Asymptotic Performance of Time-Varying Bayesian Optimization
Asymptotic Performance of Time-Varying Bayesian Optimization
Time-Varying Bayesian Optimization (TVBO) is the go-to framework for optimizing a time-varying black-box objective function that may be noisy and expensive to evaluate. Is it possible for the instantaneous regret of a TVBO algorithm to vanish asymptotically, and if so, when? We answer this question of great theoretical importance by providing algorithm-independent lower regret bounds and upper regret bounds for TVBO algorithms, from which we derive sufficient conditions for a TVBO algorithm to have the no-regret property. Our analysis covers all major classes of stationary kernel functions.
Anthony Bardou、Patrick Thiran
计算技术、计算机技术
Anthony Bardou,Patrick Thiran.Asymptotic Performance of Time-Varying Bayesian Optimization[EB/OL].(2025-05-19)[2025-06-06].https://arxiv.org/abs/2505.13012.点此复制
评论