Easily Accessible Text-to-Image Generation Amplifies Demographic Stereotypes at Large Scale
Stanford University · Columbia University · +2 more institutions
Abstract
Machine learning models that convert user-written text descriptions into images are now widely available online and used by millions of users to generate millions of images a day. We investigate the potential for these models to amplify dangerous and complex stereotypes. We find a broad range of ordinary prompts produce stereotypes, including prompts simply mentioning traits, descriptors, occupations, or objects. For example, we find cases of prompting for basic traits or social roles resulting in images reinforcing whiteness as ideal, prompting for occupations resulting in amplification of racial and gender disparities, and prompting for objects resulting in reification of American norms. Stereotypes are…
Citation impact
- FWCI
- 136.95
- Percentile
- 100%
- References
- 34
Authors
10Topics & keywords
- Scale (ratio)
- Computer science
- Image (mathematics)
- Data science
- Artificial intelligence
- Geography
- Cartography