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Max-value Entropy Search for Efficient Bayesian Optimization

About

Entropy Search (ES) and Predictive Entropy Search (PES) are popular and empirically successful Bayesian Optimization techniques. Both rely on a compelling information-theoretic motivation, and maximize the information gained about the $\arg\max$ of the unknown function; yet, both are plagued by the expensive computation for estimating entropies. We propose a new criterion, Max-value Entropy Search (MES), that instead uses the information about the maximum function value. We show relations of MES to other Bayesian optimization methods, and establish a regret bound. We observe that MES maintains or improves the good empirical performance of ES/PES, while tremendously lightening the computational burden. In particular, MES is much more robust to the number of samples used for computing the entropy, and hence more efficient for higher dimensional problems.

Zi Wang, Stefanie Jegelka• 2017

Related benchmarks

TaskDatasetResultRank
Bayesian Optimization50 optimization problems COCO, BoTorch, Bayesmark (aggregated)
Mean RP2.8
26
Simple Regret MinimizationPM2.5 Step 60
25th Percentile Simple Regret11
7
Simple Regret MinimizationOil Step 30
25th Percentile Simple Regret1.95
7
Simple Regret MinimizationElectrical Grid Stability Step 60
25th Percentile Simple Regret1.49
7
Simple Regret MinimizationPM2.5 Step 120
25th Percentile Simple Regret8
7
Simple Regret MinimizationAsteroid Step 30
25th Percentile Regret0.00e+0
7
Simple Regret MinimizationElectrical Grid Stability Step 120
Simple Regret (25th Pctl)0.00e+0
7
Simple Regret MinimizationHPOBench XGB Step 30
25th Percentile Simple Regret0.00e+0
7
Simple Regret MinimizationHPOBench XGB Step 60
25th Percentile Simple Regret0.00e+0
7
Simple Regret MinimizationOil Step 60
25th Percentile Simple Regret0.00e+0
7
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