AI RESEARCH

Training-Free Generative Sampling via Moment-Matched Score Smoothing

arXiv CS.LG

ArXi:2605.14276v1 Announce Type: cross Diffusion models generate samples by denoising along the score of a perturbed target distribution. In practice, one trains a neural diffusion model, which is computationally expensive. Recent work suggests that score matching implicitly smooths the empirical score, and that this smoothing bias promotes generalization by capturing low-dimensional data geometry. We propose moment-matched score-smoothed overdamped Langevin dynamics (MM-SOLD), a