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Semantic Enabled Recommender System for Micro-Blog Users

机译:面向微博用户的启用语义的推荐系统

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Quite a number of recent works have concentrated on the task of recommending to Twitter users whom they should follow, among which, the WTF (Who To Follow) service provided by Twitter. Recommenders are based either on the user's network structure, or on some notion of topical similarity with other users, or on both. We present a method for analysis of Twitter users supported by a hierarchical representation of their interests, which we call a Twixonomy. The use of Twixonomy casts both problems of user classification and recommendation as one of itemset mining, where items are either users' authoritative friends or semantic categories associated to friends. In addition to evaluating our profiler and recommender on several populations, we also show that semantic categories allow for very fine-grained population studies, and make it possible to recommend not only whom to follow, but also topics of interest, users interested in the same topic, and more.
机译:最近的许多工作都集中在向Twitter用户推荐他们应该关注的人的任务上,其中包括Twitter提供的WTF(Who To Follow)服务。推荐基于用户的网络结构,或与其他用户的主题相似性的概念,或两者兼而有之。我们提供了一种分析Twitter用户的方法,该方法由他们的兴趣的分层表示来支持,我们称其为Twixonomy。 Twixonomy的使用将用户分类和推荐问题都作为项目集挖掘之一,其中项目是用户的权威朋友或与朋友相关联的语义类别。除了评估我们的探查者和推荐者在多个人群上的信息外,我们还表明语义类别允许进行非常细粒度的人群研究,并且不仅可以推荐关注谁的用户,还可以推荐感兴趣的用户,对相同内容感兴趣的用户主题等等。

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