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Mobile user forecast and power-law acceleration invariance of scale-free networks 被引量:1

Mobile user forecast and power-law acceleration invariance of scale-free networks
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摘要 This paper studies and predicts the number growth of China's mobile users by using the power-law regression. We find that the number growth of the mobile users follows a power law. Motivated by the data on the evolution of the mobile users, we consider scenarios of self-organization of accelerating growth networks into scale-free structures and propose a directed network model, in which the nodes grow following a power-law acceleration. The expressions for the transient and the stationary average degree distributions are obtained by using the Poisson process. This result shows that the model generates appropriate power-law connectivity distributions. Therefore, we find a power-law acceleration invariance of the scale-free networks. The numerical simulations of the models agree with the analytical results well. This paper studies and predicts the number growth of China's mobile users by using the power-law regression. We find that the number growth of the mobile users follows a power law. Motivated by the data on the evolution of the mobile users, we consider scenarios of self-organization of accelerating growth networks into scale-free structures and propose a directed network model, in which the nodes grow following a power-law acceleration. The expressions for the transient and the stationary average degree distributions are obtained by using the Poisson process. This result shows that the model generates appropriate power-law connectivity distributions. Therefore, we find a power-law acceleration invariance of the scale-free networks. The numerical simulations of the models agree with the analytical results well.
出处 《Chinese Physics B》 SCIE EI CAS CSCD 2011年第11期548-555,共8页 中国物理B(英文版)
基金 supported by the National Natural Science Foundation of China(Grant No.70871082) the Shanghai Leading Academic Discipline Project,China(Grant No.S30504)
关键词 mobile user forecast power-law accelerating growth complex networks scale-free net-works mobile user forecast power-law accelerating growth complex networks scale-free net-works
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