Robust Fingerprint of Location Trajectories Under Differential Privacy
Yuzhou Jiang, Emre Yilmaz, and Erman Ayday

TL;DR
This paper introduces a robust fingerprinting scheme for location trajectories that maintains differential privacy, resists various attacks, and improves data utility for sharing sensitive location data.
Contribution
It presents a novel fingerprinting method that preserves data utility under differential privacy and is resilient against multiple attack types.
Findings
High robustness against known fingerprinting attacks
Outperforms existing fingerprinting approaches
Enhances data utility for differentially-private datasets
Abstract
Directly releasing those data raises privacy and liability (e.g., due to unauthorized distribution of such datasets) concerns since location data contain users' sensitive information, e.g., regular moving patterns and favorite spots. To address this, we propose a novel fingerprinting scheme that simultaneously identifies unauthorized redistribution of location datasets and provides differential privacy guarantees for the shared data. Observing data utility degradation due to differentially-private mechanisms, we introduce a utility-focused post-processing scheme to regain spatio-temporal correlations between points in a location trajectory. We further integrate this post-processing scheme into our fingerprinting scheme as a sampling method. The proposed fingerprinting scheme alleviates the degradation in the utility of the shared dataset due to the noise introduced by…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Data-Driven Disease Surveillance · Privacy, Security, and Data Protection
