Wasserstein Distributionally Robust Bayesian Optimization with Continuous Context
Micheli, Francesco, Balta, Efe C., Tsiamis, Anastasios, Lygeros, John
We address the challenge of sequential data-driven decision-making under context distributional uncertainty. This problem arises in numerous real-world scenarios where the learner optimizes black-box objective functions in the presence of uncontrollable contextual variables. We consider the setting where the context distribution is uncertain but known to lie within an ambiguity set defined as a ball in the Wasserstein distance. We propose a novel algorithm for Wasserstein Distributionally Robust Bayesian Optimization that can handle continuous context distributions while maintaining computational tractability. Our theoretical analysis combines recent results in self-normalized concentration in Hilbert spaces and finite-sample bounds for distributionally robust optimization to establish sublinear regret bounds that match state-of-the-art results. Through extensive comparisons with existing approaches on both synthetic and real-world problems, we demonstrate the simplicity, effectiveness, and practical applicability of our proposed method.
Mar-26-2025
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- Japan > Honshū
- Kantō > Kanagawa Prefecture (0.04)
- Middle East > Jordan (0.04)
- Japan > Honshū
- Europe
- Switzerland > Zürich
- Zürich (0.04)
- United Kingdom > England
- Cambridgeshire > Cambridge (0.04)
- Switzerland > Zürich
- North America > United States
- Massachusetts > Middlesex County > Cambridge (0.04)
- Asia
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- Research Report (1.00)
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