Publication | Closed Access
Revealing information while preserving privacy
986
Citations
22
References
2003
Year
Unknown Venue
Privacy ProtectionEngineeringInformation SecurityComputational ComplexityCommunicationPolynomial Reconstruction AlgorithmData ScienceData ManagementPerturbation MagnitudeData PrivacyPrivate Information RetrievalComputer SciencePrivacy AnonymityDifferential PrivacyPrivacyPrivacy LeakageData SecurityCryptographyRelational QueriesSmaller PerturbationStatistical Database
We examine the tradeoff between privacy and usability of statistical databases. We model a statistical database by an n-bit string d1,..,dn, with a query being a subset q ⊆ [n] to be answered by Σiεq di. Our main result is a polynomial reconstruction algorithm of data from noisy (perturbed) subset sums. Applying this reconstruction algorithm to statistical databases we show that in order to achieve privacy one has to add perturbation of magnitude (Ω√n). That is, smaller perturbation always results in a strong violation of privacy. We show that this result is tight by exemplifying access algorithms for statistical databases that preserve privacy while adding perturbation of magnitude Õ(√n).For time-T bounded adversaries we demonstrate a privacypreserving access algorithm whose perturbation magnitude is ≈ √T.
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