Batched Bayesian optimization with correlated candidate uncertainties
Batched Bayesian optimization (BO) can accelerate molecular design by efficiently identifying top-performing compounds from a large chemical library. Existing acquisition strategies for batch design in BO aim to balance exploration and exploitation. This often involves optimizing non-additive batch...
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Zusammenfassung: | Batched Bayesian optimization (BO) can accelerate molecular design by
efficiently identifying top-performing compounds from a large chemical library.
Existing acquisition strategies for batch design in BO aim to balance
exploration and exploitation. This often involves optimizing non-additive batch
acquisition functions, necessitating approximation via myopic construction
and/or diversity heuristics. In this work, we propose an acquisition strategy
for discrete optimization that is motivated by pure exploitation, qPO
(multipoint Probability of Optimality). qPO maximizes the probability that the
batch includes the true optimum, which is expressible as the sum over
individual acquisition scores and thereby circumvents the combinatorial
challenge of optimizing a batch acquisition function. We differentiate the
proposed strategy from parallel Thompson sampling and discuss how it implicitly
captures diversity. Finally, we apply our method to the model-guided
exploration of large chemical libraries and provide empirical evidence that it
performs better than or on par with state-of-the-art methods in batched
Bayesian optimization. |
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DOI: | 10.48550/arxiv.2410.06333 |