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Empowering GNNs via Edge-Aware Weisfeiler-Leman Algorithm

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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.

Meng Liu, Haiyang Yu, Shuiwang Ji• 2022

Related benchmarks

TaskDatasetResultRank
Graph ClassificationPROTEINS
Accuracy78.4
994
Graph ClassificationMUTAG
Accuracy92.8
862
Graph ClassificationPTC-MR
Accuracy71.8
197
Graph ClassificationDHFR
Accuracy80.7
140
Graph ClassificationIMDB MULTI
Accuracy55
124
Graph Classificationimdb-binary
Accuracy78.4
100
Graph ClassificationBZR
Accuracy92.6
89
Graph ClassificationCOX2
Accuracy88.4
80
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