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dc.contributor.authorHeimsæter, Sandra Vervik
dc.date.accessioned2021-04-09T23:45:40Z
dc.date.available2021-04-09T23:45:40Z
dc.date.issued2021-02-11
dc.date.submitted2021-03-19T23:00:14Z
dc.identifier.urihttps://hdl.handle.net/11250/2737181
dc.descriptionRevised version. Minor spelling errors corrected.
dc.description.abstractWhen modeling with big data and high dimensional data, the ability to extract the most important information from the data set and avoid overfitting is crucial. However, by using well developed sparse methods, we can construct models that are less likely to overfit as they use only the most informative part of the data. In this thesis, we are developing an algorithm which can simultaneously achieve sample and feature selection when facing big data in supervised learning. This parametric Bayesian regression learning method is based on a well known Bayesian sparse learning method: the Relevance Vector Machine (RVM). The deduction of the algorithm is inspired by, the probabilistic feature selection and classification vector machine (PFCVM), which is a simultaneous sample and feature selective extension of the RVM classification model. Our resulting method is called the dimensionality reducing relevance vector machine (DRVM), and it performs simultaneous feature and sample selection in the regression case. The proposed model is sparse in terms of choosing only the most important features and samples to explain the input data, as well as being accurate in predictions.
dc.language.isoeng
dc.publisherThe University of Bergen
dc.rightsCopyright the Author. All rights reserved
dc.subjectProbabilistic Prediction
dc.subjectSparse Bayesian Learning
dc.subjectDimensionality Reduction
dc.subjectKernel basis function
dc.subjectBig Data
dc.subjectHigh Dimensional Data
dc.titleA Dimensionality Reducing Extension of Bayesian Relevance Learning
dc.typeMaster thesis
dc.date.updated2021-03-19T23:00:14Z
dc.rights.holderCopyright the Author. All rights reserved
dc.description.degreeMasteroppgåve i statistikk
dc.description.localcodeSTAT399
dc.description.localcodeMAMN-STAT
dc.subject.nus753299
fs.subjectcodeSTAT399
fs.unitcode12-11-0


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