We consider a broad class of walk-based, parameterized node centrality measures for network analysis. These measures are expressed in terms of functions of the adjacency matrix and generalize various well-known centrality indices, including Katz and subgraph centralities. We show that the parameter can be "tuned" to interpolate between degree and eigenvector centralities, which appear as limiting cases. Our analysis helps explain certain correlations often observed between the rankings obtained using different centrality measures and provides some guidance for the tuning of parameters. We also highlight the roles played by the spectral gap of the adjacency matrix and by the number of triangles in the network. Our analysis covers both undire...
In recent decades, a number of centrality metrics describing network properties of nodes have been p...
We propose a non-linear relationship between two of the most important measures of centrality in a n...
Living systems are associated with Social networks — networks made up of nodes, some of which may be...
Complex networks are characterized by heterogeneous distributions of the degree of nodes, which prod...
We describe a complete theory for walk-based centrality indices in complex networks defined in terms...
We derive new, exact expressions for network centrality vectors associated with classical Watts–Stro...
The relative importance of nodes in a network can be quantified via functions of the adjacency matr...
AbstractWe will analyze several centrality measures by giving a general framework that includes the ...
Centrality is widely used to measure which nodes are important in a network. In recent decades, nume...
The notions of subgraph centrality and communicability, based on the exponential of the adjacency ma...
An important problem in network analysis is understanding how much nodes are important in order to \...
We define several novel centrality metrics: the high-order degree and combined degree of undirected ...
In this paper, we empirically investigate correlations among four centrality measures, originated fr...
In this paper, we seek to find a computationally light centrality metric that could serve as an alte...
International audienceWe show that prominent centrality measures in network analysis are all based o...
In recent decades, a number of centrality metrics describing network properties of nodes have been p...
We propose a non-linear relationship between two of the most important measures of centrality in a n...
Living systems are associated with Social networks — networks made up of nodes, some of which may be...
Complex networks are characterized by heterogeneous distributions of the degree of nodes, which prod...
We describe a complete theory for walk-based centrality indices in complex networks defined in terms...
We derive new, exact expressions for network centrality vectors associated with classical Watts–Stro...
The relative importance of nodes in a network can be quantified via functions of the adjacency matr...
AbstractWe will analyze several centrality measures by giving a general framework that includes the ...
Centrality is widely used to measure which nodes are important in a network. In recent decades, nume...
The notions of subgraph centrality and communicability, based on the exponential of the adjacency ma...
An important problem in network analysis is understanding how much nodes are important in order to \...
We define several novel centrality metrics: the high-order degree and combined degree of undirected ...
In this paper, we empirically investigate correlations among four centrality measures, originated fr...
In this paper, we seek to find a computationally light centrality metric that could serve as an alte...
International audienceWe show that prominent centrality measures in network analysis are all based o...
In recent decades, a number of centrality metrics describing network properties of nodes have been p...
We propose a non-linear relationship between two of the most important measures of centrality in a n...
Living systems are associated with Social networks — networks made up of nodes, some of which may be...