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Main Authors: Kao, Hsuan-Chen, Reiter, Jerome P.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.02227
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author Kao, Hsuan-Chen
Reiter, Jerome P.
author_facet Kao, Hsuan-Chen
Reiter, Jerome P.
contents When releasing binary proportions computed using sensitive data, several government agencies and other data stewards protect confidentiality of the underlying values by ensuring the released statistics satisfy differential privacy. Typically, this is done by adding carefully chosen noise to the sample proportion computed using the confidential data. In this article, we describe and compare methods for turning this differentially private proportion into an interval estimate for an underlying population probability. Specifically, we consider differentially private versions of the Wald and Wilson intervals, Bayesian credible intervals based on denoising the differentially private proportion, and an exact interval motivated by the Clopper-Pearson confidence interval. We examine the repeated sampling performances of the intervals using simulation studies under both the Laplace mechanism and discrete Gaussian mechanism across a range of privacy guarantees. We find that while several methods can offer reasonable performances, the Bayesian credible intervals are the most attractive.
format Preprint
id arxiv_https___arxiv_org_abs_2511_02227
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Interval Estimation for Binomial Proportions Under Differential Privacy
Kao, Hsuan-Chen
Reiter, Jerome P.
Methodology
When releasing binary proportions computed using sensitive data, several government agencies and other data stewards protect confidentiality of the underlying values by ensuring the released statistics satisfy differential privacy. Typically, this is done by adding carefully chosen noise to the sample proportion computed using the confidential data. In this article, we describe and compare methods for turning this differentially private proportion into an interval estimate for an underlying population probability. Specifically, we consider differentially private versions of the Wald and Wilson intervals, Bayesian credible intervals based on denoising the differentially private proportion, and an exact interval motivated by the Clopper-Pearson confidence interval. We examine the repeated sampling performances of the intervals using simulation studies under both the Laplace mechanism and discrete Gaussian mechanism across a range of privacy guarantees. We find that while several methods can offer reasonable performances, the Bayesian credible intervals are the most attractive.
title Interval Estimation for Binomial Proportions Under Differential Privacy
topic Methodology
url https://arxiv.org/abs/2511.02227