SSI−FL: Self-sovereign identity based privacy-preserving federated learning

IF 3.4 3区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS
Rakib Ul Haque , A.S.M. Touhidul Hasan , Mohammed Ali Mohammed Al-Hababi , Yuqing Zhang , Dianxiang Xu
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引用次数: 0

Abstract

Traditional federated learning (FL) raises security and privacy concerns such as identity fraud, data poisoning attacks, membership inference attacks, and model inversion attacks. In the conventional FL, any entity can falsify its identity and initiate data poisoning attacks. Besides, adversaries (AD) holding the updated global model parameters can retrieve the plain text of the dataset by initiating membership inference attacks and model inversion attacks. To the best of our knowledge, this is the first work to propose a self-sovereign identity (SSI) and differential privacy (DP) based FL namely SSIFL for addressing all the above issues. The first step in the SSIFL framework involves establishing a secure connection based on blockchain-based SSI. This secure connection protects against unauthorized access attacks of any AD and ensures the transmitted data's authenticity, integrity, and availability. The second step applies DP to protect against model inversion attacks and membership inference attacks. The third step focuses on establishing FL with a novel hybrid deep learning to achieve better scores than conventional methods. The SSIFL performance analysis is done based on security, formal, scalability, and score analysis. Moreover, the proposed method outperforms all the state-of-art techniques.

SSI-FL:基于自我主权身份的隐私保护联合学习
传统的联合学习(FL)会引发身份欺诈、数据中毒攻击、成员推理攻击和模型反转攻击等安全和隐私问题。在传统的联合学习中,任何实体都可以伪造身份并发起数据中毒攻击。此外,持有更新的全局模型参数的对手(AD)可以通过发起成员推理攻击和模型反转攻击来检索数据集的明文。据我们所知,这是第一项提出基于自我主权身份(SSI)和差分隐私(DP)的 FL(即 SSI-FL)来解决上述所有问题的工作。SSI-FL 框架的第一步是建立基于区块链 SSI 的安全连接。这种安全连接可防止任何 AD 的未经授权访问攻击,并确保传输数据的真实性、完整性和可用性。第二步是应用 DP 防止模型反转攻击和成员推理攻击。第三步的重点是利用新型混合深度学习建立 FL,以获得比传统方法更好的分数。SSI-FL 的性能分析基于安全性、形式、可扩展性和得分分析。此外,所提出的方法优于所有最先进的技术。
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来源期刊
Journal of Parallel and Distributed Computing
Journal of Parallel and Distributed Computing 工程技术-计算机:理论方法
CiteScore
10.30
自引率
2.60%
发文量
172
审稿时长
12 months
期刊介绍: This international journal is directed to researchers, engineers, educators, managers, programmers, and users of computers who have particular interests in parallel processing and/or distributed computing. The Journal of Parallel and Distributed Computing publishes original research papers and timely review articles on the theory, design, evaluation, and use of parallel and/or distributed computing systems. The journal also features special issues on these topics; again covering the full range from the design to the use of our targeted systems.
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