Auditing Privacy Mechanisms via Label Inference Attacks

June 04, 2024 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Rรณbert Istvรกn Busa-Fekete, Travis Dick, Claudio Gentile, Andrรฉs Muรฑoz Medina, Adam Smith, Marika Swanberg arXiv ID 2406.02797 Category cs.LG: Machine Learning Cross-listed cs.CR Citations 2 Venue Neural Information Processing Systems Last Checked 4 months ago
Abstract
We propose reconstruction advantage measures to audit label privatization mechanisms. A reconstruction advantage measure quantifies the increase in an attacker's ability to infer the true label of an unlabeled example when provided with a private version of the labels in a dataset (e.g., aggregate of labels from different users or noisy labels output by randomized response), compared to an attacker that only observes the feature vectors, but may have prior knowledge of the correlation between features and labels. We consider two such auditing measures: one additive, and one multiplicative. These incorporate previous approaches taken in the literature on empirical auditing and differential privacy. The measures allow us to place a variety of proposed privatization schemes -- some differentially private, some not -- on the same footing. We analyze these measures theoretically under a distributional model which encapsulates reasonable adversarial settings. We also quantify their behavior empirically on real and simulated prediction tasks. Across a range of experimental settings, we find that differentially private schemes dominate or match the privacy-utility tradeoff of more heuristic approaches.
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