Real world complex networks may contain hidden structures called communities or groups. They are composed of nodes being tightly connected within those groups and weakly connected between them. Detecting communities has numerous applications in different sciences such as biology, social network analysis, economics and computer science. Since there is no universally accepted definition of community, it is a complicated task to distinguish community detection algorithms as each of them use a different approach, resulting in different outcomes. Thus large number of articles are devoted to investigating community detection algorithms, implementation on both real world and artificial data sets and development of evaluation measures. In this art...
International audienceCommunity structure is of paramount importance for the understanding of comple...
International audienceCommunity detection emerged as an important exploratory task in complex networ...
Empirical analysis of network data has been widely conducted for understanding and predicting the st...
International audienceReal world complex networks may contain hidden structures called communities o...
Abstract. Community detection is a very active field in complex networks analysis, consisting in ide...
International audienceCommunity detection is a very active field in complex networks analysis, consi...
International audienceCommunity detection is a very active field in complex networks analysis, consi...
The existence of community structures in networks is not unusual, including in the domains of sociol...
The existence of community structures in networks is not unusual, including in the domains of sociol...
Many community detection algorithms have been developed to uncover the mesoscopic properties of comp...
Empirical analysis of network data has been widely conducted for understanding and predicting the st...
The rise of the Internet has brought people closer. The number of interactions between people across...
The characterization of network community structure has profound implications in several scientific ...
International audienceCommunity detection emerged as an important exploratory task in complex networ...
International audienceCommunity detection emerged as an important exploratory task in complex networ...
International audienceCommunity structure is of paramount importance for the understanding of comple...
International audienceCommunity detection emerged as an important exploratory task in complex networ...
Empirical analysis of network data has been widely conducted for understanding and predicting the st...
International audienceReal world complex networks may contain hidden structures called communities o...
Abstract. Community detection is a very active field in complex networks analysis, consisting in ide...
International audienceCommunity detection is a very active field in complex networks analysis, consi...
International audienceCommunity detection is a very active field in complex networks analysis, consi...
The existence of community structures in networks is not unusual, including in the domains of sociol...
The existence of community structures in networks is not unusual, including in the domains of sociol...
Many community detection algorithms have been developed to uncover the mesoscopic properties of comp...
Empirical analysis of network data has been widely conducted for understanding and predicting the st...
The rise of the Internet has brought people closer. The number of interactions between people across...
The characterization of network community structure has profound implications in several scientific ...
International audienceCommunity detection emerged as an important exploratory task in complex networ...
International audienceCommunity detection emerged as an important exploratory task in complex networ...
International audienceCommunity structure is of paramount importance for the understanding of comple...
International audienceCommunity detection emerged as an important exploratory task in complex networ...
Empirical analysis of network data has been widely conducted for understanding and predicting the st...