2024
DOI: 10.1609/aaai.v38i10.29069
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Provably Powerful Graph Neural Networks for Directed Multigraphs

Béni Egressy,
Luc Von Niederhäusern,
Jovan Blanuša
et al.

Abstract: 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 de… Show more

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Cited by 3 publications
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