On Bayesian optimization and its application to hyperparameter tuning
This thesis introduces the concept of Bayesian optimization, primarly used in optimizing costly black-box functions. Besides theoretical treatment of the topic, the focus of the thesis is on two numerical experiments. Firstly, different types of acquisition functions, which are the key components re...
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Linnéuniversitetet, Institutionen för matematik (MA)
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ndltd-UPSALLA1-oai-DiVA.org-lnu-749622018-06-05T06:02:18ZOn Bayesian optimization and its application to hyperparameter tuningengMatosevic, AntonioLinnéuniversitetet, Institutionen för matematik (MA)2018OptimizationBayesian statisticsHyperparameter tuningMachine learningMathematicsMatematikThis thesis introduces the concept of Bayesian optimization, primarly used in optimizing costly black-box functions. Besides theoretical treatment of the topic, the focus of the thesis is on two numerical experiments. Firstly, different types of acquisition functions, which are the key components responsible for the performance, are tested and compared. Special emphasis is on the analysis of a so-called exploration-exploitation trade-off. Secondly, one of the most recent applications of Bayesian optimization concerns hyperparameter tuning in machine learning algorithms, where the objective function is expensive to evaluate and not given analytically. However, some results indicate that much simpler methods can give similar results. Our contribution is therefore a statistical comparison of simple random search and Bayesian optimization in the context of finding the optimal set of hyperparameters in support vector regression. It has been found that there is no significant difference in performance of these two methods. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:lnu:diva-74962application/pdfinfo:eu-repo/semantics/openAccess |
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English |
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Others
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Optimization Bayesian statistics Hyperparameter tuning Machine learning Mathematics Matematik |
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Optimization Bayesian statistics Hyperparameter tuning Machine learning Mathematics Matematik Matosevic, Antonio On Bayesian optimization and its application to hyperparameter tuning |
description |
This thesis introduces the concept of Bayesian optimization, primarly used in optimizing costly black-box functions. Besides theoretical treatment of the topic, the focus of the thesis is on two numerical experiments. Firstly, different types of acquisition functions, which are the key components responsible for the performance, are tested and compared. Special emphasis is on the analysis of a so-called exploration-exploitation trade-off. Secondly, one of the most recent applications of Bayesian optimization concerns hyperparameter tuning in machine learning algorithms, where the objective function is expensive to evaluate and not given analytically. However, some results indicate that much simpler methods can give similar results. Our contribution is therefore a statistical comparison of simple random search and Bayesian optimization in the context of finding the optimal set of hyperparameters in support vector regression. It has been found that there is no significant difference in performance of these two methods. |
author |
Matosevic, Antonio |
author_facet |
Matosevic, Antonio |
author_sort |
Matosevic, Antonio |
title |
On Bayesian optimization and its application to hyperparameter tuning |
title_short |
On Bayesian optimization and its application to hyperparameter tuning |
title_full |
On Bayesian optimization and its application to hyperparameter tuning |
title_fullStr |
On Bayesian optimization and its application to hyperparameter tuning |
title_full_unstemmed |
On Bayesian optimization and its application to hyperparameter tuning |
title_sort |
on bayesian optimization and its application to hyperparameter tuning |
publisher |
Linnéuniversitetet, Institutionen för matematik (MA) |
publishDate |
2018 |
url |
http://urn.kb.se/resolve?urn=urn:nbn:se:lnu:diva-74962 |
work_keys_str_mv |
AT matosevicantonio onbayesianoptimizationanditsapplicationtohyperparametertuning |
_version_ |
1718691196843327488 |