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Combating Threats to Collective Attention in Social Media: An Evaluation

机译:对抗社交媒体中集体注意力的威胁:一项评估

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Breaking news, viral videos, and popular memes are all examples of the collective attention of huge numbers of users focusing in large-scale social systems. But this self-organization, leading to user attention quickly coalescing and then collectively focusing around a phenomenon, opens these systems to new threats like collective attention spam. Compared to many traditional spam threats, collective attention spam relies on the insidious property that users themselves will intentionally seek out the content where the spam will be encountered, potentially magnifying its effectiveness. Our goal in this paper is to initiate a study of this phenomenon. How susceptible are social systems to collective attention threats? What strategies by malicious users are most effective? Can a system automatically inoculate itself from emerging threats? Towards beginning our study of these questions, we take a two fold approach. First, we develop data-driven models to simulate large-scale social systems based on parameters derived from a real system. In this way, we can vary parameters - like the fraction of malicious users in the system, their strategies, and the countermeasures available to system operators - to explore the resilience of these systems to threats to collective attention. Second, we pair the data-driven model with a comprehensive evaluation over a Twitter system trace, in which we evaluate the effectiveness of countermeasures deployed based on the first moments of a bursting phenomenon in a real system. Our experimental study shows the promise of these countermeasures to identifying threats to collective attention early in the lifecycle, providing a shield for unsuspecting social media users.
机译:突发新闻,病毒视频和流行模因都是集中在大型社交系统上的大量用户共同关注的例子。但是,这种自我组织会导致用户的注意力迅速聚集,然后集中关注某种现象,从而使这些系统面临诸如集体关注垃圾邮件之类的新威胁。与许多传统的垃圾邮件威胁相比,集体关注的垃圾邮件依赖于用户自己有意寻找会遇到垃圾邮件的内容的阴险属性,从而有可能放大其有效性。我们本文的目标是开始对此现象进行研究。社会系统如何容易受到集体关注的威胁?恶意用户最有效的策略是什么?系统是否可以自动针对新兴威胁进行接种?为了开始研究这些问题,我们采取两种方法。首先,我们开发数据驱动的模型,以基于从真实系统派生的参数来模拟大规模的社会系统。通过这种方式,我们可以改变参数(例如系统中恶意用户的比例,他们的策略以及系统操作员可以使用的对策),以探索这些系统对受到集体关注的威胁的抵抗力。其次,我们将数据驱动的模型与Twitter系统跟踪上的综合评估配对,在其中我们根据实际系统中突发现象的最初时刻评估部署对策的有效性。我们的实验研究表明,这些对策有望在生命周期的早期识别出集体关注的威胁,从而为毫无戒心的社交媒体用户提供了庇护。

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