AI RESEARCH
FLAG: Flow Policy MaxEnt-RL by Latent Augmented Guidance
arXiv CS.LG
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ArXi:2605.30749v1 Announce Type: new Maximum entropy reinforcement learning (MaxEnt-RL) enables robust exploration, yet practical implementations often restrict policies to simple Gaussians. While recent approaches incorporate expressive generative policies via importance-weighted supervised learning, they are prone to importance weight collapse, which limits their scalability in high-dimensional action spaces. Our key insight is to mitigate this limitation by localizing the sampling region, avoiding the weight degeneracy induced by importance sampling over the entire action space.