AI RESEARCH
How Does the Lagrangian Guide Safe Reinforcement Learning through Diffusion Models?
arXiv CS.LG
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ArXi:2602.02924v2 Announce Type: replace Diffusion policy sampling enables reinforcement learning (RL) to represent multimodal action distributions beyond suboptimal unimodal Gaussian policies. However, existing diffusion-based RL methods primarily focus on offline settings for reward maximization, with limited consideration of safety in online settings. To address this gap, we propose Augmented Lagrangian-Guided Diffusion (ALGD), a novel algorithm for off-policy safe RL.