Computer Science > Machine Learning
[Submitted on 6 Dec 2018 (v1), last revised 31 May 2019 (this version, v3)]
Title:Differentially Private Fair Learning
View PDFAbstract:Motivated by settings in which predictive models may be required to be non-discriminatory with respect to certain attributes (such as race), but even collecting the sensitive attribute may be forbidden or restricted, we initiate the study of fair learning under the constraint of differential privacy. We design two learning algorithms that simultaneously promise differential privacy and equalized odds, a 'fairness' condition that corresponds to equalizing false positive and negative rates across protected groups. Our first algorithm is a private implementation of the equalized odds post-processing approach of [Hardt et al., 2016]. This algorithm is appealingly simple, but must be able to use protected group membership explicitly at test time, which can be viewed as a form of 'disparate treatment'. Our second algorithm is a differentially private version of the oracle-efficient in-processing approach of [Agarwal et al., 2018] that can be used to find the optimal fair classifier, given access to a subroutine that can solve the original (not necessarily fair) learning problem. This algorithm is more complex but need not have access to protected group membership at test time. We identify new tradeoffs between fairness, accuracy, and privacy that emerge only when requiring all three properties, and show that these tradeoffs can be milder if group membership may be used at test time. We conclude with a brief experimental evaluation.
Submission history
From: Saeed Sharifi-Malvajerdi [view email][v1] Thu, 6 Dec 2018 18:24:52 UTC (307 KB)
[v2] Tue, 5 Feb 2019 16:19:19 UTC (535 KB)
[v3] Fri, 31 May 2019 18:01:49 UTC (535 KB)
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