Classification of Complex Networks Based on Topological Properties - Archive ouverte HAL Accéder directement au contenu
Communication Dans Un Congrès Année : 2013

Classification of Complex Networks Based on Topological Properties

Burcu Kantarci
  • Fonction : Auteur
Vincent Labatut

Résumé

Complex networks are a powerful modeling tool, allowing the study of countless real-world systems. They have been used in very different domains such as computer science, biology, sociology, management, etc. Authors have been trying to characterize them using various measures such as degree distribution, transitivity or average distance. Their goal is to detect certain properties such as the small-world or scale-free properties. Previous works have shown some of these properties are present in many different systems, while others are characteristic of certain types of systems only. However, each one of these studies generally focuses on a very small number of topological measures and networks. In this work, we aim at using a more systematic approach. We first constitute a dataset of 152 publicly available networks, spanning over 7 different domains. We then process 14 different topological measures to characterize them in the most possible complete way. Finally, we apply standard data mining tools to analyze these data. A cluster analysis reveals it is possible to obtain two significantly distinct clusters of networks, corresponding roughly to a bisection of the domains modeled by the networks. On these data, the most discriminant measures are density, modularity, average degree and transitivity, and at a lesser extent, closeness and edgebetweenness centralities.Abstract--Complex networks are a powerful modeling tool, allowing the study of countless real-world systems. They have been used in very different domains such as computer science, biology, sociology, management, etc. Authors have been trying to characterize them using various measures such as degree distribution, transitivity or average distance. Their goal is to detect certain properties such as the small-world or scale-free properties. Previous works have shown some of these properties are present in many different systems, while others are characteristic of certain types of systems only. However, each one of these studies generally focuses on a very small number of topological measures and networks. In this work, we aim at using a more systematic approach. We first constitute a dataset of 152 publicly available networks, spanning over 7 different domains. We then process 14 different topological measures to characterize them in the most possible complete way. Finally, we apply standard data mining tools to analyze these data. A cluster analysis reveals it is possible to obtain two significantly distinct clusters of networks, corresponding roughly to a bisection of the domains modeled by the networks. On these data, the most discriminant measures are density, modularity, average degree and transitivity, and at a lesser extent, closeness and edgebetweenness centralities.
Fichier principal
Vignette du fichier
kantarci2013a.pdf (633.87 Ko) Télécharger le fichier
presentation.pdf (262.48 Ko) Télécharger le fichier
Origine : Fichiers produits par l'(les) auteur(s)

Dates et versions

hal-00940688 , version 1 (02-02-2014)

Identifiants

Citer

Burcu Kantarci, Vincent Labatut. Classification of Complex Networks Based on Topological Properties. 3rd Conference on Social Computing and its Applications, Sep 2013, Karlsruhe, Germany. pp.297-304, ⟨10.1109/CGC.2013.54⟩. ⟨hal-00940688⟩
66 Consultations
951 Téléchargements

Altmetric

Partager

Gmail Facebook X LinkedIn More