The Forgotten Margins of AI Ethics
Abeba Birhane, Elayne Ruane, Thomas Laurent, Matthew S. Brown,, Johnathan Flowers, Anthony Ventresque, Christopher L. Dancy

TL;DR
This paper critically examines AI Ethics literature, highlighting its historical roots, categorizing current approaches, and emphasizing the need for deeper engagement with marginalized groups and structural power issues.
Contribution
It provides a comprehensive categorization of AI Ethics research and identifies gaps in addressing marginalized groups and power asymmetries.
Findings
Most papers have shallow consideration of marginalized groups.
Current literature is rooted in Western philosophy, statistical methods, and critical studies.
Field needs more focus on concrete use-cases and structural power analysis.
Abstract
How has recent AI Ethics literature addressed topics such as fairness and justice in the context of continued social and structural power asymmetries? We trace both the historical roots and current landmark work that have been shaping the field and categorize these works under three broad umbrellas: (i) those grounded in Western canonical philosophy, (ii) mathematical and statistical methods, and (iii) those emerging from critical data/algorithm/information studies. We also survey the field and explore emerging trends by examining the rapidly growing body of literature that falls under the broad umbrella of AI Ethics. To that end, we read and annotated peer-reviewed papers published over the past four years in two premier conferences: FAccT and AIES. We organize the literature based on an annotation scheme we developed according to three main dimensions: whether the paper deals with…
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