Examining public perception and cognitive biases in the presumed influence of deepfakes threat: empirical evidence of third person perception from three studies

感知 心理学 社会心理学 造谣 认知 实证研究 第三人 政治学 社会化媒体 认识论 哲学 神经科学 精神分析 法学
作者
Saifuddin Ahmed
出处
期刊:Asian Journal of Communication [Routledge]
卷期号:33 (3): 308-331 被引量:9
标识
DOI:10.1080/01292986.2023.2194886
摘要

ABSTRACTDeepfakes have a pernicious realism advantage over other common forms of disinformation, yet little is known about how citizens perceive deepfakes. Using the third-person effects framework, this study is one of the first attempts to examine public perceptions of deepfakes. Evidence across three studies in the US and Singapore supports the third-person perception (TPP) bias, such that individuals perceived deepfakes to influence others more than themselves (Study 1–3). The same subjects also show a bias in perceiving themselves as better at discerning deepfakes than others (Study 1–3). However, a deepfakes detection test suggests that the third-person perceptual gaps are not predictive of the real ability to distinguish fake from real (Study 3). Furthermore, the biases in TPP and self-perceptions about their own ability to identify deepfakes are more intensified among those with high cognitive ability (Study 2-3). The findings contribute to third-person perception literature and our current understanding of citizen engagement with deepfakes.KEYWORDS: Deepfakesdeep fakesthird-person perceptionfirst-person perceptioncognitive ability Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingThis work was supported by Nanyang Technological University: [Start Up Grant].Notes on contributorsSaifuddin AhmedSaifuddin Ahmed (Ph.D., University of California-Davis) is an Assistant Professor at the Wee Kim Wee School of Communication and Information at Nanyang Technological University, Singapore.

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