Node classification is a central task in graph data analysis. Scarce or even no labeled data of emerging classes is a big challenge for existing methods. A natural question arises: can we classify the nodes from those classes that have never been seen? In this paper, we study this zero-shot node classification (ZNC) problem which has a two-stage nature: (1) acquiring high-quality class semantic descriptions (CSDs) for knowledge transfer, and (2) designing a well generalized graph-based learning model. For the first stage, we give a novel quantitative CSDs evaluation strategy based on estimating the real class relationships, to get the "best"CSDs in a completely automatic way. For the second stage, we propose a novel Decomposed Graph Prototype Network (DGPN) method, following the principles of locality and compositionality for zero-shot model generalization. Finally, we conduct extensive experiments to demonstrate the effectiveness of our solutions.
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CITATION STYLE
Wang, Z., Wang, J., Guo, Y., & Gong, Z. (2021). Zero-shot Node Classification with Decomposed Graph Prototype Network. In Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (pp. 1769–1779). Association for Computing Machinery. https://doi.org/10.1145/3447548.3467230