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Social norm bias: residual harms of fairness-aware algorithms

  • Myra Cheng*
  • , Maria De-Arteaga
  • , Lester Mackey
  • , Adam Tauman Kalai
  • *Autor/a de correspondencia de este trabajo

Producción científica: Artículo en revista indizadaArtículorevisión exhaustiva

8 Citas (Scopus)

Resumen

Many modern machine learning algorithms mitigate bias by enforcing fairness constraints across coarsely-defined groups related to a sensitive attribute like gender or race. However, these algorithms seldom account for within-group heterogeneity and biases that may disproportionately affect some members of a group. In this work, we characterize Social Norm Bias (SNoB), a subtle but consequential type of algorithmic discrimination that may be exhibited by machine learning models, even when these systems achieve group fairness objectives. We study this issue through the lens of gender bias in occupation classification. We quantify SNoB by measuring how an algorithm’s predictions are associated with conformity to inferred gender norms. When predicting if an individual belongs to a male-dominated occupation, this framework reveals that “fair” classifiers still favor biographies written in ways that align with inferred masculine norms. We compare SNoB across algorithmic fairness techniques and show that it is frequently a residual bias, and post-processing approaches do not mitigate this type of bias at all.

Idioma originalInglés
Páginas (desde-hasta)1858-1884
Número de páginas27
PublicaciónData Mining and Knowledge Discovery
Volumen37
N.º5
DOI
EstadoPublicada - sept 2023
Publicado de forma externa

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