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Local versus global knowledge in the Barabasi-Albert scale-free network model

机译:Barabasi-Albert无标度网络模型中的本地知识与全球知识

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摘要

The scale-free model of Barabasi and Albert (BA) gave rise to a burst of activity in the field of complex networks. In this paper, we revisit one of the main assumptions of the model, the preferential attachment (PA) rule. We study a model in which the PA rule is applied to a neighborhood of newly created nodes and thus no global knowledge of the network is assumed. We numerically show that global properties of the BA model such as the connectivity distribution and the average shortest path length are quite robust when there is some degree of local knowledge. In contrast, other properties such as the clustering coefficient and degree-degree correlations differ and approach the values measured for real-world networks.
机译:Barabasi和Albert(BA)的无标度模型引起了复杂网络领域的活跃活动。在本文中,我们回顾了模型的主要假设之一,即优先依附(PA)规则。我们研究了一种模型,在该模型中,将PA规则应用于新创建的节点的邻域,因此没有假定网络的全局知识。我们用数值方法表明,当存在一定程度的本地知识时,BA模型的全局属性(例如,连通性分布和平均最短路径长度)将非常可靠。相反,其他属性(例如聚类系数和度-度相关性)则不同,并且接近针对实际网络测得的值。

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