International audienceMany algorithms have been proposed in the last ten years for the discovery of dynamic communities. However, these methods are seldom compared between themselves. In this article, we propose a generator of dynamic graphs with planted evolving community structure, as a benchmark to compare and evaluate such algorithms. Unlike previously proposed benchmarks, it is able to specify any desired evolving community structure through a descriptive language, and then to generate the corresponding progressively evolving network. We empirically evaluate six existing algorithms for dynamic community detection in terms of instantaneous and longitudinal similarity with the planted ground truth, smoothness of dynamic partitions, and s...
Abstract—Most real-world social networks are inherently dynamic and composed of communities that are...
The widespread usage of the Web and later of the Web 2.0 for social interactions has stimulated scho...
Available on http://arxiv.org/abs/1111.2018International audienceCommunity finding algorithms for ne...
Community discovery has emerged during the last decade as one of the most challenging problems in so...
VK: Fortunato, S.; Multiplex; TRITONDetecting the time evolution of the community structure of netwo...
International audienceSocial networks are usually analyzed and mined without taking into account the...
International audienceSeveral research studies have shown that Complex Networks modeling real-world ...
The file attached to this record is the author's final peer reviewed version.Detecting communities i...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
With the increasing diversity of social media, the demand for real-time analysis of social networks ...
Real-world social networks from many domains can naturally be modelled as dynamic graphs. However, a...
Overlapping community detection has already become an interesting problem in data mining and also a ...
Abstract. Community detection is an important tool for analyzing the social graph of mobile phone us...
Abstract—Real-world social networks from a variety of do-mains can naturally be modelled as dynamic ...
Most real-world social networks are inherently dynamic and composed of communities that are constant...
Abstract—Most real-world social networks are inherently dynamic and composed of communities that are...
The widespread usage of the Web and later of the Web 2.0 for social interactions has stimulated scho...
Available on http://arxiv.org/abs/1111.2018International audienceCommunity finding algorithms for ne...
Community discovery has emerged during the last decade as one of the most challenging problems in so...
VK: Fortunato, S.; Multiplex; TRITONDetecting the time evolution of the community structure of netwo...
International audienceSocial networks are usually analyzed and mined without taking into account the...
International audienceSeveral research studies have shown that Complex Networks modeling real-world ...
The file attached to this record is the author's final peer reviewed version.Detecting communities i...
AbstractData that encompasses relationships is represented by a graph of interconnected nodes. Socia...
With the increasing diversity of social media, the demand for real-time analysis of social networks ...
Real-world social networks from many domains can naturally be modelled as dynamic graphs. However, a...
Overlapping community detection has already become an interesting problem in data mining and also a ...
Abstract. Community detection is an important tool for analyzing the social graph of mobile phone us...
Abstract—Real-world social networks from a variety of do-mains can naturally be modelled as dynamic ...
Most real-world social networks are inherently dynamic and composed of communities that are constant...
Abstract—Most real-world social networks are inherently dynamic and composed of communities that are...
The widespread usage of the Web and later of the Web 2.0 for social interactions has stimulated scho...
Available on http://arxiv.org/abs/1111.2018International audienceCommunity finding algorithms for ne...