Un-Straightening Generative AI: How Queer Artists Surface and Challenge the Normativity of Generative AI Models
Taylor, Jordan, Mire, Joel, Spektor, Franchesca, DeVrio, Alicia, Sap, Maarten, Zhu, Haiyi, Fox, Sarah
–arXiv.org Artificial Intelligence
Queer people are often discussed as targets of bias, harm, or discrimination in research on generative AI. However, the specific ways that queer people engage with generative AI, and thus possible uses that support queer people, have yet to be explored. We conducted a workshop study with 13 queer artists, during which we gave participants access to GPT-4 and DALL-E 3 and facilitated group sensemaking activities. We found our participants struggled to use these models due to various normative values embedded in their designs, such as hyper-positivity and anti-sexuality. We describe various strategies our participants developed to overcome these models' limitations and how, nevertheless, our participants found value in these highly-normative technologies. Drawing on queer feminist theory, we discuss implications for the conceptualization of "state-of-the-art" models and consider how FAccT researchers might support queer alternatives.
arXiv.org Artificial Intelligence
Mar-12-2025
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