Positive-Unlabeled Node Classification with Structure-aware Graph Learning
Hansi Yang,
Yongqi Zhang,
Quanming Yao
et al.
Abstract:Node classification on graphs is an important research problem with many applications. Real-world graph data sets may not be balanced and accurate as assumed by most existing works. A challenging setting is positive-unlabeled (PU) node classification, where labeled nodes are restricted to positive nodes. It has diverse applications, e.g., pandemic prediction or network anomaly detection. Existing works on PU node classification overlook information in the graph structure, which can be critical. In this paper, … Show more
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