Large Network
Research on large networks focuses on developing efficient algorithms and models to analyze and process their complex structures and dynamics, addressing computational limitations and data heterogeneity. Current efforts concentrate on distributed training frameworks for graph embeddings and federated learning, employing techniques like Leiden-Fusion partitioning, proximity-based self-organization, and graph neural networks for tasks such as node classification and centrality approximation. These advancements are crucial for handling the scale and complexity of real-world networks in diverse applications, including social networks, infrastructure monitoring, and scientific simulations, improving both efficiency and accuracy of analysis.
Papers
November 18, 2024
October 14, 2024
September 15, 2024
July 17, 2024
July 1, 2024
May 2, 2024
April 19, 2024
March 8, 2024
January 10, 2024
December 12, 2023
April 3, 2023
March 30, 2023
March 26, 2023
March 9, 2023
February 15, 2023
January 4, 2023
December 16, 2022
October 10, 2022
July 25, 2022