计算机科学
同态加密
联合学习
方案(数学)
分布式计算
加密
压缩(物理)
数据压缩
面子(社会学概念)
数据建模
信息隐私
计算机网络
深度学习
分布式学习
服务器
密码学
人工智能
云计算
计算机工程
移动设备
分布式数据库
传播模式
面部识别系统
隐私保护
作者
Li Yang,Y. Miao,Rongpeng Xie,Xinghua Li,Ju Wu,Guowen Xu,Zhiquan Liu,Kim-Kwang Raymond Choo,Robert H. Deng
标识
DOI:10.1109/tdsc.2026.3667763
摘要
The combination of Deep Learning (DL) and Federated Learning (FL) makes it a popular paradigm to train powerful models securely on large-scale data in a distributed way. However, current solutions face challenges such as significant communication overheads for clients with limited resources, potential privacy risks arising from FL's distributed nature, and the inability to maintain model accuracy without loss under high compression ratios. To solve these issues, we propose a lightweight Communication-efficient and Privacy-preserving FL scheme CPFL by designing Cyclic Segmented Compressive Sensing (CSCS) and using efficient Symmetric Homomorphic Encryption (SHE), which greatly reduces the number of transmitted model weights without sacrificing model accuracy. Formal analysis shows the security of CPFL against known-plaintext attacks and ensures model convergence. Extensive experiments demonstrate that CPFL achieves remarkable model accuracy under more than 200× compression ratio, and even reduces the communication cost by 99.5% compared with previous solutions.
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