Community identification is the high common and extending field of interest in social and real-time network applications. In recent years, many community detection methods have been developed. This paper describes various community discovery methods such as InfoMap, Clique Guided, Louvain, Newman and Eigen Vector that have already been developed and also compares the experimental results of those proposed techniques. The proposed work in this paper experiments these community mining algorithms on the two real-world datasets Twitter and DBLP (Computer Science Bibliography) networks. The identified communities by all the community mining algorithms for these two data sets are described in this proposed work. The quality of the derived communi...
A precise definition of what constitutes a community in networks has remained elusive. Consequently,...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
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...
A social network can be defined as a set of people connected by a set of people. Social network anal...
Social networks usually display a hierarchy of communities and it is the task of community detection...
Within the broad area of social network analysis research, the study of communities has become an im...
We propose an efficient and novel approach for discovering communities in real-world random networks...
Community detection aims to discover cohesive groups in which people connect with each other closely...
The community detection is an interesting and highly focused area in the analysis of complex network...
Abstract. Community detection is a very active field in complex networks analysis, consisting in ide...
We propose an efficient and novel approach for discovering communities in real-world random networks...
This dissertation has its main focus on the development of social network community detection algori...
Social network analysis has undergone arenaissance with the ubiquity and quantity of contentfrom soc...
A precise definition of what constitutes a community in networks has remained elusive. Consequently,...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...
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...
A social network can be defined as a set of people connected by a set of people. Social network anal...
Social networks usually display a hierarchy of communities and it is the task of community detection...
Within the broad area of social network analysis research, the study of communities has become an im...
We propose an efficient and novel approach for discovering communities in real-world random networks...
Community detection aims to discover cohesive groups in which people connect with each other closely...
The community detection is an interesting and highly focused area in the analysis of complex network...
Abstract. Community detection is a very active field in complex networks analysis, consisting in ide...
We propose an efficient and novel approach for discovering communities in real-world random networks...
This dissertation has its main focus on the development of social network community detection algori...
Social network analysis has undergone arenaissance with the ubiquity and quantity of contentfrom soc...
A precise definition of what constitutes a community in networks has remained elusive. Consequently,...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Community detection, the decomposition of a graph into essential building blocks, has been a core re...