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Making Your Interests Follow You on Twitter

机译:让您的兴趣在Twitter上关注您

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摘要

In this paper we introduce the task of tweet recommendation, the problem of suggesting tweets that match a user's interests and likes. We propose an Information-Retrieval-like model sthat leverages the content of the user's tweets and those of her friends, and that effectively retrieves a set of tweets that is personalized and varied in nature. Our approach could be easily leveraged to build, for example, a Twitter or Facebook timeline that collects messages that are of interest for the user, but that are not posted by her friends. We compare to typical approaches used in similar tasks, reporting significant gains in terms of overall precision, up to about +20%, on both a corpus-based evaluation and real world user study.
机译:在本文中,我们介绍了推文推荐的任务,即根据用户的兴趣和喜好建议推文的问题。我们提出了一种类似于信息检索的模型,该模型利用了用户和她朋友的推文的内容,并有效地检索了一组个性化且性质各异的推文。我们的方法可以很容易地用于构建Twitter或Facebook时间线,例如收集用户感兴趣的消息,而不是其朋友发布的消息。我们将其与类似任务中使用的典型方法进行了比较,在基于语料库的评估和真实世界的用户研究中,报告的整体精度均显着提高,最高可达+ 20%。

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