Disinformation and Social Bot Operations in the Run Up to the 2017 French Presidential Election

Emilio Ferrara
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引用次数: 410

Abstract

Recent accounts from researchers, journalists, as well as federal investigators, reached a unanimous conclusion: social media are systematically exploited to manipulate and alter public opinion. Some disinformation campaigns have been coordinated by means of bots, social media accounts controlled by computer scripts that try to disguise themselves as legitimate human users. In this study, we describe one such operation that occurred in the run up to the 2017 French presidential election. We collected a massive Twitter dataset of nearly 17 million posts, posted between 27 April and 7 May 2017 (Election Day). We then set to study the MacronLeaks disinformation campaign: By leveraging a mix of machine learning and cognitive behavioral modeling techniques, we separated humans from bots, and then studied the activities of the two groups independently, as well as their interplay. We provide a characterization of both the bots and the users who engaged with them, and oppose it to those users who didn’t. Prior interests of disinformation adopters pinpoint to the reasons of scarce success of this campaign: the users who engaged with MacronLeaks are mostly foreigners with pre-existing interest in alt-right topics and alternative news media, rather than French users with diverse political views. Concluding, anomalous account usage patterns suggest the possible existence of a black market for reusable political disinformation bots.
2017年法国总统大选前的虚假信息和社交机器人操作
研究人员、记者和联邦调查人员最近的报道得出了一个一致的结论:社交媒体被系统地利用来操纵和改变公众舆论。一些虚假信息活动是通过机器人进行协调的,机器人是由计算机脚本控制的社交媒体账户,它们试图伪装成合法的人类用户。在这项研究中,我们描述了在2017年法国总统大选之前发生的一次这样的操作。我们收集了一个庞大的推特数据集,其中包括2017年4月27日至5月7日(选举日)发布的近1700万条帖子。然后,我们开始研究MacronLeaks的虚假信息活动:通过混合利用机器学习和认知行为建模技术,我们将人类与机器人区分开来,然后独立研究这两个群体的活动,以及它们之间的相互作用。我们提供了机器人和与它们互动的用户的特征,并将其与那些没有使用它们的用户进行比较。虚假信息采纳者的优先利益指向了这场运动很少成功的原因:与MacronLeaks互动的用户大多是对另类右翼话题和另类新闻媒体感兴趣的外国人,而不是持不同政治观点的法国用户。最后,异常的账户使用模式表明,可能存在一个可重复使用的政治虚假信息机器人黑市。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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