AI RESEARCH
Explainably Safe Reinforcement Learning
arXiv CS.LG
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ArXi:2606.04634v1 Announce Type: new Trust in a decision-making system requires both safety guarantees and the ability to interpret and understand its behavior. This is particularly important for learned systems, whose decision-making processes are often highly opaque. Shielding is a prominent model-based technique for enforcing safety in reinforcement learning. However, because shields are automatically synthesized using rigorous formal methods, their decisions are often similarly difficult for humans to interpret.