SAFES: Sequential Privacy and Fairness Enhancing Data Synthesis for Responsible AI
November 14, 2024 ยท Declared Dead ยท ๐ ACM Transactions on Probabilistic Machine Learning
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Authors
Spencer Giddens, Xiaon Lang, Fang Liu
arXiv ID
2411.09178
Category
cs.LG: Machine Learning
Cross-listed
cs.CR
Citations
1
Venue
ACM Transactions on Probabilistic Machine Learning
Last Checked
4 months ago
Abstract
As data-driven and AI-based decision making gains widespread adoption across disciplines, it is crucial that both data privacy and decision fairness are appropriately addressed. Although differential privacy (DP) provides a robust framework for guaranteeing privacy and methods are available to improve fairness, most prior work treats the two concerns separately. Even though there are existing approaches that consider privacy and fairness simultaneously, they typically focus on a single specific learning task, limiting their generalizability. In response, we introduce SAFES, a Sequential PrivAcy and Fairness Enhancing data Synthesis procedure that sequentially combines DP data synthesis with a fairness-aware data preprocessing step. SAFES allows users flexibility in navigating the privacy-fairness-utility trade-offs. We illustrate SAFES with different DP synthesizers and fairness-aware data preprocessing methods and run extensive experiments on multiple real datasets to examine the privacy-fairness-utility trade-offs of synthetic data generated by SAFES. Empirical evaluations demonstrate that for reasonable privacy loss, SAFES-generated synthetic data can achieve significantly improved fairness metrics with relatively low utility loss.
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