Meta-Learning Priors for Safe Bayesian Optimization

10/03/2022
by   Jonas Rothfuss, et al.
0

In robotics, optimizing controller parameters under safety constraints is an important challenge. Safe Bayesian optimization (BO) quantifies uncertainty in the objective and constraints to safely guide exploration in such settings. Hand-designing a suitable probabilistic model can be challenging, however. In the presence of unknown safety constraints, it is crucial to choose reliable model hyper-parameters to avoid safety violations. Here, we propose a data-driven approach to this problem by meta-learning priors for safe BO from offline data. We build on a meta-learning algorithm, F-PACOH, capable of providing reliable uncertainty quantification in settings of data scarcity. As core contribution, we develop a novel framework for choosing safety-compliant priors in a data-riven manner via empirical uncertainty metrics and a frontier search algorithm. On benchmark functions and a high-precision motion system, we demonstrate that our meta-learned priors accelerate the convergence of safe BO approaches while maintaining safety.

READ FULL TEXT

page 7

page 22

page 25

page 26

page 27

research
06/06/2021

Meta-Learning Reliable Priors in the Function Space

Meta-Learning promises to enable more data-efficient inference by harnes...
research
07/03/2023

Model-Assisted Probabilistic Safe Adaptive Control With Meta-Bayesian Learning

Breaking safety constraints in control systems can lead to potential ris...
research
08/26/2020

Safe Model-Based Meta-Reinforcement Learning: A Sequential Exploration-Exploitation Framework

Safe deployment of autonomous robots in diverse environments requires ag...
research
11/15/2019

Safe Interactive Model-Based Learning

Control applications present hard operational constraints. A violation o...
research
03/26/2022

Tuning Particle Accelerators with Safety Constraints using Bayesian Optimization

Tuning machine parameters of particle accelerators is a repetitive and t...
research
01/19/2021

Safe and Efficient Model-free Adaptive Control via Bayesian Optimization

Adaptive control approaches yield high-performance controllers when a pr...
research
02/01/2022

Meta-Learning Hypothesis Spaces for Sequential Decision-making

Obtaining reliable, adaptive confidence sets for prediction functions (h...

Please sign up or login with your details

Forgot password? Click here to reset