Adaptive Diffusion Guidance via Stochastic Optimal Control

arXiv stat.ML / 4/2/2026

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Key Points

  • The paper argues that diffusion guidance scheduling is often heuristic and lacks a rigorous theoretical link between guidance strength and classifier confidence.
  • It provides a formal characterization of how guidance strength relates to classifier confidence, aiming to ground guidance design in theory.
  • Using that insight, it proposes a stochastic optimal control framework that treats guidance scheduling as a dynamic, adaptive optimization problem.
  • In the proposed method, guidance strength can vary over time and depend on the current sample and conditioning class, either alone or jointly.
  • By solving the control problem, the work claims to deliver a principled basis for improving guidance effectiveness in diffusion models.

Abstract

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 introduce a stochastic optimal control framework that casts guidance scheduling as an adaptive optimization problem. In this formulation, guidance strength is not fixed but dynamically selected based on time, the current sample, and the conditioning class, either independently or in combination. By solving the resulting control problem, we establish a principled foundation for more effective guidance in diffusion models.