Abstract
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.
Highlights
Nowadays, the number of online social networking service (SNS) websites is great
restricted Boltzmann machine (RBM) are used in our method, and their structures are listed in the first column
The result of each deep belief network (DBN) model is listed in one row in these tables
Summary
The number of online social networking service (SNS) websites is great. There are several kinds of relations among their social members, such as agreement, supporting or friends. The relations of agreement can be presented as a link with a positive value between the members, while disagreement is presented as a link with a negative value Such a kind of social relation network is modeled as an signed social network (SSN) [1]. The autoencoders could represent features into another space without knowing the relation between features Such an ability of the DBN suggests processing SSN features for link prediction by a similar method. A well-trained RBM could present the joint distribution of visible vectors [16], and this ability could be used for discrimination [17] Such abilities of DBNs could be used to predict link values or just using the represented data as the input for another classifier. Experiments are performed over three datasets from SNSs with different interests to show that these methods could be suitable for some typical SSNs, and we check our models’ generalization ability across these datasets
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