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UserRec: A User Recommendation Framework in Social Tagging Systems

机译:UserRec:社交标签系统中的用户推荐框架

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摘要

Social tagging systems have emerged as an effective way for users to annotate and share objects on the Web. However, with the growth of social tagging systems, users are easily overwhelmed by the large amount of data and it is very difficult for users to dig out information that he/she is interested in. Though the tagging system has provided interest-based social network features to enable the user to keep track of other users' tagging activities, there is still no automatic and effective way for the user to discover other users with common interests. In this paper, we propose a User Recommendation (UserRec) framework for user interest modeling and interest-based user recommendation, aiming to boost information sharing among users with similar interests. Our work brings three major contributions to the research community: (1) we propose a tag-graph based community detection method to model the users' personal interests, which are further represented by discrete topic distributions; (2) the similarity values between users' topic distributions are measured by Kullback-Leibler divergence (KL-divergence), and the similarity values are further used to perform interest-based user recommendation; and (3) by analyzing users' roles in a tagging system, we find users' roles in a tagging system are similar to Web pages in the Internet. Experiments on tagging dataset of Web pages (Yahoo! Delicious) show that UserRec outperforms other state-of-the-art recommender system approaches.
机译:社交标签系统已经成为用户注释和共享Web对象的有效方法。然而,随着社交标签系统的增长,用户很容易被海量数据淹没,并且用户很难挖掘出他/她感兴趣的信息。尽管标签系统已经提供了基于兴趣的社交网络。这些功能使用户能够跟踪其他用户的标记活动,但仍然没有自动有效的方法让用户发现具有共同兴趣的其他用户。在本文中,我们提出了一个用于用户兴趣建模和基于兴趣的用户推荐的用户推荐(UserRec)框架,旨在促进具有相似兴趣的用户之间的信息共享。我们的工作为研究社区带来了三个主要贡献:(1)我们提出了一种基于标签图的社区检测方法来对用户的个人兴趣进行建模,并进一步以离散的主题分布来表示; (2)通过Kullback-Leibler散度(KL-散度)来度量用户主题分布之间的相似度值,并将该相似度值进一步用于执行基于兴趣的用户推荐; (3)通过分析用户在标签系统中的角色,我们发现用户在标签系统中的角色与互联网上的网页相似。对网页数据集进行标记的实验(Yahoo! Delicious)表明,UserRec优于其他最新的推荐器系统方法。

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