计算机科学
事实上
计算机安全
GSM演进的增强数据速率
相(物质)
透视图(图形)
核(代数)
联合学习
机器学习
分布式计算
人工智能
数学
组合数学
有机化学
化学
法学
政治学
作者
Xingyu Li,Zhe Qu,Shangqing Zhao,Bo Tang,Zhuo Lu,Yao Liu
出处
期刊:Cornell University - arXiv
日期:2022-01-08
标识
DOI:10.48550/arxiv.2201.02873
摘要
Federated learning (FL) provides a high efficient decentralized machine learning framework, where the training data remains distributed at remote clients in a network. Though FL enables a privacy-preserving mobile edge computing framework using IoT devices, recent studies have shown that this approach is susceptible to poisoning attacks from the side of remote clients. To address the poisoning attacks on FL, we provide a \textit{two-phase} defense algorithm called {Lo}cal {Ma}licious Facto{r} (LoMar). In phase I, LoMar scores model updates from each remote client by measuring the relative distribution over their neighbors using a kernel density estimation method. In phase II, an optimal threshold is approximated to distinguish malicious and clean updates from a statistical perspective. Comprehensive experiments on four real-world datasets have been conducted, and the experimental results show that our defense strategy can effectively protect the FL system. {Specifically, the defense performance on Amazon dataset under a label-flipping attack indicates that, compared with FG+Krum, LoMar increases the target label testing accuracy from $96.0\%$ to $98.8\%$, and the overall averaged testing accuracy from $90.1\%$ to $97.0\%$.
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