Agglomerative clustering is a well established strategy for identifying communities in networks. Communities are successively merged into larger communities, coarsening a network of actors into a more manageable network of communities. The order in which merges should occur is not in general clear, necessitating heuristics for selecting pairs of communities to merge. We describe a hierarchical clustering algorithm based on a local optimality property. For each edge in the network, we associate the modularity change for merging the communities it links. For each community vertex, we call the preferred edge that edge for which the modularity change is maximal. When an edge is preferred by both vertices that it links, it appears to be the opti...
The neighborhood overlap (NOVER) of an edge u-v is defined as the ratio of the number of nodes who a...
Abstract—Because networks can be used to represent many complex systems, they have attracted conside...
The problem of clustering large complex networks plays a key role in several scientific fields rangi...
National audienceThe analysis of networks and in particular the identification of communities, or cl...
Agglomerative Clustering techniques work by recursively merging graph vertices into communities, to ...
A network is said to exhibit community structure if the nodes of the network can be easily grouped i...
Abstract. Recent years have seen the development of many graph clustering algorithms, which can iden...
Modularity maximization is extensively used to detect communities in complex networks. It has been s...
Community discovery in complex networks is the task of organizing a network’s structure by grouping ...
Community structure is one of the main structural features of networks, revealing both their interna...
In community detection, the theme of correctly identifying overlapping nodes, i.e. nodes which belon...
Social networks usually display a hierarchy of communities and it is the task of community detection...
Community structure is one of the main structural features of networks, revealing both their interna...
Some studies on networks require to isolate groups of elements, known as Com-munities. Some examples...
Community detection in networks is one of the major fundamentals of the science of networks. This is...
The neighborhood overlap (NOVER) of an edge u-v is defined as the ratio of the number of nodes who a...
Abstract—Because networks can be used to represent many complex systems, they have attracted conside...
The problem of clustering large complex networks plays a key role in several scientific fields rangi...
National audienceThe analysis of networks and in particular the identification of communities, or cl...
Agglomerative Clustering techniques work by recursively merging graph vertices into communities, to ...
A network is said to exhibit community structure if the nodes of the network can be easily grouped i...
Abstract. Recent years have seen the development of many graph clustering algorithms, which can iden...
Modularity maximization is extensively used to detect communities in complex networks. It has been s...
Community discovery in complex networks is the task of organizing a network’s structure by grouping ...
Community structure is one of the main structural features of networks, revealing both their interna...
In community detection, the theme of correctly identifying overlapping nodes, i.e. nodes which belon...
Social networks usually display a hierarchy of communities and it is the task of community detection...
Community structure is one of the main structural features of networks, revealing both their interna...
Some studies on networks require to isolate groups of elements, known as Com-munities. Some examples...
Community detection in networks is one of the major fundamentals of the science of networks. This is...
The neighborhood overlap (NOVER) of an edge u-v is defined as the ratio of the number of nodes who a...
Abstract—Because networks can be used to represent many complex systems, they have attracted conside...
The problem of clustering large complex networks plays a key role in several scientific fields rangi...