Escaping the "Impossibility of Fairness": From Formal to Substantive Algorithmic Fairness

07/09/2021
by   Ben Green, et al.
4

In the face of compounding crises of social and economic inequality, many have turned to algorithmic decision-making to achieve greater fairness in society. As these efforts intensify, reasoning within the burgeoning field of "algorithmic fairness" increasingly shapes how fairness manifests in practice. This paper interrogates whether algorithmic fairness provides the appropriate conceptual and practical tools for enhancing social equality. I argue that the dominant, "formal" approach to algorithmic fairness is ill-equipped as a framework for pursuing equality, as its narrow frame of analysis generates restrictive approaches to reform. In light of these shortcomings, I propose an alternative: a "substantive" approach to algorithmic fairness that centers opposition to social hierarchies and provides a more expansive analysis of how to address inequality. This substantive approach enables more fruitful theorizing about the role of algorithms in combatting oppression. The distinction between formal and substantive algorithmic fairness is exemplified by each approach's responses to the "impossibility of fairness" (an incompatibility between mathematical definitions of algorithmic fairness). While the formal approach requires us to accept the "impossibility of fairness" as a harsh limit on efforts to enhance equality, the substantive approach allows us to escape the "impossibility of fairness" by suggesting reforms that are not subject to this false dilemma and that are better equipped to ameliorate conditions of social oppression.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/08/2021

The FairCeptron: A Framework for Measuring Human Perceptions of Algorithmic Fairness

Measures of algorithmic fairness often do not account for human percepti...
research
11/08/2019

A Human-in-the-loop Framework to Construct Context-dependent Mathematical Formulations of Fairness

Despite the recent surge of interest in designing and guaranteeing mathe...
research
09/10/2018

A Moral Framework for Understanding of Fair ML through Economic Models of Equality of Opportunity

Equality of opportunity (EOP) is an extensively studied conception of fa...
research
06/04/2020

The effects of algorithmic flagging on fairness: quasi-experimental evidence from Wikipedia

Online community moderators often rely on social signals like whether or...
research
01/14/2019

Putting Fairness Principles into Practice: Challenges, Metrics, and Improvements

As more researchers have become aware of and passionate about algorithmi...
research
02/05/2023

The Unfairness of Fair Machine Learning: Levelling down and strict egalitarianism by default

In recent years fairness in machine learning (ML) has emerged as a highl...

Please sign up or login with your details

Forgot password? Click here to reset