Betweenness centrality of vertices is essential in the analysis of social and information networks, and co-betweenness centrality is one of two natural ways to extend it to sets of vertices. Existing algorithms for co-betweenness centrality computation suffer from at least one of the following problems: i) their applicability is limited to special cases like sequences, sets of size two, and ii) they are not efficient in terms of time complexity. In this paper, we present efficient algorithms for co-betweenness centrality computation of any set or sequence of vertices in weighted and unweighted networks. We also develop effective methods for co-betweenness centrality computation of sets and sequences of edges. These results provide a clear a...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Given a set of target nodes S in a graph G we define the betweenness centrality of a node v with res...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...
Betweenness centrality of vertices is essential in the analysis of social and information networks, ...
The betweenness centrality index is essential in the analysis of social networks, but costly to comp...
Abstract. Social networks have demonstrated in the last few years to be a powerful and flexible conc...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
The analysis of network’s centralities has a high-level significance for many real-world application...
The analysis of network’s centralities has a high-level significance for many real-world applicatio...
The analysis of network’s centralities has a high-level significance for many real-world applicatio...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Abstract—Social network analysis (SNA) aims to identify and better determine the relationship amongs...
In network analysis, it is useful to identify important vertices in a network. Based on the varying ...
In network analysis, it is useful to identify important vertices in a network. Based on the varying ...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Given a set of target nodes S in a graph G we define the betweenness centrality of a node v with res...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...
Betweenness centrality of vertices is essential in the analysis of social and information networks, ...
The betweenness centrality index is essential in the analysis of social networks, but costly to comp...
Abstract. Social networks have demonstrated in the last few years to be a powerful and flexible conc...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
The analysis of network’s centralities has a high-level significance for many real-world application...
The analysis of network’s centralities has a high-level significance for many real-world applicatio...
The analysis of network’s centralities has a high-level significance for many real-world applicatio...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Abstract—Social network analysis (SNA) aims to identify and better determine the relationship amongs...
In network analysis, it is useful to identify important vertices in a network. Based on the varying ...
In network analysis, it is useful to identify important vertices in a network. Based on the varying ...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Given a set of target nodes S in a graph G we define the betweenness centrality of a node v with res...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...