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MPPR: Multi Perspective Page Rank for User Influence Estimation

机译:MPPR:用于用户影响力估计的多视角页面等级

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With the rapid development of social networks, it is important to identify users with high influence. In content curation social networks (CCSNs), there are two kinds of user relations. The one is the explicit user relations from user's following behavior. And the other is the content based user relations from user's repin behavior. Based on these observation, we propose multi perspective page rank (MPPR) to estimate user influence. The proposed algorithm integrates both user relations to calculate influence scores of the users automatically. User influences are computed based on the transition matrix of following and repin relations. When the iteration is convergent, every user will get a fixed influence value. Experiments on the dataset containing 11990 users, 920610 following relations and 39321016 repin relations show that the proposed algorithm outperforms the typical PageRank algorithm.
机译:随着社交网络的快速发展,重要的是识别具有高影响力的用户。在内容策策社交网络(CCSNS)中,有两种用户关系。其中一个是用户跟随行为的显式用户关系。而另一个是基于内容的来自用户的Repin行为的用户关系。基于这些观察,我们提出了多透视页面(MPPR)来估计用户影响。所提出的算法集成了用户关系,以便自动计算用户的影响分数。基于后续的转换矩阵和批准关系来计算用户影响。当迭代是收敛的时,每个用户都会得到固定的影响值。在含有11990个用户的数据集上的实验,在关系和39321016之后的920610中,所提出的算法优于典型的PageRank算法。

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