Distributionally Robust Bayesian Optimization with $\varphi$-divergences
Hisham Husain, Vu Nguyen, Anton van den Hengel

TL;DR
This paper introduces a computationally efficient approach for distributionally robust Bayesian optimization using $\
Contribution
It extends DRO-BO to $\\varphi$-divergences, providing a practical algorithm with theoretical guarantees and improved performance over existing methods.
Findings
The proposed method is computationally tractable.
It achieves sublinear regret bounds.
Experimental results outperform existing approaches.
Abstract
The study of robustness has received much attention due to its inevitability in data-driven settings where many systems face uncertainty. One such example of concern is Bayesian Optimization (BO), where uncertainty is multi-faceted, yet there only exists a limited number of works dedicated to this direction. In particular, there is the work of Kirschner et al. (2020), which bridges the existing literature of Distributionally Robust Optimization (DRO) by casting the BO problem from the lens of DRO. While this work is pioneering, it admittedly suffers from various practical shortcomings such as finite contexts assumptions, leaving behind the main question Can one devise a computationally tractable algorithm for solving this DRO-BO problem? In this work, we tackle this question to a large degree of generality by considering robustness against data-shift in -divergences, which…
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Taxonomy
TopicsRisk and Portfolio Optimization · Advanced Statistical Methods and Models · Advanced Statistical Process Monitoring
