Community Detection
Community detection aims to identify groups of densely interconnected nodes within networks, revealing underlying structure and facilitating a deeper understanding of complex systems. Current research emphasizes robust algorithms, including those based on modularity maximization, spectral clustering, graph neural networks, and matrix factorization, often addressing challenges like handling dynamic networks, overlapping communities, and large-scale datasets. These advancements have significant implications for diverse fields, improving analyses of social networks, biological systems, and financial transactions, among others, by providing more accurate and efficient methods for uncovering hidden patterns and relationships.
Papers
January 4, 2022
December 28, 2021
December 25, 2021
December 22, 2021
December 9, 2021
December 8, 2021
December 7, 2021
December 4, 2021
November 25, 2021
November 17, 2021
November 15, 2021
November 4, 2021