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Bayesian Optimization with Unknown Search Space

About

Applying Bayesian optimization in problems wherein the search space is unknown is challenging. To address this problem, we propose a systematic volume expansion strategy for the Bayesian optimization. We devise a strategy to guarantee that in iterative expansions of the search space, our method can find a point whose function value within epsilon of the objective function maximum. Without the need to specify any parameters, our algorithm automatically triggers a minimal expansion required iteratively. We derive analytic expressions for when to trigger the expansion and by how much to expand. We also provide theoretical analysis to show that our method achieves epsilon-accuracy after a finite number of iterations. We demonstrate our method on both benchmark test functions and machine learning hyper-parameter tuning tasks and demonstrate that our method outperforms baselines.

Huong Ha, Santu Rana, Sunil Gupta, Thanh Nguyen, Hung Tran-The, Svetha Venkatesh• 2019

Related benchmarks

TaskDatasetResultRank
Black-box OptimizationHartmann3
Average CPU Time (s)2.11
13
Black-box OptimizationBeale
Average CPU Time (s)0.61
7
Black-box OptimizationHartmann6
Average CPU Time (s)11.21
7
Black-box OptimizationLevy d=20
Average CPU Time (s)9.37
7
Black-box OptimizationAckley d=20
Average CPU Time (s)21.33
7
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