论文标题
通过删除操纵Twitter
Manipulating Twitter Through Deletions
论文作者
论文摘要
在Twitter上进行影响运动的研究主要依赖于通过公共API获得的推文中的恶意活动。这些API提供了尚未删除的公共推文的访问权限。但是,坏演员可以从战略上删除内容来操纵系统。不幸的是,基于公开可用的Twitter数据的估计值低估了真实的删除量。在这里,我们对涉及超过1100万个帐户的详细删除模式进行了第一个详尽的大规模分析。我们发现,一小部分帐户每天删除大量推文。我们还发现了两种利用缺失的虐待行为。首先,限制了推文量的限制,使某些帐户每天都有超过26,000次推文充斥网络。其次,协调的帐户网络参与重复的喜欢和最终删除的内容的不利用,可以操纵排名算法。可以利用这类滥用来扩大内容和膨胀,同时逃避检测。我们的研究为平台和研究人员提供了识别社交媒体滥用的新方法。
Research into influence campaigns on Twitter has mostly relied on identifying malicious activities from tweets obtained via public APIs. These APIs provide access to public tweets that have not been deleted. However, bad actors can delete content strategically to manipulate the system. Unfortunately, estimates based on publicly available Twitter data underestimate the true deletion volume. Here, we provide the first exhaustive, large-scale analysis of anomalous deletion patterns involving more than a billion deletions by over 11 million accounts. We find that a small fraction of accounts delete a large number of tweets daily. We also uncover two abusive behaviors that exploit deletions. First, limits on tweet volume are circumvented, allowing certain accounts to flood the network with over 26 thousand daily tweets. Second, coordinated networks of accounts engage in repetitive likes and unlikes of content that is eventually deleted, which can manipulate ranking algorithms. These kinds of abuse can be exploited to amplify content and inflate popularity, while evading detection. Our study provides platforms and researchers with new methods for identifying social media abuse.