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CAAN
2004
Springer

Bipartite Graphs as Models of Complex Networks

13 years 10 months ago
Bipartite Graphs as Models of Complex Networks
It appeared recently that the classical random graph model used to represent real-world complex networks does not capture their main properties. Since then, various attempts have been made to provide accurate models. We study here the first model which achieves the following challenges: it produces graphs which have the three main wanted properties (clustering, degree distribution, average distance), it is based on some real-world observations, and it is sufficiently simple to make it possible to prove its main properties. This model consists in sampling a random bipartite graph with prescribed degree distribution. Indeed, we show that any complex network can be viewed as a bipartite graph with some specific characteristics, and that its main properties can be viewed as consequences of this underlying structure. We also propose a growing model based on this observation.
Jean-Loup Guillaume, Matthieu Latapy
Added 01 Jul 2010
Updated 01 Jul 2010
Type Conference
Year 2004
Where CAAN
Authors Jean-Loup Guillaume, Matthieu Latapy
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