When Algorithms Play Favorites: Lookism in the Generation and Perception of Faces
Authors: Doh, M. , Gulati, A. , Mancas, M., Oliver, N.
Publication: European Workshop on Algorithmic Fairness, 2025
This paper examines how synthetically generated faces and machine learning-based gender classification algorithms are affected by algorithmic lookism, the preferential treatment based on appearance. In experiments with 12,000 synthetically generated faces, we find that: (1) text-to-image (T2I) systems tend to associate facial attractiveness to unrelated positive traits like intelligence and trustworthiness; and (2) gender classification models exhibit higher error rates on ``less-attractive’’ faces, especially among non-White women. These result raise fairness concerns regarding digital identity systems