Fairness Indicators for Systematic Assessments of Visual Feature Extractors
Priya Goyal, Adriana Romero Soriano, Caner Hazirbas, Levent Sagun,, Nicolas Usunier

TL;DR
This paper introduces three standardized fairness indicators for evaluating biases and harms in computer vision systems, focusing on label associations, demographic representation, and geographic performance disparities.
Contribution
It proposes a set of fairness indicators using publicly available datasets, with defined protocols applicable to various computer vision models, to facilitate fairness assessments.
Findings
Indicators effectively identify biases in off-the-shelf models
Data domain and model size influence fairness metrics
Applicability across diverse computer vision paradigms
Abstract
Does everyone equally benefit from computer vision systems? Answers to this question become more and more important as computer vision systems are deployed at large scale, and can spark major concerns when they exhibit vast performance discrepancies between people from various demographic and social backgrounds. Systematic diagnosis of fairness, harms, and biases of computer vision systems is an important step towards building socially responsible systems. To initiate an effort towards standardized fairness audits, we propose three fairness indicators, which aim at quantifying harms and biases of visual systems. Our indicators use existing publicly available datasets collected for fairness evaluations, and focus on three main types of harms and bias identified in the literature, namely harmful label associations, disparity in learned representations of social and demographic traits, and…
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Taxonomy
TopicsEthics and Social Impacts of AI
