DEFEAT:一种针对梯度攻击的去中心化联合学习

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS High-Confidence Computing Pub Date : 2023-09-01 DOI:10.1016/j.hcc.2023.100128
Guangxi Lu , Zuobin Xiong , Ruinian Li , Nael Mohammad , Yingshu Li , Wei Li
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引用次数: 3

摘要

联邦学习作为近年来出现的最有前途的机器学习框架之一,受到了广泛的关注。集中式FL的主要思想是通过聚合本地模型参数来训练全局模型,并在本地维护用户的私有数据。然而,最近的研究表明,传统的集中式联合学习容易受到各种攻击,例如梯度攻击,恶意服务器收集本地模型梯度,并使用它们来恢复存储在客户端上的私有数据。在本文中,我们提出了一种针对aTtacks的去中心化联合学习(DEFEAT)框架,并使用它来防御梯度攻击。本文采用的去中心化结构使用对等网络来传输、聚合和更新本地模型。在DEFEAT中,参与的客户端只需要与他们的单跳邻居进行通信就可以学习全局模型,其中DEFEAT训练过程中的模型精度和通信成本得到了很好的平衡。通过在真实数据集上进行的一系列实验和详细的案例研究,我们评估了DEFEAT出色的模型性能和对梯度攻击的隐私保护能力。
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DEFEAT: A decentralized federated learning against gradient attacks

As one of the most promising machine learning frameworks emerging in recent years, Federated learning (FL) has received lots of attention. The main idea of centralized FL is to train a global model by aggregating local model parameters and maintain the private data of users locally. However, recent studies have shown that traditional centralized federated learning is vulnerable to various attacks, such as gradient attacks, where a malicious server collects local model gradients and uses them to recover the private data stored on the client. In this paper, we propose a decentralized federated learning against aTtacks (DEFEAT) framework and use it to defend the gradient attack. The decentralized structure adopted by this paper uses a peer-to-peer network to transmit, aggregate, and update local models. In DEFEAT, the participating clients only need to communicate with their single-hop neighbors to learn the global model, in which the model accuracy and communication cost during the training process of DEFEAT are well balanced. Through a series of experiments and detailed case studies on real datasets, we evaluate the excellent model performance of DEFEAT and the privacy preservation capability against gradient attacks.

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