ArXiv TLDR

Quotient-Space Diffusion Models

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2604.21809

Yixian Xu, Yusong Wang, Shengjie Luo, Kaiyuan Gao, Tianyu He + 2 more

cs.LGcs.AIq-bio.QMstat.ML

TLDR

Quotient-Space Diffusion Models simplify learning and improve generative AI by formally incorporating symmetries, outperforming prior methods for molecular structure generation.

Key contributions

  • Establishes a formal framework for diffusion modeling on general quotient spaces.
  • Reduces learning difficulty by eliminating the need to learn components corresponding to group actions.
  • Guarantees recovery of the target distribution, providing a principled sampler over heuristic methods.
  • Empirically validated to outperform previous symmetry treatments in molecular structure generation.

Why it matters

This paper presents Quotient-Space Diffusion Models, a framework for symmetric tasks like molecular generation. It simplifies learning and guarantees target distribution recovery, significantly advancing generative AI for scientific applications.

Original Abstract

Diffusion-based generative models have reformed generative AI, and have enabled new capabilities in the science domain, for example, generating 3D structures of molecules. Due to the intrinsic problem structure of certain tasks, there is often a symmetry in the system, which identifies objects that can be converted by a group action as equivalent, hence the target distribution is essentially defined on the quotient space with respect to the group. In this work, we establish a formal framework for diffusion modeling on a general quotient space, and apply it to molecular structure generation which follows the special Euclidean group $\text{SE}(3)$ symmetry. The framework reduces the necessity of learning the component corresponding to the group action, hence simplifies learning difficulty over conventional group-equivariant diffusion models, and the sampler guarantees recovering the target distribution, while heuristic alignment strategies lack proper samplers. The arguments are empirically validated on structure generation for small molecules and proteins, indicating that the principled quotient-space diffusion model provides a new framework that outperforms previous symmetry treatments.

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