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Faster Diffusion Models via Higher-Order Approximation

Machine Learning 2025-08-14 v2 Numerical Analysis Numerical Analysis Statistics Theory Machine Learning Statistics Theory

Abstract

In this paper, we explore provable acceleration of diffusion models without any additional retraining. Focusing on the task of approximating a target data distribution in Rd\mathbb{R}^d to within ε\varepsilon total-variation distance, we propose a principled, training-free sampling algorithm that requires only the order of d1+2/Kε1/K d^{1+2/K} \varepsilon^{-1/K} score function evaluations (up to log factor) in the presence of accurate scores, where K>0K>0 is an arbitrary fixed integer. This result applies to a broad class of target data distributions, without the need for assumptions such as smoothness or log-concavity. Our theory is robust vis-a-vis inexact score estimation, degrading gracefully as the score estimation error increases -- without demanding higher-order smoothness on the score estimates as assumed in previous work. The proposed algorithm draws insight from high-order ODE solvers, leveraging high-order Lagrange interpolation and successive refinement to approximate the integral derived from the probability flow ODE. More broadly, our work develops a theoretical framework towards understanding the efficacy of high-order methods for accelerated sampling.

Keywords

Cite

@article{arxiv.2506.24042,
  title  = {Faster Diffusion Models via Higher-Order Approximation},
  author = {Gen Li and Yuchen Zhou and Yuting Wei and Yuxin Chen},
  journal= {arXiv preprint arXiv:2506.24042},
  year   = {2025}
}