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Exactly scale-free scale-free networks

机译:完全无尺度的无尺度网络

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Many complex natural and physical systems exhibit patterns of interconnection that conform, approximately, to a network structure referred to as scale-free. Preferential attachment is one of many algorithms that have been introduced to model the growth and structure of scale-free networks. With so many different models of scale-free networks it is unclear what properties of scale-free networks are typical, and what properties are peculiarities, of a particular growth or construction process. We propose a simple maximum entropy process which provides the best representation of what are typical properties of scale-free networks, and provides a standard against which real and algorithmically generated networks can be compared. As an example we consider preferential attachment and find that this particular growth model does not yield typical realizations of scale-free networks. In particular, the widely discussed "fragility" of scale-free networks is actually found to be due to the peculiar "hub-centric" structure of preferential attachment networks. We provide a method to generate or remove this latent hub-centric bias thereby demonstrating exactly which features of preferential attachment networks are atypical of the broader class of scale-free networks. We are also able to statistically demonstrate whether real networks are typical realizations of scale-free networks, or networks with that particular degree distribution; using a new surrogate generation method for complex networks, exactly analogous the widely used surrogate tests of nonlinear time series analysis. (C) 2015 Elsevier B.V. All rights reserved.
机译:许多复杂的自然系统和物理系统都表现出相互连接的模式,这些模式大致符合称为无标度的网络结构。优先连接是为模拟无标度网络的增长和结构而引入的众多算法之一。对于这么多不同的无标度网络模型,尚不清楚特定增长或构建过程的无标度网络的典型特征是什么,以及特殊性是什么。我们提出了一个简单的最大熵过程,该过程可以最好地表示无标度网络的典型属性,并提供一个可以比较实际和算法生成的网络的标准。例如,我们考虑了优先依附关系,发现这种特殊的增长模型不能产生无标度网络的典型实现。特别地,实际上发现了广泛讨论的无标度网络的“脆弱性”是由于优先连接网络的独特的“以枢纽为中心”的结构。我们提供了一种生成或消除这种潜在的以枢纽为中心的偏差的方法,从而准确地证明了优先依附网络的哪些特征是更广泛的无标度网络的典型特征。我们还能够统计证明真实网络是无标度网络的典型实现,还是具有特定度数分布的网络;使用一种用于复杂网络的新替代物生成方法,与非线性时间序列分析中广泛使用的替代物测试完全相似。 (C)2015 Elsevier B.V.保留所有权利。

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