FedPKR:边缘计算中基于周期性知识评审的非iid数据联邦学习

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Sustainable Computing Pub Date : 2024-03-06 DOI:10.1109/TSUSC.2024.3374049
Jinbo Wang;Ruijin Wang;Guangquan Xu;Donglin He;Xikai Pei;Fengli Zhang;Jie Gan
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引用次数: 0

摘要

联邦学习是一种分布式学习范式,通常与边缘计算相结合,以满足物联网设备的联合训练。联邦学习的一个重大挑战在于统计异质性,其特征是跨不同方的非独立和同分布(non-IID)本地数据。这种异质性可能导致各个局部模型中的优化不一致。虽然以前的研究已经努力解决来自异构数据的问题,但我们的研究结果表明,这些尝试并没有产生高性能的神经网络模型。为了克服这一根本性的挑战,我们在本文中引入了名为FedPKR的框架,它通过知识复习促进了有效的联邦学习。FedPKR的核心原则包括利用由全局和局部模型层生成的知识表示,以相互的方式进行周期性的逐层比较学习。这一战略纠正了当地的模式培训,从而提高了成果。我们的实验结果和随后的分析证实,FedPKR有效地提高了模型在图像分类任务中的准确性,同时展示了对所有参与实体的统计异质性的弹性。
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FedPKR: Federated Learning With Non-IID Data via Periodic Knowledge Review in Edge Computing
Federated learning is a distributed learning paradigm, which is usually combined with edge computing to meet the joint training of IoT devices. A significant challenge in federated learning lies in the statistical heterogeneity, characterized by non-independent and identically distributed (non-IID) local data across diverse parties. This heterogeneity can result in inconsistent optimization within individual local models. Although previous research has endeavored to tackle issues stemming from heterogeneous data, our findings indicate that these attempts have not yielded high-performance neural network models. To overcome this fundamental challenge, we introduce the framework called FedPKR in this paper, which facilitates efficient federated learning through knowledge review. The core principle of FedPKR involves leveraging the knowledge representation generated by the global and local model layers to conduct periodic layer-by-layer comparative learning in a reciprocal manner. This strategy rectifies local model training, leading to enhanced outcomes. Our experimental results and subsequent analysis substantiate that FedPKR effectively augments model accuracy in image classification tasks, meanwhile demonstrating resilience to statistical heterogeneity across all participating entities.
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
期刊最新文献
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