FASG: Feature Aggregation Self-training GCN for Semi-supervised Node Classification

1 Jan 2021  ·  Gongpei Zhao, Tao Wang, Yidong Li, Yi Jin ·

Recently, Graph Convolutioal Networks (GCNs) have achieved significant success in many graph-based learning tasks, especially for node classification, due to its excellent ability in representation learning. Nevertheless, it remains challenging for GCN models to obtain satisfying prediction on graphs where few nodes are with known labels. In this paper, we propose a novel self-training algorithm based on GCN to boost semi-supervised node classification on graphs with little supervised information. Inspired by self-supervision strategy, the proposed method introduces an ingenious checking part to add new nodes as supervision after each training epoch to enhance node prediction. In particular, the embedded checking part is designed based on aggregated features, which is more accurate than previous methods and boosts node classification significantly. The proposed algorithm is validated on three public benchmarks in comparison with several state-of-the-art baseline algorithms, and the results illustrate its excellent performance.

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