English

Quotient-Space Diffusion Models

Machine Learning 2026-05-15 v2 Artificial Intelligence Quantitative Methods Machine Learning

Abstract

Diffusion-based generative models have reformed generative AI, and also enabled new capabilities in the science domain, e.g., fast generation of 3D structures of molecules. In such tasks, there is often a symmetry in the system, identifying elements that can be converted by certain transformations as equivalent. Equivariant diffusion models guarantee a symmetric distribution, but miss the opportunity to make learning easier, while alignment-based simplification attempts fail to preserve the target distribution. In this work, we develop quotient-space diffusion models, a principled generative framework to fully handle and leverage symmetry. By viewing the intrinsic generation process on the quotient space, the exact construction that removes symmetry redundancy, the framework simplifies learning by allowing model output to have an arbitrary intra-equivalence-class movement, while generating the correct symmetric target distribution with guarantee. We instantiate the framework for molecular structure generation which follows SE(3)\mathrm{SE}(3) (rigid-body movement) symmetry. It improves the performance over equivariant diffusion models and outperforms alignment-based methods universally for small molecules and proteins, representing a new framework that surpasses previous symmetry treatments in generative models.

Keywords

Cite

@article{arxiv.2604.21809,
  title  = {Quotient-Space Diffusion Models},
  author = {Yixian Xu and Yusong Wang and Shengjie Luo and Kaiyuan Gao and Tianyu He and Di He and Chang Liu},
  journal= {arXiv preprint arXiv:2604.21809},
  year   = {2026}
}

Comments

ICLR 2026 Oral Presentation; 43 pages, 5 figures, 6 tables; ICLR 2026 Camera Ready version