Does Human Collaboration Enhance the Accuracy of Identifying LLM-Generated Deepfake Texts?

Adaku Uchendu, Jooyoung Lee, Hua Shen, Thai Le, Ting-Hao 'Kenneth' Huang, Dongwon Lee
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引用次数: 5

Abstract

Advances in Large Language Models (e.g., GPT-4, LLaMA) have improved the generation of coherent sentences resembling human writing on a large scale, resulting in the creation of so-called deepfake texts. However, this progress poses security and privacy concerns, necessitating effective solutions for distinguishing deepfake texts from human-written ones. Although prior works studied humans’ ability to detect deepfake texts, none has examined whether “collaboration” among humans improves the detection of deepfake texts. In this study, to address this gap of understanding on deepfake texts, we conducted experiments with two groups: (1) nonexpert individuals from the AMT platform and (2) writing experts from the Upwork platform. The results demonstrate that collaboration among humans can potentially improve the detection of deepfake texts for both groups, increasing detection accuracies by 6.36% for non-experts and 12.76% for experts, respectively, compared to individuals’ detection accuracies. We further analyze the explanations that humans used for detecting a piece of text as deepfake text, and find that the strongest indicator of deepfake texts is their lack of coherence and consistency. Our study provides useful insights for future tools and framework designs to facilitate the collaborative human detection of deepfake texts. The experiment datasets and AMT implementations are available at: https://github.com/huashen218/llm-deepfake-human-study.git
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人类协作是否提高了识别llm生成的深度假文本的准确性?
大型语言模型(例如,GPT-4, LLaMA)的进步已经大规模地改善了类似人类写作的连贯句子的生成,从而产生了所谓的深度假文本。然而,这一进展带来了安全和隐私问题,需要有效的解决方案来区分深度假文本和人类书写的文本。尽管之前的研究研究了人类检测深度伪造文本的能力,但没有人研究过人类之间的“合作”是否能提高对深度伪造文本的检测。在本研究中,为了解决对深度假文本的理解差距,我们对两组进行了实验:(1)来自AMT平台的非专家个体和(2)来自Upwork平台的写作专家。结果表明,人类之间的合作可以潜在地提高两组对深度虚假文本的检测,与个人的检测准确率相比,非专家的检测准确率分别提高了6.36%和12.76%。我们进一步分析了人类用于检测一段文本作为深度假文本的解释,并发现深度假文本的最强指标是它们缺乏连贯性和一致性。我们的研究为未来的工具和框架设计提供了有用的见解,以促进人类对深度虚假文本的协作检测。实验数据集和AMT实现可在:https://github.com/huashen218/llm-deepfake-human-study.git
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