论文标题
十年的社交机器人检测
A Decade of Social Bot Detection
论文作者
论文摘要
2016年11月9日上午,世界醒来,达到了美国总统大选的令人震惊的结果:唐纳德·特朗普是美利坚合众国第45任总统。一个意外的事件在世界范围内仍然带来巨大后果。今天,我们知道,少数社交机器人,自动化的社交媒体帐户模仿了人类,在传播分裂信息和虚假信息方面发挥了核心作用,可能有助于特朗普的胜利。在2016年美国大选之后,全世界开始意识到社交媒体中广泛的欺骗的严重性。在特朗普的剥削之后,我们目睹了众多检测和删除机器人的努力与这些恶意行为者似乎对我们社会产生的越来越多的影响之间的巨大不和谐。这个悖论提出了一个迫切的问题:为了阻止这种社会机器人大流行,我们应该执行哪些策略?在这些时期,在2020年美国选举的比赛中,这个问题似乎比以往任何时候都更为重要。然而,自2016年以来,2016年以后的欺骗和自动化中风的社会,政治和经济分析师至少是计算机科学家的一个研究问题。在这项工作中,我们对社会机器人检测的前十年进行了简要调查。通过纵向分析,我们讨论了与机器人斗争的研究的主要趋势,所取得的主要结果以及使这场永无止境的战斗如此具有挑战性的因素。从我们的广泛分析中汲取了教训,我们提出了可能的创新,这可能使我们能够抵制欺骗和操纵。在社交机器人检测中研究十年的努力还可以为检测和减轻其他,最新的在线欺骗形式的影响(例如战略信息操作和政治巨魔)的效果提供信息。
On the morning of November 9th 2016, the world woke up to the shocking outcome of the US Presidential elections: Donald Trump was the 45th President of the United States of America. An unexpected event that still has tremendous consequences all over the world. Today, we know that a minority of social bots, automated social media accounts mimicking humans, played a central role in spreading divisive messages and disinformation, possibly contributing to Trump's victory. In the aftermath of the 2016 US elections, the world started to realize the gravity of widespread deception in social media. Following Trump's exploit, we witnessed to the emergence of a strident dissonance between the multitude of efforts for detecting and removing bots, and the increasing effects that these malicious actors seem to have on our societies. This paradox opens a burning question: What strategies should we enforce in order to stop this social bot pandemic? In these times, during the run-up to the 2020 US elections, the question appears as more crucial than ever. What stroke social, political and economic analysts after 2016, deception and automation, has been however a matter of study for computer scientists since at least 2010. In this work, we briefly survey the first decade of research in social bot detection. Via a longitudinal analysis, we discuss the main trends of research in the fight against bots, the major results that were achieved, and the factors that make this never-ending battle so challenging. Capitalizing on lessons learned from our extensive analysis, we suggest possible innovations that could give us the upper hand against deception and manipulation. Studying a decade of endeavours at social bot detection can also inform strategies for detecting and mitigating the effects of other, more recent, forms of online deception, such as strategic information operations and political trolls.