Local Dampening: Differential Privacy for Non-numeric Queries via Local Sensitivity
Victor A. E. Farias, Felipe T. Brito, Cheryl Flynn, Javam C. Machado,, Subhabrata Majumdar, Divesh Srivastava

TL;DR
This paper introduces the local dampening mechanism, a novel approach for applying differential privacy to non-numeric queries by leveraging local sensitivity to improve accuracy over existing methods.
Contribution
It adapts local sensitivity for non-numeric queries and develops a generic mechanism that outperforms the exponential mechanism under certain conditions.
Findings
The local dampening mechanism provides more accurate results than the exponential mechanism in specific scenarios.
Applied to percentile selection, influential node analysis, and decision tree induction, it demonstrates improved privacy-utility trade-offs.
Theoretical analysis shows conditions where local dampening outperforms existing mechanisms.
Abstract
Differential privacy is the state-of-the-art formal definition for data release under strong privacy guarantees. A variety of mechanisms have been proposed in the literature for releasing the output of numeric queries (e.g., the Laplace mechanism and smooth sensitivity mechanism). Those mechanisms guarantee differential privacy by adding noise to the true query's output. The amount of noise added is calibrated by the notions of global sensitivity and local sensitivity of the query that measure the impact of the addition or removal of an individual on the query's output. Mechanisms that use local sensitivity add less noise and, consequently, have a more accurate answer. However, although there has been some work on generic mechanisms for releasing the output of non-numeric queries using global sensitivity (e.g., the Exponential mechanism), the literature lacks generic mechanisms for…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Blockchain Technology Applications and Security
