Auxiliary learning induced graph convolutional networks
In this article, we propose a novel auxiliary learning induced graph convolutional network in a multi-task fashion. Specifically, both the link prediction and pseudo label generation are used as two auxiliary tasks to complement the primary task of node classification. Those two auxiliary tasks are jointly trained with the primary node classification task via the graph meta-learning strategy. The experimental results demonstrate that the proposed method consistently and significantly outperforms the existing methods and achieves state-of-the-art node classification results on the benchmark citation network datasets.
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