Geometric Evolution Graph Convolutional Networks: Enhancing Graph Representation Learning via Ricci Flow
About
We introduce the Geometric Evolution Graph Convolutional Network (GEGCN), a novel framework that enhances graph representation learning through explicit modeling of geometric evolution on graph structures. Specifically, GEGCN leverages a Long Short-Term Memory (LSTM) network to capture the dynamic structural sequence generated by discrete Ricci flow, and infuses the learned dynamic representations into a graph convolutional network. Extensive experiments demonstrate that GEGCN achieves excellent performance on classification tasks across various benchmark datasets, including homophilic/heterophilic graphs, filtered graphs, and large-scale graphs.
Jicheng Ma, Yunyan Yang, Juan Zhao, Liang Zhao• 2026
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Node Classification | Citeseer (test) | Accuracy0.766 | 945 | |
| Node Classification | PubMed (test) | Accuracy87.4 | 586 | |
| Node Classification | Chameleon (test) | Mean Accuracy60.72 | 335 | |
| Node Classification | Cornell (test) | Mean Accuracy68.61 | 313 | |
| Node Classification | Texas (test) | Mean Accuracy70.27 | 312 | |
| Node Classification | Actor (test) | Mean Accuracy0.3718 | 286 | |
| Node Classification | Wisconsin (test) | Mean Accuracy67.39 | 279 | |
| Node Classification | Cora (test) | Accuracy86.7 | 122 | |
| Node Classification | Coauthor-CS (test) | Accuracy93.2 | 120 | |
| Node Classification | Amazon Photo (test) | Accuracy94.1 | 112 |
Showing 10 of 10 rows