Community detection refers to extracting dense interacting nodes or subgraphs that form relevant aggregation (aka, communities) within networks. We present nine community detection methods based on different approaches, and we compare them on the Girvan-Newman community detection benchmark network. Two methods proposed by our group using spectral graph theory and fuzzy clustering obtain the best experimental results evaluated using the Omega Index
The existence of community structures in networks is not unusual, including in the domains of sociol...
Social networks have been a major innovation in the business field for the last decade. This work fo...
There has been considerable recent interest in algorithms for finding communities in networks—groups...
International audienceReal world complex networks may contain hidden structures called communities o...
Community detection aims to discover cohesive groups in which people connect with each other closely...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Many complex systems are composed of coupled networks through different layers, where each layer rep...
Empirical analysis of network data has been widely conducted for understanding and predicting the st...
A precise definition of what constitutes a community in networks has remained elusive. Consequently,...
A precise definition of what constitutes a community in networks has remained elusive. Consequently,...
Graphs or networks are mathematical structures that consist of elements that can be pairwise linked ...
Abstract. Community detection is a very active field in complex networks analysis, consisting in ide...
The rise of the Internet has brought people closer. The number of interactions between people across...
The incredible rising of on-line social networks gives a new and very strong interest to the set of ...
The community structures commonly exist in real-world networks such as brain networks, social networ...
The existence of community structures in networks is not unusual, including in the domains of sociol...
Social networks have been a major innovation in the business field for the last decade. This work fo...
There has been considerable recent interest in algorithms for finding communities in networks—groups...
International audienceReal world complex networks may contain hidden structures called communities o...
Community detection aims to discover cohesive groups in which people connect with each other closely...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
Many complex systems are composed of coupled networks through different layers, where each layer rep...
Empirical analysis of network data has been widely conducted for understanding and predicting the st...
A precise definition of what constitutes a community in networks has remained elusive. Consequently,...
A precise definition of what constitutes a community in networks has remained elusive. Consequently,...
Graphs or networks are mathematical structures that consist of elements that can be pairwise linked ...
Abstract. Community detection is a very active field in complex networks analysis, consisting in ide...
The rise of the Internet has brought people closer. The number of interactions between people across...
The incredible rising of on-line social networks gives a new and very strong interest to the set of ...
The community structures commonly exist in real-world networks such as brain networks, social networ...
The existence of community structures in networks is not unusual, including in the domains of sociol...
Social networks have been a major innovation in the business field for the last decade. This work fo...
There has been considerable recent interest in algorithms for finding communities in networks—groups...