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arxiv 2102.11158 v1 pith:AITKSH3H submitted 2021-02-22 stat.ML cs.AIcs.CRcs.CVcs.LG

Federated f-Differential Privacy

classification stat.ML cs.AIcs.CRcs.CVcs.LG
keywords privacyfederateddifferentialdataframeworkguaranteelearningmodels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Federated learning (FL) is a training paradigm where the clients collaboratively learn models by repeatedly sharing information without compromising much on the privacy of their local sensitive data. In this paper, we introduce federated $f$-differential privacy, a new notion specifically tailored to the federated setting, based on the framework of Gaussian differential privacy. Federated $f$-differential privacy operates on record level: it provides the privacy guarantee on each individual record of one client's data against adversaries. We then propose a generic private federated learning framework {PriFedSync} that accommodates a large family of state-of-the-art FL algorithms, which provably achieves federated $f$-differential privacy. Finally, we empirically demonstrate the trade-off between privacy guarantee and prediction performance for models trained by {PriFedSync} in computer vision tasks.

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