On the Power of Multiple Anonymous Messages
Badih Ghazi, Noah Golowich, Ravi Kumar, Rasmus Pagh, Ameya Velingker

TL;DR
This paper investigates the advantages of multiple messages in the shuffled model of differential privacy, demonstrating significant error reductions for frequency estimation and separation results for the selection problem.
Contribution
It establishes nearly tight bounds for frequency estimation error in single- and multi-message shuffled models, showing exponential improvements with multiple messages, and provides the first separation results for the selection problem.
Findings
Single-message error lower bound of ilde{ ilde{ ext{Omega}}}( ext{min}( ext{n}^{1/4}, ext{B}^{1/2}))
Multi-message protocols achieve polylogarithmic error with polylogarithmic communication
First separation between single-message and multi-message protocols for the selection problem
Abstract
An exciting new development in differential privacy is the shuffled model, in which an anonymous channel enables non-interactive, differentially private protocols with error much smaller than what is possible in the local model, while relying on weaker trust assumptions than in the central model. In this paper, we study basic counting problems in the shuffled model and establish separations between the error that can be achieved in the single-message shuffled model and in the shuffled model with multiple messages per user. For the problem of frequency estimation for users and a domain of size , we obtain: - A nearly tight lower bound of on the error in the single-message shuffled model. This implies that the protocols obtained from the amplification via shuffling work of Erlingsson et al. (SODA 2019) and Balle et al. (Crypto…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Internet Traffic Analysis and Secure E-voting · Cryptography and Data Security
