Bayesian kernel density estimation

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dc.contributor.advisor De Waal, Alta
dc.contributor.coadvisor Van der Walt, Christiaan M.
dc.contributor.postgraduate Rademeyer, Estian
dc.date.accessioned 2018-04-23T09:11:06Z
dc.date.available 2018-04-23T09:11:06Z
dc.date.created 2018-04-13
dc.date.issued 2017
dc.description Dissertation (MSc)--University of Pretoria, 2017. en_ZA
dc.description.abstract This dissertation investigates the performance of two-class classi cation credit scoring data sets with low default ratios. The standard two-class parametric Gaussian and naive Bayes (NB), as well as the non-parametric Parzen classi ers are extended, using Bayes' rule, to include either a class imbalance or a Bernoulli prior. This is done with the aim of addressing the low default probability problem. Furthermore, the performance of Parzen classi cation with Silverman and Minimum Leave-one-out Entropy (MLE) Gaussian kernel bandwidth estimation is also investigated. It is shown that the non-parametric Parzen classi ers yield superior classi cation power. However, there is a longing for these non-parametric classi ers to posses a predictive power, such as exhibited by the odds ratio found in logistic regression (LR). The dissertation therefore dedicates a section to, amongst other things, study the paper entitled \Model-Free Objective Bayesian Prediction" (Bernardo 1999). Since this approach to Bayesian kernel density estimation is only developed for the univariate and the uncorrelated multivariate case, the section develops a theoretical multivariate approach to Bayesian kernel density estimation. This approach is theoretically capable of handling both correlated as well as uncorrelated features in data. This is done through the assumption of a multivariate Gaussian kernel function and the use of an inverse Wishart prior. en_ZA
dc.description.availability Unrestricted en_ZA
dc.description.degree MSc en_ZA
dc.description.department Statistics en_ZA
dc.description.sponsorship The financial assistance of the National Research Foundation (NRF) towards this research is hereby acknowledged. Opinions expressed and conclusions arrived at, are those of the authors and are not necessarily to be attributed to the NRF. en_ZA
dc.identifier.citation Rademeyer, E 2017, Bayesian kernel density estimation, MSc Dissertation, University of Pretoria, Pretoria, viewed yymmdd <http://hdl.handle.net/2263/64692> en_ZA
dc.identifier.other A2018
dc.identifier.uri http://hdl.handle.net/2263/64692
dc.language.iso en en_ZA
dc.publisher University of Pretoria
dc.rights © 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.
dc.subject Kernel density estimation en_ZA
dc.subject Bayes en_ZA
dc.subject Credit scoring en_ZA
dc.subject Machine learning en_ZA
dc.subject UCTD
dc.title Bayesian kernel density estimation en_ZA
dc.type Dissertation en_ZA


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