Implementation of the Bayesian paradigm for highly parameterised linear models

This thesis re-examines the Bayes hierarchical linear model and the associated issue of variance component estimation in the light of new numerical procedures, and demonstrates that the Bayes linear model is indeed a practical proposition. Technical issues considered include the development of analy...

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Main Author: Lee, T. D.
Format: Thesis (University of Nottingham only)
Language:English
Published: 1986
Online Access:https://eprints.nottingham.ac.uk/14421/
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author Lee, T. D.
author_facet Lee, T. D.
author_sort Lee, T. D.
building Nottingham Research Data Repository
collection Online Access
description This thesis re-examines the Bayes hierarchical linear model and the associated issue of variance component estimation in the light of new numerical procedures, and demonstrates that the Bayes linear model is indeed a practical proposition. Technical issues considered include the development of analytical procedures essential for efficient evaluation of the likelihood function, and a partial characterisation of the difficulty of likelihood evaluation. A general non-informative prior distribution for the hierarchical linear model is developed. Extensions to spherically symmetric error distributions are shown to be practicable and useful. The numerical technique enables the sensitivity of the results to the prior structure, error structure and model structure to be investigated. An extended example is considered which illustrates these analytical and numerical techniques in a 15 dimensional problem. A second example provides a critical examination of a British Standards Institute paper, and develops further techniques for handling alternative spherically symmetric error distributions. Recent work on variance component estimation is viewed from the Bayesian perspective, and areas for further work are identified.
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format Thesis (University of Nottingham only)
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institution University of Nottingham Malaysia Campus
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language English
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publishDate 1986
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spelling nottingham-144212025-02-28T11:30:44Z https://eprints.nottingham.ac.uk/14421/ Implementation of the Bayesian paradigm for highly parameterised linear models Lee, T. D. This thesis re-examines the Bayes hierarchical linear model and the associated issue of variance component estimation in the light of new numerical procedures, and demonstrates that the Bayes linear model is indeed a practical proposition. Technical issues considered include the development of analytical procedures essential for efficient evaluation of the likelihood function, and a partial characterisation of the difficulty of likelihood evaluation. A general non-informative prior distribution for the hierarchical linear model is developed. Extensions to spherically symmetric error distributions are shown to be practicable and useful. The numerical technique enables the sensitivity of the results to the prior structure, error structure and model structure to be investigated. An extended example is considered which illustrates these analytical and numerical techniques in a 15 dimensional problem. A second example provides a critical examination of a British Standards Institute paper, and develops further techniques for handling alternative spherically symmetric error distributions. Recent work on variance component estimation is viewed from the Bayesian perspective, and areas for further work are identified. 1986 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en arr https://eprints.nottingham.ac.uk/14421/1/373337.pdf Lee, T. D. (1986) Implementation of the Bayesian paradigm for highly parameterised linear models. PhD thesis, University of Nottingham.
spellingShingle Lee, T. D.
Implementation of the Bayesian paradigm for highly parameterised linear models
title Implementation of the Bayesian paradigm for highly parameterised linear models
title_full Implementation of the Bayesian paradigm for highly parameterised linear models
title_fullStr Implementation of the Bayesian paradigm for highly parameterised linear models
title_full_unstemmed Implementation of the Bayesian paradigm for highly parameterised linear models
title_short Implementation of the Bayesian paradigm for highly parameterised linear models
title_sort implementation of the bayesian paradigm for highly parameterised linear models
url https://eprints.nottingham.ac.uk/14421/