In the study of small and large networks it is customary to perform a simple random walk where the random walker jumps from one node to one of its neighbors with uniform probability. The properties of this random walk are intimately related to the combinatorial properties of the network. In this paper we propose to use the Ruelle-Bowens random walk instead, whose probability transitions are chosen in order to maximize the entropy rate of the walk on an unweighted graph. If the graph is weighted, then a free energy is optimized instead of the entropy rate. Specifically, we introduce a centrality measure for large networks, which is the stationary distribution attained by the Ruelle-Bowens random walk; we name it entropy rank. We introduce a ...
We propose a new centrality measure, called the Random Walk Decay centrality. While most centralitie...
Link prediction is a fundamental problem in social network analysis. The key technique in unsupervis...
A complex network can be modeled as a graph representing the "who knows who" relationship. In the co...
Nodes can be ranked according to their relative importance within the network. Ranking algorithms ba...
Many scholars have tried to address the identification of critical nodes in complex networks from di...
AbstractA random walk can be used as a centrality measure of a directed graph. However, if the graph...
Measuring centrality has recently attracted increasing attention, with algorithms ranging from those...
Measurement of graph centrality provides us with an indication of the importance or popularity of ea...
Centrality is one of the most studied concepts in network analysis. Despite an abundance of methods ...
6 pages, 1 figure6 pages, 1 figure6 pages, 1 figureA simple strategy to explore a network is to use ...
89.75.Hc Networks and genealogical trees, 05.40.Fb Random walks and Levy flights, 89.20.-a Interdisc...
We seek to identify one or more computationally light-weight centrality metrics that have a high cor...
Complex networks are characterized by heterogeneous distributions of the degree of nodes, which prod...
The heterogeneous nature of a complex network determines the roles of each node in the network that ...
Abstract—In recent years complex networks have gained in-creasing attention in different fields of s...
We propose a new centrality measure, called the Random Walk Decay centrality. While most centralitie...
Link prediction is a fundamental problem in social network analysis. The key technique in unsupervis...
A complex network can be modeled as a graph representing the "who knows who" relationship. In the co...
Nodes can be ranked according to their relative importance within the network. Ranking algorithms ba...
Many scholars have tried to address the identification of critical nodes in complex networks from di...
AbstractA random walk can be used as a centrality measure of a directed graph. However, if the graph...
Measuring centrality has recently attracted increasing attention, with algorithms ranging from those...
Measurement of graph centrality provides us with an indication of the importance or popularity of ea...
Centrality is one of the most studied concepts in network analysis. Despite an abundance of methods ...
6 pages, 1 figure6 pages, 1 figure6 pages, 1 figureA simple strategy to explore a network is to use ...
89.75.Hc Networks and genealogical trees, 05.40.Fb Random walks and Levy flights, 89.20.-a Interdisc...
We seek to identify one or more computationally light-weight centrality metrics that have a high cor...
Complex networks are characterized by heterogeneous distributions of the degree of nodes, which prod...
The heterogeneous nature of a complex network determines the roles of each node in the network that ...
Abstract—In recent years complex networks have gained in-creasing attention in different fields of s...
We propose a new centrality measure, called the Random Walk Decay centrality. While most centralitie...
Link prediction is a fundamental problem in social network analysis. The key technique in unsupervis...
A complex network can be modeled as a graph representing the "who knows who" relationship. In the co...