Abstract
Attributed graph representation has attracted increasing attention recently due to its broad applications such as node classification, link prediction and recommendation. Most existing methods adopt Graph Neural Network (GNN) or its variants to propagate the attributes over the structure network. However, the attribute information will be overshadowed by the structure perspective. To address the limitation and build a link between nodes features and network structure, we aim to learn a holistic representation from two perspectives: topology perspective and feature perspective. To be specific, we separately construct the feature graph and topology graph. Inspired by the network homophily, we argue that there is a deep correlation information between the network structure perspective and the node attributes perspective. Attempting to exploit the potential information between them, we extend our approaches by maximizing the consistency between structural perspective and attribute perspective. In addition, an information fusion module is presented to allow flexible information exchange and integration between the two perspectives. Experimental results on four benchmark datasets demonstrate the effectiveness of our proposed method on graph representation learning, compared with several representative baselines.
This work was supported in part by the 173 program No. 2021-JCJQ-JJ-0029, the Shenzhen General Research Project under Grant JCYJ20190808182805919 and in part by the National Natural Science Foundation of China under Grant 61602013.
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Cora dataset is available at https://linqs.soe.ucsc.edu/data.
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Lin, S., Dong, C., Shen, Y. (2022). Cross-perspective Graph Contrastive Learning. In: Memmi, G., Yang, B., Kong, L., Zhang, T., Qiu, M. (eds) Knowledge Science, Engineering and Management. KSEM 2022. Lecture Notes in Computer Science(), vol 13368. Springer, Cham. https://doi.org/10.1007/978-3-031-10983-6_5
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