"I don't see myself represented here at all": User Experiences of Stable Diffusion Outputs Containing Representational Harms across Gender Identities and Nationalities
Sourojit Ghosh, Nina Lutz, and Aylin Caliskan

TL;DR
This study explores user experiences with Stable Diffusion, revealing significant representational harms and mismatches between user expectations and generated images, especially affecting marginalized groups.
Contribution
It provides the first large-scale human-centered analysis of Stable Diffusion's societal harms, combining qualitative and quantitative methods to highlight user-perceived biases.
Findings
Large disconnect between user expectations and outputs
Stable Diffusion reproduces harmful stereotypes of marginalized identities
Users report dehumanizing and inaccurate representations
Abstract
Though research into text-to-image generators (T2Is) such as Stable Diffusion has demonstrated their amplification of societal biases and potentials to cause harm, such research has primarily relied on computational methods instead of seeking information from real users who experience harm, which is a significant knowledge gap. In this paper, we conduct the largest human subjects study of Stable Diffusion, with a combination of crowdsourced data from 133 crowdworkers and 14 semi-structured interviews across diverse countries and genders. Through a mixed-methods approach of intra-set cosine similarity hierarchies (i.e., comparing multiple Stable Diffusion outputs for the same prompt with each other to examine which result is 'closest' to the prompt) and qualitative thematic analysis, we first demonstrate a large disconnect between user expectations for Stable Diffusion outputs with those…
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Taxonomy
TopicsGender Politics and Representation · Cultural Industries and Urban Development
