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PACSBO: Probably approximately correct safe Bayesian optimization

Authors :
Tokmak, Abdullah
Schön, Thomas B.
Baumann, Dominik
Publication Year :
2024

Abstract

Safe Bayesian optimization (BO) algorithms promise to find optimal control policies without knowing the system dynamics while at the same time guaranteeing safety with high probability. In exchange for those guarantees, popular algorithms require a smoothness assumption: a known upper bound on a norm in a reproducing kernel Hilbert space (RKHS). The RKHS is a potentially infinite-dimensional space, and it is unclear how to, in practice, obtain an upper bound of an unknown function in its corresponding RKHS. In response, we propose an algorithm that estimates an upper bound on the RKHS norm of an unknown function from data and investigate its theoretical properties. Moreover, akin to Lipschitz-based methods, we treat the RKHS norm as a local rather than a global object, and thus reduce conservatism. Integrating the RKHS norm estimation and the local interpretation of the RKHS norm into a safe BO algorithm yields PACSBO, an algorithm for probably approximately correct safe Bayesian optimization, for which we provide numerical and hardware experiments that demonstrate its applicability and benefits over popular safe BO algorithms.<br />Comment: Accepted to the Symposium on Systems Theory in Data and Optimization (SysDO 2024). This is a preprint of the final version, which is to appear in Lecture Notes in Control and Information Sciences - Proceedings

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.01163
Document Type :
Working Paper