Graph Attention
Graph attention mechanisms enhance graph neural networks by selectively weighting the importance of connections between nodes, improving information propagation and representation learning. Current research focuses on applying graph attention networks (GATs) to diverse problems, including predicting gene-disease links, analyzing brain activity, and optimizing vehicle routing, often incorporating advanced architectures like transformers and recurrent networks to handle temporal data. This approach leads to improved accuracy and interpretability in various domains, offering significant advancements in fields ranging from drug discovery to cognitive science and autonomous systems.
Papers
November 17, 2022
October 30, 2022
October 20, 2022
October 18, 2022
October 14, 2022
October 13, 2022
October 12, 2022
September 16, 2022
September 5, 2022
August 24, 2022
August 18, 2022
August 10, 2022
June 29, 2022
June 9, 2022
June 6, 2022
May 29, 2022
April 23, 2022
April 15, 2022
April 13, 2022