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Safety Guarantees for Planning Based on Iterative Gaussian Processes

Machine Learning 2020-09-08 v3 Machine Learning

Abstract

Gaussian Processes (GPs) are widely employed in control and learning because of their principled treatment of uncertainty. However, tracking uncertainty for iterative, multi-step predictions in general leads to an analytically intractable problem. While approximation methods exist, they do not come with guarantees, making it difficult to estimate their reliability and to trust their predictions. In this work, we derive formal probability error bounds for iterative prediction and planning with GPs. Building on GP properties, we bound the probability that random trajectories lie in specific regions around the predicted values. Namely, given a tolerance ϵ>0\epsilon > 0 , we compute regions around the predicted trajectory values, such that GP trajectories are guaranteed to lie inside them with probability at least 1ϵ1-\epsilon. We verify experimentally that our method tracks the predictive uncertainty correctly, even when current approximation techniques fail. Furthermore, we show how the proposed bounds can be employed within a safe reinforcement learning framework to verify the safety of candidate control policies, guiding the synthesis of provably safe controllers.

Keywords

Cite

@article{arxiv.1912.00071,
  title  = {Safety Guarantees for Planning Based on Iterative Gaussian Processes},
  author = {Kyriakos Polymenakos and Luca Laurenti and Andrea Patane and Jan-Peter Calliess and Luca Cardelli and Marta Kwiatkowska and Alessandro Abate and Stephen Roberts},
  journal= {arXiv preprint arXiv:1912.00071},
  year   = {2020}
}

Comments

An earlier version of this work presented in NeurIPS-2019 Workshop on Safety and Robustness in Decision Making. A shorter (but otherwise equivalent) paper was accepted to the 59th Conference on Decision and Control (CDC2020)

R2 v1 2026-06-23T12:31:37.936Z