Analysis of Shuffling Beyond Pure Local Differential Privacy
Shun Takagi, Seng Pei Liew

TL;DR
This paper investigates the limitations of pure local differential privacy parameters in privacy amplification via shuffling, introducing a new scalar proxy called the shuffle index to better characterize privacy guarantees.
Contribution
It develops an asymptotic analysis that bypasses traditional epsilon parameters, introduces the shuffle index as a key measure, and provides practical algorithms for finite-sample privacy computation.
Findings
The blanket divergence depends on the local mechanism through a single scalar parameter.
The shuffle index serves as an effective proxy for shuffling efficiency.
A practical FFT-based algorithm computes blanket divergence with controlled error.
Abstract
Shuffling is a powerful way to amplify privacy of a local randomizer in private distributed data analysis. Most existing analyses of how shuffling amplifies privacy are based on the pure local differential privacy (DP) parameter . This paper raises the question of whether adequately captures the privacy amplification. For example, since the Gaussian mechanism does not satisfy pure local DP for any finite , does it follow that shuffling yields weak amplification? To solve this problem, we revisit the privacy blanket bound of Balle et al. (the blanket divergence) and develop a direct asymptotic analysis that bypasses . Our key finding is that, asymptotically, the blanket divergence depends on the local mechanism only through a single scalar parameter and that this dependence is monotonic. Therefore, this parameter serves…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Stochastic Gradient Optimization Techniques
