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Modeling Users' Preferences and Social Links in Social Networking Services: A Joint-Evolving Perspective

机译:建模用户在社交网络服务中的偏好和社交链接:联合演化的视角

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Researchers have long converged that the evolution of a Social Networking Service (SNS) platform is driven by the interplay between users' preferences (reflected in user-item consumption behavior) and the social network structure (reflected in user-user interaction behavior), with both kinds of users' behaviors change from time to time. However, traditional approaches either modeled these two kinds of behaviors in an isolated way or relied on a static assumption of a SNS. Thus, it is still unclear how do the roles of users' historical preferences and the dynamic social network structure affect the evolution of SNSs. Furthermore, can jointly modeling users' temporal behaviors in SNSs benefit both behavior prediction tasks? In this paper, we leverage the underlying social theories (i.e., social influence and the homophily effect) to investigate the interplay and evolution of SNSs. We propose a probabilistic approach to fuse these social theories for jointly modeling users' temporal behaviors in SNSs. Thus our proposed model has both the explanatory ability and predictive power. Experimental results on two real-world datasets demonstrate the effectiveness of our proposed model.
机译:研究人员长期融合说,社交网络服务(SNS)平台的演变是由用户偏好(反映在用户项目消费行为中)和社交网络结构(反映在用户用户交互行为中)之间的相互作用的驱动的两种用户的行为不时更改。然而,传统方法以孤立的方式建模这两种行为或依赖于SNS的静态假设。因此,尚不清楚用户历史偏好和动态社交网络结构的角色如何影响SNSS的演变。此外,可以共同建模用户在SNSS中的时间行为有益于行为预测任务吗?在本文中,我们利用潜在的社会理论(即社会影响和同性恋效应)来调查SNSS的相互作用和演变。我们提出了一种概率的方法来融合这些社会理论,以便在SNSS中共同建立用户的时间行为。因此,我们提出的模型具有解释性能力和预测力。两个现实世界数据集的实验结果证明了我们提出的模型的有效性。

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