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Bias and Variance of Post-processing in Differential Privacy

Authors :
Zhu, Keyu
Van Hentenryck, Pascal
Fioretto, Ferdinando
Publication Year :
2020

Abstract

Post-processing immunity is a fundamental property of differential privacy: it enables the application of arbitrary data-independent transformations to the results of differentially private outputs without affecting their privacy guarantees. When query outputs must satisfy domain constraints, post-processing can be used to project the privacy-preserving outputs onto the feasible region. Moreover, when the feasible region is convex, a widely adopted class of post-processing steps is also guaranteed to improve accuracy. Post-processing has been applied successfully in many applications including census data-release, energy systems, and mobility. However, its effects on the noise distribution is poorly understood: It is often argued that post-processing may introduce bias and increase variance. This paper takes a first step towards understanding the properties of post-processing. It considers the release of census data and examines, both theoretically and empirically, the behavior of a widely adopted class of post-processing functions.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2010.04327
Document Type :
Working Paper