Gradual Release of Sensitive Data under Differential Privacy
Fragkiskos Koufogiannis, Shuo Han, George J. Pappas

TL;DR
This paper presents a method for gradually releasing sensitive data under differential privacy, allowing privacy levels to be relaxed over time without losing accuracy, using a lazy Markov stochastic process.
Contribution
It introduces a composite mechanism that maintains accuracy during privacy level relaxation, applicable to identity queries and beyond, with practical applications.
Findings
No accuracy loss in gradual privacy relaxation with the proposed mechanism.
The mechanism is described by a closed-form lazy Markov stochastic process.
Applicable to real-world scenarios like Google's RAPPOR and social network data sharing.
Abstract
We introduce the problem of releasing sensitive data under differential privacy when the privacy level is subject to change over time. Existing work assumes that privacy level is determined by the system designer as a fixed value before sensitive data is released. For certain applications, however, users may wish to relax the privacy level for subsequent releases of the same data after either a re-evaluation of the privacy concerns or the need for better accuracy. Specifically, given a database containing sensitive data, we assume that a response that preserves -differential privacy has already been published. Then, the privacy level is relaxed to , with , and we wish to publish a more accurate response while the joint response preserves -differential privacy. How much accuracy is lost in the…
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