Bayesian analysis for mixtures of discrete distributions with a non-parametric component

Bayesian finite mixture modelling is a flexible parametric modelling approach for classification and density fitting. Many application areas require distinguishing a signal from a noise component. In practice, it is often difficult to justify a specific distribution for the signal component, therefo...

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Main Author: Alhaji Bukar, Baba Bukar
Published: University of Essex 2016
Subjects:
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.685814
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spelling ndltd-bl.uk-oai-ethos.bl.uk-6858142017-08-30T03:25:36ZBayesian analysis for mixtures of discrete distributions with a non-parametric componentAlhaji Bukar, Baba Bukar2016Bayesian finite mixture modelling is a flexible parametric modelling approach for classification and density fitting. Many application areas require distinguishing a signal from a noise component. In practice, it is often difficult to justify a specific distribution for the signal component, therefore the signal distribution is usually further modelled via a mixture of distributions. However, modelling the signal as a mixture of distributions is computationally challenging due to the difficulties in justifying the exact number of components to be used and due to the label-switching problem. The use of a non-parametric distribution to model the signal component is proposed. This new methodology leads to more accurate parameter estimation, smaller classification error rate and smaller false non-discovery rate in the case of discrete data. Moreover, it does not incur the label-switching problem. An application of the method to data generated by ChIP-sequencing experiments is shown. A one-dimensional Markov random field model is proposed, which accounts for the spatial dependencies in the data. The methodology is also applied to ChIP-seq data, which shows that the new method detected more genes enriched regions than similar existing methods at the same false discovery rate.519.5QA MathematicsUniversity of Essexhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.685814http://repository.essex.ac.uk/16759/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 519.5
QA Mathematics
spellingShingle 519.5
QA Mathematics
Alhaji Bukar, Baba Bukar
Bayesian analysis for mixtures of discrete distributions with a non-parametric component
description Bayesian finite mixture modelling is a flexible parametric modelling approach for classification and density fitting. Many application areas require distinguishing a signal from a noise component. In practice, it is often difficult to justify a specific distribution for the signal component, therefore the signal distribution is usually further modelled via a mixture of distributions. However, modelling the signal as a mixture of distributions is computationally challenging due to the difficulties in justifying the exact number of components to be used and due to the label-switching problem. The use of a non-parametric distribution to model the signal component is proposed. This new methodology leads to more accurate parameter estimation, smaller classification error rate and smaller false non-discovery rate in the case of discrete data. Moreover, it does not incur the label-switching problem. An application of the method to data generated by ChIP-sequencing experiments is shown. A one-dimensional Markov random field model is proposed, which accounts for the spatial dependencies in the data. The methodology is also applied to ChIP-seq data, which shows that the new method detected more genes enriched regions than similar existing methods at the same false discovery rate.
author Alhaji Bukar, Baba Bukar
author_facet Alhaji Bukar, Baba Bukar
author_sort Alhaji Bukar, Baba Bukar
title Bayesian analysis for mixtures of discrete distributions with a non-parametric component
title_short Bayesian analysis for mixtures of discrete distributions with a non-parametric component
title_full Bayesian analysis for mixtures of discrete distributions with a non-parametric component
title_fullStr Bayesian analysis for mixtures of discrete distributions with a non-parametric component
title_full_unstemmed Bayesian analysis for mixtures of discrete distributions with a non-parametric component
title_sort bayesian analysis for mixtures of discrete distributions with a non-parametric component
publisher University of Essex
publishDate 2016
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.685814
work_keys_str_mv AT alhajibukarbababukar bayesiananalysisformixturesofdiscretedistributionswithanonparametriccomponent
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