cs.AI updates on arXiv.org 前天 01:08
Mitigating Persistent Client Dropout in Asynchronous Decentralized Federated Learning
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本文针对异步联邦学习中的客户掉线问题,提出基于客户重建的适应策略,有效恢复掉线造成的性能损失,并探讨未来研究方向。

arXiv:2508.01807v1 Announce Type: cross Abstract: We consider the problem of persistent client dropout in asynchronous Decentralized Federated Learning (DFL). Asynchronicity and decentralization obfuscate information about model updates among federation peers, making recovery from a client dropout difficult. Access to the number of learning epochs, data distributions, and all the information necessary to precisely reconstruct the missing neighbor's loss functions is limited. We show that obvious mitigations do not adequately address the problem and introduce adaptive strategies based on client reconstruction. We show that these strategies can effectively recover some performance loss caused by dropout. Our work focuses on asynchronous DFL with local regularization and differs substantially from that in the existing literature. We evaluate the proposed methods on tabular and image datasets, involve three DFL algorithms, and three data heterogeneity scenarios (iid, non-iid, class-focused non-iid). Our experiments show that the proposed adaptive strategies can be effective in maintaining robustness of federated learning, even if they do not reconstruct the missing client's data precisely. We also discuss the limitations and identify future avenues for tackling the problem of client dropout.

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异步联邦学习 客户掉线 适应策略 性能恢复 数据异构
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