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Anchor Link Prediction Using Topological Information in Social Networks

机译:社交网络中使用拓扑信息的锚链接预测

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People today may participate in multiple social networks (Facebook, Twitter, Google+, etc.). Predicting the correspondence of the accounts that refer to the same natural person across multiple social networks is a significant and challenging problem. Formally, social networks that outline the relationships of a common group of people are defined as aligned networks, and the correspondence of the accounts that refer to the same natural person across aligned networks are defined as anchor links. In this paper, we learn the problem of Anchor Link Prediction (ALP). Firstly, two similarity metrics (Bi-Similarity BiS and Reliability Similarity ReS) are proposed to measure the similarity between nodes in aligned networks. And we prove mathematically that the node pair with the maximum BiS has higher probability to be an anchor link and a correctly predicted anchor link must have high ReS. Secondly, we present an iterative algorithm to solve the problem of ALP efficiently. Also, we discuss the termination of the algorithm to give a tradeoff between precision and recall. Finally, we conduct a series of experiments on both synthetic social networks and real social networks to confirm the effectiveness of our approach.
机译:今天的人们可能会参与多个社交网络(Facebook,Twitter,Google +等)。预测在多个社交网络中引用同一自然人的帐户的对应关系是一个重大且具有挑战性的问题。正式地,将概述一组普通人的关系的社交网络定义为对齐的网络,而在对齐的网络中引用同一自然人的帐户的对应关系定义为锚点链接。在本文中,我们学习了锚链接预测(ALP)问题。首先,提出了两个相似性度量标准(Bi-Similarity BiS和Reliability相似性ReS)来度量对齐网络中节点之间的相似性。并且我们在数学上证明具有最大BiS的节点对具有较高的概率成为锚链接,并且正确预测的锚链接必须具有较高的ReS。其次,我们提出了一种迭代算法来有效地解决ALP问题。此外,我们讨论了算法的终止,以在精度和召回率之间进行权衡。最后,我们在合成社交网络和真实社交网络上进行了一系列实验,以确认我们方法的有效性。

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