Posterior predictive scimulation Checks for hierarchical Bayesian Modelling

Problem statement: Assessing the plausibility of a posited model is always fundamental in order to evaluate and examine its performance. Such assessment is essential in the field of Bayesian data analysis. A Bayesian analysis can be very misleading when the model is far from plausible. Thus, any Bay...

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Main Authors: M. Elobaid, Rafida, Ibrahim, Noor Akma
Format: Article
Language:English
English
Published: CESER Publications 2010
Subjects:
Online Access:http://psasir.upm.edu.my/id/eprint/16255/1/Posterior%20predictive%20scimulation%20Checks%20for%20hierarchical%20Bayesian%20Modelling.pdf
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author M. Elobaid, Rafida
Ibrahim, Noor Akma
author_facet M. Elobaid, Rafida
Ibrahim, Noor Akma
author_sort M. Elobaid, Rafida
collection UPM
description Problem statement: Assessing the plausibility of a posited model is always fundamental in order to evaluate and examine its performance. Such assessment is essential in the field of Bayesian data analysis. A Bayesian analysis can be very misleading when the model is far from plausible. Thus, any Bayesian analysis should include an evaluation method to find out whether the posited model should be excluded because it fails to provide a reasonable summary of the data at hand. Such evaluation method is referred as the posterior predictive checks. Approach: In this study we review the use of the posterior predictive simulation. We propose a simulation study to evaluate and examine the adequacy of three mixed effect hierarchical Bayesian models, namely IVM, CVM and GSM. These models include different sources of variability and used to examine the trend of the relative risk associated with the disease spread in lattice grid. The evaluation is achieved by proposing different graphical and numerical posterior predictive checks to compare features of the observed data to the same features of replicate data generated under each model. The proposed method is illustrated by analyzing the well-known data set of the lip cancer in Scotland. Results: The graphical and the numerical results suggested that the model which includes all sources of variability (GSM) had the most similar value for both original and predicted samples, as compared to the other models. Thus, it was concluded that the GSM is the most appropriate model which could fit the data well. Conclusion: The method used for assessing model fitness will provide guidance for practitioners to select an adequate hierarchical Bayesian model that expect to fit the data well.
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spelling upm.eprints-162552015-10-21T04:40:40Z http://psasir.upm.edu.my/id/eprint/16255/ Posterior predictive scimulation Checks for hierarchical Bayesian Modelling M. Elobaid, Rafida Ibrahim, Noor Akma Problem statement: Assessing the plausibility of a posited model is always fundamental in order to evaluate and examine its performance. Such assessment is essential in the field of Bayesian data analysis. A Bayesian analysis can be very misleading when the model is far from plausible. Thus, any Bayesian analysis should include an evaluation method to find out whether the posited model should be excluded because it fails to provide a reasonable summary of the data at hand. Such evaluation method is referred as the posterior predictive checks. Approach: In this study we review the use of the posterior predictive simulation. We propose a simulation study to evaluate and examine the adequacy of three mixed effect hierarchical Bayesian models, namely IVM, CVM and GSM. These models include different sources of variability and used to examine the trend of the relative risk associated with the disease spread in lattice grid. The evaluation is achieved by proposing different graphical and numerical posterior predictive checks to compare features of the observed data to the same features of replicate data generated under each model. The proposed method is illustrated by analyzing the well-known data set of the lip cancer in Scotland. Results: The graphical and the numerical results suggested that the model which includes all sources of variability (GSM) had the most similar value for both original and predicted samples, as compared to the other models. Thus, it was concluded that the GSM is the most appropriate model which could fit the data well. Conclusion: The method used for assessing model fitness will provide guidance for practitioners to select an adequate hierarchical Bayesian model that expect to fit the data well. CESER Publications 2010 Article PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/16255/1/Posterior%20predictive%20scimulation%20Checks%20for%20hierarchical%20Bayesian%20Modelling.pdf M. Elobaid, Rafida and Ibrahim, Noor Akma (2010) Posterior predictive scimulation Checks for hierarchical Bayesian Modelling. International Journal of Applied Mathematics and Statistics, 19 (D10). pp. 40-49. ISSN 0973-7545 http://www.ceser.in/ijamas.html Bayesian statistical decision theory Statistical decision English
spellingShingle Bayesian statistical decision theory
Statistical decision
M. Elobaid, Rafida
Ibrahim, Noor Akma
Posterior predictive scimulation Checks for hierarchical Bayesian Modelling
title Posterior predictive scimulation Checks for hierarchical Bayesian Modelling
title_full Posterior predictive scimulation Checks for hierarchical Bayesian Modelling
title_fullStr Posterior predictive scimulation Checks for hierarchical Bayesian Modelling
title_full_unstemmed Posterior predictive scimulation Checks for hierarchical Bayesian Modelling
title_short Posterior predictive scimulation Checks for hierarchical Bayesian Modelling
title_sort posterior predictive scimulation checks for hierarchical bayesian modelling
topic Bayesian statistical decision theory
Statistical decision
url http://psasir.upm.edu.my/id/eprint/16255/1/Posterior%20predictive%20scimulation%20Checks%20for%20hierarchical%20Bayesian%20Modelling.pdf
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AT ibrahimnoorakma posteriorpredictivescimulationchecksforhierarchicalbayesianmodelling