Fairness, Equality, and Power in Algorithmic Decision-Making

Maximilian Kasy,Rediet Abebe

Published 2021 in Conference on Fairness, Accountability and Transparency

ABSTRACT

Much of the debate on the impact of algorithms is concerned with fairness, defined as the absence of discrimination for individuals with the same "merit." Drawing on the theory of justice, we argue that leading notions of fairness suffer from three key limitations: they legitimize inequalities justified by "merit;" they are narrowly bracketed, considering only differences of treatment within the algorithm; and they consider between-group and not within-group differences. We contrast this fairness-based perspective with two alternate perspectives: the first focuses on inequality and the causal impact of algorithms and the second on the distribution of power. We formalize these perspectives drawing on techniques from causal inference and empirical economics, and characterize when they give divergent evaluations. We present theoretical results and empirical examples which demonstrate this tension. We further use these insights to present a guide for algorithmic auditing and discuss the importance of inequality- and power-centered frameworks in algorithmic decision-making.

PUBLICATION RECORD

  • Publication year

    2021

  • Venue

    Conference on Fairness, Accountability and Transparency

  • Publication date

    2021-03-03

  • Fields of study

    Philosophy, Computer Science, Economics

  • Identifiers
  • External record

    Open on Semantic Scholar

  • Source metadata

    Semantic Scholar

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