Calibrating Noise for Group Privacy in Subsampled Mechanisms
Yangfan Jiang, Xinjian Luo, Yin Yang, and Xiaokui Xiao

TL;DR
This paper introduces a new method for calibrating noise in group privacy mechanisms that use subsampling, resulting in significantly improved privacy-utility trade-offs over traditional conversion approaches.
Contribution
The paper develops a tight privacy accounting framework specifically for subsampled group privacy mechanisms, surpassing the limitations of existing DP-to-GP conversion methods.
Findings
Achieves over tenfold noise reduction in practical scenarios
Provides tight privacy bounds for subsampled group privacy mechanisms
Enhances utility in deep learning model training with group privacy guarantees
Abstract
Given a group size m and a sensitive dataset D, group privacy (GP) releases information about D with the guarantee that the adversary cannot infer with high confidence whether the underlying data is D or a neighboring dataset D' that differs from D by m records. GP generalizes the well-established notion of differential privacy (DP) for protecting individuals' privacy; in particular, when m=1, GP reduces to DP. Compared to DP, GP is capable of protecting the sensitive aggregate information of a group of up to m individuals, e.g., the average annual income among members of a yacht club. Despite its longstanding presence in the research literature and its promising applications, GP is often treated as an afterthought, with most approaches first developing a DP mechanism and then using a generic conversion to adapt it for GP, treating the DP solution as a black box. As we point out in the…
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Taxonomy
TopicsOpinion Dynamics and Social Influence
