Sequential regression techniques with second order methods

buir.advisorKozat, Süleyman Serdar
dc.contributor.authorCivek, Burak Cevat
dc.date.accessioned2017-07-24T13:12:55Z
dc.date.available2017-07-24T13:12:55Z
dc.date.copyright2017-07
dc.date.issued2017-07
dc.date.submitted2017-07-21
dc.descriptionCataloged from PDF version of article.en_US
dc.descriptionThesis (M.S.): Bilkent University, Department of Electrical and Electronics Engineering, İhsan Doğramacı Bilkent University, 2017.en_US
dc.descriptionIncludes bibliographical references (leaves 65-70).en_US
dc.description.abstractSequential regression problem is one of the widely investigated topics in the machine learning and the signal processing literatures. In order to adequately model the underlying structure of the real life data sequences, many regression methods employ nonlinear modeling approaches. In this context, in the rst chapter, we introduce highly e cient sequential nonlinear regression algorithms that are suitable for real life applications. We process the data in a truly online manner such that no storage is needed. For nonlinear modeling we use a hierarchical piecewise linear approach based on the notion of decision trees where the space of the regressor vectors is adaptively partitioned. As the rst time in the literature, we learn both the piecewise linear partitioning of the regressor space as well as the linear models in each region using highly e ective second order methods, i.e., Newton- Raphson Methods. Hence, we avoid the well-known over tting issues by using piecewise linear models and achieve substantial performance compared to the state of the art. In the second chapter, we investigate the problem of sequential prediction for real life big data applications. The second order Newton-Raphson methods asymptotically achieve the performance of the \best" possible predictor much faster compared to the rst order algorithms. However, their usage in real life big data applications is prohibited because of the extremely high computational needs. To this end, in order to enjoy the outstanding performance of the second order methods, we introduce a highly e cient implementation where the computational complexity is reduced from quadratic to linear scale. For both chapters, we demonstrate our gains over the well-known benchmark and real life data sets and provide performance results in an individual sequence manner guaranteed to hold without any statistical assumptions.en_US
dc.description.provenanceSubmitted by Betül Özen (ozen@bilkent.edu.tr) on 2017-07-24T13:12:55Z No. of bitstreams: 1 10157156.pdf: 3266699 bytes, checksum: 6b22804cbe28bbc630687702128c81da (MD5)en
dc.description.provenanceMade available in DSpace on 2017-07-24T13:12:55Z (GMT). No. of bitstreams: 1 10157156.pdf: 3266699 bytes, checksum: 6b22804cbe28bbc630687702128c81da (MD5) Previous issue date: 2017-07en
dc.description.statementofresponsibilityby Burak Cevat Civek.en_US
dc.format.extentxi, 70 leaves : charts (some color) ; 29 cmen_US
dc.identifier.itemidB156048
dc.identifier.urihttp://hdl.handle.net/11693/33502
dc.language.isoEnglishen_US
dc.rightsinfo:eu-repo/semantics/openAccessen_US
dc.subjectPiecewise linear regressionen_US
dc.subjectHierarchical treeen_US
dc.subjectSecond order methodsen_US
dc.subjectSequential predictionen_US
dc.subjectBig dataen_US
dc.titleSequential regression techniques with second order methodsen_US
dc.title.alternativeİkinci dereceden yöntemler ile ardışık bağlanım tekniklerien_US
dc.typeThesisen_US
thesis.degree.disciplineElectrical and Electronic Engineering
thesis.degree.grantorBilkent University
thesis.degree.levelMaster's
thesis.degree.nameMS (Master of Science)

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