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Brief Announcement: Revisiting the Power-law Degree Distribution for Social Graph Analysis

机译:简介:重新审视社会图分析的权法学位分布

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The study of complex networks led to the belief that the connectivity of network nodes generally follows a Power-law distribution. In this work, we show that modeling large-scale online social networks using a Power-law distribution produces significant fitting errors. We propose the use of a more accurate node degree distribution model based on the Pareto-Lognormal distribution. Using large datasets gathered from Facebook, we show mat the Power-law curve produces a significant over-estimation of the number of high degree nodes, leading researchers to erroneous designs for a number of social applications and systems, including shortest-path prediction, community detection, and influence maximization. We provide a formal proof of the error reduction using the Pareto-Lognormal distribution, which we envision will have strong implications on the correctness of social systems and applications.
机译:复杂网络的研究导致了信念,即网络节点的连接通常遵循动力法分布。在这项工作中,我们表明,使用幂律分布建模大型在线社交网络产生了显着的拟合误差。我们提出了基于帕累托 - 逻辑正常分布的更准确的节点分布模型。使用从Facebook收集的大型数据集,我们展示了Power-Law曲线的大量过度估计了高度节点的数量,导致研究人员对许多社交应用和系统的错误设计,包括最短路径预测,社区检测,影响最大化。我们提供了使用Pareto-Lognormal分布的错误减少的正式证明,我们设想将对社会系统和应用的正确性产生强烈影响。

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