Equivariant Graph Hierarchy-Based Neural Networks

Abstract

Equivariant Graph neural Networks (EGNs) are powerful in characterizing the dynamics of multi-body physical systems. Existing EGNs conduct flat message passing, which, yet, is unable to capture the spatial/dynamical hierarchy for complex systems particularly, limiting substructure discovery and global information fusion. In this paper, we propose Equivariant Hierarchy-based Graph Networks (EGHNs) which consist of the three key components: generalized Equivariant Matrix Message Passing (EMMP), E-Pool, and E-UnPool. In particular, EMMP is able to improve the expressivity of conventional equivariant message passing, E-Pool assigns the quantities of the low-level nodes into high-level clusters, while E-UnPool leverages the high-level information to update the dynamics of the low-level nodes. As their names imply, both E-Pool and E-UnPool are guaranteed to be equivariant to meet physic symmetry. Considerable experimental evaluations verify the effectiveness of our EGHN on several applications including multi-object dynamics simulation, motion capture, and protein dynamics modeling.

Cite

Text

Han et al. "Equivariant Graph Hierarchy-Based Neural Networks." NeurIPS 2022 Workshops: GLFrontiers, 2022.

Markdown

[Han et al. "Equivariant Graph Hierarchy-Based Neural Networks." NeurIPS 2022 Workshops: GLFrontiers, 2022.](https://mlanthology.org/neuripsw/2022/han2022neuripsw-equivariant/)

BibTeX

@inproceedings{han2022neuripsw-equivariant,
  title     = {{Equivariant Graph Hierarchy-Based Neural Networks}},
  author    = {Han, Jiaqi and Rong, Yu and Xu, Tingyang and Huang, Wenbing},
  booktitle = {NeurIPS 2022 Workshops: GLFrontiers},
  year      = {2022},
  url       = {https://mlanthology.org/neuripsw/2022/han2022neuripsw-equivariant/}
}