Conference Proceedings
WGCN: Graph Convolutional Networks with Weighted Structural Features
Y Zhao, J Qi, Q Liu, R Zhang
SIGIR 2021 Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval | ASSOC COMPUTING MACHINERY | Published : 2021
Abstract
Graph structural information such as topologies or connectivities provides valuable guidance for graph convolutional networks (GCNs) to learn nodes' representations. Existing GCN models that capture nodes' structural information weight in- and out-neighbors equally or differentiate in- and out-neighbors globally without considering nodes' local topologies. We observe that in- and out-neighbors contribute differently for nodes with different local topologies. To explore the directional structural information for different nodes, we propose a GCN model with weighted structural features, named WGCN. WGCN first captures nodes' structural fingerprints via a direction and degree aware Random Walk ..
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Awarded by Australian Research Council (ARC)
Funding Acknowledgements
This work is partially supported by Australian Research Council (ARC) Discovery Projects DP180102050. Yunxiang Zhao is supported by the Chinese Scholarship Council (CSC).