Feb. 2, 2024, 9:46 p.m. | Alexander W. Goodall Francesco Belardinelli

cs.LG updates on arXiv.org arxiv.org

Shielding is a popular technique for achieving safe reinforcement learning (RL). However, classical shielding approaches come with quite restrictive assumptions making them difficult to deploy in complex environments, particularly those with continuous state or action spaces. In this paper we extend the more versatile approximate model-based shielding (AMBS) framework to the continuous setting. In particular we use Safety Gym as our test-bed, allowing for a more direct comparison of AMBS with popular constrained RL algorithms. We also provide strong probabilistic …

assumptions continuous cs.ai cs.lg deploy environments framework making paper popular reinforcement reinforcement learning restrictive safety spaces state them

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