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Four dimensions characterize attributions from faces using a representative set of English trait words

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  • Chujun Lin

    (California Institute of Technology)

  • Umit Keles

    (California Institute of Technology)

  • Ralph Adolphs

    (California Institute of Technology
    California Institute of Technology)

Abstract

People readily (but often inaccurately) attribute traits to others based on faces. While the details of attributions depend on the language available to describe social traits, psychological theories argue that two or three dimensions (such as valence and dominance) summarize social trait attributions from faces. However, prior work has used only a small number of trait words (12 to 18), limiting conclusions to date. In two large-scale, preregistered studies we ask participants to rate 100 faces (obtained from existing face stimuli sets), using a list of 100 English trait words that we derived using deep neural network analysis of words that have been used by other participants in prior studies to describe faces. In study 1 we find that these attributions are best described by four psychological dimensions, which we interpret as “warmth”, “competence”, “femininity”, and “youth”. In study 2 we partially reproduce these four dimensions using the same stimuli among additional participant raters from multiple regions around the world, in both aggregated and individual-level data. These results provide a comprehensive characterization of trait attributions from faces, although we note our conclusions are limited by the scope of our study (in particular we note only white faces and English trait words were included).

Suggested Citation

  • Chujun Lin & Umit Keles & Ralph Adolphs, 2021. "Four dimensions characterize attributions from faces using a representative set of English trait words," Nature Communications, Nature, vol. 12(1), pages 1-15, December.
  • Handle: RePEc:nat:natcom:v:12:y:2021:i:1:d:10.1038_s41467-021-25500-y
    DOI: 10.1038/s41467-021-25500-y
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    Cited by:

    1. Huixin Tan & Xiaoyu Zeng & Jun Ni & Kun Liang & Cuiping Xu & Yanyang Zhang & Jiaxin Wang & Zizhou Li & Jiaxin Yang & Chunlei Han & Yuan Gao & Xinguang Yu & Shihui Han & Fangang Meng & Yina Ma, 2024. "Intracranial EEG signals disentangle multi-areal neural dynamics of vicarious pain perception," Nature Communications, Nature, vol. 15(1), pages 1-18, December.

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