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Learning the Strength of the Factors Influencing User Behavior in Online Social Networks

机译:了解在线社交网络中影响用户行为的因素的优势

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As social networking is moving into the web, the study and exploitation of social correlation has emerged as a hot research topic. Most of these work consider binary social relations, called "friendships". However, online users tend to establish many friendships of varying degree of strength, e.g., relatives, friends, co-workers, and acquaintances. We argue that, due to their different degree of strength, different friend relationships will have greatly varying degrees of correlation and should be distinguished. Besides, social correlation is not the only factor driving user behavior. In this paper, we address the problem of learning the strength of the social correlation, user, item, and sparsity factors in online social networks. We propose a probabilistic model, Factor Weight Model, for learning these strengths which maximize the joint probability of the observed user behavior, i.e., actions on items. Different from existing methods, our model considers not only social correlation, but it also considers the other factors affecting user behavior. We have conducted experiments on four real life data sets from Epinions, Flixster, Flickr, and Digg. Our experiments prove the superiority of our model over a state-of-the-art method in terms of action prediction. We also analyze the contributions of the various factors for the prediction performance.
机译:随着社交网络进入网络,对社交相关性的研究和开发已成为一个热门研究课题。这些工作大多数都考虑二元社会关系,称为“友谊”。但是,在线用户倾向于建立许多不同程度的友谊,例如亲戚,朋友,同事和熟人。我们认为,由于他们的实力程度不同,因此不同的朋友关系的关联程度将大大不同,因此应加以区别。此外,社会相关性不是驱动用户行为的唯一因素。在本文中,我们解决了学习在线社交网络中社交相关性,用户,项目和稀疏性因素的强度的问题。我们提出了一个概率模型-因子权重模型(Factor Weight Model),以学习这些优势,从而最大程度地提高了观察到的用户行为(即对项目的操作)的联合概率。与现有方法不同,我们的模型不仅考虑了社会相关性,还考虑了影响用户行为的其他因素。我们已经对来自Epinions,Flixster,Flickr和Digg的四个现实生活数据集进行了实验。我们的实验证明,在动作预测方面,我们的模型优于最新方法。我们还分析了各种因素对预测性能的贡献。

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