Multimodal Learning 相关度: 7/10

Diffusion Model's Generalization Can Be Characterized by Inductive Biases toward a Data-Dependent Ridge Manifold

Ye He, Yitong Qiu, Molei Tao
arXiv: 2602.06021v1 发布: 2026-02-05 更新: 2026-02-05

AI 摘要

论文刻画了扩散模型的泛化能力,提出了基于数据依赖的脊流形,并分析了推理过程中的reach-align-slide现象。

主要贡献

  • 提出了描述扩散模型泛化能力的脊流形概念
  • 分析了推理过程中的reach-align-slide动态
  • 定量分析了训练误差对生成结果的影响

方法论

通过理论分析和实验验证,研究扩散模型在生成数据时与脊流形的关系,并分析训练动态和推理动态。

原文摘要

When a diffusion model is not memorizing the training data set, how does it generalize exactly? A quantitative understanding of the distribution it generates would be beneficial to, for example, an assessment of the model's performance for downstream applications. We thus explicitly characterize what diffusion model generates, by proposing a log-density ridge manifold and quantifying how the generated data relate to this manifold as inference dynamics progresses. More precisely, inference undergoes a reach-align-slide process centered around the ridge manifold: trajectories first reach a neighborhood of the manifold, then align as being pushed toward or away from the manifold in normal directions, and finally slide along the manifold in tangent directions. Within the scope of this general behavior, different training errors will lead to different normal and tangent motions, which can be quantified, and these detailed motions characterize when inter-mode generations emerge. More detailed understanding of training dynamics will lead to more accurate quantification of the generation inductive bias, and an example of random feature model will be considered, for which we can explicitly illustrate how diffusion model's inductive biases originate as a composition of architectural bias and training accuracy, and how they evolve with the inference dynamics. Experiments on synthetic multimodal distributions and MNIST latent diffusion support the predicted directional effects, in both low- and high-dimensions.

标签

diffusion model generalization inductive bias ridge manifold generative model

arXiv 分类

stat.ML cs.LG math.NA math.PR