On the Compatibility of Privacy and Fairness

Rachel Cummings, Varun Gupta, Dhamma Kimpara, Jamie Morgenstern
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引用次数: 113

Abstract

In this work, we investigate whether privacy and fairness can be simultaneously achieved by a single classifier in several different models. Some of the earliest work on fairness in algorithm design defined fairness as a guarantee of similar outputs for "similar'' input data, a notion with tight technical connections to differential privacy. We study whether tensions exist between differential privacy and statistical notions of fairness, namely Equality of False Positives and Equality of False Negatives (EFP/EFN). We show that even under full distributional access, there are cases where the constraint of differential privacy precludes exact EFP/EFN. We then turn to ask whether one can learn a differentially private classifier which approximately satisfies EFP/EFN, and show the existence of a PAC learner which is private and approximately fair with high probability. We conclude by giving an efficient algorithm for classification that maintains utility and satisfies both privacy and approximate fairness with high probability.
论隐私与公平的兼容性
在这项工作中,我们研究了在几个不同的模型中,单个分类器是否可以同时实现隐私和公平。一些关于算法设计公平性的早期工作将公平性定义为对“相似”输入数据的相似输出的保证,这一概念与差分隐私有着紧密的技术联系。我们研究了差异隐私和统计公平概念之间是否存在紧张关系,即假阳性平等和假阴性平等(EFP/EFN)。我们表明,即使在完全分布访问下,也存在差分隐私约束排除精确EFP/EFN的情况。然后,我们转而问是否可以学习近似满足EFP/EFN的差分私有分类器,并证明存在一个高概率私有且近似公平的PAC学习者。最后给出了一种有效的分类算法,该算法既保持效用,又高概率地满足隐私性和近似公平性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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