Please use this identifier to cite or link to this item: http://hdl.handle.net/10603/564545
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dc.coverage.spatialHyperparameter tuning using adaptive bayesian contextual hyperband for time series forecasting
dc.date.accessioned2024-05-20T06:08:55Z-
dc.date.available2024-05-20T06:08:55Z-
dc.identifier.urihttp://hdl.handle.net/10603/564545-
dc.description.abstractIn Machine learning, hyperparameters are all those parameters the user explicitly defines to enhance a model s learning. Although they are defined outside the model, hyperparameters significantly impact the model s behavior and performance. Tuning these hyperparameters plays a significant role in improving the model performance. Any tuning algorithm aims to efficiently navigate the hyperparameter search space to find the optimal configuration in minimal time. Different tuning algorithms proposed in the recent decade have gained popularity due to increased computational power. Random, grid search, algorithms involving Bayesian rule, bandit-based solutions, and evolutionary algorithms are some of the popularly used tuning algorithms. The commonality in these algorithms is finding a good trade-off between exploration versus exploitation of the search space, given the limited budget for tuning. With the same goal, this work proposes a hyperparameter tuning algorithm called Bayesian Contextual Hyperband (BCHB), incorporating Bayesian and multi-armed bandit techniques. The algorithm divides the total budget, the number of iterations or time allotted to each hyperparameter configuration, into different brackets that start with more exploration of the search space and end with the exploitation of the selected best configurations. Each bracket is further divided into iterations that select and evaluate a fixed number of configurations on an objective function. True objective function evaluation is an expensive step, and hence in the proposed algorithm, it is substituted by a surrogate model of hyperparameter configurations and their corresponding validation losses obtained from the history of past evaluations. newline
dc.format.extentxviii,131p.
dc.languageEnglish
dc.relationp.122-130
dc.rightsuniversity
dc.titleHyperparameter tuning using adaptive bayesian contextual hyperband for time series forecasting
dc.title.alternative
dc.creator.researcherLakshmi priya, S
dc.subject.keywordadaptive bayesian
dc.subject.keywordComputer Science
dc.subject.keywordComputer Science Information Systems
dc.subject.keywordEngineering and Technology
dc.subject.keywordHyperparameter
dc.subject.keywordseries forecasting
dc.description.note
dc.contributor.guideSuresh jaganathan
dc.publisher.placeChennai
dc.publisher.universityAnna University
dc.publisher.institutionFaculty of Information and Communication Engineering
dc.date.registered
dc.date.completed2024
dc.date.awarded2024
dc.format.dimensions21cm
dc.format.accompanyingmaterialNone
dc.source.universityUniversity
dc.type.degreePh.D.
Appears in Departments:Faculty of Information and Communication Engineering

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01_title.pdfAttached File169.74 kBAdobe PDFView/Open
02_prelim pages.pdf2.69 MBAdobe PDFView/Open
03_content.pdf294.06 kBAdobe PDFView/Open
04_abstract.pdf229.39 kBAdobe PDFView/Open
05_chapter 1.pdf664.97 kBAdobe PDFView/Open
06_chapter 2.pdf722.71 kBAdobe PDFView/Open
07_chapter 3.pdf1.26 MBAdobe PDFView/Open
08_chapter 4.pdf1.28 MBAdobe PDFView/Open
09_chapter 5.pdf1.77 MBAdobe PDFView/Open
10_annexures.pdf84.43 kBAdobe PDFView/Open
80_recommendation.pdf74.41 kBAdobe PDFView/Open


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