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Main Authors: Galesloot, Maris F. L., Rhemrev, Thomas, Jansen, Nils
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.10293
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author Galesloot, Maris F. L.
Rhemrev, Thomas
Jansen, Nils
author_facet Galesloot, Maris F. L.
Rhemrev, Thomas
Jansen, Nils
contents In offline reinforcement learning (RL), we learn policies from fixed datasets without environment interaction. The major challenges are to provide guarantees on the (1) performance and (2) safety of the resulting policy. A technique called safe policy improvement (SPI) provides a performance guarantee: with high probability, the new policy outperforms a given baseline policy, which is assumed to be safe. Orthogonally, in the context of safe RL, a shield provides a safety guarantee by restricting the action space to those actions that are provably safe with respect to a given safety-relevant model. We integrate these paradigms by extending shielding to offline RL, relying solely on the available dataset and knowledge of safe and unsafe states. Then, we shield the policy improvement steps, guaranteeing, with high probability, a safe policy. Experimental results demonstrate that shielded SPI outperforms its unshielded counterpart, improving both average and worst-case performance, particularly in low-data regimes.
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Robust Probabilistic Shielding for Safe Offline Reinforcement Learning
Galesloot, Maris F. L.
Rhemrev, Thomas
Jansen, Nils
Machine Learning
Artificial Intelligence
In offline reinforcement learning (RL), we learn policies from fixed datasets without environment interaction. The major challenges are to provide guarantees on the (1) performance and (2) safety of the resulting policy. A technique called safe policy improvement (SPI) provides a performance guarantee: with high probability, the new policy outperforms a given baseline policy, which is assumed to be safe. Orthogonally, in the context of safe RL, a shield provides a safety guarantee by restricting the action space to those actions that are provably safe with respect to a given safety-relevant model. We integrate these paradigms by extending shielding to offline RL, relying solely on the available dataset and knowledge of safe and unsafe states. Then, we shield the policy improvement steps, guaranteeing, with high probability, a safe policy. Experimental results demonstrate that shielded SPI outperforms its unshielded counterpart, improving both average and worst-case performance, particularly in low-data regimes.
title Robust Probabilistic Shielding for Safe Offline Reinforcement Learning
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.10293