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Main Authors: Wan, Jiayi, Zhu, Xiang, Liu, Fanzhen, Fan, Wei, Xu, Xiaolong
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.03618
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author Wan, Jiayi
Zhu, Xiang
Liu, Fanzhen
Fan, Wei
Xu, Xiaolong
author_facet Wan, Jiayi
Zhu, Xiang
Liu, Fanzhen
Fan, Wei
Xu, Xiaolong
contents Federated learning, as a distributed architecture, shows great promise for applications in Cyber-Physical-Social Systems (CPSS). In order to mitigate the privacy risks inherent in CPSS, the integration of differential privacy with federated learning has attracted considerable attention. Existing research mainly focuses on dynamically adjusting the noise added or discarding certain gradients to mitigate the noise introduced by differential privacy. However, these approaches fail to remove the noise that hinders convergence and correct the gradients affected by the noise, which significantly reduces the accuracy of model classification. To overcome these challenges, this paper proposes a novel framework for differentially private federated learning that balances rigorous privacy guarantees with accuracy by introducing a server-side gradient correction mechanism. Specifically, after clients perform gradient clipping and noise perturbation, our framework detects deviations in the noisy local gradients and employs a projection mechanism to correct them, mitigating the negative impact of noise. Simultaneously, gradient projection promotes the alignment of gradients from different clients and guides the model towards convergence to a global optimum. We evaluate our framework on several benchmark datasets, and the experimental results demonstrate that it achieves state-of-the-art performance under the same privacy budget.
format Preprint
id arxiv_https___arxiv_org_abs_2506_03618
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GCFL: A Gradient Correction-based Federated Learning Framework for Privacy-preserving CPSS
Wan, Jiayi
Zhu, Xiang
Liu, Fanzhen
Fan, Wei
Xu, Xiaolong
Machine Learning
Artificial Intelligence
Federated learning, as a distributed architecture, shows great promise for applications in Cyber-Physical-Social Systems (CPSS). In order to mitigate the privacy risks inherent in CPSS, the integration of differential privacy with federated learning has attracted considerable attention. Existing research mainly focuses on dynamically adjusting the noise added or discarding certain gradients to mitigate the noise introduced by differential privacy. However, these approaches fail to remove the noise that hinders convergence and correct the gradients affected by the noise, which significantly reduces the accuracy of model classification. To overcome these challenges, this paper proposes a novel framework for differentially private federated learning that balances rigorous privacy guarantees with accuracy by introducing a server-side gradient correction mechanism. Specifically, after clients perform gradient clipping and noise perturbation, our framework detects deviations in the noisy local gradients and employs a projection mechanism to correct them, mitigating the negative impact of noise. Simultaneously, gradient projection promotes the alignment of gradients from different clients and guides the model towards convergence to a global optimum. We evaluate our framework on several benchmark datasets, and the experimental results demonstrate that it achieves state-of-the-art performance under the same privacy budget.
title GCFL: A Gradient Correction-based Federated Learning Framework for Privacy-preserving CPSS
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2506.03618