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Deep Belief Network-Based Approaches for Link Prediction in Signed Social Networks

机译:签名社交网络中基于深度信念网络的链接预测方法

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In some online social network services (SNSs), the members are allowed to label their relationships with others, and such relationships can be represented as the links with signed values (positive or negative). The networks containing such relations are named signed social networks (SSNs), and some real-world complex systems can be also modeled with SSNs. Given the information of the observed structure of an SSN, the link prediction aims to estimate the values of the unobserved links. Noticing that most of the previous approaches for link prediction are based on the members’ similarity and the supervised learning method, however, research work on the investigation of the hidden principles that drive the behaviors of social members are rarely conducted. In this paper, the deep belief network (DBN)-based approaches for link prediction are proposed. Including an unsupervised link prediction model, a feature representation method and a DBN-based link prediction method are introduced. The experiments are done on the datasets from three SNSs (social networking services) in different domains, and the results show that our methods can predict the values of the links with high performance and have a good generalization ability across these datasets.
机译:在某些在线社交网络服务(SNS)中,允许成员标记他们与其他人的关系,并且这种关系可以表示为带有签名值(正值或负值)的链接。包含这种关系的网络被称为签名社交网络(SSN),并且一些实际的复杂系统也可以使用SSN进行建模。给定有关SSN观察到的结构的信息,链接预测旨在估算未观察到的链接的值。注意到以前大多数链接预测方法都是基于成员的相似性和监督学习方法,但是,很少进行有关研究驱动社会成员行为的隐藏原理的研究工作。本文提出了一种基于深度信念网络(DBN)的链路预测方法。介绍了一种无监督的链接预测模型,特征表示方法和基于DBN的链接预测方法。对来自不同领域的三个SNS(社交网络服务)的数据集进行了实验,结果表明,我们的方法可以预测链接的值,并且具有较高的性能,并且在这些数据集上具有良好的泛化能力。

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