Who is Retweeting the Tweeters? Modeling, Originating, and Promoting Behaviors in the Twitter Network

Palakorn Achananuparp, Ee-Peng Lim, Jing Jiang, Tuan-Anh Hoang
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引用次数: 43

Abstract

Real-time microblogging systems such as Twitter offer users an easy and lightweight means to exchange information. Instead of writing formal and lengthy messages, microbloggers prefer to frequently broadcast several short messages to be read by other users. Only when messages are interesting, are they propagated further by the readers. In this article, we examine user behavior relevant to information propagation through microblogging. We specifically use retweeting activities among Twitter users to define and model originating and promoting behavior. We propose a basic model for measuring the two behaviors, a mutual dependency model, which considers the mutual relationships between the two behaviors, and a range-based model, which considers the depth and reach of users’ original tweets. Next, we compare the three behavior models and contrast them with the existing work on modeling influential Twitter users. Last, to demonstrate their applicability, we further employ the behavior models to detect interesting events from sudden changes in aggregated information propagation behavior of Twitter users. The results will show that the proposed behavior models can be effectively applied to detect interesting events in the Twitter stream, compared to the baseline tweet-based approaches.
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谁在转发推特用户?推特网络中的行为建模、起源和促进
像Twitter这样的实时微博系统为用户提供了一种简单、轻量级的信息交换方式。微博用户不喜欢写正式而冗长的消息,而是喜欢频繁地发布几条短消息,供其他用户阅读。只有当消息有趣时,它们才会被读者进一步传播。在本文中,我们研究了与微博信息传播相关的用户行为。我们特别使用Twitter用户之间的转发活动来定义和建模发起和促进行为。我们提出了一个衡量这两种行为的基本模型,一个是相互依赖模型,它考虑了两种行为之间的相互关系,另一个是基于范围的模型,它考虑了用户原始推文的深度和覆盖范围。接下来,我们比较了这三种行为模型,并将它们与现有的对有影响力的Twitter用户建模的工作进行了对比。最后,为了证明它们的适用性,我们进一步利用行为模型从Twitter用户聚合信息传播行为的突然变化中检测有趣事件。结果将表明,与基于tweet的基线方法相比,所提出的行为模型可以有效地应用于检测Twitter流中的有趣事件。
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