Graph Network
Graph networks represent data as interconnected nodes and edges, enabling the modeling of complex relationships in various domains. Current research focuses on developing efficient graph neural network (GNN) architectures, such as graph transformers and recurrent graph networks, to address challenges like long-range dependencies and scalability in large graphs, as well as incorporating inductive biases from physics or other domains to improve model performance and interpretability. These advancements are significantly impacting fields ranging from materials science and drug discovery to social network analysis and anomaly detection in diverse systems, offering powerful tools for data analysis and prediction.
Papers
April 1, 2022
March 31, 2022
March 14, 2022
March 8, 2022
February 24, 2022
February 17, 2022
January 25, 2022
January 10, 2022
December 20, 2021
December 13, 2021
November 27, 2021
November 23, 2021
November 20, 2021