Robust Asymmetric Heterogeneous Federated Learning With Corrupted Clients

Xiuwen Fang;Mang Ye;Bo Du
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Abstract

This paper studies a challenging robust federated learning task with model heterogeneous and data corrupted clients, where the clients have different local model structures. Data corruption is unavoidable due to factors, such as random noise, compression artifacts, or environmental conditions in real-world deployment, drastically crippling the entire federated system. To address these issues, this paper introduces a novel Robust Asymmetric Heterogeneous Federated Learning (RAHFL) framework. We propose a Diversity-enhanced supervised Contrastive Learning technique to enhance the resilience and adaptability of local models on various data corruption patterns. Its basic idea is to utilize complex augmented samples obtained by the mixed-data augmentation strategy for supervised contrastive learning, thereby enhancing the ability of the model to learn robust and diverse feature representations. Furthermore, we design an Asymmetric Heterogeneous Federated Learning strategy to resist corrupt feedback from external clients. The strategy allows clients to perform selective one-way learning during collaborative learning phase, enabling clients to refrain from incorporating lower-quality information from less robust or underperforming collaborators. Extensive experimental results demonstrate the effectiveness and robustness of our approach in diverse, challenging federated learning environments.
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带有损坏客户端的鲁棒非对称异构联邦学习
本文研究了一个具有模型异构和数据损坏的客户端,其中客户端具有不同的局部模型结构的具有挑战性的鲁棒联邦学习任务。由于随机噪声、压缩工件或实际部署中的环境条件等因素,数据损坏是不可避免的,这会严重削弱整个联邦系统。为了解决这些问题,本文引入了一种新的鲁棒非对称异构联邦学习框架。我们提出了一种多样性增强的监督对比学习技术,以增强局部模型对各种数据损坏模式的弹性和适应性。其基本思想是利用混合数据增强策略获得的复杂增强样本进行监督对比学习,从而增强模型学习鲁棒性和多样性特征表示的能力。此外,我们还设计了一个非对称异构联邦学习策略来抵抗来自外部客户端的不良反馈。该策略允许客户在协作学习阶段执行选择性的单向学习,使客户能够避免合并来自不太健壮或表现不佳的合作者的低质量信息。大量的实验结果证明了我们的方法在多样化、具有挑战性的联邦学习环境中的有效性和鲁棒性。
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