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Nonnegative matrix factorization for link prediction in directed complex networks using PageRank and asymmetric link clustering information

机译:使用PageRank和非对称链路聚类信息进行定向复杂网络中链路预测的非负矩阵分解

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The aim of link prediction is to predict missing links in current networks or new links in future networks. Almost all the existing directed link prediction algorithms only take into account the links direction formation but ignored the abundant network topological information such as local and global structures. Therefore, how to preserve both local and global structure information is an important issue for directed link prediction. To solve this problem, in this paper, we are motivated to propose a novel Nonnegative Matrix Factorization via Asymmetric link clustering and PageRank model, namely NMF-AP. Specifically, we utilize the PageRank algorithm to calculate the influence score of the node, which captures the global network structure information. While we employ the asymmetric link clustering method to calculate the link clustering coefficient score, which preserves the local network structure information. By jointly optimizing them in the nonnegative matrix factorization model, our model can preserve both the local and global information at the same time. Besides, we provide an effective the multiplicative updating rules to learn the parameter of NMF-AP. Extensive experiments are conducted on ten real-world directed networks, experiment results demonstrate that the method NMF-AP outperforms state-of-the-art link prediction methods. (C) 2020 Elsevier Ltd. All rights reserved.
机译:链接预测的目的是预测当前网络中缺少的链接或将来网络中的新链接。几乎所有现有的定向链路预测算法都只考虑了链路方向的形成,却忽略了丰富的网络拓扑信息,例如局部和全局结构。因此,如何既保留局部结构又保留全局结构信息是定向链接预测的重要问题。为了解决这个问题,本文旨在通过非对称链接聚类和PageRank模型,提出一种新颖的非负矩阵分解,即NMF-AP。具体来说,我们利用PageRank算法来计算节点的影响力得分,从而捕获全局网络结构信息。虽然我们采用非对称链路聚类方法来计算链路聚类系数得分,但它保留了本地网络结构信息。通过在非负矩阵分解模型中共同优化它们,我们的模型可以同时保留本地信息和全局信息。此外,我们提供了有效的乘法更新规则来学习NMF-AP的参数。在十个现实世界的定向网络上进行了广泛的实验,实验结果表明NMF-AP方法优于最新的链路预测方法。 (C)2020 Elsevier Ltd.保留所有权利。

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