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Disentangled Link Prediction for Signed Social Networks via Disentangled Representation Learning

机译:通过解散代表学习解开签名社交网络的链项链接预测

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Link prediction is an important and interesting application for social networks because it can infer potential links among network participants. Existing approaches basically work with the homophily principle, i.e., people of similar characteristics tend to befriend each other. In this way, however, they are not suitable for inferring negative links or hostile links, which usually take place among people with different characteristics. Moreover, negative links tend to couple with positive links to form signed networks. In this paper, we thus study the problem of disentangled link prediction (DLP) for signed networks, which includes two separate tasks, i.e., inferring positive links and inferring negative links. Recently, representation learning methods have been proposed to solve the link prediction problem because the entire network structure can be encoded in repre-sentations. For the DLP problem, we thus propose to disentangle a node representation into two representations, and use one for positive link prediction and another for negative link prediction. Experiments on three real-world signed networks demonstrate the proposed disentangled representation learning (DRL) method significantly outperforms alternatives in the DLP problem.
机译:链接预测是社会网络的重要和有趣的应用程序,因为它可以推断网络参与者之间的潜在联系。现有的方法基本上工作与同质性原则,即类似特征的人容易亲近对方。通过这种方式,但是,它们不适合推断负面关联的或敌对的链接,这通常需要人们具有不同特点之间进行。此外,负链接往往夫妇积极联系,形成网络签约。在本文中,我们研究从而解缠结的链路预测(DLP),用于签名的网络,其包括两个独立的任务,即,推断正链接和推断负链路的问题。最近,已经提出了学习的表示方法来解决链路预测问题,因为整个网络结构可以repre-sentations进行编码。对于DLP问题,因此,我们建议解开的一个节点表示成两个交涉,并用一个积极的链接预测和另一个用于负的链路预测。三个真实世界的签署网络实验验证了该解缠结表示学习(DRL)方法显著优于在DLP问题的替代品。

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