AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Social network analysis is the study of such graphs which examines questions related to structures and patterns that can lead to the understanding of the data and predicting the trends of social networks. Static analysis, where the time of interaction is not considered (i.e., the network is frozen in time), misses the opportunity to capture the evolutionary patterns in dynamic networks. Specifically, detecting the community evolutions, the community structures that changes in time, provides insight into the underlying behaviour of the network. Recently, a number of researchers have started focusing on identifying critical events that characterize ...
Community discovery has emerged during the last decade as one of the most challenging problems in so...
Most real-world social networks are inherently dynamic and composed of communities that are constant...
Community finding algorithms for networks have recently been extended to dynamic data. Most of these...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
2010 International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2010), 9-11...
Real-world social networks from many domains can naturally be modelled as dynamic graphs. However, a...
International audienceSocial network analysis studies relationships between individuals and aims at ...
In this paper, we propose a novel community detection model, which explores the dynamic community ev...
Social networks are usually drawn from the interactions between individuals, and therefore are tempo...
International audienceTime evolution is one important feature of communities in network science. It ...
International audienceSeveral research studies have shown that Complex Networks modeling real-world ...
The widespread usage of the Web and later of the Web 2.0 for social interactions has stimulated scho...
With the increasing diversity of social media, the demand for real-time analysis of social networks ...
In this paper we propose a model to analyze community dynamics. Recently, several methods and tools ...
International audienceMany algorithms have been proposed in the last ten years for the discovery of ...
Community discovery has emerged during the last decade as one of the most challenging problems in so...
Most real-world social networks are inherently dynamic and composed of communities that are constant...
Community finding algorithms for networks have recently been extended to dynamic data. Most of these...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
2010 International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2010), 9-11...
Real-world social networks from many domains can naturally be modelled as dynamic graphs. However, a...
International audienceSocial network analysis studies relationships between individuals and aims at ...
In this paper, we propose a novel community detection model, which explores the dynamic community ev...
Social networks are usually drawn from the interactions between individuals, and therefore are tempo...
International audienceTime evolution is one important feature of communities in network science. It ...
International audienceSeveral research studies have shown that Complex Networks modeling real-world ...
The widespread usage of the Web and later of the Web 2.0 for social interactions has stimulated scho...
With the increasing diversity of social media, the demand for real-time analysis of social networks ...
In this paper we propose a model to analyze community dynamics. Recently, several methods and tools ...
International audienceMany algorithms have been proposed in the last ten years for the discovery of ...
Community discovery has emerged during the last decade as one of the most challenging problems in so...
Most real-world social networks are inherently dynamic and composed of communities that are constant...
Community finding algorithms for networks have recently been extended to dynamic data. Most of these...