Evaluating Proposed Fairness Models for Face Recognition Algorithms
John J. Howard, Eli J. Laird, Yevgeniy B. Sirotin, Rebecca E. Rubin,, Jerry L. Tipton, and Arun R. Vemury

TL;DR
This paper evaluates existing fairness measures for face recognition algorithms, proposes interpretability criteria, introduces a new fairness measure called GARBE, and provides an open-source dataset of demographic error rates.
Contribution
It characterizes existing fairness measures, proposes the FFMC interpretability criteria, develops the GARBE fairness measure, and releases a large open-source dataset of demographic error rates.
Findings
Existing fairness measures are difficult to interpret in practice.
The proposed GARBE measure helps compare algorithms based on fairness and accuracy.
The open-source dataset enables further research in face recognition fairness.
Abstract
The development of face recognition algorithms by academic and commercial organizations is growing rapidly due to the onset of deep learning and the widespread availability of training data. Though tests of face recognition algorithm performance indicate yearly performance gains, error rates for many of these systems differ based on the demographic composition of the test set. These "demographic differentials" in algorithm performance can contribute to unequal or unfair outcomes for certain groups of people, raising concerns with increased worldwide adoption of face recognition systems. Consequently, regulatory bodies in both the United States and Europe have proposed new rules requiring audits of biometric systems for "discriminatory impacts" (European Union Artificial Intelligence Act) and "fairness" (U.S. Federal Trade Commission). However, no standard for measuring fairness in…
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Taxonomy
TopicsFace recognition and analysis · Demographic Trends and Gender Preferences
