A number of centrality measures are available to determine the relative importance of a node in a complex network, and betweenness is prominent among them. However, the existing centrality measures are not adequate in network percolation scenarios (such as during infection transmission in a social network of individuals, spreading of computer viruses on computer networks, or transmission of disease over a network of towns) because they do not account for the changing percolation states of individual nodes. We propose a new measure, percolation centrality, that quantifies relative impact of nodes based on their topological connectivity, as well as their percolation states. The measure can be extended to include random walk based definitions,...
Classic measures of graph centrality capture distinct aspects of node importance, from the local (e....
An important problem in network analysis is understanding how much nodes are important in order to “...
AbstractThe identification of influential or vulnerable nodes in a network is garnering considerable...
A number of centrality measures are available to determine the relative importance of a node in a co...
A number of centrality measures are available to determine the relative importance of a node in a co...
Percolation theory concerns the emergence of connected clusters that percolate through a networked s...
A complex network can be modeled as a graph representing the "who knows who" relationship. In the co...
In complex networks, an attack on a single node can drastically change the communication pattern bet...
Many scholars have tried to address the identification of critical nodes in complex networks from di...
Percolation is an emblematic model to assess the robustness of interconnected systems when some of t...
Methods for determining the percolation threshold usually study the behavior of network ensembles an...
<p>Note that in (a), the nodes in the right side of the network and have high percolation states, ...
The role of an actor in a social network is identified through a set of measures called centrality. ...
International audienceUnderstanding the network structure, and finding out the influential nodes is ...
This paper reports on a simulation study of social networks that investigated how network topology r...
Classic measures of graph centrality capture distinct aspects of node importance, from the local (e....
An important problem in network analysis is understanding how much nodes are important in order to “...
AbstractThe identification of influential or vulnerable nodes in a network is garnering considerable...
A number of centrality measures are available to determine the relative importance of a node in a co...
A number of centrality measures are available to determine the relative importance of a node in a co...
Percolation theory concerns the emergence of connected clusters that percolate through a networked s...
A complex network can be modeled as a graph representing the "who knows who" relationship. In the co...
In complex networks, an attack on a single node can drastically change the communication pattern bet...
Many scholars have tried to address the identification of critical nodes in complex networks from di...
Percolation is an emblematic model to assess the robustness of interconnected systems when some of t...
Methods for determining the percolation threshold usually study the behavior of network ensembles an...
<p>Note that in (a), the nodes in the right side of the network and have high percolation states, ...
The role of an actor in a social network is identified through a set of measures called centrality. ...
International audienceUnderstanding the network structure, and finding out the influential nodes is ...
This paper reports on a simulation study of social networks that investigated how network topology r...
Classic measures of graph centrality capture distinct aspects of node importance, from the local (e....
An important problem in network analysis is understanding how much nodes are important in order to “...
AbstractThe identification of influential or vulnerable nodes in a network is garnering considerable...