Gaussian Process Uniform Error Bounds with Unknown Hyperparameters for Safety-Critical Applications

Alexandre Capone, Armin Lederer, Sandra Hirche

Publikation: Beitrag in FachzeitschriftKonferenzartikelBegutachtung

14 Zitate (Scopus)

Abstract

Gaussian processes have become a promising tool for various safety-critical settings, since the posterior variance can be used to directly estimate the model error and quantify risk. However, state-of-the-art techniques for safety-critical settings hinge on the assumption that the kernel hyperparameters are known, which does not apply in general. To mitigate this, we introduce robust Gaussian process uniform error bounds in settings with unknown hyperparameters. Our approach computes a confidence region in the space of hyperparameters, which enables us to obtain a probabilistic upper bound for the model error of a Gaussian process with arbitrary hyperparameters. We do not require to know any bounds for the hyperparameters a priori, which is an assumption commonly found in related work. Instead, we are able to derive bounds from data in an intuitive fashion. We additionally employ the proposed technique to derive performance guarantees for a class of learning-based control problems. Experiments show that the bound performs significantly better than vanilla and fully Bayesian Gaussian processes.

OriginalspracheEnglisch
Seiten (von - bis)2609-2624
Seitenumfang16
FachzeitschriftProceedings of Machine Learning Research
Jahrgang162
PublikationsstatusVeröffentlicht - 2022
Veranstaltung39th International Conference on Machine Learning, ICML 2022 - Baltimore, USA/Vereinigte Staaten
Dauer: 17 Juli 202223 Juli 2022

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