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Obtaining (ε,δ)(ε,δ)(ε,δ)-differential privacy guarantees when using a Poisson mechanism to synthesize contingency tables

29 June 2024
James Jackson
Robin Mitra
Brian Francis
Iain Dove
ArXiv (abs)PDFHTML
Abstract

We show that differential privacy type guarantees can be obtained when using a Poisson synthesis mechanism to protect counts in contingency tables. Specifically, we show how to obtain (ϵ,δ)(\epsilon, \delta)(ϵ,δ)-probabilistic differential privacy guarantees via the Poisson distribution's cumulative distribution function. We demonstrate this empirically with the synthesis of an administrative-type confidential database.

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