Synthetic Data Outliers: Navigating Identity Disclosure

June 04, 2024 ยท Declared Dead ยท ๐Ÿ› Privacy in Statistical Databases

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Authors Carolina Trindade, Luรญs Antunes, Tรขnia Carvalho, Nuno Moniz arXiv ID 2406.02736 Category cs.LG: Machine Learning Cross-listed cs.CR Citations 6 Venue Privacy in Statistical Databases Last Checked 4 months ago
Abstract
Multiple synthetic data generation models have emerged, among which deep learning models have become the vanguard due to their ability to capture the underlying characteristics of the original data. However, the resemblance of the synthetic to the original data raises important questions on the protection of individuals' privacy. As synthetic data is perceived as a means to fully protect personal information, most current related work disregards the impact of re-identification risk. In particular, limited attention has been given to exploring outliers, despite their privacy relevance. In this work, we analyze the privacy of synthetic data w.r.t the outliers. Our main findings suggest that outliers re-identification via linkage attack is feasible and easily achieved. Furthermore, additional safeguards such as differential privacy can prevent re-identification, albeit at the expense of the data utility.
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