Fed-AugMix: Balancing Privacy and Utility via Data Augmentation

Guardado en:
書目詳細資料
發表在:arXiv.org (Dec 18, 2024), p. n/a
主要作者: Li, Haoyang
其他作者: Chen, Wei, Zhang, Xiaojin
出版:
Cornell University Library, arXiv.org
主題:
在線閱讀:Citation/Abstract
Full text outside of ProQuest
標簽: 添加標簽
沒有標簽, 成為第一個標記此記錄!
實物特徵
Resumen:Gradient leakage attacks pose a significant threat to the privacy guarantees of federated learning. While distortion-based protection mechanisms are commonly employed to mitigate this issue, they often lead to notable performance degradation. Existing methods struggle to preserve model performance while ensuring privacy. To address this challenge, we propose a novel data augmentation-based framework designed to achieve a favorable privacy-utility trade-off, with the potential to enhance model performance in certain cases. Our framework incorporates the AugMix algorithm at the client level, enabling data augmentation with controllable severity. By integrating the Jensen-Shannon divergence into the loss function, we embed the distortion introduced by AugMix into the model gradients, effectively safeguarding privacy against deep leakage attacks. Moreover, the JS divergence promotes model consistency across different augmentations of the same image, enhancing both robustness and performance. Extensive experiments on benchmark datasets demonstrate the effectiveness and stability of our method in protecting privacy. Furthermore, our approach maintains, and in some cases improves, model performance, showcasing its ability to achieve a robust privacy-utility trade-off.
ISSN:2331-8422
Fuente:Engineering Database