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MBORE: multi-objective Bayesian optimisation by density-ratio estimation

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conference contribution
posted on 2025-08-01, 14:13 authored by G De Ath, T Chugh, AAM Rahat
Optimisation problems often have multiple conflicting objectives that can be computationally and/or financially expensive. Mono-surrogate Bayesian optimisation (BO) is a popular model-based approach for optimising such black-box functions. It combines objective values via scalarisation and builds a Gaussian process (GP) surrogate of the scalarised values. The location which maximises a cheap-to-query acquisition function is chosen as the next location to expensively evaluate. While BO is an effective strategy, the use of GPs is limiting. Their performance decreases as the problem input dimensionality increases, and their computational complexity scales cubically with the amount of data. To address these limitations, we extend previous work on BO by density-ratio estimation (BORE) to the multi-objective setting. BORE links the computation of the probability of improvement acquisition function to that of probabilistic classification. This enables the use of state-of-the-art classifiers in a BO-like framework. In this work we present MBORE: multi-objective Bayesian optimisation by density-ratio estimation, and compare it to BO across a range of synthetic and real-world benchmarks. We find that MBORE performs as well as or better than BO on a wide variety of problems, and that it outperforms BO on high-dimensional and real-world problems.

Funding

EP/W01226X/1

Engineering and Physical Sciences Research Council (EPSRC)

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© 2022 Copyright held by the owner/author(s). Publication rights licensed to ACM

Notes

This is the author accepted manuscript. The final version is available from ACM via the DOI in this record The dataset associated with this paper is available in ORE at: https://doi.org/10.24378/exe.3943

Publisher

Association for Computing Machinery (ACM)

Location

Boston, MA, USA

Version

  • Accepted Manuscript

Language

en

FCD date

2022-03-31T09:09:36Z

FOA date

2022-07-29T09:11:07Z

Citation

GECCO 2022: Genetic and Evolutionary Computation Conference, 9 - 13 July 2022, Boston, US, pp. 776 - 785

Department

  • Computer Science

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