Causal Fairness for Outcome Control
Drago Plecko, Elias Bareinboim

TL;DR
This paper introduces causal fairness concepts for outcome control in automated decision-making, proposing algorithms to ensure equitable benefits across protected attributes using causal analysis.
Contribution
It develops the notion of benefit fairness, causal benefit fairness, and algorithms to optimize outcomes while ensuring fairness in decision processes.
Findings
Proposes benefit fairness as a minimal fairness criterion.
Introduces causal tools to analyze the influence of protected attributes.
Develops optimization procedures for maximizing outcomes with fairness constraints.
Abstract
As society transitions towards an AI-based decision-making infrastructure, an ever-increasing number of decisions once under control of humans are now delegated to automated systems. Even though such developments make various parts of society more efficient, a large body of evidence suggests that a great deal of care needs to be taken to make such automated decision-making systems fair and equitable, namely, taking into account sensitive attributes such as gender, race, and religion. In this paper, we study a specific decision-making task called outcome control in which an automated system aims to optimize an outcome variable while being fair and equitable. The interest in such a setting ranges from interventions related to criminal justice and welfare, all the way to clinical decision-making and public health. In this paper, we first analyze through causal lenses the notion of…
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Taxonomy
TopicsEthics and Social Impacts of AI
