一种基于网络社交平台影响力的用户快速排序算法

Nouamane Arhachoui, Esteban Bautista, Maximilien Danisch, A. Giovanidis
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引用次数: 0

摘要

衡量用户在社交网络中的影响力是许多应用程序的关键。最近提出的影响力指标Ψ-score,通过进一步纳入用户发布和转发活动提供的丰富信息,可以超越仅评估结构图重要性的传统中心性指标。实际上,Ψ-score用于泛化非同构节点活动的PageRank。尽管它很重要,但它在大型数据集上的可扩展性很差;对于一个有N个用户的网络,它需要求解N个大小为N的线性方程组。为了解决这个问题,本工作引入了一种新的可扩展算法,用于快速逼近Ψ- score,称为Power-Ψ。提出的算法基于一个新的方程,表明它足以解决一个大小为$N$的方程组来计算Ψ-score。然后,我们的算法利用了这样一个事实,即这样一个系统可以递归地和分布式地近似于任何期望的误差。这使得总结节点的结构和行为信息的Ψ-score运行速度与PageRank一样快。我们在几个真实世界的数据集上验证了所提出算法的有效性,我们将其作为开源Python库发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Algorithm for Ranking Users by their Influence in Online Social Platforms
Measuring the influence of users in social networks is key for numerous applications. A recently proposed influence metric, coined as Ψ-score, allows to go beyond traditional centrality metrics, which only assess structural graph importance, by further incorporating the rich information provided by the posting and re-posting activity of users. The Ψ-score is shown in fact to generalize PageRank for non-homogeneous node activity. Despite its significance, it scales poorly to large datasets; for a network of $N$ users, it requires to solve $N$ linear systems of equations of size $N$. To address this problem, this work introduces a novel scalable algorithm for the fast approximation of Ψ- score, named Power-Ψ. The proposed algorithm is based on a novel equation indicating that it suffices to solve one system of equations of size $N$ to compute the Ψ-score. Then, our algorithm exploits the fact that such a system can be recursively and distributedly approximated to any desired error. This permits the Ψ-score, summarizing both structural and behavioral information for the nodes, to run as fast as PageRank. We validate the effectiveness of the proposed algorithm, which we release as an open source Python library, on several real-world datasets.
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