Abstract—Community detection has become an extremely active area of research in recent years, with researchers proposing various new metrics and algorithms to address the problem. Recently, the Weighted Community Clustering (WCC) metric was proposed as a novel way to judge the quality of a community partitioning based on the distribution of triangles in the graph, and was demonstrated to yield superior results over other commonly used metrics like modularity. The same authors later presented a parallel algorithm for optimizing WCC on large graphs. In this paper, we propose a new distributed, vertex-centric algorithm for community detection using the WCC metric. Results are presented that demonstrate the algorithm’s performance and scalabili...
Community detection in a complex network is an important problem of much interest in recent years. I...
The modern science of networks has made significant contributions to our understanding of complex re...
ABSTRACT Community detection from complex information networks draws much attention from both acade...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Community detection has arisen as one of the most relevant topics in the field of graph data mining ...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Community structure is observed in many real-world networks in fields ranging from social networking...
Abstract. Tackling the current volume of graph-structured data requires parallel tools. We extend ou...
Complex networks analysis is a very popular topic in computer science. Unfortunately this networks, ...
AbstractThis study mainly focuses on the methodology of weighted graph clustering with the purpose o...
This article presents an efficient hierarchical clustering algo-rithm that solves the problem of cor...
Graph clustering, or community detection, is the task of identifying groups of closely related objec...
Abstract. Tackling the current volume of graph-structured data re-quires parallel tools. We extend o...
Abstract—The amount of graph-structured data has recently experienced an enormous growth in many app...
Community detection in a complex network is an important problem of much interest in recent years. I...
The modern science of networks has made significant contributions to our understanding of complex re...
ABSTRACT Community detection from complex information networks draws much attention from both acade...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Community detection has arisen as one of the most relevant topics in the field of graph data mining ...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Community structure is observed in many real-world networks in fields ranging from social networking...
Abstract. Tackling the current volume of graph-structured data requires parallel tools. We extend ou...
Complex networks analysis is a very popular topic in computer science. Unfortunately this networks, ...
AbstractThis study mainly focuses on the methodology of weighted graph clustering with the purpose o...
This article presents an efficient hierarchical clustering algo-rithm that solves the problem of cor...
Graph clustering, or community detection, is the task of identifying groups of closely related objec...
Abstract. Tackling the current volume of graph-structured data re-quires parallel tools. We extend o...
Abstract—The amount of graph-structured data has recently experienced an enormous growth in many app...
Community detection in a complex network is an important problem of much interest in recent years. I...
The modern science of networks has made significant contributions to our understanding of complex re...
ABSTRACT Community detection from complex information networks draws much attention from both acade...