anonymous submission We present a new approach to the problem of finding communities: a community is a subset of actors who induce a locally optimal subgraph with respect to a density function defined on subsets of actors. Two different subsets with significant overlap can both be locally optimal, and in this way we may obtain overlapping communities. We design, implement, and test two novel efficient algorithms, RaRe and IS, which find communities according to our definition. These algorithms are shown to work effectively on both synthetic and real-world graphs, and also are shown to outperform a well-known k-neighborhood heuristic
Finding decompositions of a graph into a family of clusters is crucial to understanding its underlyi...
This article presents an efficient hierarchical clustering algo-rithm that solves the problem of cor...
Abstract-One of the fundamental questions in the study of complex networks is community detection, i...
International audienceDetecting and analyzing dense subgroups or communities from social and informa...
International audienceDiscovering the latent community structure is crucial to understanding the fea...
International audienceDiscovering the latent community structure is cru- cial to understanding the f...
"In this master thesis we present a novel approach to finding communities in large graphs. Our metho...
Community detection is one of the most investigated problems in the field of complex networks. Altho...
International audienceDiscovering the hidden community structure is a fundamental problem in network...
Abstract. There is a surge of community detection on complex network analysis in recent years, since...
International audienceOverlapping community structure has attracted much interest in recent years si...
Community detection aims to find dense subgraphs in a network. We consider the problem of finding a ...
International audienceIn this paper, we propose a new approach to detect overlapping communities in ...
Agglomerative clustering is a well established strategy for identifying communities in networks. Com...
Finding decompositions of a graph into a family of clusters is crucial to understanding its underlyi...
This article presents an efficient hierarchical clustering algo-rithm that solves the problem of cor...
Abstract-One of the fundamental questions in the study of complex networks is community detection, i...
International audienceDetecting and analyzing dense subgroups or communities from social and informa...
International audienceDiscovering the latent community structure is crucial to understanding the fea...
International audienceDiscovering the latent community structure is cru- cial to understanding the f...
"In this master thesis we present a novel approach to finding communities in large graphs. Our metho...
Community detection is one of the most investigated problems in the field of complex networks. Altho...
International audienceDiscovering the hidden community structure is a fundamental problem in network...
Abstract. There is a surge of community detection on complex network analysis in recent years, since...
International audienceOverlapping community structure has attracted much interest in recent years si...
Community detection aims to find dense subgraphs in a network. We consider the problem of finding a ...
International audienceIn this paper, we propose a new approach to detect overlapping communities in ...
Agglomerative clustering is a well established strategy for identifying communities in networks. Com...
Finding decompositions of a graph into a family of clusters is crucial to understanding its underlyi...
This article presents an efficient hierarchical clustering algo-rithm that solves the problem of cor...
Abstract-One of the fundamental questions in the study of complex networks is community detection, i...