AI RESEARCH

Adaptive Diffusion Guidance via Stochastic Optimal Control

arXiv CS.LG

ArXi:2505.19367v2 Announce Type: replace-cross Guidance is a cornerstone of modern diffusion models, playing a pivotal role in conditional generation and enhancing the quality of unconditional samples. However, current approaches to guidance scheduling--determining the appropriate guidance weight--are largely heuristic and lack a solid theoretical foundation. This work addresses these limitations on two fronts. First, we provide a theoretical formalization that precisely characterizes the relationship between guidance strength and classifier confidence. Second, building on this insight, we