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A flexible transfer learning framework for Bayesian optimization with convergence guarantee

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journal contribution
posted on 2023-06-08, 01:10 authored by T Theckel Joy, Santu RanaSantu Rana, Sunil GuptaSunil Gupta, Svetha VenkateshSvetha Venkatesh
Experimental optimization is prevalent in many areas of artificial intelligence including machine learning. Conventional methods like grid search and random search can be computationally demanding. Over the recent years, Bayesian optimization has emerged as an efficient technique for global optimization of black-box functions. However, a generic Bayesian optimization algorithm suffers from a “cold start” problem. It may struggle to find promising locations in the initial stages. We propose a novel transfer learning method for Bayesian optimization where we leverage the knowledge from an already completed source optimization task for the optimization of a target task. Assuming both the source and target functions lie in some proximity to each other, we model source data as noisy observations of the target function. The level of noise models the proximity or relatedness between the tasks. We provide a mechanism to compute the noise level from the data to automatically adjust for different relatedness between the source and target tasks. We then analyse the convergence properties of the proposed method using two popular acquisition functions. Our theoretical results show that the proposed method converges faster than a generic no-transfer Bayesian optimization. We demonstrate the effectiveness of our method empirically on the tasks of tuning the hyperparameters of three different machine learning algorithms. In all the experiments, our method outperforms state-of-the-art transfer learning and no-transfer Bayesian optimization methods.

History

Journal

Expert Systems with Applications

Volume

115

Pagination

656-672

Location

Amsterdam, The Netherlands

Open access

  • Yes

ISSN

0957-4174

eISSN

1873-6793

Language

English

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2018, Elsevier Ltd.

Publisher

PERGAMON-ELSEVIER SCIENCE LTD