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Adaptive Candidate Point Thompson Sampling for High-Dimensional Bayesian Optimization

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In Bayesian optimization, Thompson sampling selects the evaluation point by sampling from the posterior distribution over the objective function maximizer. Because this sampling problem is intractable for Gaussian process (GP) surrogates, the posterior distribution is typically restricted to fixed discretizations (i.e., candidate points) that become exponentially sparse as dimensionality increases. While previous works aim to increase candidate point density through scalable GP approximations, our orthogonal approach increases density by adaptively reducing the search space during sampling. Specifically, we introduce Adaptive Candidate Thompson Sampling (ACTS), which generates candidate points in subspaces guided by the gradient of a surrogate model sample. ACTS is a simple drop-in replacement for existing TS methods -- including those that use trust regions or other local approximations -- producing better samples of maxima and improved optimization across synthetic and real-world benchmarks.

Donney Fan, Geoff Pleiss• 2026

Related benchmarks

TaskDatasetResultRank
High-dimensional optimizationRover 60D
Objective Value2.87
6
High-dimensional optimizationLassoDNA 180D
Objective Value-0.28
6
High-dimensional optimizationMOPTA08 124D
Objective Value-215.8
6
High-dimensional optimizationSVM 388D
Objective Value0.04
6
High-dimensional optimizationMedian Molecules 256D 2
Objective Value0.14
5
High-dimensional optimizationMedian Molecules 256D 1
Objective Value0.3
5
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