Measuring the influence of users in social networks is key for numerous applications. A recently proposed influence metric, coined as $\psi$-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 $\psi$-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 $\psi$-score, named Power-$\psi$. 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 $\psi$-score. Then, our algorithm exploits the fact that such system can be recursively and distributedly approximated to any desired error. This permits the $\psi$-score, summarizing both structural and behavioral information for the nodes, to run as fast as PageRank. We validate the effectiveness of the proposed algorithm on several real-world datasets.
翻译:衡量社会网络用户影响是许多应用的关键。 最近提出的影响度量(以美元计),以美元计值,可以超越传统的核心度量,而传统的核心度量则只能评估结构图的重要性,而传统的核心度量则只能通过进一步整合用户张贴和重新发送活动提供的丰富信息来评估结构图的重要性。 $/ 美元分数实际上显示将PageRank 概括为非同义节点活动。 尽管它的意义重大,但它比重小到大数据集; 对于一个由美元组成的用户网络,它需要解决规模为N$的方程式线性系统。 为了解决这个问题,这项工作引入了一种新的可缩放算法,用于快速接近$/ psi- count- count- power- power- $\ psi 。 拟议的算法基于一种新式的方程式,表明它足以解决一个规模为$N$的方程式来计算$- ppsi- count 。 然后,我们的算法利用了这样一个事实,即这种系统可以重复和分布性地接近于任何预期的错误。 将“ ” 和“ 数字” 用于快速校验算” 。