Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex network analysis. It is computationally-expensive to exactly determine betweenness; currently the fastest-known algorithm by Brandes requires O(nm) time for unweighted graphs and O(nm + n 2 log n) time for weighted graphs, where n is the number of vertices and m is the number of edges in the network. These are also the worstcase time bounds for computing the betweenness score of a single vertex. In this paper, we present a novel approximation algorithm for computing betweenness centrality of a given vertex, for both weighted and unweighted graphs. Our approximation algorithm is based on an adaptive sampling technique that significantly reduces the ...
Betweenness centrality (BC) is a measure of the importance of a vertex in a graph, which is defined ...
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 ...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Nowadays, graph analytics are widely used in many research fields and applications. One important an...
International audienceWe present KADABRA, a new algorithm to approximate betweenness centrality in d...
The betweenness centrality index is essential in the analysis of social networks, but costly to comp...
International audienceWe present KADABRA, a new algorithm to approximate betweenness centrality in d...
International audienceWe present KADABRA, a new algorithm to approximate betweenness centrality in d...
Estimating the importance or centrality of the nodes in large networks has recently attracted increa...
Graphs (networks) are an important tool to model data in different domains.Real-world graphs are usu...
Betweenness centrality - measuring how many shortest paths pass through a vertex - is one of the mos...
Betweenness centrality (BC) is a measure of the importance of a vertex in a graph, which is defined ...
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 ...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Nowadays, graph analytics are widely used in many research fields and applications. One important an...
International audienceWe present KADABRA, a new algorithm to approximate betweenness centrality in d...
The betweenness centrality index is essential in the analysis of social networks, but costly to comp...
International audienceWe present KADABRA, a new algorithm to approximate betweenness centrality in d...
International audienceWe present KADABRA, a new algorithm to approximate betweenness centrality in d...
Estimating the importance or centrality of the nodes in large networks has recently attracted increa...
Graphs (networks) are an important tool to model data in different domains.Real-world graphs are usu...
Betweenness centrality - measuring how many shortest paths pass through a vertex - is one of the mos...
Betweenness centrality (BC) is a measure of the importance of a vertex in a graph, which is defined ...
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 ...