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Reveal-or-Obscure: A Differentially Private Sampling Algorithm for Discrete Distributions

Reveal-or-Obscure: A Differentially Private Sampling Algorithm for Discrete Distributions

来源:Arxiv_logoArxiv
英文摘要

We introduce a differentially private (DP) algorithm called reveal-or-obscure (ROO) to generate a single representative sample from a dataset of $n$ observations drawn i.i.d. from an unknown discrete distribution $P$. Unlike methods that add explicit noise to the estimated empirical distribution, ROO achieves $\epsilon$-differential privacy by randomly choosing whether to "reveal" or "obscure" the empirical distribution. While ROO is structurally identical to Algorithm 1 proposed by Cheu and Nayak (arXiv:2412.10512), we prove a strictly better bound on the sampling complexity than that established in Theorem 12 of (arXiv:2412.10512). To further improve the privacy-utility trade-off, we propose a novel generalized sampling algorithm called Data-Specific ROO (DS-ROO), where the probability of obscuring the empirical distribution of the dataset is chosen adaptively. We prove that DS-ROO satisfies $\epsilon$-DP, and provide empirical evidence that DS-ROO can achieve better utility under the same privacy budget of vanilla ROO.

Naima Tasnim、Atefeh Gilani、Lalitha Sankar、Oliver Kosut

计算技术、计算机技术

Naima Tasnim,Atefeh Gilani,Lalitha Sankar,Oliver Kosut.Reveal-or-Obscure: A Differentially Private Sampling Algorithm for Discrete Distributions[EB/OL].(2025-04-20)[2025-05-31].https://arxiv.org/abs/2504.14696.点此复制

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