TAPAS: a Toolbox for Adversarial Privacy Auditing of Synthetic Data
Houssiau, Florimond, Jordon, James, Cohen, Samuel N., Daniel, Owen, Elliott, Andrew, Geddes, James, Mole, Callum, Rangel-Smith, Camila, Szpruch, Lukasz
–arXiv.org Artificial Intelligence
Personal data collected at scale promises to improve decision-making and accelerate innovation. However, sharing and using such data raises serious privacy concerns. A promising solution is to produce synthetic data, artificial records to share instead of real data. Since synthetic records are not linked to real persons, this intuitively prevents classical re-identification attacks. However, this is insufficient to protect privacy. We here present TAPAS, a toolbox of attacks to evaluate synthetic data privacy under a wide range of scenarios. These attacks include generalizations of prior works and novel attacks. We also introduce a general framework for reasoning about privacy threats to synthetic data and showcase TAPAS on several examples.
arXiv.org Artificial Intelligence
Nov-11-2022
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- Information Technology > Security & Privacy (1.00)
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