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Large Language Models as 'Hidden Persuaders': Fake Product Reviews are Indistinguishable to Humans and Machines

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Listed:
  • Weiyao Meng
  • John Harvey
  • James Goulding
  • Chris James Carter
  • Evgeniya Lukinova
  • Andrew Smith
  • Paul Frobisher
  • Mina Forrest
  • Georgiana Nica-Avram

Abstract

Reading and evaluating product reviews is central to how most people decide what to buy and consume online. However, the recent emergence of Large Language Models and Generative Artificial Intelligence now means writing fraudulent or fake reviews is potentially easier than ever. Through three studies we demonstrate that (1) humans are no longer able to distinguish between real and fake product reviews generated by machines, averaging only 50.8% accuracy overall - essentially the same that would be expected by chance alone; (2) that LLMs are likewise unable to distinguish between fake and real reviews and perform equivalently bad or even worse than humans; and (3) that humans and LLMs pursue different strategies for evaluating authenticity which lead to equivalently bad accuracy, but different precision, recall and F1 scores - indicating they perform worse at different aspects of judgment. The results reveal that review systems everywhere are now susceptible to mechanised fraud if they do not depend on trustworthy purchase verification to guarantee the authenticity of reviewers. Furthermore, the results provide insight into the consumer psychology of how humans judge authenticity, demonstrating there is an inherent 'scepticism bias' towards positive reviews and a special vulnerability to misjudge the authenticity of fake negative reviews. Additionally, results provide a first insight into the 'machine psychology' of judging fake reviews, revealing that the strategies LLMs take to evaluate authenticity radically differ from humans, in ways that are equally wrong in terms of accuracy, but different in their misjudgments.

Suggested Citation

  • Weiyao Meng & John Harvey & James Goulding & Chris James Carter & Evgeniya Lukinova & Andrew Smith & Paul Frobisher & Mina Forrest & Georgiana Nica-Avram, 2025. "Large Language Models as 'Hidden Persuaders': Fake Product Reviews are Indistinguishable to Humans and Machines," Papers 2506.13313, arXiv.org.
  • Handle: RePEc:arx:papers:2506.13313
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    References listed on IDEAS

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    1. Salminen, Joni & Kandpal, Chandrashekhar & Kamel, Ahmed Mohamed & Jung, Soon-gyo & Jansen, Bernard J., 2022. "Creating and detecting fake reviews of online products," Journal of Retailing and Consumer Services, Elsevier, vol. 64(C).
    2. Sumanth Dathathri & Abigail See & Sumedh Ghaisas & Po-Sen Huang & Rob McAdam & Johannes Welbl & Vandana Bachani & Alex Kaskasoli & Robert Stanforth & Tatiana Matejovicova & Jamie Hayes & Nidhi Vyas & , 2024. "Scalable watermarking for identifying large language model outputs," Nature, Nature, vol. 634(8035), pages 818-823, October.
    3. Shukla, Aishwarya Deep & Goh, Jie Mein, 2024. "Fighting fake reviews: Authenticated anonymous reviews using identity verification," Business Horizons, Elsevier, vol. 67(1), pages 71-81.
    4. Boush, David M & Friestad, Marian & Rose, Gregory M, 1994. "Adolescent Skepticism toward TV Advertising and Knowledge of Advertiser Tactics," Journal of Consumer Research, Journal of Consumer Research Inc., vol. 21(1), pages 165-175, June.
    5. Shirley Bluvstein & Xuan Zhao & Alixandra Barasch & Juliana Schroeder, 2024. "Imperfectly Human: The Humanizing Potential of (Corrected) Errors in Text-Based Communication," Journal of the Association for Consumer Research, University of Chicago Press, vol. 9(3), pages 332-343.
    6. Miriam J. Metzger, 2007. "Making sense of credibility on the Web: Models for evaluating online information and recommendations for future research," Journal of the American Society for Information Science and Technology, Association for Information Science & Technology, vol. 58(13), pages 2078-2091, November.
    7. Ben Jabeur, Sami & Ballouk, Hossein & Ben Arfi, Wissal & Sahut, Jean-Michel, 2023. "Artificial intelligence applications in fake review detection: Bibliometric analysis and future avenues for research," Journal of Business Research, Elsevier, vol. 158(C).
    8. Hannigan, Timothy R. & McCarthy, Ian P. & Spicer, André, 2024. "Beware of botshit: How to manage the epistemic risks of generative chatbots," Business Horizons, Elsevier, vol. 67(5), pages 471-486.
    9. Levin, Irwin P & Gaeth, Gary J, 1988. "How Consumers Are Affected by the Framing of Attribute Information before and after Consuming the Product," Journal of Consumer Research, Journal of Consumer Research Inc., vol. 15(3), pages 374-378, December.
    10. Ferraro, Carla & Demsar, Vlad & Sands, Sean & Restrepo, Mariluz & Campbell, Colin, 2024. "The paradoxes of generative AI-enabled customer service: A guide for managers," Business Horizons, Elsevier, vol. 67(5), pages 549-559.
    11. Snehasish Banerjee & Alton Y. K. Chua & Jung-Jae Kim, 2017. "Don't be deceived: Using linguistic analysis to learn how to discern online review authenticity," Journal of the Association for Information Science & Technology, Association for Information Science & Technology, vol. 68(6), pages 1525-1538, June.
    12. Chris Forman & Anindya Ghose & Batia Wiesenfeld, 2008. "Examining the Relationship Between Reviews and Sales: The Role of Reviewer Identity Disclosure in Electronic Markets," Information Systems Research, INFORMS, vol. 19(3), pages 291-313, September.
    13. Cui, Yuanyuan (Gina) & van Esch, Patrick & Phelan, Steven, 2024. "How to build a competitive advantage for your brand using generative AI," Business Horizons, Elsevier, vol. 67(5), pages 583-594.
    14. Osadchaya, Elena & Marder, Ben & Yule, Jennifer A. & Yau, Amy & Lavertu, Laura & Stylos, Nikolaos & Oliver, Sebastian & Angell, Rob & Regt, Anouk de & Gao, Liyu & Qi, Kang & Zhang, Will Zhiyuan & Zhan, 2024. "To ChatGPT, or not to ChatGPT: Navigating the paradoxes of generative AI in the advertising industry," Business Horizons, Elsevier, vol. 67(5), pages 571-581.
    15. John, Deborah Roedder, 1999. "Consumer Socialization of Children: A Retrospective Look at Twenty-Five Years of Research," Journal of Consumer Research, Journal of Consumer Research Inc., vol. 26(3), pages 183-213, December.
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