Indirect Query Bayesian Optimization with Integrated Feedback
Abstract
We develop the framework of Indirect Query Bayesian Optimization (IQBO), a new class of Bayesian optimization problems where the integrated feedback is given via a conditional expectation of the unknown function to be optimized. The underlying conditional distribution can be unknown and learned from data. The goal is to find the global optimum of by adaptively querying and observing in the space transformed by the conditional distribution. This is motivated by real-world applications where one cannot access direct feedback due to privacy, hardware or computational constraints. We propose the Conditional Max-Value Entropy Search (CMES) acquisition function to address this novel setting, and propose a hierarchical search algorithm with multi-resolution feedback to improve computational efficiency. We show regret bounds for our proposed methods and demonstrate the effectiveness of our approaches on simulated optimization tasks.
Cite
@article{arxiv.2412.13559,
title = {Indirect Query Bayesian Optimization with Integrated Feedback},
author = {Mengyan Zhang and Shahine Bouabid and Cheng Soon Ong and Seth Flaxman and Dino Sejdinovic},
journal= {arXiv preprint arXiv:2412.13559},
year = {2025}
}
Comments
Preliminary work. Under review