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Tail-scope: Using friends to estimate heavy tails of degree distributions in large-scale complex networks

机译:尾巴范围:使用朋友来估计大型复杂网络中度分布的粗尾

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摘要

Many complex networks in natural and social phenomena have often been characterized by heavy-tailed degree distributions. However, due to rapidly growing size of network data and concerns on privacy issues about using these data, it becomes more difficult to analyze complete data sets. Thus, it is crucial to devise effective and efficient estimation methods for heavy tails of degree distributions in large-scale networks only using local information of a small fraction of sampled nodes. Here we propose a tail-scope method based on local observational bias of the friendship paradox. We show that the tail-scope method outperforms the uniform node sampling for estimating heavy tails of degree distributions, while the opposite tendency is observed in the range of small degrees. In order to take advantages of both sampling methods, we devise the hybrid method that successfully recovers the whole range of degree distributions. Our tail-scope method shows how structural heterogeneities of large-scale complex networks can be used to effectively reveal the network structure only with limited local information.
机译:自然和社会现象中的许多复杂网络通常具有重尾度分布特征。但是,由于网络数据大小的快速增长以及对使用这些数据的隐私问题的关注,分析完整的数据集变得更加困难。因此,至关重要的是,仅使用一小部分采样节点的局部信息,为大型网络中的度分布的重尾部设计有效且高效的估计方法。在这里,我们提出了一种基于友谊悖论的局部观察偏差的尾镜方法。我们表明,在估计度分布的重尾时,尾部范围法的效果优于统一节点采样,而在小度范围内则观察到相反的趋势。为了利用两种采样方法的优势,我们设计了一种能够成功恢复整个度分布范围的混合方法。我们的尾镜方法显示了大型复杂网络的结构异质性如何可用于仅在有限的本地信息的情况下有效地揭示网络结构。

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