Abstract
We show that people’s perceptions of public figures’ personalities can be accurately predicted from their names’ location in GPT-3’s semantic space. We collected Big Five personality perceptions of 226 public figures from 600 human raters. Cross-validated linear regression was used to predict human perceptions from public figures’ name embeddings extracted from GPT-3. The models’ accuracy ranged from r =.78 to.88 without controls and from r =.53 to.70 when controlling for public figures’ likability and demographics, after correcting for attenuation. Prediction models showed high face validity as revealed by the personality-descriptive adjectives occupying their extremes. Our findings reveal that GPT-3 word embeddings capture signals pertaining to individual differences and intimate traits.
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CITATION STYLE
Cao, X., & Kosinski, M. (2024). Large language models know how the personality of public figures is perceived by the general public. Scientific Reports, 14(1). https://doi.org/10.1038/s41598-024-57271-z
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