What Is the Point of Equality in Machine Learning Fairness? Beyond Equality of Opportunity
Youjin Kong

TL;DR
This paper critiques the common focus on distributive equality in ML fairness, proposing a comprehensive egalitarian framework that includes both distributive and relational equality to better address social harms.
Contribution
It introduces a novel multifaceted egalitarian framework for ML fairness, integrating distributive and relational equality, grounded in social philosophy, to address both allocative and representational harms.
Findings
Addresses limitations of solely distributive fairness
Proposes a comprehensive ethical framework for ML fairness
Outlines practical implementation pathways
Abstract
Fairness in machine learning (ML) has become a rapidly growing area of research. But why, in the first place, is unfairness in ML wrong? And why should we care about improving fairness? Most fair-ML research implicitly appeals to distributive equality: the idea that desirable benefits and goods, such as opportunities (e.g., Barocas et al., 2023), should be equally distributed across society. Unfair ML models, then, are seen as wrong because they unequally distribute such benefits. This paper argues that this exclusive focus on distributive equality offers an incomplete and potentially misleading ethical foundation. Grounding ML fairness in egalitarianism--the view that equality is a fundamental moral and social ideal--requires challenging structural inequality: systematic, institutional, and durable arrangements that privilege some groups while disadvantaging others. Structural…
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Taxonomy
TopicsEthics and Social Impacts of AI · Artificial Intelligence in Healthcare and Education · Explainable Artificial Intelligence (XAI)
MethodsFocus
