| Literature DB >> 25725647 |
Sadegh Aliakbary1, Sadegh Motallebi1, Sina Rashidian1, Jafar Habibi1, Ali Movaghar1.
Abstract
Real networks show nontrivial topological properties such as community structure and long-tail degree distribution. Moreover, many network analysis applications are based on topological comparison of complex networks. Classification and clustering of networks, model selection, and anomaly detection are just some applications of network comparison. In these applications, an effective similarity metric is needed which, given two complex networks of possibly different sizes, evaluates the amount of similarity between the structural features of the two networks. Traditional graph comparison approaches, such as isomorphism-based methods, are not only too time consuming but also inappropriate to compare networks with different sizes. In this paper, we propose an intelligent method based on the genetic algorithms for integrating, selecting, and weighting the network features in order to develop an effective similarity measure for complex networks. The proposed similarity metric outperforms state of the art methods with respect to different evaluation criteria.Entities:
Year: 2015 PMID: 25725647 DOI: 10.1063/1.4908605
Source DB: PubMed Journal: Chaos ISSN: 1054-1500 Impact factor: 3.642