(Local) Differential Privacy has NO Disparate Impact on Fairness

April 25, 2023 ยท Declared Dead ยท ๐Ÿ› Database Security

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Authors Hรฉber H. Arcolezi, Karima Makhlouf, Catuscia Palamidessi arXiv ID 2304.12845 Category cs.LG: Machine Learning Cross-listed cs.CR Citations 10 Venue Database Security Last Checked 4 months ago
Abstract
In recent years, Local Differential Privacy (LDP), a robust privacy-preserving methodology, has gained widespread adoption in real-world applications. With LDP, users can perturb their data on their devices before sending it out for analysis. However, as the collection of multiple sensitive information becomes more prevalent across various industries, collecting a single sensitive attribute under LDP may not be sufficient. Correlated attributes in the data may still lead to inferences about the sensitive attribute. This paper empirically studies the impact of collecting multiple sensitive attributes under LDP on fairness. We propose a novel privacy budget allocation scheme that considers the varying domain size of sensitive attributes. This generally led to a better privacy-utility-fairness trade-off in our experiments than the state-of-art solution. Our results show that LDP leads to slightly improved fairness in learning problems without significantly affecting the performance of the models. We conduct extensive experiments evaluating three benchmark datasets using several group fairness metrics and seven state-of-the-art LDP protocols. Overall, this study challenges the common belief that differential privacy necessarily leads to worsened fairness in machine learning.
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