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Volume 14 Issue 2


Post-processing Differentially Private Counts to Satisfy Additive Constraints

Ziang Wang(a), Jerome P. Reiter(a),(*)

Transactions on Data Privacy 14:2 (2021) 65 - 77

Abstract, PDF

(a) Box 90251, Duke University, Durham, NC 27708, USA.

e-mail:ziang.wang @duke.edu; jreiter @duke.edu


Abstract

To reduce disclosure risks, statistical agencies and other organizations can release noisy counts that satisfy differential privacy. In some contexts, the released counts satisfy additive constraints; for example, the released value of a total should equal the sum of the released values of its components. We present a simple post-processing procedure for satisfying such additive constraints. The basic idea is (i) compute approximate posterior modes of the true counts given the noisy counts, (ii) construct a multinomial distribution with trial size equal to the posterior mode of the total and probability vector equal to fractions derived from the posterior modes of the components, and (iii) find and release a mode of this multinomial distribution. We also present an approach for making Bayesian inferences about the true counts given these post-processed, differentially private counts. We illustrate these methods using simulations.

* Corresponding author.

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ISSN: 1888-5063; ISSN (Digital): 2013-1631; D.L.:B-11873-2008; Web Site: http://www.tdp.cat/
Contact: Transactions on Data Privacy; Vicenç Torra; Umeå University; 90187 Umeå (Sweden); e-mail:tdp@tdp.cat
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Vicenç Torra, Last modified: 22 : 28 August 31 2021.