论文标题

通过:基于参数审核的安全且公平的联邦学习计划

PASS: A Parameter Audit-based Secure and Fair Federated Learning Scheme against Free-Rider Attack

论文作者

Wang, Jianhua, Chang, Xiaolin, Mišić, Jelena, Mišić, Vojislav B., Wang, Yixiang

论文摘要

联合学习(FL)作为安全的分布式学习框架,由于其保护参与者数据的隐私能力,因此获得了物联网(IoT)的兴趣。但是,传统的FL系统很容易受到自由骑士(FR)攻击的影响,这会导致不公平,隐私泄漏和较低的性能。针对FR攻击的先前国防机制假设恶意客户(即对手)声明不到客户总数的50%。此外,他们旨在匿名FR(AFR)攻击,并在抵抗自私的FR(SFR)攻击方面失去了效力。在本文中,我们提出了一种基于参数审核的安全和公平的联合学习计划(PASS),以防止FR攻击。通行证具有以下关键特征:(a)防止准确损失较小的隐私泄漏; (b)有效地反对AFR和SFR攻击; (c)无论AFR和SFR对手是否占据大多数客户,都可以工作。广泛的实验结果验证了通过:(a)具有与隐私泄漏的均方根误差中的最新方法相同的水平; (b)以更高的国防成功率,较低的误报率和更高的F1得分来防御AFR和SFR攻击; (c)在对手超过50%的情况下仍然有效,而F1得分为89%,针对AFR攻击,而F1得分为87%,对SFR攻击。请注意,当没有FR对手时,通行证不会对FL准确性产生负面影响。

Federated Learning (FL) as a secure distributed learning framework gains interests in Internet of Things (IoT) due to its capability of protecting the privacy of participant data. However, traditional FL systems are vulnerable to Free-Rider (FR) attacks, which causes unfairness, privacy leakage and inferior performance to FL systems. The prior defense mechanisms against FR attacks assumed that malicious clients (namely, adversaries) declare less than 50% of the total amount of clients. Moreover, they aimed for Anonymous FR (AFR) attacks and lost effectiveness in resisting Selfish FR (SFR) attacks. In this paper, we propose a Parameter Audit-based Secure and fair federated learning Scheme (PASS) against FR attack. PASS has the following key features: (a) prevent from privacy leakage with less accuracy loss; (b) be effective in countering both AFR and SFR attacks; (c) work well no matter whether AFR and SFR adversaries occupy the majority of clients or not. Extensive experimental results validate that PASS: (a) has the same level as the State-Of-The-Art method in mean square error against privacy leakage; (b) defends against AFR and SFR attacks in terms of a higher defense success rate, lower false positive rate, and higher F1-score; (c) is still effective where adversaries exceed 50%, with F1-score 89% against AFR attack and F1-score 87% against SFR attack. Note that PASS produces no negative effect on FL accuracy when there is no FR adversary.

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