Recent Advances in Bayesian Optimization

Author:

Wang Xilu1ORCID,Jin Yaochu1ORCID,Schmitt Sebastian2ORCID,Olhofer Markus2ORCID

Affiliation:

1. Faculty of Technology, Bielefeld University

2. Honda Research Institute Europe GmbH

Abstract

Bayesian optimization has emerged at the forefront of expensive black-box optimization due to its data efficiency. Recent years have witnessed a proliferation of studies on the development of new Bayesian optimization algorithms and their applications. Hence, this article attempts to provide a comprehensive and updated survey of recent advances in Bayesian optimization that are mainly based on Gaussian processes and identify challenging open problems. We categorize the existing work on Bayesian optimization into nine main groups according to the motivations and focus of the proposed algorithms. For each category, we present the main advances with respect to the construction of surrogate models and adaptation of the acquisition functions. Finally, we discuss the open questions and suggest promising future research directions, in particular with regard to heterogeneity, privacy preservation, and fairness in distributed and federated optimization systems.

Funder

Alexander von Humboldt Professorship for Artificial Intelligence

German Federal Ministry of Education and Research

Honda Research Institute Europe

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference221 articles.

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4. Multiobjective optimization: When objectives exhibit non-uniform latencies

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