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A Random Growth Model with Any Real or Theoretical Degree Distribution

机译:任何真实或理论度分布的随机生长模型

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The degree distributions of complex networks are usually considered to be power law. However, it is not the case for a large number of them. We thus propose a new model able to build random growing networks with (almost) any wanted degree distribution. The degree distribution can either be theoretical or extracted from a real-world network. The main idea is to invert the recurrence equation commonly used to compute the degree distribution in order to find a convenient attachment function for node connections - commonly chosen as linear. We compute this attachment function for some classical distributions, as the power-law, broken power-law, geometric and Poisson distributions. We also use the model on an undirected version of the Twitter network, for which the degree distribution has an unusual shape.
机译:复杂网络的程度分布通常被认为是权力法。 但是,对于大量的情况并非如此。 因此,我们提出了一种能够建立随机生长网络的新模型(几乎)任何任何通缉度分布。 学位分布可以是从真实网络的理论或提取。 主要思想是反转常用于计算学位分布的复发方程,以便找到节点连接的方便附件功能 - 常用为线性。 我们计算一些经典分布的附件功能,作为幂律,破碎的幂律,几何和泊松分布。 我们还在Twitter网络的无向网络上使用模型,其中度分布具有异形。

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