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Rumor Identification in Microblogging Systems Based on Users’ Behavior

机译:基于用户行为的微博系统谣言识别

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摘要

In recent years, microblog systems such as Twitter and Sina Weibo have averaged multimillion active users. On the other hand, the microblog system has become a new means of rumor-spreading platform. In this paper, we investigate the machine-learning-based rumor identification approaches. We observed that feature design and selection has a stronger impact on the rumor identification accuracy than the selection of machine-learning algorithms. Meanwhile, the rumor publishers’ behavior may diverge from normal users’, and a rumor post may have different responses from a normal post. However, mass behavior on rumor posts has not been explored adequately. Hence, we investigate rumor identification schemes by applying five new features based on users’ behaviors, and combine the new features with the existing well-proved effective user behavior-based features, such as followers’ comments and reposting, to predict whether a microblog post is a rumor. Experiment results on real-world data from Sina Weibo demonstrate the efficacy and efficiency of our proposed method and features. From the experiments, we conclude that the rumor detection based on mass behaviors is more effective than the detection based on microblogs’ inherent features.
机译:近年来,Twitter和新浪微博等微博系统平均拥有数百万活跃用户。另一方面,微博系统已成为一种新的谣言传播平台。在本文中,我们研究了基于机器学习的谣言识别方法。我们观察到,特征设计和选择对谣言识别准确度的影响比机器学习算法的选择要强。同时,谣言发布者的行为可能与普通用户不同,并且谣言帖子的回应可能与普通帖子不同。但是,关于传言的群众行为尚未得到充分的探讨。因此,我们通过基于用户行为应用五个新功能来研究谣言识别方案,并将新功能与现有的行之有效的基于用户行为的有效功能(例如关注者的评论和重新发布)相结合,以预测微博是否发布是谣言。来自新浪微博的真实数据的实验结果证明了我们提出的方法和功能的有效性和效率。从实验中我们可以得出结论,基于群众行为的谣言检测比基于微博固有特征的检测更为有效。

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