Extracting information from multiplex networks
Abstract
Multiplex networks are generalized network structures that are able to describe networks in which the same set of nodes are connected by links that have different connotations. Multiplex networks are ubiquitous since they describe social, financial, engineering, and biological networks as well. Extending our ability to analyze complex networks to multiplex network structures increases greatly the level of information that is possible to extract from big data. For these reasons, characterizing the centrality of nodes in multiplex networks and finding new ways to solve challenging inference problems defined on multiplex networks are fundamental questions of network science. In this paper, we discuss the relevance of the Multiplex PageRank algorithm for measuring the centrality of nodes in multilayer networks and we characterize the utility of the recently introduced indicator function Θ ∼ S for describing their mesoscale organization and community structure. As working examples for studying these measures, we consider three multiplex network datasets coming for social science.
- Publication:
-
Chaos
- Pub Date:
- June 2016
- DOI:
- 10.1063/1.4953161
- arXiv:
- arXiv:1602.08751
- Bibcode:
- 2016Chaos..26f5306I
- Keywords:
-
- Physics - Physics and Society;
- Computer Science - Social and Information Networks
- E-Print:
- 11 pages