我们可以学习你的#标签:将推文与明确的主题联系起来

W. Feng, Jianyong Wang
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引用次数: 29

摘要

在Twitter上,用户可以用标签标注推文,以指示正在进行的主题。标签为用户提供了一种方便的方式来对tweet进行分类。从系统的角度来看,标签在tweet检索、事件检测、话题跟踪、广告投放等方面发挥着重要作用。用正确的标签标注推文可以带来更好的用户体验。然而,在标注过程中,有两个问题没有得到解决:(1)在用户决定创建一个新的标签之前,是否有办法帮助他/她发现一些相关的标签是否已经被创建并广泛使用?(2)不同用户对tweets分类的偏好可能不同。然而,关于标签推荐中的个性化问题的研究却很少。针对上述问题,本文提出了一种个性化标签推荐的统计模型。每天发布数百万对,我们可以用人群的智慧学习从推特到标签的复杂映射。模型回答了两个问题:(1)与传统的项目推荐数据不同,Twitter中的用户和推文具有丰富的辅助信息,如url、提及、位置、社会关系等。我们如何将这些功能整合到标签推荐中呢?(2)不同的标签具有不同的时间特征。与物理世界中的突发事件相关的标签具有很强的涨落时间模式,而其他一些标签在系统中保持稳定。我们如何整合与标签相关的功能来为标签推荐服务?考虑到上述所有因素,我们表明我们的模型在从Twitter抓取的真实数据集上成功地优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
We can learn your #hashtags: Connecting tweets to explicit topics
In Twitter, users can annotate tweets with hashtags to indicate the ongoing topics. Hashtags provide users a convenient way to categorize tweets. From the system's perspective, hashtags play an important role in tweet retrieval, event detection, topic tracking, and advertising, etc. Annotating tweets with the right hashtags can lead to a better user experience. However, two problems remain unsolved during an annotation: (1) Before the user decides to create a new hashtag, is there any way to help her/him find out whether some related hashtags have already been created and widely used? (2) Different users may have different preferences for categorizing tweets. However, few work has been done to study the personalization issue in hashtag recommendation. To address the above problems, we propose a statistical model for personalized hashtag recommendation in this paper. With millions of <;tweet, hashtag> pairs being published everyday, we are able to learn the complex mappings from tweets to hashtags with the wisdom of the crowd. Two questions are answered in the model: (1) Different from traditional item recommendation data, users and tweets in Twitter have rich auxiliary information like URLs, mentions, locations, social relations, etc. How can we incorporate these features for hashtag recommendation? (2) Different hashtags have different temporal characteristics. Hashtags related to breaking events in the physical world have strong rise-and-fall temporal pattern while some other hashtags remain stable in the system. How can we incorporate hashtag related features to serve for hashtag recommendation? With all the above factors considered, we show that our model successfully outperforms existing methods on real datasets crawled from Twitter.
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