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{"title":"FedSteg: Coverless Steganography-Based Privacy-Preserving Decentralized Federated Learning","authors":"Mengfan Xu, Yaguang Lin","doi":"10.1002/tee.24085","DOIUrl":null,"url":null,"abstract":"<p>Federated learning (FL) represents a novel privacy-preserving learning paradigm that offers a practical solution for distributed privacy preservation. Although privacy-preserving FL based on homomorphic encryption (HE-PPFL) exhibits resistance to gradient leakage attacks while ensuring the accuracy of aggregation results, its widespread adoption in blockchain privacy preservation is hindered by the reliance on a trusted key generation center and secure transfer channels. Conversely, coverless steganography schemes effectively ensure the covert transmission of sensitive information across insecure channels. However, their incompatibility with HE-PPFL arises from the lossy extraction process. To address these challenges, we present a decentralized federated learning privacy-preserving framework based on the Lifted ElGamal threshold decryption cryptosystem. We introduce a reversible steganography method tailored to safeguard gradient privacy. Furthermore, we introduce a lightweight, secure blind aggregation algorithm founded on the Raft protocol, which serves to protect gradient privacy while substantially mitigating computational overhead. Finally, we provide rigorous theoretical proof of the security and correctness of our proposed scheme. Experimental results from four public data sets demonstrate that our proposed scheme achieves a 100% extraction accuracy without the need for lossless methods, while simultaneously reducing the computational cost of ciphertext gradient aggregation by at least three orders of magnitude. The FedSteg framework is publicly accessible at \nhttps://github.com/Xumeili/FedSteg. © 2024 Institute of Electrical Engineers of Japan and Wiley Periodicals LLC.</p>","PeriodicalId":13435,"journal":{"name":"IEEJ Transactions on Electrical and Electronic Engineering","volume":"19 8","pages":"1345-1359"},"PeriodicalIF":1.0000,"publicationDate":"2024-04-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"IEEJ Transactions on Electrical and Electronic Engineering","FirstCategoryId":"5","ListUrlMain":"https://onlinelibrary.wiley.com/doi/10.1002/tee.24085","RegionNum":4,"RegionCategory":"工程技术","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"ENGINEERING, ELECTRICAL & ELECTRONIC","Score":null,"Total":0}
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Abstract
Federated learning (FL) represents a novel privacy-preserving learning paradigm that offers a practical solution for distributed privacy preservation. Although privacy-preserving FL based on homomorphic encryption (HE-PPFL) exhibits resistance to gradient leakage attacks while ensuring the accuracy of aggregation results, its widespread adoption in blockchain privacy preservation is hindered by the reliance on a trusted key generation center and secure transfer channels. Conversely, coverless steganography schemes effectively ensure the covert transmission of sensitive information across insecure channels. However, their incompatibility with HE-PPFL arises from the lossy extraction process. To address these challenges, we present a decentralized federated learning privacy-preserving framework based on the Lifted ElGamal threshold decryption cryptosystem. We introduce a reversible steganography method tailored to safeguard gradient privacy. Furthermore, we introduce a lightweight, secure blind aggregation algorithm founded on the Raft protocol, which serves to protect gradient privacy while substantially mitigating computational overhead. Finally, we provide rigorous theoretical proof of the security and correctness of our proposed scheme. Experimental results from four public data sets demonstrate that our proposed scheme achieves a 100% extraction accuracy without the need for lossless methods, while simultaneously reducing the computational cost of ciphertext gradient aggregation by at least three orders of magnitude. The FedSteg framework is publicly accessible at
https://github.com/Xumeili/FedSteg. © 2024 Institute of Electrical Engineers of Japan and Wiley Periodicals LLC.
FedSteg:基于无掩码隐写术的隐私保护分散式联合学习
联合学习(FL)代表了一种新颖的隐私保护学习范式,为分布式隐私保护提供了一种实用的解决方案。虽然基于同态加密的隐私保护 FL(HE-PPFL)可抵御梯度泄漏攻击,同时确保聚合结果的准确性,但其在区块链隐私保护中的广泛应用因依赖可信密钥生成中心和安全传输渠道而受到阻碍。相反,无掩码隐写术方案能有效确保敏感信息在不安全通道上的隐蔽传输。然而,它们与 HE-PPFL 的不兼容性来自于有损提取过程。为了应对这些挑战,我们提出了一种基于 Lifted ElGamal 门限解密密码系统的分散式联合学习隐私保护框架。我们引入了一种为保护梯度隐私而量身定制的可逆隐写方法。此外,我们还介绍了一种建立在 Raft 协议基础上的轻量级安全盲聚合算法,该算法在保护梯度隐私的同时,还大大降低了计算开销。最后,我们对所提方案的安全性和正确性进行了严格的理论证明。四个公开数据集的实验结果表明,我们提出的方案无需无损方法即可实现 100% 的提取准确率,同时将密文梯度聚合的计算成本降低了至少三个数量级。FedSteg 框架可在 https://github.com/Xumeili/FedSteg 上公开访问。© 2024 日本电气工程师学会和 Wiley Periodicals LLC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。