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Connecting Robust Shuffle Privacy and Pan-Privacy

Victor Balcer, Albert Cheu, Matthew Joseph, Jieming Mao

2021Society for Industrial and Applied Mathematics eBooks27 citationsDOIOpen Access PDF

Abstract

In the shuffle model of differential privacy, data-holding users send randomized messages to a secure shuffler, the shuffler permutes the messages, and the resulting collection of messages must be differentially private with regard to user data. In the pan-private model, an algorithm processes a stream of data while maintaining an internal state that is differentially private with regard to the stream data. We give evidence connecting these two apparently different models. Our results focus on robustly shuffle private protocols, whose privacy guarantees are not greatly affected by malicious users. First, we give robustly shuffle private protocols and upper bounds for counting distinct elements and uniformity testing. Second, we use pan-private lower bounds to prove robustly shuffle private lower bounds for both problems. Focusing on the dependence on the domain size k, we find that robust shuffle privacy and pan-privacy have additive error for counting distinct elements. For uniformity testing, we give a robustly shuffle private protocol with sample complexity Õ(k2/3) and show that an Ω(k2/3) dependence is necessary in a specific parameter regime. Finally, we show that this connection is useful in both directions: we give a pan-private adaptation of recent work on shuffle private histograms and use it to recover further separations between pan-privacy and interactive local privacy.

Topics & Concepts

Differential privacyComputer sciencePrivate information retrievalInformation privacyProtocol (science)Theoretical computer scienceUpper and lower boundsComputer securityInternet privacyMathematicsData miningAlternative medicinePathologyMedicineMathematical analysisPrivacy-Preserving Technologies in DataCryptography and Data SecurityInternet Traffic Analysis and Secure E-voting
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