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Manifold Generalization Provably Proceeds Memorization in Diffusion Models

Machine Learning 2026-03-26 v1 Machine Learning

Abstract

Diffusion models often generate novel samples even when the learned score is only \emph{coarse} -- a phenomenon not accounted for by the standard view of diffusion training as density estimation. In this paper, we show that, under the \emph{manifold hypothesis}, this behavior can instead be explained by coarse scores capturing the \emph{geometry} of the data while discarding the fine-scale distributional structure of the population measure~μdata\mu_{\scriptscriptstyle\mathrm{data}}. Concretely, whereas estimating the full data distribution μdata\mu_{\scriptscriptstyle\mathrm{data}} supported on a kk-dimensional manifold is known to require the classical minimax rate O~(N1/k)\tilde{\mathcal{O}}(N^{-1/k}), we prove that diffusion models trained with coarse scores can exploit the \emph{regularity of the manifold support} and attain a near-parametric rate toward a \emph{different} target distribution. This target distribution has density uniformly comparable to that of~μdata\mu_{\scriptscriptstyle\mathrm{data}} throughout any O~(Nβ/(4k))\tilde{\mathcal{O}}\bigl(N^{-\beta/(4k)}\bigr)-neighborhood of the manifold, where β\beta denotes the manifold regularity. Our guarantees therefore depend only on the smoothness of the underlying support, and are especially favorable when the data density itself is irregular, for instance non-differentiable. In particular, when the manifold is sufficiently smooth, we obtain that \emph{generalization} -- formalized as the ability to generate novel, high-fidelity samples -- occurs at a statistical rate strictly faster than that required to estimate the full population distribution~μdata\mu_{\scriptscriptstyle\mathrm{data}}.

Keywords

Cite

@article{arxiv.2603.23792,
  title  = {Manifold Generalization Provably Proceeds Memorization in Diffusion Models},
  author = {Zebang Shen and Ya-Ping Hsieh and Niao He},
  journal= {arXiv preprint arXiv:2603.23792},
  year   = {2026}
}

Comments

The first two authors contributed equally

R2 v1 2026-07-01T11:36:28.873Z