SwinGNN: Rethinking Permutation Invariance in Diffusion Models for Graph Generation
Yan, Qi, Liang, Zhengyang, Song, Yang, Liao, Renjie, Wang, Lele
–arXiv.org Artificial Intelligence
Diffusion models based on permutation-equivariant networks can learn permutation-invariant distributions for graph data. However, in comparison to their non-invariant counterparts, we have found that these invariant models encounter greater learning challenges since 1) their effective target distributions exhibit more modes; 2) their optimal one-step denoising scores are the score functions of Gaussian mixtures with more components. Motivated by this analysis, we propose a non-invariant diffusion model, called $\textit{SwinGNN}$, which employs an efficient edge-to-edge 2-WL message passing network and utilizes shifted window based self-attention inspired by SwinTransformers. Further, through systematic ablations, we identify several critical training and sampling techniques that significantly improve the sample quality of graph generation. At last, we introduce a simple post-processing trick, $\textit{i.e.}$, randomly permuting the generated graphs, which provably converts any graph generative model to a permutation-invariant one. Extensive experiments on synthetic and real-world protein and molecule datasets show that our SwinGNN achieves state-of-the-art performances. Our code is released at https://github.com/qiyan98/SwinGNN.
arXiv.org Artificial Intelligence
Jul-19-2023
- Country:
- Europe
- France > Hauts-de-France
- Greece (0.04)
- Hungary > Hajdú-Bihar County
- Debrecen (0.04)
- United Kingdom > England
- Cambridgeshire > Cambridge (0.04)
- North America
- Canada
- British Columbia (0.04)
- Ontario (0.04)
- United States
- New Mexico > Los Alamos County
- Los Alamos (0.04)
- Wisconsin > Dane County
- Madison (0.04)
- New Mexico > Los Alamos County
- Canada
- Europe
- Genre:
- Research Report > New Finding (0.46)
- Technology: