Full Text Available

Note: Clicking the button above will open the full text document at the original institutional repository in a new window.

Bayesian approaches of Markov models embedded in unbalanced panel data

Thesis (PhD)--Stellenbosch University, 2012.

Saved in:
Bibliographic Details
Main Author: Muller, Christoffel Joseph Brand
Other Authors: Mostert, Paul J.
Format: Thesis
Language:en_ZA
Published: Stellenbosch : Stellenbosch University 2012
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1867613755507998720
access_status_str Open Access
author Muller, Christoffel Joseph Brand
author2 Mostert, Paul J.
author_browse Mostert, Paul J.
Muller, Christoffel Joseph Brand
author_facet Mostert, Paul J.
Muller, Christoffel Joseph Brand
author_sort Muller, Christoffel Joseph Brand
collection Thesis
dc_rights_str_mv Stellenbosch University
description Thesis (PhD)--Stellenbosch University, 2012.
format Thesis
id oai:scholar.sun.ac.za:10019.1/71910
institution Stellenbosch University (South Africa)
language en_ZA
last_indexed 2026-06-10T12:41:10.692Z
license_str Other — see source repository
provenance_str_mv Harvested via OAI-PMH from SUNScholar — Stellenbosch University Repository
publishDate 2012
publishDateRange 2012
publishDateSort 2012
publisher Stellenbosch : Stellenbosch University
publisherStr Stellenbosch : Stellenbosch University
record_format dspace
source_str SUNScholar — Stellenbosch University Repository
spelling oai:scholar.sun.ac.za:10019.1/71910 Bayesian approaches of Markov models embedded in unbalanced panel data Muller, Christoffel Joseph Brand Mostert, Paul J. Stellenbosch University. Faculty of Economic and Management Sciences. Dept. of Statistics and Actuarial Science. Longitudinal method Markov processes Bayesian statistical decision theory Imputation Dissertations -- Statistics and actuarial science Theses -- Statistics and actuarial science Thesis (PhD)--Stellenbosch University, 2012. ENGLISH ABSTRACT: Multi-state models are used in this dissertation to model panel data, also known as longitudinal or cross-sectional time-series data. These are data sets which include units that are observed across two or more points in time. These models have been used extensively in medical studies where the disease states of patients are recorded over time. A theoretical overview of the current multi-state Markov models when applied to panel data is presented and based on this theory, a simulation procedure is developed to generate panel data sets for given Markov models. Through the use of this procedure a simulation study is undertaken to investigate the properties of the standard likelihood approach when fitting Markov models and then to assess its shortcomings. One of the main shortcomings highlighted by the simulation study, is the unstable estimates obtained by the standard likelihood models, especially when fitted to small data sets. A Bayesian approach is introduced to develop multi-state models that can overcome these unstable estimates by incorporating prior knowledge into the modelling process. Two Bayesian techniques are developed and presented, and their properties are assessed through the use of extensive simulation studies. Firstly, Bayesian multi-state models are developed by specifying prior distributions for the transition rates, constructing a likelihood using standard Markov theory and then obtaining the posterior distributions of the transition rates. A selected few priors are used in these models. Secondly, Bayesian multi-state imputation techniques are presented that make use of suitable prior information to impute missing observations in the panel data sets. Once imputed, standard likelihood-based Markov models are fitted to the imputed data sets to estimate the transition rates. Two different Bayesian imputation techniques are presented. The first approach makes use of the Dirichlet distribution and imputes the unknown states at all time points with missing observations. The second approach uses a Dirichlet process to estimate the time at which a transition