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Query Lower Bounds for Diffusion Sampling

Machine Learning 2026-04-14 v1 Artificial Intelligence Data Structures and Algorithms Statistics Theory Machine Learning Statistics Theory

Abstract

Diffusion models generate samples by iteratively querying learned score estimates. A rapidly growing literature focuses on accelerating sampling by minimizing the number of score evaluations, yet the information-theoretic limits of such acceleration remain unclear. In this work, we establish the first score query lower bounds for diffusion sampling. We prove that for dd-dimensional distributions, given access to score estimates with polynomial accuracy ε=dO(1)\varepsilon=d^{-O(1)} (in any LpL^p sense), any sampling algorithm requires Ω~(d)\widetilde{\Omega}(\sqrt{d}) adaptive score queries. In particular, our proof shows that any sampler must search over Ω~(d)\widetilde{\Omega}(\sqrt{d}) distinct noise levels, providing a formal explanation for why multiscale noise schedules are necessary in practice.

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Cite

@article{arxiv.2604.10857,
  title  = {Query Lower Bounds for Diffusion Sampling},
  author = {Zhiyang Xun and Eric Price},
  journal= {arXiv preprint arXiv:2604.10857},
  year   = {2026}
}