Empowering GNNs via Edge-Aware Weisfeiler-Leman Algorithm
About
Message passing graph neural networks (GNNs) are known to have their expressiveness upper-bounded by 1-dimensional Weisfeiler-Leman (1-WL) algorithm. To achieve more powerful GNNs, existing attempts either require ad hoc features, or involve operations that incur high time and space complexities. In this work, we propose a general and provably powerful GNN framework that preserves the scalability of the message passing scheme. In particular, we first propose to empower 1-WL for graph isomorphism test by considering edges among neighbors, giving rise to NC-1-WL. The expressiveness of NC-1-WL is shown to be strictly above 1-WL and below 3-WL theoretically. Further, we propose the NC-GNN framework as a differentiable neural version of NC-1-WL. Our simple implementation of NC-GNN is provably as powerful as NC-1-WL. Experiments demonstrate that our NC-GNN performs effectively and efficiently on various benchmarks.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Graph Classification | PROTEINS | Accuracy78.4 | 994 | |
| Graph Classification | MUTAG | Accuracy92.8 | 862 | |
| Graph Classification | PTC-MR | Accuracy71.8 | 197 | |
| Graph Classification | DHFR | Accuracy80.7 | 140 | |
| Graph Classification | IMDB MULTI | Accuracy55 | 124 | |
| Graph Classification | imdb-binary | Accuracy78.4 | 100 | |
| Graph Classification | BZR | Accuracy92.6 | 89 | |
| Graph Classification | COX2 | Accuracy88.4 | 80 |