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Frequency Estimation in the Shuffle Model with Almost a Single Message

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We present a protocol in the shuffle model of differential privacy (DP) for the \textit{frequency estimation} problem that achieves error $\omega(1)\cdot O(\log n)$, almost matching the central-DP accuracy, with $1+o(1)$ messages per user. This exhibits a sharp transition phenomenon, as there is a lower bound of $\Omega(n^{1/4})$ if each user is allowed to send only one message. Previously, such a result is only known when the domain size $B$ is $o(n)$. For a large domain, we also need an efficient method to identify the \textit{heavy hitters} (i.e., elements that are frequent enough). For this purpose, we design a shuffle-DP protocol that uses $o(1)$ messages per user and can identify all heavy hitters in time polylogarithmic in $B$. Finally, by combining our frequency estimation and the heavy hitter detection protocols, we show how to solve the $B$-dimensional \textit{1-sparse vector summation} problem in the high-dimensional setting $B=\Omega(n)$, achieving the optimal central-DP MSE $\tilde O(n)$ with $1+o(1)$ messages per user. In addition to error and message number, our protocols improve in terms of message size and running time as well. They are also very easy to implement. The experimental results demonstrate order-of-magnitude improvement over prior work.

Qiyao Luo, Yilei Wang, Ke Yi• 2021

Related benchmarks

TaskDatasetResultRank
Frequency EstimationAOL
Relative Error2.57
6
Frequency EstimationSF_Sal
Relative Error2.57
6
Frequency EstimationBR_Sal
Relative Error (%)2.57
6
Frequency Estimation (Qhist)Synthetic Unif distribution
Relative Error (w/o Attacker)2.53
3
Frequency Estimation (Qhist)Synthetic Gauss distribution
Relative Error (No Attacker)2.59
3
Frequency EstimationShuffle-DP Theoretical Analysis
Messages per User1
3
Frequency Estimation (Qhist)Synthetic Zipf distribution
Relative Error (w/o attacker)2.58
3
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