Ethical Fairness without Demographics in Human-Centered AI
Shaily Roy, Harshit Sharma, Daniel A. Adler, Tanzeem Choudhury, Asif Salekin

TL;DR
This paper introduces Flare, a demographic-agnostic framework that enhances ethical fairness in human-centered AI by leveraging Fisher Information to detect and improve latent disparities without using sensitive demographic data.
Contribution
The paper presents Flare, the first method to align fairness with ethics without demographic data, using Fisher-guided regularization and a new ethical fairness metric suite.
Findings
Flare improves ethical fairness across diverse datasets.
It uncovers hidden disparities without demographic attributes.
The approach maintains global stability and ethical balance.
Abstract
Computational models are increasingly embedded in human-centered domains such as healthcare, education, workplace analytics, and digital well-being, where their predictions directly influence individual outcomes and collective welfare. In such contexts, achieving high accuracy alone is insufficient; models must also act ethically and equitably across diverse populations. However, fair AI approaches that rely on demographic attributes are impractical, as such information is often unavailable, privacy-sensitive, or restricted by regulatory frameworks. Moreover, conventional parity-based fairness approaches, while aiming for equity, can inadvertently violate core ethical principles by trading off subgroup performance or stability. To address this challenge, we present Flare (Fisher-guided LAtent-subgroup learning with do-no-harm REgularization), the first demographic-agnostic framework…
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Taxonomy
TopicsEthics and Social Impacts of AI · Artificial Intelligence in Healthcare and Education · Adversarial Robustness in Machine Learning
