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Differentially Private Online Federated Learning with Correlated Noise
March 26, 2024, 4:11 a.m. | Jiaojiao Zhang, Linglingzhi Zhu, Mikael Johansson
cs.CR updates on arXiv.org arxiv.org
Abstract: We propose a novel differentially private algorithm for online federated learning that employs temporally correlated noise to improve the utility while ensuring the privacy of the continuously released models. To address challenges stemming from DP noise and local updates with streaming noniid data, we develop a perturbed iterate analysis to control the impact of the DP noise on the utility. Moreover, we demonstrate how the drift errors from local updates can be effectively managed under …
address algorithm arxiv challenges cs.cr cs.dc cs.lg data federated federated learning local noise novel privacy private streaming updates utility
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