AI RESEARCH

Drifting Field Policy: A One-Step Generative Policy via Wasserstein Gradient Flow

arXiv CS.AI

ArXi:2605.07727v1 Announce Type: cross We propose Drifting Field Policy (DFP), a non-ODE one-step generative policy built on the drifting model paradigm. We frame the policy update as a reverse-KL Wasserstein-2 gradient flow toward a soft target policy, so that each DFP update corresponds to a gradient step in probability space. By construction, this gradient is decomposed into an ascent toward higher action-value regions and a score matching with the anchor policy as a trust region.