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Inference for the degree distributions of preferential attachment networks with zero-degree nodes

机译:对零节点的优先附加网络的程度分布推断

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The tail of the logarithmic degree distribution of networks decays linearly with respect to the logarithmic degree is known as the power law and is ubiquitous in daily lives. A commonly used technique in modeling the power law is preferential attachment (PA), which sequentially joins each new node to the existing nodes according to the conditional probability law proportional to a linear function of their degrees. Although effective, it is tricky to apply PA to real networks because the number of nodes and that of edges have to satisfy a linear constraint. This paper enables real application of PA by making each new node as an isolated node that attaches to other nodes according to PA scheme in some later epochs. This simple and novel strategy provides an additional degree of freedom to relax the aforementioned constraint to the observed data and uses the PA scheme to compute the implied proportion of the unobserved zero-degree nodes. By using martingale convergence theory, the degree distribution of the proposed model is shown to follow the power law and its asymptotic variance is proved to be the solution of a Sylvester matrix equation, a class of equations frequently found in the control theory (see Hansen and Sargent (2008, 2014)). These results give a strongly consistent estimator for the power-law parameter and its asymptotic normality. Note that this statistical inference procedure is non-iterative and is particularly applicable for big networks such as the World Wide Web presented in Section 6. Moreover, the proposed model offers a theoretically coherent framework that can be used to study other network features, such as clustering and connectedness, as given in Cheung (2016). (C) 2020 Elsevier B.V. All rights reserved.
机译:网络对数程度分布的尾部相对于对数程度线性衰减被称为电力法,并且在日常生活中普遍存在。在幂律建模中的常用技术是优先附加(PA),其根据与其度的线性函数成比例的条件概率律顺序地将每个新节点连接到现有节点。虽然有效,应用PA到真实网络是棘手的,因为节点的数量和边缘的数量必须满足线性约束。本文通过将每个新节点作为分离的节点使每个新节点作为孤立的节点,可以根据PA方案在一些后来的epochs中安装到其他节点。这种简单和新的策略提供了额外的自由度来放宽对观察到的数据的上述约束,并使用PA方案来计算未观察到的零节点的隐含比例。通过使用Martingale收敛理论,所提出的模型的程度分布显示遵循权力法,其渐近方差被证明是Sylvester矩阵方程的溶液,在控制理论中经常发现的一类方程式(见汉森和Sargent(2008,2014))。这些结果为幂律参数及其渐近正常性提供了强烈一致的估计。请注意,此统计推断过程是非迭代的,特别适用于诸如第6节中呈现的万维网等大网络。此外,该模型提供了理论上相干的框架,可用于研究其他网络功能,例如聚类和关联,如张(2016年)给出的。 (c)2020 Elsevier B.V.保留所有权利。

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