QP-LDP for better global model performance in federated learning

Qian Chen, Zheng Chai, Zilong Wang, Jiawei Chen, Haonan Yan, Xiaodong Lin
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Abstract

With the deployment of local differential privacy (LDP), federated learning (FL) has gained stronger privacy-preserving capability against inference-type attacks. However, existing LDP methods reduce global model performance. In this paper, we propose a QP-LDP algorithm for FL to obtain a better-performed global model without losing privacy guarantees defined by the original LDP. Different from previous LDP methods for FL, QP-LDP improves the global model performance by precisely disturbing the non-common components of quantized local contributions. In addition, QP-LDP comprehensively protects two types of local contributions. Through security analysis, QP-LDP provides the probability indistinguishability of clients' private local contributions at a component-level. More importantly, ingenious experiments show that with the deployment of QP-LDP, the global model outperforms that in the original LDP-based FL in terms of prediction accuracy and convergence rate.
QP-LDP用于联邦学习中更好的全局模型性能
随着本地差分隐私(LDP)的部署,联邦学习(FL)对推理型攻击的隐私保护能力增强。然而,现有的LDP方法降低了全局模型的性能。在本文中,我们提出了一种QP-LDP算法,在不失去原LDP定义的隐私保证的情况下获得性能更好的全局模型。与以往的FL LDP方法不同,QP-LDP通过精确干扰量化局部贡献的非公共分量来提高全局模型的性能。此外,QP-LDP全面保护两种类型的地方捐款。通过安全性分析,QP-LDP在组件级别提供了客户端私有本地贡献的概率不可区分性。更重要的是,巧妙的实验表明,随着QP-LDP的部署,全局模型在预测精度和收敛速度方面优于原来基于ldp的FL。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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