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Simultaneous clustering with mixtures of factor analysers

This work details the method of Simultaneous Model-based Clustering. It also presents an extension to this method by reformulating it as a model with a mixture of factor analysers. This allows for the technique, known as Simultaneous Model-Based Clustering with a Mixture of Factor Analysers, to be a...

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Main Author: O'Donnell, Warwick
Other Authors: Lesosky, Maia
Format: Thesis
Language:English
Published: Department of Medicine 2015
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access_status_str Open Access
author O'Donnell, Warwick
author2 Lesosky, Maia
author_browse Lesosky, Maia
O'Donnell, Warwick
author_facet Lesosky, Maia
O'Donnell, Warwick
author_sort O'Donnell, Warwick
collection Thesis
description This work details the method of Simultaneous Model-based Clustering. It also presents an extension to this method by reformulating it as a model with a mixture of factor analysers. This allows for the technique, known as Simultaneous Model-Based Clustering with a Mixture of Factor Analysers, to be able to cluster high dimensional gene-expression data. A new table of allowable and non-allowable models is formulated, along with a parameter estimation scheme for one such allowable model. Several numerical procedures are tested and various datasets, both real and generated, are clustered. The results of clustering the Iris data find a 3 component VEV model to have the lowest misclassification rate with comparable BIC values to the best scoring model. The clustering of Genetic data was less successful, where the 2-component model could successfully uncover the healthy tissue, but partitioned the cancerous tissue in half.
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institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:32:00.945Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2015
publishDateRange 2015
publishDateSort 2015
publisher Department of Medicine
publisherStr Department of Medicine
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/13972 Simultaneous clustering with mixtures of factor analysers O'Donnell, Warwick Lesosky, Maia Medicine This work details the method of Simultaneous Model-based Clustering. It also presents an extension to this method by reformulating it as a model with a mixture of factor analysers. This allows for the technique, known as Simultaneous Model-Based Clustering with a Mixture of Factor Analysers, to be able to cluster high dimensional gene-expression data. A new table of allowable and non-allowable models is formulated, along with a parameter estimation scheme for one such allowable model. Several numerical procedures are tested and various datasets, both real and generated, are clustered. The results of clustering the Iris data find a 3 component VEV model to have the lowest misclassification rate with comparable BIC values to the best scoring model. The clustering of Genetic data was less successful, where the 2-component model could successfully uncover the healthy tissue, but partitioned the cancerous tissue in half. 2015-09-15T10:24:43Z 2015-09-15T10:24:43Z 2013 Master Thesis Masters MSc (Med) http://hdl.handle.net/11427/13972 eng application/pdf Department of Medicine Faculty of Health Sciences University of Cape Town
spellingShingle Medicine
O'Donnell, Warwick
Simultaneous clustering with mixtures of factor analysers
thesis_degree_str Master's
title Simultaneous clustering with mixtures of factor analysers
title_full Simultaneous clustering with mixtures of factor analysers
title_fullStr Simultaneous clustering with mixtures of factor analysers
title_full_unstemmed Simultaneous clustering with mixtures of factor analysers
title_short Simultaneous clustering with mixtures of factor analysers
title_sort simultaneous clustering with mixtures of factor analysers
topic Medicine
url http://hdl.handle.net/11427/13972
work_keys_str_mv AT odonnellwarwick simultaneousclusteringwithmixturesoffactoranalysers