Efficient Batch Black-box Optimization with Deterministic Regret Bounds
Abstract
In this work, we investigate black-box optimization from the perspective of frequentist kernel methods. We propose a novel batch optimization algorithm, which jointly maximizes the acquisition function and select points from a whole batch in a holistic way. Theoretically, we derive regret bounds for both the noise-free and perturbation settings irrespective of the choice of kernel. Moreover, we analyze the property of the adversarial regret that is required by a robust initialization for Bayesian Optimization (BO). We prove that the adversarial regret bounds decrease with the decrease of covering radius, which provides a criterion for generating a point set to minimize the bound. We then propose fast searching algorithms to generate a point set with a small covering radius for the robust initialization. Experimental results on both synthetic benchmark problems and real-world problems show the effectiveness of the proposed algorithms.
Cite
@article{arxiv.1905.10041,
title = {Efficient Batch Black-box Optimization with Deterministic Regret Bounds},
author = {Yueming Lyu and Yuan Yuan and Ivor W. Tsang},
journal= {arXiv preprint arXiv:1905.10041},
year = {2020}
}