In this paper, we propose a novel community detection model, which explores the dynamic community evolutions in temporal social networks by modeling temporal affiliation strength between users and communities. Instead of transforming dynamic networks into static networks, our model utilizes normal distribution to estimate the change of affiliation strength more concisely and comprehensively. Extensive quantitative and qualitative evaluation on large social network datasets shows that our model achieves improvements in terms of prediction accuracy and reveals distinctive insight about evolutions of temporal social networks
Community finding algorithms for networks have recently been extended to dynamic data. Most of these...
With the increasing diversity of social media, the demand for real-time analysis of social networks ...
Community detection is a crucial challenge in social network analysis. This task is important becaus...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
Social networks are usually drawn from the interactions between individuals, and therefore are tempo...
Abstract—Real-world social networks from a variety of do-mains can naturally be modelled as dynamic ...
2010 International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2010), 9-11...
International audienceTime evolution is one important feature of communities in network science. It ...
International audienceSocial network analysis studies relationships between individuals and aims at ...
Real-world social networks from many domains can naturally be modelled as dynamic graphs. However, a...
Real-world social networks from many domains can naturally be modelled as dynamic graphs. However, a...
International audienceTime evolution is one important feature of communities in network science. It ...
Available on http://arxiv.org/abs/1111.2018International audienceCommunity finding algorithms for ne...
Available on http://arxiv.org/abs/1111.2018International audienceCommunity finding algorithms for ne...
Community finding algorithms for networks have recently been extended to dynamic data. Most of these...
With the increasing diversity of social media, the demand for real-time analysis of social networks ...
Community detection is a crucial challenge in social network analysis. This task is important becaus...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
Social networks are usually drawn from the interactions between individuals, and therefore are tempo...
Abstract—Real-world social networks from a variety of do-mains can naturally be modelled as dynamic ...
2010 International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2010), 9-11...
International audienceTime evolution is one important feature of communities in network science. It ...
International audienceSocial network analysis studies relationships between individuals and aims at ...
Real-world social networks from many domains can naturally be modelled as dynamic graphs. However, a...
Real-world social networks from many domains can naturally be modelled as dynamic graphs. However, a...
International audienceTime evolution is one important feature of communities in network science. It ...
Available on http://arxiv.org/abs/1111.2018International audienceCommunity finding algorithms for ne...
Available on http://arxiv.org/abs/1111.2018International audienceCommunity finding algorithms for ne...
Community finding algorithms for networks have recently been extended to dynamic data. Most of these...
With the increasing diversity of social media, the demand for real-time analysis of social networks ...
Community detection is a crucial challenge in social network analysis. This task is important becaus...