Bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method

The objective of this current research is to model the experimental data on the effectiveness of an incentive-based weight reduction method by using Bayesian hierarchical growth models. Three Bayesian hierarchical growth models are proposed, namely parametric Bayesian hierarchical growth model with...

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Main Authors: Md Azman Shahadan, Md Azman Shahadan, Mujeeb Khan, Mujeeb Khan, Aimillia Mohd Ramli, Aimillia Mohd Ramli
Format: Article
Language:English
Published: Psychology and Education 2020
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Online Access:http://irep.iium.edu.my/87448/1/Bayesian%20Hierarchical.pdf
http://irep.iium.edu.my/87448/
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Institution: Universiti Islam Antarabangsa Malaysia
Language: English
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spelling my.iium.irep.874482021-03-21T01:31:47Z http://irep.iium.edu.my/87448/ Bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method Md Azman Shahadan, Md Azman Shahadan Mujeeb Khan, Mujeeb Khan Aimillia Mohd Ramli, Aimillia Mohd Ramli QA Mathematics The objective of this current research is to model the experimental data on the effectiveness of an incentive-based weight reduction method by using Bayesian hierarchical growth models. Three Bayesian hierarchical growth models are proposed, namely parametric Bayesian hierarchical growth model with correlated intercept and slope random effects model, parametric Bayesian hierarchical growth model with no correlated intercept and slope random effects model and semi-parametric Bayesian hierarchical growth model with Dirichlet process mixture prior model. The data is obtained from forty eight (48) students who had participated in an experiment on weight reduction method. The students were divided equally into two groups: single and pair groups. The experiment was carried out over the period of three months with a weight reading session for every two weeks. At the end of the study, we had six repeated measures of each student’s weight in kg and some measures of covariates and factors. Our results showed that the best model for the above data based on the Bayesian fit indexes and the models’ flexibility is the semi- parametric Bayesian hierarchical growth model with Dirichlet process mixture prior model. The results of the semi-parametric model showed that the ‘growth’ or reduction rates of the weight reduction experiment relate to the students’ gender, height in cm, experimental group (single or pair) and time in term of weeks. Psychology and Education 2020-11-18 Article PeerReviewed application/pdf en http://irep.iium.edu.my/87448/1/Bayesian%20Hierarchical.pdf Md Azman Shahadan, Md Azman Shahadan and Mujeeb Khan, Mujeeb Khan and Aimillia Mohd Ramli, Aimillia Mohd Ramli (2020) Bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method. Psychology and Education, 57 (8). pp. 1227-1241. ISSN 0033-3077
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
topic QA Mathematics
spellingShingle QA Mathematics
Md Azman Shahadan, Md Azman Shahadan
Mujeeb Khan, Mujeeb Khan
Aimillia Mohd Ramli, Aimillia Mohd Ramli
Bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method
description The objective of this current research is to model the experimental data on the effectiveness of an incentive-based weight reduction method by using Bayesian hierarchical growth models. Three Bayesian hierarchical growth models are proposed, namely parametric Bayesian hierarchical growth model with correlated intercept and slope random effects model, parametric Bayesian hierarchical growth model with no correlated intercept and slope random effects model and semi-parametric Bayesian hierarchical growth model with Dirichlet process mixture prior model. The data is obtained from forty eight (48) students who had participated in an experiment on weight reduction method. The students were divided equally into two groups: single and pair groups. The experiment was carried out over the period of three months with a weight reading session for every two weeks. At the end of the study, we had six repeated measures of each student’s weight in kg and some measures of covariates and factors. Our results showed that the best model for the above data based on the Bayesian fit indexes and the models’ flexibility is the semi- parametric Bayesian hierarchical growth model with Dirichlet process mixture prior model. The results of the semi-parametric model showed that the ‘growth’ or reduction rates of the weight reduction experiment relate to the students’ gender, height in cm, experimental group (single or pair) and time in term of weeks.
format Article
author Md Azman Shahadan, Md Azman Shahadan
Mujeeb Khan, Mujeeb Khan
Aimillia Mohd Ramli, Aimillia Mohd Ramli
author_facet Md Azman Shahadan, Md Azman Shahadan
Mujeeb Khan, Mujeeb Khan
Aimillia Mohd Ramli, Aimillia Mohd Ramli
author_sort Md Azman Shahadan, Md Azman Shahadan
title Bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method
title_short Bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method
title_full Bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method
title_fullStr Bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method
title_full_unstemmed Bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method
title_sort bayesian hierarchical growth model for experimental data on the effectiveness of an incentive-based weight reduction method
publisher Psychology and Education
publishDate 2020
url http://irep.iium.edu.my/87448/1/Bayesian%20Hierarchical.pdf
http://irep.iium.edu.my/87448/
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