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  4. Towards safe multi-task Bayesian optimization
 
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Towards safe multi-task Bayesian optimization

Publikationstyp
Conference Paper
Date Issued
2024-07
Sprache
English
Author(s)
Lübsen, Jannis  orcid-logo
Regelungstechnik E-14  
Hespe, Christian  orcid-logo
Regelungstechnik E-14  
Eichler, Annika  
Regelungstechnik E-14  
TORE-URI
https://hdl.handle.net/11420/49183
First published in
Proceedings of machine learning research  
Number in series
242
Start Page
839
End Page
851
Citation
6th Annual Learning for Dynamics and Control Conference, L4DC 2024
Contribution to Conference
6th Annual Learning for Dynamics and Control Conference, L4DC 2024  
Scopus ID
2-s2.0-85203669549
Publisher
Microtome Publishing
Bayesian optimization has emerged as a highly effective tool for the safe online optimization of systems, due to its high sample efficiency and noise robustness. To further enhance its efficiency, reduced physical models of the system can be incorporated into the optimization process, accelerating it. These models are able to offer an approximation of the actual system, and evaluating them is significantly cheaper. The similarity between the model and reality is represented by additional hyperparameters, which are learned within the optimization process. Safety is a crucial criterion for online optimization methods such as Bayesian optimization, which has been addressed by recent works that provide safety guarantees under the assumption of known hyperparameters. In practice, however, this does not apply. Therefore, we extend the robust Gaussian process uniform error bounds to meet the multi-task setting, which involves the calculation of a confidence region from the hyperparameter posterior distribution utilizing Markov chain Monte Carlo methods. Subsequently, the robust safety bounds are employed to facilitate the safe optimization of the system, while incorporating measurements of the models. Simulation results indicate that the optimization can be significantly accelerated for expensive to evaluate functions in comparison to other state-of-the-art safe Bayesian optimization methods, contingent on the fidelity of the models. The code is accessible on GitHub1
Subjects
Bayesian Optimization
Controller Tuning
Gaussian Processes
Safe Optimization
DDC Class
621.3: Electrical Engineering, Electronic Engineering
510: Mathematics
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