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Understanding High-Dimensional Bayesian Optimization

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Recent work reported that simple Bayesian optimization (BO) methods perform well for high-dimensional real-world tasks, seemingly contradicting prior work and tribal knowledge. This paper investigates why. We identify underlying challenges that arise in high-dimensional BO and explain why recent methods succeed. Our empirical analysis shows that vanishing gradients caused by Gaussian process (GP) initialization schemes play a major role in the failures of high-dimensional Bayesian optimization (HDBO) and that methods that promote local search behaviors are better suited for the task. We find that maximum likelihood estimation (MLE) of GP length scales suffices for state-of-the-art performance. Based on this, we propose a simple variant of MLE called MSR that leverages these findings to achieve state-of-the-art performance on a comprehensive set of real-world applications. We present targeted experiments to illustrate and confirm our findings.

Leonard Papenmeier, Matthias Poloczek, Luigi Nardi• 2025

Related benchmarks

TaskDatasetResultRank
High-Dimensional Bayesian OptimizationMopta08 d = 124
Rank1
22
High-Dimensional Bayesian OptimizationHumanoid d = 6392
Rank2
21
High-Dimensional Bayesian OptimizationAnt d = 888
Rank1
5
High-Dimensional Bayesian OptimizationLasso-DNA d = 180
Rank3
5
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