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Comparing ChatGPT with human judgements of social traits from face photographs

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Version 2 2025-06-11, 09:47
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journal contribution
posted on 2025-06-11, 09:47 authored by Robin KramerRobin Kramer
<p>Facial first impressions of social traits play an influential role in our everyday lives. With the advent of artificial intelligence techniques, researchers have begun to employ such tools in the prediction of human impressions formed from the face alone. ChatGPT's latest version features the ability to interpret images as input, and so begs the question: does the chatbot's judgements of social traits from face images align with human judgements? To this end, I carried out a series of studies utilising a pre-existing face image set and its accompanying norming data. In Study 1a, with a focus on three core trait dimensions (attractiveness, dominance, and trustworthiness), I presented ChatGPT with pairs of faces which had been rated as high versus low on a given trait. For the majority of pairs, the chatbot's responses aligned with human judgements. In Study 1b, I found that ChatGPT's ratings of attractiveness showed medium to large associations with those provided by human observers. Finally, I investigated the possibility of biases in the chatbot's perceptions. While Study 2 found no support for an extreme form of race bias in judgements of social traits, the results of Study 3 providing evidence of an attractiveness halo effect – more attractive faces were also judged to be more confident, intelligent, and sociable. Taken together, these results suggest that ChatGPT's responses align with human judgements of social traits, including the presence of a halo effect. As such, I discuss some of the implications for ChatGPT's use across several domains.</p>

History

School affiliated with

  • School of Psychology, Sport Science and Wellbeing (Research Outputs)

Publication Title

Computers in Human Behavior: Artificial Humans

Volume

4

Pages/Article Number

100156

Publisher

Elsevier

eISSN

2949-8821

Date Submitted

2024-11-09

Date Accepted

2025-04-14

Date of First Publication

2025-04-15

Date of Final Publication

2025-05-01

Open Access Status

  • Open Access

Date Document First Uploaded

2025-04-23

Will your conference paper be published in proceedings?

  • N/A