Activities per year
Abstract
Surrogate algorithms such as Bayesian optimisation are especially designed for black-box optimisation problems with expensive objectives, such as hyperparameter tuning or simulation-based optimisation. In the literature, these algorithms are usually evaluated with synthetic benchmarks which are well established but have no expensive objective, and only on one or two real-life applications which vary wildly between papers. There is a clear lack of standardisation when it comes to benchmarking surrogate algorithms on real-life, expensive, black-box objective functions. This makes it very difficult to draw conclusions on the effect of algorithmic contributions and to give substantial advice on which method to use when. A new benchmark library, EXPObench, provides first steps towards such a standardisation. The library is used to provide an extensive comparison of six different surrogate algorithms on four expensive optimisation problems from different real-life applications. This has led to new insights regarding the relative importance of exploration, the evaluation time of the objective, and the used model. We also provide rules of thumb for which surrogate algorithm to use in which situation. A further contribution is that we make the algorithms and benchmark problem instances publicly available, contributing to more uniform analysis of surrogate algorithms. Most importantly, we include the results of the six algorithms on all evaluated problem instances. This unique new dataset lowers the bar for researching new methods as the number of expensive evaluations required for comparison and for the creation of new surrogate models is significantly reduced.
Original language | English |
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Article number | 110744 |
Number of pages | 13 |
Journal | Applied Soft Computing |
Volume | 147 |
DOIs | |
Publication status | Published - Nov 2023 |
Bibliographical note
Publisher Copyright:© 2023 The Authors
Funding
This work is part of the research programme Real-time data-driven maintenance logistics with project number 628.009.012, which is financed by the Dutch Research Council ( NWO, The Netherlands ).
Funders | Funder number |
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Nederlandse Organisatie voor Wetenschappelijk Onderzoek |
Keywords
- Bayesian optimisation
- Benchmarking
- Expensive optimisation
- Surrogate-based optimisation
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Benchmarking Surrogate-based Optimisation Algorithms on Expensive Black-box Functions
Bliek, L. (Speaker)
29 Feb 2024Activity: Talk or presentation types › Invited talk › Scientific
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Benchmarking Surrogate-based Optimisation Algorithms on Expensive Black-box Functions
Bliek, L. (Speaker)
8 Nov 2023Activity: Talk or presentation types › Contributed talk › Scientific
Datasets
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Raw data of the EXPensive Optimization benchmark library (EXPObench)
Bliek, L. (Creator), Guijt, A. (Creator), Verwer, S. E. (Contributor), de Weerdt, M. (Creator) & Karlsson, R. (Creator), 4TU.Centre for Research Data, 14 Jun 2021
DOI: 10.4121/14247179
Dataset