Heterophilic Graph
Heterophilic graphs, where connected nodes tend to have dissimilar features or labels, pose a significant challenge to traditional graph neural networks (GNNs) designed for homophilic data. Current research focuses on developing GNN architectures and algorithms that effectively handle this heterophily, including methods that adapt message passing, employ personalized node-specific aggregation, and leverage auxiliary information like node attributes or textual data. Overcoming this limitation is crucial for advancing GNN applications in diverse fields, as many real-world networks exhibit significant heterophily, hindering the performance of standard GNN approaches.
Papers
October 15, 2022
October 14, 2022
September 17, 2022
September 13, 2022
August 3, 2022
July 5, 2022
June 6, 2022
May 27, 2022
May 19, 2022
May 15, 2022
April 11, 2022
March 19, 2022
February 14, 2022
February 8, 2022