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Uniformity Testing under User-Level Local Privacy

Main:23 Pages
1 Figures
Bibliography:5 Pages
Appendix:8 Pages
Abstract

We initiate the study of distribution testing under \emph{user-level} local differential privacy, where each of nn users contributes mm samples from the unknown underlying distribution. This setting, albeit very natural, is significantly more challenging that the usual locally private setting, as for the same parameter ε\varepsilon the privacy guarantee must now apply to a full batch of mm data points. While some recent work consider distribution \emph{learning} in this user-level setting, nothing was known for even the most fundamental testing task, uniformity testing (and its generalization, identity testing).We address this gap, by providing (nearly) sample-optimal user-level LDP algorithms for uniformity and identity testing. Motivated by practical considerations, our main focus is on the private-coin, symmetric setting, which does not require users to share a common random seed nor to have been assigned a globally unique identifier.

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