Regret Bounds for Gaussian-Process Optimization in Large Domains Manuel Wuthrich
–Neural Information Processing Systems
The goal of this paper is to characterize Gaussian-Process optimization in the setting where the function domain is large relative to the number of admissible function evaluations, i.e., where it is impossible to find the global optimum. We provide upper bounds on the suboptimality (Bayesian simple regret) of the solution found by optimization strategies that are closely related to the widely used expected improvement (EI) and upper confidence bound (UCB) algorithms. These regret bounds illuminate the relationship between the number of evaluations, the domain size (i.e.
Neural Information Processing Systems
Aug-14-2025, 04:56:31 GMT
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