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A spatial variant of the Gaussian mixture of regressions model

Dissertation (MSc)--University of Pretoria, 2017.

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Other Authors: Kanfer, F.H.J. (Frans)
Format: Thesis
Language:English
Published: University of Pretoria 2018
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access_status_str Open Access
author2 Kanfer, F.H.J. (Frans)
author_browse Kanfer, F.H.J. (Frans)
author_facet Kanfer, F.H.J. (Frans)
collection Thesis
dc_rights_str_mv © 2018 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.
description Dissertation (MSc)--University of Pretoria, 2017.
format Thesis
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institution University of Pretoria (South Africa)
language English
last_indexed 2026-06-10T12:38:03.802Z
license_str Other — see source repository
provenance_str_mv Harvested via OAI-PMH from UPSpace — University of Pretoria Institutional Repository
publishDate 2018
publishDateRange 2018
publishDateSort 2018
publisher University of Pretoria
publisherStr University of Pretoria
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source_str UPSpace — University of Pretoria Institutional Repository
spelling oai:repository.up.ac.za:2263/65883 A spatial variant of the Gaussian mixture of regressions model Kanfer, F.H.J. (Frans) mariondelport21@gmail.com Millard, Sollie M. Delport, Marion UCTD Dissertation (MSc)--University of Pretoria, 2017. In this study the nite mixture of multivariate Gaussian distributions is discussed in detail including the derivation of maximum likelihood estimators, a discussion on identi ability of mixture components as well as a discussion on the singularities typically occurring during the estimation process. Examples demonstrate the application of the nite mixture of univariate and bivariate Gaussian distributions. The nite mixture of multivariate Gaussian regressions is discussed including the derivation of maximum likelihood estimators. An example is used to demonstrate the application of the mixture of regressions model. Two methods of calculating the coe cient of determination for measuring model performance are introduced. The application of nite mixtures of Gaussian distributions and regressions to image segmentation problems is examined. The traditional nite mixture models however, have a shortcoming in that commonality of location of observations (pixels) is not taken into account when clustering the data. In literature, this shortcoming is addressed by including a Markov random eld prior for the mixing probabilities and the present study discusses this theoretical development. The resulting nite spatial variant mixture of Gaussian regressions model is de ned and its application is demonstrated in a simulated example. It was found that the spatial variant mixture of Gaussian regressions delivered accurate spatial clustering results and simultaneously accurately estimated the component model parameters. This study contributes an application of the spatial variant mixture of Gaussian regressions model in the agricultural context: maize yields in the Free State are modelled as a function of precipitation, type of maize and season; GPS coordinates linked to the observations provide the location information. A simple linear regression and traditional mixture of Gaussian regressions model were tted for comparative purposes and the latter identi ed three distinct clusters without accounting for location information. It was found that the application of the spatial variant mixture of regressions model resulted in spatially distinct and informative clusters, especially with respect to the type of maize covariate. However, the estimated component regression models for this data set were quite similar. The investigated data set was not perfectly suited for the spatial variant mixture of regressions model application and possible solutions were proposed to improve the model results in future studies. A key learning from the present study is that the e ectiveness of the spatial variant mixture of regressions model is dependent on the clear and distinguishable spatial dependencies in the underlying data set when it is applied to map-type data. Statistics MSc Unrestricted 2018-07-25T09:00:45Z 2018-07-25T09:00:45Z 2018/04/13 2017 Dissertation Delport, M 2017, A spatial variant of the Gaussian mixture of regressions model, MSc Dissertation, University of Pretoria, Pretoria, viewed yymmdd <http://hdl.handle.net/2263/65883> A2018 http://hdl.handle.net/2263/65883 en © 2018 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. application/pdf University of Pretoria
spellingShingle UCTD
A spatial variant of the Gaussian mixture of regressions model
title A spatial variant of the Gaussian mixture of regressions model
title_full A spatial variant of the Gaussian mixture of regressions model
title_fullStr A spatial variant of the Gaussian mixture of regressions model
title_full_unstemmed A spatial variant of the Gaussian mixture of regressions model
title_short A spatial variant of the Gaussian mixture of regressions model
title_sort spatial variant of the gaussian mixture of regressions model
topic UCTD
url http://hdl.handle.net/2263/65883