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Distributionally Robust Bayesian Optimization

About

Robustness to distributional shift is one of the key challenges of contemporary machine learning. Attaining such robustness is the goal of distributionally robust optimization, which seeks a solution to an optimization problem that is worst-case robust under a specified distributional shift of an uncontrolled covariate. In this paper, we study such a problem when the distributional shift is measured via the maximum mean discrepancy (MMD). For the setting of zeroth-order, noisy optimization, we present a novel distributionally robust Bayesian optimization algorithm (DRBO). Our algorithm provably obtains sub-linear robust regret in various settings that differ in how the uncertain covariate is observed. We demonstrate the robust performance of our method on both synthetic and real-world benchmarks.

Johannes Kirschner, Ilija Bogunovic, Stefanie Jegelka, Andreas Krause• 2020

Related benchmarks

TaskDatasetResultRank
Bayesian OptimizationThree-Hump Camel
Final Cumulative Regret5.38
9
Bayesian OptimizationSix-Hump Camel
Final Cumulative Regret129.7
9
Bayesian OptimizationNewsvendor
Cumulative Regret36.18
9
Bayesian OptimizationPortfolio Uniform
Final Cumulative Regret597.6
9
Bayesian OptimizationPortfolio Normal
Final Cumulative Expected Regret644.7
9
Bayesian OptimizationAckley
Final Cumulative Expected Regret510.6
9
Bayesian OptimizationHartmann
Cumulative Regret153.1
9
Bayesian OptimizationModified Branin
Final Cumulative Regret987.4
9
Bayesian OptimizationHartmann Complicated
Final Cumulative Expected Regret159
9
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