation for stationary autoregressive models using reversible jump MCMC algorithm
title_fullStr Hierarchical Bayesian estimation for stationary autoregressive models using reversible jump MCMC algorithm
title_full_unstemmed Hierarchical Bayesian estimation for stationary autoregressive models using reversible jump MCMC algorithm
title_short Hierarchical Bayesian estimation for stationary autoregressive models using reversible jump MCMC algorithm
title_sort hierarchical bayesian estimation for stationary autoregressive models using reversible jump mcmc algorithm
topic TA Engineering (General). Civil engineering (General)
TA329-348 Engineering mathematics. Engineering analysis
url http://eprints.uthm.edu.my/5110/