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Biases in an artificial intelligence image-generator’s depictions of healthy aging and Alzheimer’s
0
Zitationen
5
Autoren
2025
Jahr
Abstract
The findings highlight AI's potential to reinforce stigmatizing stereotypes through biased image generation. Recommendations include selecting prompts carefully to avoid negative depictions and advocating for greater AI explainability and inclusivity by design. Future research should explore other AI models, other forms of bias, and strategies to mitigate biases.
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