occurred between two known observations and then a state is imputed at that estimated transition time. The simulation studies show that these Bayesian methods resulted in more stable results, even when small samples are available. AFRIKAANSE OPSOMMING: Meerstadium-modelle word in hierdie verhandeling gebruik om paneeldata, ook bekend as longitudinale of deursnee tydreeksdata, te modelleer. Hierdie is datastelle wat eenhede insluit wat oor twee of meer punte in tyd waargeneem word. Hierdie tipe modelle word dikwels in mediese studies gebruik indien verskillende stadiums van ’n siekte oor tyd waargeneem word. ’n Teoretiese oorsig van die huidige meerstadium Markov-modelle toegepas op paneeldata word gegee. Gebaseer op hierdie teorie word ’n simulasieprosedure ontwikkel om paneeldatastelle te simuleer vir gegewe Markov-modelle. Hierdie prosedure word dan gebruik in ’n simulasiestudie om die eienskappe van die standaard aanneemlikheidsbenadering tot die pas vanMarkov modelle te ondersoek en dan enige tekortkominge hieruit te beoordeel. Een van die hoof tekortkominge wat uitgewys word deur die simulasiestudie, is die onstabiele beramings wat verkry word indien dit gepas word op veral klein datastelle. ’n Bayes-benadering tot die modellering van meerstadiumpaneeldata word ontwikkel omhierdie onstabiliteit te oorkom deur a priori-inligting in die modelleringsproses te inkorporeer. Twee Bayes-tegnieke word ontwikkel en aangebied, en hulle eienskappe word ondersoek deur ’n omvattende simulasiestudie. Eerstens word Bayes-meerstadium-modelle ontwikkel deur a priori-verdelings vir die oorgangskoerse te spesifiseer en dan die aanneemlikheidsfunksie te konstrueer deur van standaard Markov-teorie gebruik te maak en die a posteriori-verdelings van die oorgangskoerse te bepaal. ’n Gekose aantal a priori-verdelings word gebruik in hierdie modelle. Tweedens word Bayesmeerstadium invul tegnieke voorgestel wat gebruik maak van a priori-inligting om ontbrekende waardes in die paneeldatastelle in te vul of te imputeer. Nadat die waardes ge-imputeer is, word standaard Markov-modelle gepas op die ge-imputeerde datastel om die oorgangskoerse te beraam. Twee verskillende Bayes-meerstadium imputasie tegnieke word bespreek. Die eerste tegniek maak gebruik van ’n Dirichletverdeling om die ontbrekende stadium te imputeer by alle tydspunte met ’n ontbrekende waarneming. Die tweede benadering gebruik ’n Dirichlet-proses om die oorgangstyd tussen twee waarnemings te beraam en dan die ontbrekende stadium te imputeer op daardie beraamde oorgangstyd. Die simulasiestudies toon dat die Bayes-metodes resultate oplewer wat meer stabiel is, selfs wanneer klein datastelle beskikbaar is. Doctoral 2012-11-07T07:38:11Z 2012-12-12T08:16:44Z 2012-11-07T07:38:11Z 2012-12-12T08:16:44Z 2012-12 Thesis http://hdl.handle.net/10019.1/71910 en_ZA Stellenbosch University 253 p. : ill. application/pdf Stellenbosch : Stellenbosch University
spellingShingle Longitudinal method
Markov processes
Bayesian statistical decision theory
Imputation
Dissertations -- Statistics and actuarial science
Theses -- Statistics and actuarial science
Muller, Christoffel Joseph Brand
Bayesian approaches of Markov models embedded in unbalanced panel data
title Bayesian approaches of Markov models embedded in unbalanced panel data
title_full Bayesian approaches of Markov models embedded in unbalanced panel data
title_fullStr Bayesian approaches of Markov models embedded in unbalanced panel data
title_full_unstemmed Bayesian approaches of Markov models embedded in unbalanced panel data
title_short Bayesian approaches of Markov models embedded in unbalanced panel data
title_sort bayesian approaches of markov models embedded in unbalanced panel data
topic Longitudinal method
Markov processes
Bayesian statistical decision theory
Imputation
Dissertations -- Statistics and actuarial science
Theses -- Statistics and actuarial science
url http://hdl.handle.net/10019.1/71910
work_keys_str_mv AT mullerchristoffeljosephbrand bayesianapproachesofmarkovmodelsembeddedinunbalancedpaneldata