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High Dimensional Bayesian Optimization via Supervised Dimension Reduction

About

Bayesian optimization (BO) has been broadly applied to computational expensive problems, but it is still challenging to extend BO to high dimensions. Existing works are usually under strict assumption of an additive or a linear embedding structure for objective functions. This paper directly introduces a supervised dimension reduction method, Sliced Inverse Regression (SIR), to high dimensional Bayesian optimization, which could effectively learn the intrinsic sub-structure of objective function during the optimization. Furthermore, a kernel trick is developed to reduce computational complexity and learn nonlinear subset of the unknowing function when applying SIR to extremely high dimensional BO. We present several computational benefits and derive theoretical regret bounds of our algorithm. Extensive experiments on synthetic examples and two real applications demonstrate the superiority of our algorithms for high dimensional Bayesian optimization.

Miao Zhang, Huiqi Li, Steven Su• 2019

Related benchmarks

TaskDatasetResultRank
High-dimensional optimizationMSLR
Convergence Value-8.6166
21
High-dimensional optimizationLIMO
Convergence Value-5.2516
20
High-dimensional optimizationLasso-Hard
Convergence Value39.8469
20
Function OptimizationMichalewicz D=1000
Convergence Value-8.7477
19
Function OptimizationRosenbrock D=1000
Convergence Value4.14e+5
19
Function OptimizationLevy D=1000
Convergence Value90.0148
19
Function OptimizationGriewank D=1000
Convergence Value (Statistic)61.7318
19
Function OptimizationSphere D=1000
Final Value87.9686
19
Function OptimizationDixon D=1000
Convergence Value5.13e+5
19
High-dimensional optimizationSphere D=10000
Objective Value (Sphere D=10000)106.1
13
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