Variety of real-life structures can be simplified by a graph. Such simplification emphasizes the structure represented by vertices connected via edges. A common method for the analysis of the vertices importance in a network is betweenness centrality. The centrality is computed using the information about the shortest paths that exist in a graph. This approach puts the importance on the edges that connect the vertices. However, not all vertices are equal. Some of them might be more important than others or have more significant influence on the behavior of the network. Therefore, we introduce the modification of the betweenness centrality algorithm that takes into account the vertex importance. This approach allows the further refinement of...
Centrality measures describe structural properties of nodes (and edges) in a network. Betweenness ce...
Betweenness centrality quantifies the importance of a vertex for the information flow in a network. ...
We propose and discuss a new centrality index for urban street patterns represented as networks in g...
Betweenness is a good measure of the centrality of a vertex in a graph modeling social or communicat...
In network analysis, it is useful to identify important vertices in a network. Based on the varying ...
Betweenness centrality (BC) is a measure of the importance of a vertex in a graph, which is defined ...
Quantitatively assessing the importance or criticality of each link in a network is of practical val...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
Nowadays, graph analytics are widely used in many research fields and applications. One important an...
WOS: 000461317600020Centrality is a commonly used measure in network analysis to rank the relative i...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Abstract—Centrality measures, erstwhile popular amongst the sociologists and psychologists, has seen...
Betweenness centrality of vertices is essential in the analysis of social and information networks, ...
The infrastructure of critical networks is important for human life. Vulnerability analysis of criti...
Centrality measures describe structural properties of nodes (and edges) in a network. Betweenness ce...
Betweenness centrality quantifies the importance of a vertex for the information flow in a network. ...
We propose and discuss a new centrality index for urban street patterns represented as networks in g...
Betweenness is a good measure of the centrality of a vertex in a graph modeling social or communicat...
In network analysis, it is useful to identify important vertices in a network. Based on the varying ...
Betweenness centrality (BC) is a measure of the importance of a vertex in a graph, which is defined ...
Quantitatively assessing the importance or criticality of each link in a network is of practical val...
Abstract. Betweenness is a centrality measure based on shortest paths, widely used in complex networ...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
Nowadays, graph analytics are widely used in many research fields and applications. One important an...
WOS: 000461317600020Centrality is a commonly used measure in network analysis to rank the relative i...
Centrality indices are an important tool in network analysis, and many of them are derived from the ...
Abstract—Centrality measures, erstwhile popular amongst the sociologists and psychologists, has seen...
Betweenness centrality of vertices is essential in the analysis of social and information networks, ...
The infrastructure of critical networks is important for human life. Vulnerability analysis of criti...
Centrality measures describe structural properties of nodes (and edges) in a network. Betweenness ce...
Betweenness centrality quantifies the importance of a vertex for the information flow in a network. ...
We propose and discuss a new centrality index for urban street patterns represented as networks in g...