SOTAVerified

Towards safe Bayesian optimization with Wiener kernel regression

2024-11-04Code Available0· sign in to hype

Oleksii Molodchyk, Johannes Teutsch, Timm Faulwasser

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Bayesian Optimization (BO) is a data-driven strategy for minimizing/maximizing black-box functions based on probabilistic surrogate models. In the presence of safety constraints, the performance of BO crucially relies on tight probabilistic error bounds related to the uncertainty surrounding the surrogate model. For the case of Gaussian Process surrogates and Gaussian measurement noise, we present a novel error bound based on the recently proposed Wiener kernel regression. We prove that under rather mild assumptions, the proposed error bound is tighter than bounds previously documented in the literature, leading to enlarged safety regions. We draw upon a numerical example to demonstrate the efficacy of the proposed error bound in safe BO.

Tasks

Reproductions