Community detection has arisen as one of the most relevant topics in the field of graph mining, principally for its applica-tions in domains such as social or biological networks anal-ysis. Different community detection algorithms have been proposed during the last decade, approaching the problem from different perspectives. However, existing algorithms are, in general, based on complex and expensive computa-tions, making them unsuitable for large graphs with millions of vertices and edges such as those usually found in the real world. In this paper, we propose a novel disjoint community detection algorithm called Scalable Community Detection (SCD). By combining different strategies, SCD partitions the graph by maximizing the Weighted Commu...
Recent advancements in machine learning algorithms have transformed the data analytics domain and pr...
Recent advancements in machine learning algorithms have transformed the data analytics domain and pr...
Many applications can be modeled intuitively as graphs, where nodes represent the entities and the e...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Community structure is observed in many real-world networks in fields ranging from social networking...
Community detection has arisen as one of the most relevant topics in the field of graph data mining ...
Community detection is a hot topic for researchers in the fields including graph theory, social netw...
Abstract—Community detection has become an extremely active area of research in recent years, with r...
Abstract. Tackling the current volume of graph-structured data re-quires parallel tools. We extend o...
Abstract. Tackling the current volume of graph-structured data requires parallel tools. We extend ou...
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...
Complex networks analysis is a very popular topic in computer science. Unfortunately this networks, ...
Finding community structures in social networks is considered to be a challenging task as many of th...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Recent advancements in machine learning algorithms have transformed the data analytics domain and pr...
Recent advancements in machine learning algorithms have transformed the data analytics domain and pr...
Many applications can be modeled intuitively as graphs, where nodes represent the entities and the e...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Community structure is observed in many real-world networks in fields ranging from social networking...
Community detection has arisen as one of the most relevant topics in the field of graph data mining ...
Community detection is a hot topic for researchers in the fields including graph theory, social netw...
Abstract—Community detection has become an extremely active area of research in recent years, with r...
Abstract. Tackling the current volume of graph-structured data re-quires parallel tools. We extend o...
Abstract. Tackling the current volume of graph-structured data requires parallel tools. We extend ou...
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...
Complex networks analysis is a very popular topic in computer science. Unfortunately this networks, ...
Finding community structures in social networks is considered to be a challenging task as many of th...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Recent advancements in machine learning algorithms have transformed the data analytics domain and pr...
Recent advancements in machine learning algorithms have transformed the data analytics domain and pr...
Many applications can be modeled intuitively as graphs, where nodes represent the entities and the e...