English

Evaluating the design space of diffusion-based generative models

Machine Learning 2024-10-29 v4 Dynamical Systems Optimization and Control Probability Machine Learning

Abstract

Most existing theoretical investigations of the accuracy of diffusion models, albeit significant, assume the score function has been approximated to a certain accuracy, and then use this a priori bound to control the error of generation. This article instead provides a first quantitative understanding of the whole generation process, i.e., both training and sampling. More precisely, it conducts a non-asymptotic convergence analysis of denoising score matching under gradient descent. In addition, a refined sampling error analysis for variance exploding models is also provided. The combination of these two results yields a full error analysis, which elucidates (again, but this time theoretically) how to design the training and sampling processes for effective generation. For instance, our theory implies a preference toward noise distribution and loss weighting in training that qualitatively agree with the ones used in [Karras et al., 2022]. It also provides perspectives on the choices of time and variance schedules in sampling: when the score is well trained, the design in [Song et al., 2021] is more preferable, but when it is less trained, the design in [Karras et al., 2022] becomes more preferable.

Keywords

Cite

@article{arxiv.2406.12839,
  title  = {Evaluating the design space of diffusion-based generative models},
  author = {Yuqing Wang and Ye He and Molei Tao},
  journal= {arXiv preprint arXiv:2406.12839},
  year   = {2024}
}

Comments

Comments are welcome. Out of admiration we titled our paper after EDM, and hoped theorists' humor is not too corny

R2 v1 2026-06-28T17:10:44.326Z