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Provably Powerful Graph Neural Networks for Directed Multigraphs

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This paper analyses a set of simple adaptations that transform standard message-passing Graph Neural Networks (GNN) into provably powerful directed multigraph neural networks. The adaptations include multigraph port numbering, ego IDs, and reverse message passing. We prove that the combination of these theoretically enables the detection of any directed subgraph pattern. To validate the effectiveness of our proposed adaptations in practice, we conduct experiments on synthetic subgraph detection tasks, which demonstrate outstanding performance with almost perfect results. Moreover, we apply our proposed adaptations to two financial crime analysis tasks. We observe dramatic improvements in detecting money laundering transactions, improving the minority-class F1 score of a standard message-passing GNN by up to 30%, and closely matching or outperforming tree-based and GNN baselines. Similarly impressive results are observed on a real-world phishing detection dataset, boosting three standard GNNs' F1 scores by around 15% and outperforming all baselines.

B\'eni Egressy, Luc von Niederh\"ausern, Jovan Blanusa, Erik Altman, Roger Wattenhofer, Kubilay Atasu• 2023

Related benchmarks

TaskDatasetResultRank
Money laundering detectionIBM AML HI Small
F1 Score (Minority Class)68.16
6
Money laundering detectionIBM AML HI Medium
Minority Class F1 Score66.48
6
Money laundering detectionIBM AML LI Small
Minority Class F1 Score33.07
6
Money laundering detectionIBM AML LI Medium
Minority Class F1 Score36.07
6
Money laundering detectionIBM AML HI Large
Minority Class F1 Score61.5
5
Money laundering detectionIBM AML LI Large
Minority Class F1 Score (%)25.35
5
Phishing DetectionETH Phishing
Minority Class F1 Score66.58
4
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