利用基于相似性的模型聚合实现安全、准确的个性化联合学习

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Zhouyong Tan;Junqing Le;Fan Yang;Min Huang;Tao Xiang;Xiaofeng Liao
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引用次数: 0

摘要

个性化联邦学习(PFL)结合客户需求和数据特征,为本地客户训练个性化模型。然而,以往的大多数PFL方案在应用于实际数据集时都遇到了模型预测精度低、隐私泄露等问题。此外,现有的隐私保护方法在模型预测精度和安全性方面都不能同时达到令人满意的效果。本文提出了一种安全多方计算下的隐私保护个性化联邦学习(SMC-PPFL)方法,该方法可以在保护隐私的同时获得具有较高预测精度的局部个性化模型。在SMC-PPFL中,利用噪声扰动保护相似性计算,采用安全多方计算进行模型子聚合。这种组合确保了客户端的隐私得到保护,并且计算值在不影响安全性的情况下保持公正。然后,我们提出了一种基于客户端相似度的加权子聚合策略,并在局部训练中引入正则化项来提高预测精度。最后,我们评估了SMC-PPFL在三个常用数据集上的性能。实验结果表明,SMC-PPFL达到了$2\%\!与以前的PFL方案相比,预测精度提高了15%。此外,安全性分析也验证了SMC-PPFL能够抵御模型反转攻击和隶属推理攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secure and Accurate Personalized Federated Learning With Similarity-Based Model Aggregation
Personalized federated learning (PFL) combines client needs and data characteristics to train personalized models for local clients. However, the most of previous PFL schemes encountered challenges such as low model prediction accuracy and privacy leakage when applied to practical datasets. Besides, the existing privacy protection methods fail to achieve satisfactory results in terms of model prediction accuracy and security simultaneously. In this paper, we propose a Privacy-preserving Personalized Federated Learning under Secure Multi-party Computation (SMC-PPFL), which can preserve privacy while obtaining a local personalized model with high prediction accuracy. In SMC-PPFL, noise perturbation is utilized to protect similarity computation, and secure multi-party computation is employed for model sub-aggregations. This combination ensures that clients’ privacy is preserved, and the computed values remain unbiased without compromising security. Then, we propose a weighted sub-aggregation strategy based on the similarity of clients and introduce a regularization term in the local training to improve prediction accuracy. Finally, we evaluate the performance of SMC-PPFL on three common datasets. The experimental results show that SMC-PPFL achieves $2\%\!\sim\! 15\%$ higher prediction accuracy compared to the previous PFL schemes. Besides, the security analysis also verifies that SMC-PPFL can resist model inversion attacks and membership inference attacks.
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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