FAIRPLAI: A Human-in-the-Loop Approach to Fair and Private Machine Learning
David Sanchez Jr., Holly Lopez, Michelle Buraczyk, Anantaa Kotal

TL;DR
FAIRPLAI is a practical human-in-the-loop framework that balances accuracy, privacy, and fairness in machine learning systems, enabling stakeholder input and transparent trade-offs for socially impactful applications.
Contribution
It introduces a novel framework that integrates human oversight into privacy and fairness trade-offs, enhancing transparency and stakeholder control in ML deployment.
Findings
Consistently preserves strong privacy protections.
Reduces fairness disparities compared to automated baselines.
Provides an interpretable process for managing accuracy, privacy, and fairness.
Abstract
As machine learning systems move from theory to practice, they are increasingly tasked with decisions that affect healthcare access, financial opportunities, hiring, and public services. In these contexts, accuracy is only one piece of the puzzle - models must also be fair to different groups, protect individual privacy, and remain accountable to stakeholders. Achieving all three is difficult: differential privacy can unintentionally worsen disparities, fairness interventions often rely on sensitive data that privacy restricts, and automated pipelines ignore that fairness is ultimately a human and contextual judgment. We introduce FAIRPLAI (Fair and Private Learning with Active Human Influence), a practical framework that integrates human oversight into the design and deployment of machine learning systems. FAIRPLAI works in three ways: (1) it constructs privacy-fairness frontiers that…
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Taxonomy
TopicsEthics and Social Impacts of AI · Privacy-Preserving Technologies in Data · Mobile Crowdsensing and Crowdsourcing
