论文标题
FEDCUT:可靠检测拜占庭核桃的光谱分析框架
FedCut: A Spectral Analysis Framework for Reliable Detection of Byzantine Colluders
论文作者
论文摘要
本文提出了一个通用光谱分析框架,该框架挫败了由恶意的拜占庭攻击者或伙伴群体引起的联合学习的安全风险,他们共同将恶性模型更新上传到严重贬低全球模型表现。所提出的框架描述了拜占庭核查者的模型更新与光谱分析镜头的强大一致性和时间连贯性,并提出了将拜占庭不当行为的检测作为加权图中的社区检测问题。然后将修改的归一化图切割用于辨别良性参与者的攻击者。此外,采用了光谱启发式方法,以对各种攻击进行强有力的检测。拟议的拜占庭联合菌弹性法,即Fedcut,保证与有界误差收敛。在各种环境下进行的广泛实验结果证明了FedCut的优势,这表明在各种攻击下表现出极强的模型性能(MP)。结果表明,FedCut的平均MP比最先进的拜占庭式方法好2.1%至16.5%。就最差的模型性能(MP)而言,FedCut比这些方法好17.6%至69.5%。
This paper proposes a general spectral analysis framework that thwarts a security risk in federated Learning caused by groups of malicious Byzantine attackers or colluders, who conspire to upload vicious model updates to severely debase global model performances. The proposed framework delineates the strong consistency and temporal coherence between Byzantine colluders' model updates from a spectral analysis lens, and, formulates the detection of Byzantine misbehaviours as a community detection problem in weighted graphs. The modified normalized graph cut is then utilized to discern attackers from benign participants. Moreover, the Spectral heuristics is adopted to make the detection robust against various attacks. The proposed Byzantine colluder resilient method, i.e., FedCut, is guaranteed to converge with bounded errors. Extensive experimental results under a variety of settings justify the superiority of FedCut, which demonstrates extremely robust model performance (MP) under various attacks. It was shown that FedCut's averaged MP is 2.1% to 16.5% better than that of the state of the art Byzantine-resilient methods. In terms of the worst-case model performance (MP), FedCut is 17.6% to 69.5% better than these methods.