Determining the order of a moving average model of time series using reversible jump MCMC: a comparison between laplacian and gaussian noises

Moving average (MA) is a time series model often used for pattern forecasting and recognition. It contains a noise that is often assumed to have a Gaussian distribution. However, in various applications, noise often does not have this distribution. This paper suggests using Laplacian noise in the MA...

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Main Authors: Suparman, Suparman, Abdellah Salhi, Abdellah Salhi, Rusiman, Mohd Saifullah
Format: Article
Language:English
Published: HRPUB 2020
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Online Access:http://eprints.uthm.edu.my/6177/1/J11857_5159bc59f48149f59f67f4334ace2767.pdf
http://eprints.uthm.edu.my/6177/
https://doi.org/10.13189/ms.2020.080613
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spelling my.uthm.eprints.61772022-01-27T03:56:30Z http://eprints.uthm.edu.my/6177/ Determining the order of a moving average model of time series using reversible jump MCMC: a comparison between laplacian and gaussian noises Suparman, Suparman Abdellah Salhi, Abdellah Salhi Rusiman, Mohd Saifullah TD878-894 Special types of environment, Including soil pollution, air pollution, noise pollution Moving average (MA) is a time series model often used for pattern forecasting and recognition. It contains a noise that is often assumed to have a Gaussian distribution. However, in various applications, noise often does not have this distribution. This paper suggests using Laplacian noise in the MA model, instead. The comparison of Gaussian and Laplacian noises was also investigated to ascertain the right noise for the model. Moreover, the Bayesian method was used to estimate the parameters, such as the order and coefficient of the model, as well as noise variance. The posterior distribution has a complex form because the parameters are concerened with the combination of spaces of different dimensions. Therefore, to overcome this problem, the Markov Chain Monte Carlo (MCMC) reversible jump algorithm is adopted. A simulation study was conducted to evaluate its performance. After it has worked properly, it was applied to model human heart rate data. The results showed that the MCMC algorithm can estimate the parameters of the MA model. This was developed using Laplace distributed noise. Moreover, when compared with the Gaussian, the Laplacian noise resulted in a higher order model and produced a smaller variance. HRPUB 2020 Article PeerReviewed text en http://eprints.uthm.edu.my/6177/1/J11857_5159bc59f48149f59f67f4334ace2767.pdf Suparman, Suparman and Abdellah Salhi, Abdellah Salhi and Rusiman, Mohd Saifullah (2020) Determining the order of a moving average model of time series using reversible jump MCMC: a comparison between laplacian and gaussian noises. Mathematics and Statistics, 8 (6). pp. 721-727. https://doi.org/10.13189/ms.2020.080613
institution Universiti Tun Hussein Onn Malaysia
building UTHM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
url_provider http://eprints.uthm.edu.my/
language English
topic TD878-894 Special types of environment, Including soil pollution, air pollution, noise pollution
spellingShingle TD878-894 Special types of environment, Including soil pollution, air pollution, noise pollution
Suparman, Suparman
Abdellah Salhi, Abdellah Salhi
Rusiman, Mohd Saifullah
Determining the order of a moving average model of time series using reversible jump MCMC: a comparison between laplacian and gaussian noises
description Moving average (MA) is a time series model often used for pattern forecasting and recognition. It contains a noise that is often assumed to have a Gaussian distribution. However, in various applications, noise often does not have this distribution. This paper suggests using Laplacian noise in the MA model, instead. The comparison of Gaussian and Laplacian noises was also investigated to ascertain the right noise for the model. Moreover, the Bayesian method was used to estimate the parameters, such as the order and coefficient of the model, as well as noise variance. The posterior distribution has a complex form because the parameters are concerened with the combination of spaces of different dimensions. Therefore, to overcome this problem, the Markov Chain Monte Carlo (MCMC) reversible jump algorithm is adopted. A simulation study was conducted to evaluate its performance. After it has worked properly, it was applied to model human heart rate data. The results showed that the MCMC algorithm can estimate the parameters of the MA model. This was developed using Laplace distributed noise. Moreover, when compared with the Gaussian, the Laplacian noise resulted in a higher order model and produced a smaller variance.
format Article
author Suparman, Suparman
Abdellah Salhi, Abdellah Salhi
Rusiman, Mohd Saifullah
author_facet Suparman, Suparman
Abdellah Salhi, Abdellah Salhi
Rusiman, Mohd Saifullah
author_sort Suparman, Suparman
title Determining the order of a moving average model of time series using reversible jump MCMC: a comparison between laplacian and gaussian noises
title_short Determining the order of a moving average model of time series using reversible jump MCMC: a comparison between laplacian and gaussian noises
title_full Determining the order of a moving average model of time series using reversible jump MCMC: a comparison between laplacian and gaussian noises
title_fullStr Determining the order of a moving average model of time series using reversible jump MCMC: a comparison between laplacian and gaussian noises
title_full_unstemmed Determining the order of a moving average model of time series using reversible jump MCMC: a comparison between laplacian and gaussian noises
title_sort determining the order of a moving average model of time series using reversible jump mcmc: a comparison between laplacian and gaussian noises
publisher HRPUB
publishDate 2020
url http://eprints.uthm.edu.my/6177/1/J11857_5159bc59f48149f59f67f4334ace2767.pdf
http://eprints.uthm.edu.my/6177/
https://doi.org/10.13189/ms.2020.080613
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score 13.250246