Wendong Bi, Lun Du, Qiang Fu et al. (6 total)
2024-12-01
IEEE Transactions on Knowledge and Data Engineering Vol. 36
10.1109/tkde.2024.3441766
38 citations
摘要
Graph Neural Networks (GNNs) have shown superior performance in modeling graph data. Existing studies have shown that a lot of GNNs perform well on homophilic graphs while performing poorly on heterophilic graphs. Recently, researchers have turned their attention to design GNNs for heterophilic graphs by specific model design. Different from existing methods that mitigate heterophily by model design, we propose to study heterophilic graphs from an orthogonal perspective by rewiring the graph to ...