New Directions in Anonymization: Permutation Paradigm, Verifiability by Subjects and Intruders, Transparency to Users
Josep Domingo-Ferrer, Krishnamurty Muralidhar

TL;DR
This paper introduces a permutation-based framework for data anonymization that guarantees verifiability by data subjects and transparency to users, providing a unified approach with formal privacy metrics and practical verification methods.
Contribution
It establishes that all microdata anonymization methods can be viewed as permutations plus noise, introduces the (d,v)-permuted privacy model, and emphasizes transparency and verifiability in anonymization.
Findings
Permutation is the core principle in microdata anonymization.
The (d,v)-permuted privacy model offers formal privacy guarantees.
Verifiability by subjects and transparency to users are achievable.
Abstract
There are currently two approaches to anonymization: "utility first" (use an anonymization method with suitable utility features, then empirically evaluate the disclosure risk and, if necessary, reduce the risk by possibly sacrificing some utility) or "privacy first" (enforce a target privacy level via a privacy model, e.g., k-anonymity or epsilon-differential privacy, without regard to utility). To get formal privacy guarantees, the second approach must be followed, but then data releases with no utility guarantees are obtained. Also, in general it is unclear how verifiable is anonymization by the data subject (how safely released is the record she has contributed?), what type of intruder is being considered (what does he know and want?) and how transparent is anonymization towards the data user (what is the user told about methods and parameters used?). We show that, using a…
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