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Ranking Users in Social Networks with Motif-Based PageRank

机译:使用基于主题的PageRank的社交网络中的用户排名

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PageRank has been widely used to measure the authority or the influence of a user in social networks. However, conventional PageRank only makes use of edge-based relations, which represent first-order relations between two connected nodes. It ignores higher-order relations that may exist between nodes. In this article, we propose a novel framework, motif-based PageRank (MPR), to incorporate higher-order relations into the conventional PageRank computation. Motifs are subgraphs consisting of a small number of nodes. We use motifs to capture higher-order relations between nodes in a network and introduce two methods, one linear and one non-linear, to combine first-order and higher-order relations in PageRank computation. We conduct extensive experiments on three real-world networks, namely, DBLP, Epinions, and Ciao. We study different types of motifs, including 3-node simple and anchor motifs, 4-node and 5-node motifs. Besides using single motif, we also run MPR with ensemble of multiple motifs. We also design a learning task to evaluate the abilities of authority prediction with motif-based features. All experimental results demonstrate that MPR can significantly improve the performance of user ranking in social networks compared to the baseline methods.
机译:PageRank已被广泛用于衡量用户在社交网络中的权限或影响。然而,传统的PageRank仅利用基于边缘的关系,这代表了两个连接节点之间的一阶关系。它忽略了节点之间可能存在的高阶关系。在本文中,我们提出了一种小说框架,基于主基的PageRank(MPR),将更高阶的关系纳入传统的PageRank计算。图案是由少量节点组成的子图。我们使用图案来捕获网络中节点之间的高阶关系,并介绍两种方法,一个线性和一个非线性,以将一阶和高阶的关系组合在PageRank计算中。我们在三个真实网络中进行广泛的实验,即DBLP,渗透和CIAO。我们研究了不同类型的图案,包括3节点简单和锚图案,4节点和5节点图案。除了使用单个图案外,我们还通过多个图案的集合运行MPR。我们还设计了一个学习任务,以评估基于主题的特征的权威预测的能力。与基线方法相比,所有实验结果都表明MPR可以显着提高社交网络中用户排名的性能。

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