Message Passing
Message passing, a fundamental concept in graph neural networks (GNNs), involves iteratively exchanging information between nodes in a graph to learn node representations. Current research focuses on improving the efficiency and expressiveness of message passing, exploring techniques like dynamic hierarchy learning, optimized pooling operators, and incorporating information from large language models or random walks to capture long-range dependencies. These advancements are impacting diverse fields, including physics simulation, drug discovery, and recommendation systems, by enabling more accurate and efficient analysis of complex, graph-structured data.
Papers
November 24, 2023
October 31, 2023
October 22, 2023
October 18, 2023
October 14, 2023
October 11, 2023
October 10, 2023
October 3, 2023
October 2, 2023
September 29, 2023
September 2, 2023
September 1, 2023
August 25, 2023
August 21, 2023
August 13, 2023
July 15, 2023
June 19, 2023
June 10, 2023
June 7, 2023