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Online images amplify gender bias

Author

Listed:
  • Douglas Guilbeault

    (University of California, Berkeley)

  • Solène Delecourt

    (University of California, Berkeley)

  • Tasker Hull

    (Psiphon Inc.)

  • Bhargav Srinivasa Desikan

    (Institute For Public Policy Research)

  • Mark Chu

    (Columbia University)

  • Ethan Nadler

    (University of Southern California)

Abstract

Each year, people spend less time reading and more time viewing images1, which are proliferating online2–4. Images from platforms such as Google and Wikipedia are downloaded by millions every day2,5,6, and millions more are interacting through social media, such as Instagram and TikTok, that primarily consist of exchanging visual content. In parallel, news agencies and digital advertisers are increasingly capturing attention online through the use of images7,8, which people process more quickly, implicitly and memorably than text9–12. Here we show that the rise of images online significantly exacerbates gender bias, both in its statistical prevalence and its psychological impact. We examine the gender associations of 3,495 social categories (such as ‘nurse’ or ‘banker’) in more than one million images from Google, Wikipedia and Internet Movie Database (IMDb), and in billions of words from these platforms. We find that gender bias is consistently more prevalent in images than text for both female- and male-typed categories. We also show that the documented underrepresentation of women online13–18 is substantially worse in images than in text, public opinion and US census data. Finally, we conducted a nationally representative, preregistered experiment that shows that googling for images rather than textual descriptions of occupations amplifies gender bias in participants’ beliefs. Addressing the societal effect of this large-scale shift towards visual communication will be essential for developing a fair and inclusive future for the internet.

Suggested Citation

  • Douglas Guilbeault & Solène Delecourt & Tasker Hull & Bhargav Srinivasa Desikan & Mark Chu & Ethan Nadler, 2024. "Online images amplify gender bias," Nature, Nature, vol. 626(8001), pages 1049-1055, February.
  • Handle: RePEc:nat:nature:v:626:y:2024:i:8001:d:10.1038_s41586-024-07068-x
    DOI: 10.1038/s41586-024-07068-x
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    Cited by:

    1. Christian Peukert & Florian Abeillon & Jérémie Haese & Franziska Kaiser & Alexander Staub, 2024. "Strategic Behavior and AI Training Data," CESifo Working Paper Series 11099, CESifo.
    2. Christian Peukert & Florian Abeillon & J'er'emie Haese & Franziska Kaiser & Alexander Staub, 2024. "Strategic Behavior and AI Training Data," Papers 2404.18445, arXiv.org.

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