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Adaptive Diffusion Guidance via Stochastic Optimal Control

Adaptive Diffusion Guidance via Stochastic Optimal Control

来源:Arxiv_logoArxiv
英文摘要

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.

Iskander Azangulov、Peter Potaptchik、Qinyu Li、Eddie Aamari、George Deligiannidis、Judith Rousseau

计算技术、计算机技术

Iskander Azangulov,Peter Potaptchik,Qinyu Li,Eddie Aamari,George Deligiannidis,Judith Rousseau.Adaptive Diffusion Guidance via Stochastic Optimal Control[EB/OL].(2025-05-25)[2025-06-18].https://arxiv.org/abs/2505.19367.点此复制

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