Publication | Open Access
From t-Closeness-Like Privacy to Postrandomization via Information Theory
192
Citations
19
References
2009
Year
Privacy ProtectionEngineeringInformation SecurityInformation ForensicsInformation PrivacyData ScienceData MiningThreshold T.Data AnonymizationPrivacy SystemData ManagementStatisticsInformation TheoryData PrivacyProbability TheoryComputer SciencePrivacy AnonymityDifferential PrivacyPrivacyData SecurityCryptographyPostrandomization Method
t-Closeness is a privacy model recently defined for data anonymization. A data set is said to satisfy t-closeness if, for each group of records sharing a combination of key attributes, the distance between the distribution of a confidential attribute in the group and the distribution of the attribute in the entire data set is no more than a threshold t. Here, we define a privacy measure in terms of information theory, similar to t-closeness. Then, we use the tools of that theory to show that our privacy measure can be achieved by the postrandomization method (PRAM) for masking in the discrete case, and by a form of noise addition in the general case.
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