Scale-free networks by super-linear preferential attachment rule |
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Authors: | Liang Wu |
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Affiliation: | School of Physical Science and Technology, Suzhou University, Suzhou, Jiangsu 215006, People’s Republic of China |
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Abstract: | A network growth model with geographic limitation of accessible information about the status of existing nodes is investigated. In this model, the probability Π(k) of an existing node of degree k is found to be super-linear with Π(k)∼kα and α>1 when there are links from new nodes. The numerical results show that the constructed networks have typical power-law degree distributions P(k)∼k−γ and the exponent γ depends on the constraint level. An analysis of local structural features shows the robust emergence of scale-free network structure in spite of the super-linear preferential attachment rule. This local structural feature is directly associated with the geographical connection constraints which are widely observed in many real networks. |
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Keywords: | 89.75.Da 89.75.Fb 89.20.Hh |
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