We study the h Hirsch index as a local node centrality measure for complex networks in general. The h index is compared with the Degree centrality (a local measure), the Betweenness and Eigenvector centralities (two non-local measures) in the case of a biological network (Yeast interaction protein-protein network) and a linguistic network (Moby Thesaurus II). In both networks, the Hirsch index has poor correlation with Betweenness centrality but correlates well with Eigenvector centrality, specially for the more important nodes that are relevant for ranking purposes, say in Search Engine Optimization. In the thesaurus network, the h index seems even to outperform the Eigenvector centrality measure as evaluated by simple linguistic criteria....
We define several novel centrality metrics: the high-order degree and combined degree of undirected ...
In order to understand and represent the importance of nodes within networks better, most of the stu...
Studies in Computational Intelligence book series (SCI, volume 689)Centrality measures are used in n...
The generalized H(n) Hirsch index of order n has been recently introduced and shown to interpolate b...
AbstractWe study the lobby index (l-index for short) as a local node centrality measure for complex ...
We study the lobby index ( l for short) as a local node centrality measure for complex networks. The...
Hirsch-type indices are devised for characterizing networks and network elements. Their actual use i...
Recent developments in network theory have allowed for the study of the structure and function of th...
Complex networks are characterized by heterogeneous distributions of the degree of nodes, which prod...
Given a social network, which of its nodes are more central? This question has been asked many times...
We consider a broad class of walk-based, parameterized node centrality measures for network analysis...
Living systems are associated with Social networks — networks made up of nodes, some of which may be...
Studies in Computational Intelligence, Vol 424 entitled: Complex NetworksTechnical Session 1: Networ...
A strategy for zooming in and out the topological environment of a node in a complex network is deve...
The structural analysis of biological networks includes the ranking of the vertices based on the con...
We define several novel centrality metrics: the high-order degree and combined degree of undirected ...
In order to understand and represent the importance of nodes within networks better, most of the stu...
Studies in Computational Intelligence book series (SCI, volume 689)Centrality measures are used in n...
The generalized H(n) Hirsch index of order n has been recently introduced and shown to interpolate b...
AbstractWe study the lobby index (l-index for short) as a local node centrality measure for complex ...
We study the lobby index ( l for short) as a local node centrality measure for complex networks. The...
Hirsch-type indices are devised for characterizing networks and network elements. Their actual use i...
Recent developments in network theory have allowed for the study of the structure and function of th...
Complex networks are characterized by heterogeneous distributions of the degree of nodes, which prod...
Given a social network, which of its nodes are more central? This question has been asked many times...
We consider a broad class of walk-based, parameterized node centrality measures for network analysis...
Living systems are associated with Social networks — networks made up of nodes, some of which may be...
Studies in Computational Intelligence, Vol 424 entitled: Complex NetworksTechnical Session 1: Networ...
A strategy for zooming in and out the topological environment of a node in a complex network is deve...
The structural analysis of biological networks includes the ranking of the vertices based on the con...
We define several novel centrality metrics: the high-order degree and combined degree of undirected ...
In order to understand and represent the importance of nodes within networks better, most of the stu...
Studies in Computational Intelligence book series (SCI, volume 689)Centrality measures are used in n...