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BOCK : Bayesian Optimization with Cylindrical Kernels

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A major challenge in Bayesian Optimization is the boundary issue (Swersky, 2017) where an algorithm spends too many evaluations near the boundary of its search space. In this paper, we propose BOCK, Bayesian Optimization with Cylindrical Kernels, whose basic idea is to transform the ball geometry of the search space using a cylindrical transformation. Because of the transformed geometry, the Gaussian Process-based surrogate model spends less budget searching near the boundary, while concentrating its efforts relatively more near the center of the search region, where we expect the solution to be located. We evaluate BOCK extensively, showing that it is not only more accurate and efficient, but it also scales successfully to problems with a dimensionality as high as 500. We show that the better accuracy and scalability of BOCK even allows optimizing modestly sized neural network layers, as well as neural network hyperparameters.

ChangYong Oh, Efstratios Gavves, Max Welling• 2018

Related benchmarks

TaskDatasetResultRank
High-Dimensional Bayesian OptimizationMopta08 d = 124
Rank6.1
22
High-Dimensional Bayesian OptimizationHumanoid d = 6392
Rank6.1
21
High-Dimensional Bayesian OptimizationSVM D = 388
Objective Value0.068
17
High-Dimensional Bayesian OptimizationRover D = 100
Objective Value3.725
17
Black-box OptimizationHumanoid
Objective Value669.5
8
Black-box OptimizationLasso-DNA
Objective Value0.291
8
Black-box OptimizationSVM
Objective Value6.8
8
Black-box OptimizationRover
Objective Value3.725
8
Black-box OptimizationMopta08
Objective Value225.4
8
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