A Mutual Selection Model for Weighted Networks

Abstract

For most networks, the connection between two nodes is the result of their mutual affinity and attachment. In this paper, we propose a mutual selection model to characterize the weighted networks. By introducing a general mechanism of mutual selection, the model can produce power-law distributions of degree, weight and strength, as confirmed in many real networks. Moreover, we also obtained the nontrivial clustering coefficient C, degree assortativity coefficient r and degree-strength correlation, depending on a model parameter m. These results are supported by present empirical evidences. Studying the degree-dependent average clustering coefficient C(k) and the degree-dependent average nearest neighbors' degree knn(k) also provide us with a better description of the hierarchies and organizational architecture of weighted networks.

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