DSMN: A New Approach for Link Prediction in Multilplex Networks

Samira Rafiee Samira Rafiee, Alireza Abdollahpouri
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Abstract

— In a multiplex network, there exists different types of relationships between the same set of nodes such as people which have different accounts in online social networks. Previous researches have proved that in a multiplex network the structural features of different layers are interrelated. Therefore, effective use of information from other layers can improve link prediction accuracy in a specific layer. In this paper, we propose a new inter-layer similarity metric DSMN, for predicting missing links in multiplex networks. We then combine this metric with a strong intra-layer similarity metric to enhance the performance of link prediction. The efficiency of our proposed method has been evaluated on both real-world and synthetic networks and the experimental results indicate the outperformance of the proposed method in terms of prediction accuracy in comparison with similar methods
DSMN:多路网络中链路预测的新方法
—在多路复用网络中,同一组节点之间存在不同类型的关系,例如在线社交网络中拥有不同账户的人。以往的研究已经证明,在复用网络中,不同层的结构特征是相互关联的。因此,有效利用其他层的信息可以提高特定层的链路预测精度。在本文中,我们提出了一种新的层间相似度度量DSMN,用于预测多路网络中的缺失链路。然后,我们将该度量与强层内相似性度量相结合,以提高链路预测的性能。我们提出的方法的效率已经在现实世界和合成网络上进行了评估,实验结果表明,与同类方法相比,我们提出的方法在预测精度方面表现优异
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