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A Flexible Framework for Multi-Objective Bayesian Optimization using Random Scalarizations

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Many real world applications can be framed as multi-objective optimization problems, where we wish to simultaneously optimize for multiple criteria. Bayesian optimization techniques for the multi-objective setting are pertinent when the evaluation of the functions in question are expensive. Traditional methods for multi-objective optimization, both Bayesian and otherwise, are aimed at recovering the Pareto front of these objectives. However, in certain cases a practitioner might desire to identify Pareto optimal points only in a subset of the Pareto front due to external considerations. In this work, we propose a strategy based on random scalarizations of the objectives that addresses this problem. Our approach is able to flexibly sample from desired regions of the Pareto front and, computationally, is considerably cheaper than most approaches for MOO. We also study a notion of regret in the multi-objective setting and show that our strategy achieves sublinear regret. We experiment with both synthetic and real-life problems, and demonstrate superior performance of our proposed algorithm in terms of the flexibility and regret.

Biswajit Paria, Kirthevasan Kandasamy, Barnab\'as P\'oczos• 2018

Related benchmarks

TaskDatasetResultRank
Acquisition function optimizationDTLZ1 5 objectives m = 5
Mean Wall Time (s)22.29
16
Acquisition function optimizationDTLZ1 3 objectives m = 3
Mean Wall Time (s)12.29
16
Many-Objective OptimizationDTLZ2 5 objectives
Mean Log Distance-7.1
14
Multiobjective OptimizationDTLZ2 3 objectives
Hypervolume (HV)7.5
14
Multiobjective OptimizationScaled DTLZ2 3 objectives
Hypervolume (HV)8.8
14
Multiobjective OptimizationInverted DTLZ2 3 objectives
Hypervolume (HV)4.1
14
Multi-Objective OptimizationDTLZ2 3 objectives
Log Distance-3.4
14
Multiobjective OptimizationDTLZ1 3 objectives
Hypervolume (HV)6.20e+7
14
Multiobjective OptimizationConvex DTLZ2 3 objectives
Hypervolume (HV)5.4
14
Acquisition function optimizationDTLZ1 10 objectives m = 10
Mean Wall Time (s)64.78
14
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