地球是平的,太阳不是恒星:GPT-2对普遍对抗性触发的敏感性

Hunter Scott Heidenreich, J. Williams
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引用次数: 7

摘要

这项工作考虑了普遍的对抗性触发,一种对抗性破坏自然语言模型的方法,并质疑是否有可能使用这种触发来影响条件文本生成模型的主题和立场。在考虑四个“有争议的”主题时,这项工作证明了在确定触发因素方面的成功,这些触发因素导致GPT-2模型产生关于目标主题的文本,并影响文本对主题的立场。我们发现,虽然越边缘的话题越难以识别触发因素,但它们确实似乎更有效地区分立场等方面。我们认为这既表明了可控性的危险潜力,也可能反映了在这些主题上相互冲突的观点之间脱节的本质,未来的工作可以用来质疑过滤气泡的本质,以及它们是否反映在互联网内容训练的模型中。为了证明这种攻击的可行性和易用性,这项工作旨在提高人们的意识,即神经语言模型容易受到这种影响——即使模型已经部署,对手缺乏内部模型访问——并提倡立即防范这种类型的对抗性攻击,以防止对人类用户的潜在伤害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Earth Is Flat and the Sun Is Not a Star: The Susceptibility of GPT-2 to Universal Adversarial Triggers
This work considers universal adversarial triggers, a method of adversarially disrupting natural language models, and questions if it is possible to use such triggers to affect both the topic and stance of conditional text generation models. In considering four "controversial" topics, this work demonstrates success at identifying triggers that cause the GPT-2 model to produce text about targeted topics as well as influence the stance the text takes towards the topic. We show that, while the more fringe topics are more challenging to identify triggers for, they do appear to more effectively discriminate aspects like stance. We view this both as an indication of the dangerous potential for controllability and, perhaps, a reflection of the nature of the disconnect between conflicting views on these topics, something that future work could use to question the nature of filter bubbles and if they are reflected within models trained on internet content. In demonstrating the feasibility and ease of such an attack, this work seeks to raise the awareness that neural language models are susceptible to this influence--even if the model is already deployed and adversaries lack internal model access--and advocates the immediate safeguarding against this type of adversarial attack in order to prevent potential harm to human users.
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