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arXiv:2112.07457 [stat.CO]AbstractReferencesReviewsResources

Triangulation candidates for Bayesian optimization

Robert B. Gramacy, Annie Sauer, Nathan Wycoff

Published 2021-12-14, updated 2022-05-20Version 2

Bayesian optimization involves "inner optimization" over a new-data acquisition criterion which is non-convex/highly multi-modal, may be non-differentiable, or may otherwise thwart local numerical optimizers. In such cases it is common to replace continuous search with a discrete one over random candidates. Here we propose using candidates based on a Delaunay triangulation of the existing input design. We detail the construction of these "tricands" and demonstrate empirically how they outperform both numerically optimized acquisitions and random candidate-based alternatives, and are well-suited for hybrid schemes, on benchmark synthetic and real simulation experiments.

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