【Author】 Guo, Jialin; Wu, Jie; Liu, Anfeng; Xiong, Neal N.
【Source】IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS
【Abstract】With the integration of Artificial Intelligence (AI) and Internet of Things (IoT), the Federated Edge Learning (FEL), a promising computing framework is developing. However, there are still unsolved issues on communication efficiency and data security due to the huge models and unreliable transmission links. To address these issues, this paper proposes a novel federated edge learning system, called LightFed, where the edge nodes upload only vital partial local models, and successfully achieve lightweight communication and model aggregation. First, a novel model aggregation method Model Splitting and Splicing (MSS) and a Selective Parameter Transmission (SPT) scheme are proposed. By detecting the updating gradients of local parameters and filtering significant parameters, selective rotated transmission and efficient aggregation of local models are achieved. Second, a Training Filling Model (TFM) is proposed to infer the total data distribution of edge nodes, and train a filling model to mitigate the unbalanced training data without violating the data privacy of individual users. Moreover, a blockchain-powered confusion transmission mechanism is proposed for defending the attacks from external adversaries and protecting the model information. Finally, extensive experimental results demonstrate that our LightFed significantly outperforms the existing FEL systems in terms of communication efficiency and privacy security.
【Keywords】Data models; Computational modeling; Training; Mathematical models; Servers; Security; Data privacy; Federated edge learning; communication efficiency; privacy protection; deep neural network
【标题】LightFed:一个高效安全的基于模型分裂的联邦边缘学习系统
【发表时间】2022
【收录时间】2022-08-08
【文献类型】Article
【论文大主题】区块链联邦学习
【影响因子】3.757
【翻译者】石东瑛
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