恶意客户端与贡献协同感知联合学习

Yang Wang;Xue Li;Siguang Chen
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引用次数: 0

摘要

现有的消除恶意客户端对全局模型负面影响的联合学习方法受到不合理假设(例如,辅助数据集)的影响,或者无法平衡模型性能和效率。为了克服这些缺点,我们提出了一种恶意客户端和贡献共同感知联合学习(MCC-Fed)方法。具体来说,我们介绍了一种检测恶意客户端的方法,以减少它们对全局模型的影响。接下来,我们设计了一个贡献感知度量,该度量准确地量化了恶意客户端对全局的负面影响,并计算了它们的历史贡献率。然后,在此基础上,提出了一种新的联合学习方法,良性客户端使用贡献感知度量作为正则化项来忘记恶意客户端的影响,并恢复模型性能。实验结果表明,该方法有效地解决了学习过程中过度学习的问题,提高了性能恢复效率,增强了对恶意客户端的鲁棒性。与再培训相比,联合学习有效地消除了恶意客户的影响,同时降低了培训成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Malicious Clients and Contribution Co-Aware Federated Unlearning
Existing federated unlearning methods to eliminate the negative impact of malicious clients on the global model are influenced by unreasonable assumptions (e.g., an auxiliary dataset) or fail to balance model performance and efficiency. To overcome these shortcomings, we propose a malicious clients and contribution co-aware federated unlearning (MCC-Fed) method. Specifically, we introduce a method for detecting malicious clients to reduce their impact on the global model. Next, we design a contribution-aware metric, which accurately quantifies the negative impact of malicious clients on the global calculating their historical contribution ratio. Then, based on this metric, we propose a novel federated unlearning method in which benign clients use the contribution-aware metric as a regularization term to unlearn the influence of malicious clients, and restoring model performance. Experimental results demonstrate that our method effectively addresses the issue of excessive unlearning during the unlearning process, improves the efficiency of performance recovery, and enhances robustness against malicious clients. Federated unlearning effectively removes malicious clients’ influence while reducing training costs compared to retraining.
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CiteScore
7.70
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