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A comprehensive comparison of network similarities for link prediction and spurious link elimination

机译:链路预测与虚假链接消除网络相似度的全面比较

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摘要

Identifying missing interactions in complex networks, known as link prediction, is realized by estimating the likelihood of the existence of a link between two nodes according to the observed links and nodes' attributes. Similar approaches have also been employed to identify and remove spurious links in networks which is crucial for improving the reliability of network data. In network science, the likelihood for two nodes having a connection strongly depends on their structural similarity. The key to address these two problems thus becomes how to objectively measure the similarity between nodes in networks. In the literature, numerous network similarity metrics have been proposed and their accuracy has been discussed independently in previous works. In this paper, we systematically compare the accuracy of 18 similarity metrics in both link prediction and spurious link elimination when the observed networks are very sparse or consist of inaccurate linking information. Interestingly, some methods have high prediction accuracy, they tend to perform low accuracy in identification spurious interaction. We further find that methods can be classified into several cluster according to their behaviors. This work is useful for guiding future use of these similarity metrics for different purposes. (C) 2018 Elsevier B.V. All rights reserved.
机译:通过估计根据观察到的链路和节点的属性,通过估计两个节点之间存在链路的可能性来实现复杂网络中的缺失交互。还采用了类似的方法来识别和消除网络中的虚假链接,这对于提高网络数据的可靠性至关重要。在网络科学中,具有连接的两个节点的可能性强烈取决于它们的结构相似性。解决这两个问题的关键是如何客观地测量网络中节点之间的相似性。在文献中,已经提出了许多网络相似度量,并且在以前的作品中独立讨论了它们的准确性。在本文中,当观察到的网络非常稀疏或由不准确的链接信息组成时,我们系统地比较了链路预测和虚假链接消除中的18相似度量的准确性。有趣的是,一些方法具有很高的预测精度,它们倾向于在识别杂散相互作用中进行低精度。我们进一步发现,根据其行为,可以将方法分为多个集群。这项工作对于指导未来使用这些相似度量的不同目的是有用的。 (c)2018年elestvier b.v.保留所有权利。

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