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2022
DOI: 10.48550/arxiv.2201.03340
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Cross-view Self-Supervised Learning on Heterogeneous Graph Neural Network via Bootstrapping

Abstract: Heterogeneous graph neural networks can represent information of heterogeneous graphs with excellent ability. Recently, self-supervised learning manner is researched which learns the unique expression of a graph through a contrastive learning method. In the absence of labels, this learning methods show great potential. However, contrastive learning relies heavily on positive and negative pairs, and generating high-quality pairs from heterogeneous graphs is difficult. In this paper, in line with recent innovati… Show more

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