Within graph theory and network analysis, centrality of a vertex measures the relative importance of a vertex within a graph. The centrality plays key role in network analysis and has been widely studied using different methods. Inspired by the idea of vertex centrality, a novel centrality guided clustering (CGC) is proposed in this paper. Different from traditional clustering methods which usually choose the initial center of a cluster randomly, the CGC clustering algorithm starts from a “LEADER”—a vertex with the highest centrality score—and a new “member” is added into the same cluster as the “LEADER” when some criterion is satisfied. The CGC algorithm also supports overlapping membership. Experiments on three benchmark social network da...
In order to understand and represent the importance of nodes within networks better, most of the stu...
Social network comprise of social entities that are linked together with ties. The abundant use of s...
In order to understand and represent the importance of nodes within networks better, most of the stu...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Within graph theory and network analysis, centrality of a vertex measures the relative importance of...
The structure of many complex networks includes edge directionality and weights on top of their topo...
Graphs can be found in almost every part of modern life: social networks, road networks, biology, an...
The concept of centrality is often invoked in social network analysis, and diverse indices have been...
The concept of centrality is often invoked in social network analysis, and diverse indices have been...
The concept of centrality is often invoked in social network analysis, and diverse indices have been...
The centrality of an edge in a graph is proposed to be the degree of sensitivity of a graph distance...
This paper proposes a new social network classification method by comparing statistics of their cent...
This paper proposes a new social network classification method by comparing statistics of their cent...
Identifying the seed nodes in networks is an important task for understanding the dynamics of inform...
Complex networks represent an extensive variety of systems in nature and human interactions. Network...
In order to understand and represent the importance of nodes within networks better, most of the stu...
Social network comprise of social entities that are linked together with ties. The abundant use of s...
In order to understand and represent the importance of nodes within networks better, most of the stu...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Within graph theory and network analysis, centrality of a vertex measures the relative importance of...
The structure of many complex networks includes edge directionality and weights on top of their topo...
Graphs can be found in almost every part of modern life: social networks, road networks, biology, an...
The concept of centrality is often invoked in social network analysis, and diverse indices have been...
The concept of centrality is often invoked in social network analysis, and diverse indices have been...
The concept of centrality is often invoked in social network analysis, and diverse indices have been...
The centrality of an edge in a graph is proposed to be the degree of sensitivity of a graph distance...
This paper proposes a new social network classification method by comparing statistics of their cent...
This paper proposes a new social network classification method by comparing statistics of their cent...
Identifying the seed nodes in networks is an important task for understanding the dynamics of inform...
Complex networks represent an extensive variety of systems in nature and human interactions. Network...
In order to understand and represent the importance of nodes within networks better, most of the stu...
Social network comprise of social entities that are linked together with ties. The abundant use of s...
In order to understand and represent the importance of nodes within networks better, most of the stu...