Bayesian learning of regularized Gaussian graphical networks

dc.contributor.advisorArashi, Mohammad
dc.contributor.coadvisorBekker, Andriette, 1958-
dc.contributor.emailu14016665@tuks.co.zaen_US
dc.contributor.postgraduateSmith, Jarod Mark
dc.date.accessioned2024-01-31T06:35:20Z
dc.date.available2024-01-31T06:35:20Z
dc.date.created2024-05-14
dc.date.issued2024
dc.descriptionThesis (PhD (Mathematical Statistics))--University of Pretoria, 2024.en_US
dc.description.abstractThe advancement of digitisation in various scientific disciplines has generated data with numerous variables. Gaussian graphical models (GGMs) offer a convenient framework for analysing and interpreting the conditional relationships among these variables, with network inference relying on estimating the precision matrix within a multivariate Gaussian framework. Two novel Bayesian shrinkage methods are proposed for the estimation of the precision matrix. The first develops a Bayesian treatment of the frequentist alternative ridge precision estimator with the common l2 penalty, allowing for networks that are not necessarily highly sparse. The second caters for diverse sparsity by enabling both l1 and l2 based shrinkage within a naïve elastic net setting. Full block Gibbs samplers are provided for implementing the new estimators. The Bayesian graphical ridge and naïve elastic net priors are extended to allow for flexible shrinkage of the off-diagonal elements of the precision matrix. Simulations and practical case studies show that the proposed estimators compare favourably with competing methods and enrich methodological flexibility for data analysis. To this end, a Bayesian approach for estimating differential networks (DN), using the Bayesian adaptive graphical lasso, is introduced. Comparisons to state-of-the-art frequentist techniques highlight the utility of the proposed technique. The novel samplers considered are available in the ’baygel’ R package to facilitate usage and exploration for practitioners.en_US
dc.description.availabilityRestricteden_US
dc.description.degreePhD (Mathematical Statistics)en_US
dc.description.departmentStatisticsen_US
dc.description.facultyFaculty of Natural and Agricultural Sciencesen_US
dc.identifier.citation*en_US
dc.identifier.doihttps://doi.org/10.25403/UPresearchdata.25111607en_US
dc.identifier.otherA2024en_US
dc.identifier.urihttp://hdl.handle.net/2263/94178
dc.language.isoenen_US
dc.publisherUniversity of Pretoria
dc.rights© 2023 University of Pretoria. All rights reserved. The copyright in this work vests in the University of Pretoria. No part of this work may be reproduced or transmitted in any form or by any means, without the prior written permission of the University of Pretoria.
dc.subjectUCTDen_US
dc.subjectBayesian shrinkage estimationen_US
dc.subjectGaussian graphical modelen_US
dc.subjectBlock Gibbs sampleren_US
dc.subjectDifferential networken_US
dc.subjectPrecision matrixen_US
dc.subject.otherSustainable Development Goals (SDGs)
dc.subject.otherSDG-17: Partnerships for the goals
dc.subject.otherNatural and Agricultural Science theses SDG-17
dc.titleBayesian learning of regularized Gaussian graphical networksen_US
dc.typeThesisen_US

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