English

Concentric Characterization and Classification of Complex Network Nodes: Theory and Application to Institutional Collaboration

Physics and Society 2012-03-22 v1 Data Analysis, Statistics and Probability

Abstract

Differently from theoretical scale-free networks, most of real networks present multi-scale behavior with nodes structured in different types of functional groups and communities. While the majority of approaches for classification of nodes in a complex network has relied on local measurements of the topology/connectivity around each node, valuable information about node functionality can be obtained by Concentric (or Hierarchical) Measurements. In this paper we explore the possibility of using a set of Concentric Measurements and agglomerative clustering methods in order to obtain a set of functional groups of nodes. Concentric clustering coefficient and convergence ratio are chosen as segregation parameters for the analysis of a institutional collaboration network including various known communities (departments of the University of S\~ao Paulo). A dendogram is obtained and the results are analyzed and discussed. Among the interesting obtained findings, we emphasize the scale-free nature of the obtained network, as well as the identification of different patterns of authorship emerging from different areas (e.g. human and exact sciences). Another interesting result concerns the relatively uniform distribution of hubs along the concentric levels, contrariwise to the non-uniform pattern found in theoretical scale free networks such as the BA model.

Keywords

Cite

@article{arxiv.0710.1857,
  title  = {Concentric Characterization and Classification of Complex Network Nodes: Theory and Application to Institutional Collaboration},
  author = {Filipi Nascimento Silva and Marilza A. Rodrigues and Luciano da Fontoura Costa},
  journal= {arXiv preprint arXiv:0710.1857},
  year   = {2012}
}

Comments

15 pages, 13 figures

R2 v1 2026-06-21T09:29:18.469Z