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Most Influential AISTATS 2025 Paper · 2026-03 edition

Towards A Mathematical Theory for Consistency Training in Diffusion Models

Gen Li; Zhihan Huang; Yuting Wei

Venue
Conference on Artificial Intelligence and Statistics (AISTATS) 2025
Recognition
Most Influential AISTATS 2025 Paper (Rank No. 10)
Edition
2026-03
Impact factor
3
Certificate ID
57d345498239e169

Abstract

Consistency models, which were proposed to mitigate the high computational overhead during the sampling phase of diffusion models, facilitate single-step sampling while attaining state-of-the-art empirical performance. When integrated into the training phase, consistency models attempt to train a sequence of consistency functions capable of mapping any point at any time step of the diffusion process to its starting point. Despite the empirical success, a comprehensive theoretical understanding of consistency training remains elusive. This paper takes a first step towards establishing theoretical underpinnings for consistency models. We demonstrate that, in order to generate samples within $\varepsilon$ proximity to the target in distribution (measured by some Wasserstein metric), it suffices for the number of steps in consistency learning to exceed the order of $d^{5/2}/\varepsilon$, with $d$ the data dimension. Our theory offers rigorous insights into the validity and efficacy of consistency models, illuminating their utility in downstream inference tasks.

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