An asymptotically optimal solution for contextual bandit problem in adversarial setting

buir.advisorKozat, Süleyman Serdar
dc.contributor.authorMohaghegh Neyshabouri, Mohammadreza
dc.date.accessioned2018-06-01T12:07:30Z
dc.date.available2018-06-01T12:07:30Z
dc.date.copyright2018-05
dc.date.issued2018-05
dc.date.submitted2018-05-31
dc.departmentDepartment of Electrical and Electronics Engineeringen_US
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, 2018.en_US
dc.descriptionIncludes bibliographical references (leaves 41-46).en_US
dc.description.abstractWe propose online algorithms for sequential learning in the contextual multiarmed bandit setting. Our approach is to partition the context space and then optimally combine all of the possible mappings between the partition regions and the set of bandit arms in a data driven manner. We show that in our approach, the best mapping is able to approximate the best arm selection policy to any desired degree under mild Lipschitz conditions. Therefore, we design our algorithms based on the optimal adaptive combination and asymptotically achieve the performance of the best mapping as well as the best arm selection policy. This optimality is also guaranteed to hold even in adversarial environments since we do not rely on any statistical assumptions regarding the contexts or the loss of the bandit arms. Moreover, we design e cient implementations for our algorithms in various hierarchical partitioning structures such as lexicographical or arbitrary position splitting and binary trees (and several other partitioning examples). For instance, in the case of binary tree partitioning, the computational complexity is only log-linear in the number of regions in the nest partition. In conclusion, we provide signi cant performance improvements by introducing upper bounds (w.r.t. the best arm selection policy) that are mathematically proven to vanish in the average loss per round sense at a faster rate compared to the state-of-theart. Our experimental work extensively covers various scenarios ranging from bandit settings to multi-class classi cation with real and synthetic data. In these experiments, we show that our algorithms are highly superior over the stateof- the-art techniques while maintaining the introduced mathematical guarantees and a computationally decent scalability.en_US
dc.description.degreeM.S.en_US
dc.description.statementofresponsibilityby Mohammadreza Mohaghegh Neyhabouri.en_US
dc.embargo.release2020-05-31
dc.format.extentx, 46 leaves : charts (some color) ; 30 cm.en_US
dc.identifier.itemidB158320
dc.identifier.urihttp://hdl.handle.net/11693/46957
dc.language.isoEnglishen_US
dc.publisherBilkent Universityen_US
dc.rightsinfo:eu-repo/semantics/openAccessen_US
dc.subjectContextual Banditen_US
dc.subjectOnline Learningen_US
dc.subjectAdversarial Banditen_US
dc.subjectHierarchical Structuresen_US
dc.subjectRegret Analysisen_US
dc.titleAn asymptotically optimal solution for contextual bandit problem in adversarial settingen_US
dc.title.alternativeÇekişmeli ortamlarda bağlamsal haydut problemi için asimptotıik olarak en uygun çözümen_US
dc.typeThesisen_US

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