This paper presents TrollHunter2020, a real-time detection mechanism we used to hunt for trolling narratives on Twitter during the 2020 U.S. elections. Trolling narratives form on Twitter as alternative explanations of polarizing events like the 2020 U.S. elections with the goal to conduct information operations or provoke emotional response. Detecting trolling narratives thus is an imperative step to preserve constructive discourse on Twitter and remove an influx of misinformation. Using existing techniques, this takes time and a wealth of data, which, in a rapidly changing election cycle with high stakes, might not be available. To overcome this limitation, we developed TrollHunter2020 to hunt for trolls in real-time with several dozens of trending Twitter topics and hashtags corresponding to the candidates' debates, the election night, and the election aftermath. TrollHunter2020 collects trending data and utilizes a correspondence analysis to detect meaningful relationships between the top nouns and verbs used in constructing trolling narratives while they emerge on Twitter. Our results suggest that the TrollHunter2020 indeed captures the emerging trolling narratives in a very early stage of an unfolding polarizing event. We discuss the utility of TrollHunter2020 for early detection of information operations or trolling and the implications of its use in supporting a constrictive discourse on the platform around polarizing topics.
翻译:本文展示了TrollHunter 2020, 这是一个实时的探测机制,我们用来在2020年美国大选期间在Twitter上搜寻在Twitter上描绘叙事的实时检测机制。ThorrellHunter 2020,作为2020年美国大选等两极化事件的替代解释在Twitter上出现,目的是进行信息操作或激起情绪反应。因此,检测TrollHunter 2020,这是维护在Twitter上建设性言论和排除错误信息流入的一个必要步骤。使用现有技术,这需要时间和大量数据,在快速变化且利害攸关的选举周期中,可能无法找到这些数据。为了克服这一限制,我们开发TrollHunter 202020,我们开发了TrollH 2020, 实时捕捉捕捉巨魔者,与候选人辩论、选举之夜和选举之后相关的数十个推特主题和标签。TrollH 2020, 收集趋势数据,并使用通信分析,以发现在Twitter上出现时所使用的顶尖化叙事时所使用的重要关系。我们的研究结果表明,2020年Trotrestrual diction diction diction distration laction laction laction laction laction laction laction laction laction laction laction laction laction laction lactions lactions laction lactions lactions lactions 20。