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Weighted self-similar networks under preferential attachment

机译:优先连接下的加权自相似网络

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摘要

We introduce an abstract evolutionary formalism that generates weighted networks whose growth under stochastic preferential attachment triggers unrestricted weight rearrangements in existing links. The class of resulting algorithms for different parameter values includes the Barabasi-Albert and Barrat-Barthelemy-Vespignani models as special cases. We solve the recursions that describe the average growth to derive exact solutions for the expected degree and strength distribution, the individual strength and weight development and the joint distribution of neighboring degrees. We find that the network exhibits a particular form of self-similarity, namely every sufficiently interconnected node has on average the same constitution of small-degree neighbors as any other node of large degree. Finally we suggest potential applications in several fields of interest.
机译:我们引入了一种抽象的演化形式主义,该演化论生成了加权网络,该网络的随机优先依恋关系下的增长会触发现有链接中不受限制的权重重排。作为不同参数值的结果算法类别包括Barabasi-Albert模型和Barrat-Barthelemy-Vespignani模型作为特例。我们求解描述平均增长的递归,以得出预期程度和强度分布,个体强度和体重发展以及邻近度的联合分布的精确解。我们发现网络表现出一种特殊形式的自相似性,即每个充分互连的节点与其他任何大程度节点平均都具有相同程度的小程度邻居。最后,我们建议在几个感兴趣的领域中潜在的应用。

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