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Block Modeling-Guided Graph Convolutional Neural Networks

Dongxiao He, Chundong Liang, Huixin Liu, Mingxiang Wen, Pengfei Jiao, Zhiyong Feng

2022Proceedings of the AAAI Conference on Artificial Intelligence59 citationsDOIOpen Access PDF

Abstract

Graph Convolutional Network (GCN) has shown remarkable potential of exploring graph representation. However, the GCN aggregating mechanism fails to generalize to networks with heterophily where most nodes have neighbors from different classes, which commonly exists in real-world networks. In order to make the propagation and aggregation mechanism of GCN suitable for both homophily and heterophily (or even their mixture), we introduce block modelling into the framework of GCN so that it can realize “block-guided classified aggregation”, and automatically learn the corresponding aggregation rules for neighbors of different classes. By incorporating block modelling into the aggregation process, GCN is able to automatically aggregate information from homophilic and heterophilic neighbors discriminately according to their homophily degree. We compared our algorithm with state-of-art methods which deal with the heterophily problem. Empirical results demonstrate the superiority of our new approach over existing methods in heterophilic datasets while maintaining a competitive performance in homophilic datasets.

Topics & Concepts

HomophilyComputer scienceBlock (permutation group theory)GraphTheoretical computer scienceAggregate (composite)Representation (politics)Convolutional neural networkArtificial intelligenceMathematicsCombinatoricsComposite materialLawPoliticsPolitical scienceMaterials scienceAdvanced Graph Neural NetworksComplex Network Analysis TechniquesFunctional Brain Connectivity Studies