无线自组织联邦学习抵御模型中毒攻击的弹性

Naoya Tezuka, H. Ochiai, Yuwei Sun, H. Esaki
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摘要

无线自组织联邦学习(WAFL)是一个完全分散的协作机器学习框架,由偶然遇到的移动节点组织。与传统的联邦学习相比,WAFL通过与其他模型参数弱同步来执行模型训练,这对攻击者注入的有毒模型具有很强的弹性。在本文中,我们通过制定中毒模型和合法模型之间的力平衡,对WAFL抵御模型中毒攻击的弹性进行了理论分析。根据我们的实验,我们确认直接遇到攻击者的节点已经以某种方式感染了中毒模型,但其他节点表现出了很强的恢复能力。更重要的是,在攻击者离开网络后,所有节点最终都找到了更强的模型参数,并结合了中毒模型。大多数有攻击经历的案例比没有攻击经历的案例获得了更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resilience of Wireless Ad Hoc Federated Learning against Model Poisoning Attacks
Wireless ad hoc federated learning (WAFL) is a fully decentralized collaborative machine learning framework organized by opportunistically encountered mobile nodes. Compared to conventional federated learning, WAFL performs model training by weakly synchronizing the model parameters with others, and this shows great resilience to a poisoned model injected by an attacker. In this paper, we provide our theoretical analysis of the WAFL’s resilience against model poisoning attacks, by formulating the force balance between the poisoned model and the legitimate model. According to our experiments, we confirmed that the nodes directly encountered the attacker has been somehow compromised to the poisoned model but other nodes have shown great resilience. More importantly, after the attacker has left the network, all the nodes have finally found stronger model parameters combined with the poisoned model. Most of the attack-experienced cases achieved higher accuracy than the no-attack-experienced cases.
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