Sept. 8, 2023, 4 p.m. | Alyssa Hughes

Microsoft Research www.microsoft.com

Gender, race, and age disparities in AI-generated images persist. This AIES 2023 study on text-to-image models shows that even basic prompts can lead to underrepresentation, calling for responsible bias mitigation strategies.


The post Understanding social biases through the text-to-image generation lens appeared first on Microsoft Research.

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