AI RESEARCH
Counterfactually Safe Reinforcement Learning
arXiv CS.LG
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ArXi:2605.25114v1 Announce Type: cross Reinforcement learning algorithms are generally designed to maximize the expected return across a population. However, a policy that is optimal on average may be suboptimal for certain individuals, leading to potential safety concerns. To address this, we first formalize the notion of individual harm from a counterfactual perspective and define harm as the event in which a chosen action results in a strictly worse outcome than a baseline alternative.