A Survey of Differential Privacy Techniques for Federated Learning

被引:0
作者
Wang, Xin [1 ]
Li, Jiaqian [1 ]
Ding, Xueshuang [1 ]
Zhang, Haoji [1 ]
Sun, Lianshan [1 ]
机构
[1] Shaanxi Univ Sci & Technol, Coll Elect Informat & Artificial Intelligence, Xian 710021, Peoples R China
来源
IEEE ACCESS | 2025年 / 13卷
基金
中国国家自然科学基金;
关键词
Differential privacy; Data privacy; Protection; Data models; Privacy; Training; Computational modeling; Servers; Noise; federated learning; privacy protection; lattice-based homomorphic encryption; zero-knowledge proofs;
D O I
10.1109/ACCESS.2024.3523909
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The problem of data privacy protection in the information age deserves people's attention. As a distributed machine learning technology, federated learning can effectively solve the problem of privacy security and data silos. Differential privacy(DP) technology is applied in federated learning(FL). By adding noise to raw data and model parameters, it can further enhance the degree of data privacy protection. Over the years, differential privacy technology based on federated learning framework has been developed, which is divided into central differential privacy federated learning(CDPFL) and local differential privacy federated learning(LDPFL). Although differential privacy may reduce the accuracy and convergence of federated learning models while protecting data privacy, researchers have proposed a variety of optimization methods to balance privacy protection and model performance. This paper comprehensively expounds the research status of differential privacy techniques based on the federated learning framework, first providing detailed introductions to federated learning and differential privacy technologies, and then summarizing the development status of two types of federated learning differential privacy(DPFL) techniques respectively; for CDPFL, the paper divides the discussion into first proposal of CDP and typical application examples, the impact of Gaussian mechanisms on model accuracy, optimization based on asynchronous differential privacy, and insights from other scholars; for LDPFL, the paper divides the discussion into first proposal of LDP and typical application examples, processing multidimensional data and improving model accuracy, existing methods and optimization for reducing communication costs, balancing privacy protection and data usability, LDPFL based on the Shuffle model, and insights from other scholars; following this, the paper addresses and summarizes the unique challenges introduced by incorporating differential privacy into federated learning and proposes solutions; finally, based on a summary of existing optimization techniques, the paper outlines future directions and specifically discusses three research ideas for enhancing the optimization effects of federated differential privacy: advanced optimization strategies combining Bayesian methods and the Alternating Direction Method of Multipliers (ADMM), integrating lattice homomorphic encryption techniques from cryptography to achieve more efficient differential privacy protection in federated learning, and exploring the application of zero-knowledge proof techniques in federated learning for privacy protection.
引用
收藏
页码:6539 / 6555
页数:17
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