Which Humans?


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    Which Humans 09222023.pdf
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    Created: September 22, 2023
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    Last edited: June 20, 2024
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    Abstract

    Large language models (LLMs) have recently made vast advances in both generating and analyzing textual data. Technical reports often compare LLMs’ outputs with “human” performance on various tests. Here, we ask, “Which humans?” Much of the existing literature largely ignores the fact that humans are a cultural species with substantial psychological diversity around the globe that is not fully captured by the textual data on which current LLMs have been trained. We show that LLMs’ responses to psychological measures are an outlier compared with large-scale cross-cultural data, and that their performance on cognitive psychological tasks most resembles that of people from Western, Educated, Industrialized, Rich, and Democratic (WEIRD) societies but declines rapidly as we move away from these populations (r = -.70). Ignoring cross-cultural diversity in both human and machine psychology raises numerous scientific and ethical issues. We close by discussing ways to mitigate the WEIRD bias in future generations of generative language models.

    preprint DOI

    https://doi.org/10.31234/osf.io/5b26t

    License

    CC-By Attribution 4.0 International

    Disciplines

    Cultural Psychology Evolution Cognitive Psychology Linguistics Theory and Philosophy of Science Social and Personality Psychology Social and Behavioral Sciences

    Tags

    Artificial Intelligence Culture Human Psychology Large Language Models Machine Psychology

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