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Asynchronous ε-Greedy Bayesian Optimisation

AEGiS, an asynchronous Bayesian optimization method, combines greedy search, Thompson sampling, and random selection to efficiently optimize expensive black-box functions, outperforming existing methods.

Year
2020
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arXiv 2020
Authors
3
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arxiv.org/abs/2010.07615v4ARXIV-DEFAULT
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Abstract

Batch Bayesian optimisation (BO) is a successful technique for the optimisation of expensive black-box functions. Asynchronous BO can reduce wallclock time by starting a new evaluation as soon as another finishes, thus maximising resource utilisation. To maximise resource allocation, we develop a novel asynchronous BO method, AEGiS (Asynchronous $\epsilon$-Greedy Global Search) that combines greedy search, exploiting the surrogate's mean prediction, with Thompson sampling and random selection from the approximate Pareto set describing the trade-off between exploitation (surrogate mean prediction) and exploration (surrogate posterior variance). We demonstrate empirically the efficacy of AEGiS on synthetic benchmark problems, meta-surrogate hyperparameter tuning problems and real-world problems, showing that AEGiS generally outperforms existing methods for asynchronous BO. When a single worker is available performance is no worse than BO using expected improvement.

Authors

3