A common analysis performed on dynamic networks is community structure detection, a challenging problem that aims to track the temporal evolution of network modules. An emerging area in this field is evolutionary clustering, where the community structure of a network snapshot is identified by taking into account both its current state as well as previous time points. Based on this concept, we have developed a mixed integer non-linear programming (MINLP) model, SeqMod, that sequentially clusters each snapshot of a dynamic network. The modularity metric is used to determine the quality of community structure of the current snapshot and the historical cost is accounted for by optimising the number of node pairs co-clustered at the previous tim...
Many of the algorithms used for community detection in temporal networks have been adapted from stat...
International audienceUnderstanding the dynamics of evolving social/infrastructure networks is a cen...
AbstractThe temporal analysis of the community structure in dynamically evolving networks requires t...
A common analysis performed on dynamic networks is community structure detection, a challe...
Social networks are all around us and these networks are dynamic and time-evolving in nature. Howev...
A prominent feature of complex networks is the appearance of communities, also known as modular stru...
Available on http://arxiv.org/abs/1111.2018International audienceCommunity finding algorithms for ne...
International audienceTime evolution is one important feature of communities in network science. It ...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
Agglomerative Clustering techniques work by recursively merging graph vertices into communities, to ...
We introduce an efficient method for the detection and identification of community structures in com...
© 2019 IEEE. Evolutionary clustering is a way of detecting the evolving patterns of communities in d...
Most social networks are characterized by the presence of community structure, viz. the existence of...
Many real-world applications in the social, biological, and physical sciences involve large systems ...
Complex networks are ubiquitous; billions of people are connected through social networks; there is ...
Many of the algorithms used for community detection in temporal networks have been adapted from stat...
International audienceUnderstanding the dynamics of evolving social/infrastructure networks is a cen...
AbstractThe temporal analysis of the community structure in dynamically evolving networks requires t...
A common analysis performed on dynamic networks is community structure detection, a challe...
Social networks are all around us and these networks are dynamic and time-evolving in nature. Howev...
A prominent feature of complex networks is the appearance of communities, also known as modular stru...
Available on http://arxiv.org/abs/1111.2018International audienceCommunity finding algorithms for ne...
International audienceTime evolution is one important feature of communities in network science. It ...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
Agglomerative Clustering techniques work by recursively merging graph vertices into communities, to ...
We introduce an efficient method for the detection and identification of community structures in com...
© 2019 IEEE. Evolutionary clustering is a way of detecting the evolving patterns of communities in d...
Most social networks are characterized by the presence of community structure, viz. the existence of...
Many real-world applications in the social, biological, and physical sciences involve large systems ...
Complex networks are ubiquitous; billions of people are connected through social networks; there is ...
Many of the algorithms used for community detection in temporal networks have been adapted from stat...
International audienceUnderstanding the dynamics of evolving social/infrastructure networks is a cen...
AbstractThe temporal analysis of the community structure in dynamically evolving networks requires t...