This paper presents TrollHunter, an automated reasoning mechanism we used to hunt for trolls on Twitter during the COVID-19 pandemic in 2020. Trolls, poised to disrupt the online discourse and spread disinformation, quickly seized the absence of a credible response to COVID-19 and created a COVID-19 infodemic by promulgating dubious content on Twitter. To counter the COVID-19 infodemic, the TrollHunter leverages a unique linguistic analysis of a multi-dimensional set of Twitter content features to detect whether or not a tweet was meant to troll. TrollHunter achieved 98.5% accuracy, 75.4% precision and 69.8% recall over a dataset of 1.3 million tweets. Without a final resolution of the pandemic in sight, it is unlikely that the trolls will go away, although they might be forced to evade automated hunting. To explore the plausibility of this strategy, we developed and tested an adversarial machine learning mechanism called TrollHunter-Evader. TrollHunter-Evader employs a Test Time Evasion (TTE) approach in a combination with a Markov chain-based mechanism to recycle originally trolling tweets. The recycled tweets were able to achieve a remarkable 40% decrease in the TrollHunter's ability to correctly identify trolling tweets. Because the COVID-19 infodemic could have a harmful impact on the COVID-19 pandemic, we provide an elaborate discussion about the implications of employing adversarial machine learning to evade Twitter troll hunts.
翻译:本文展示了TrollHunter(TrollHunter),这是我们在2020年COVID-19大流行期间用来在Twitter上搜寻巨怪的自动推理机制。TrollHunter(TrollHunter),准备扰乱在线讨论和传播假消息,迅速抓住了对COVID-19的不可信的反应,并在Twitter上发布了可疑内容,从而创建了COVID-19的迷思。为了应对COVID-19的迷思,TrollHunter(TrollHunter)对一套多维度的Twitter内容内容特性进行了独特的语言分析,以检测Troll-19Evader(Troform)是否意味着巨魔。TrollHunter(TrollHunter)实现了98.5%的精确度、75.4%的精确度和69.8%的回顾130万条推特数据集。如果看不到这一流行病的最后解决方案,那么这些巨魔就不太可能消失了,尽管他们可能被迫逃避自动狩猎。为了探索这个战略的可信度,我们研发了一个称为Troferrofer-revor(Treal)的40)的系统,就可以在B(Breal-hill)中找到一个精确的滚动中找到一个精确的推介。