Elastic Optimized Edge Federated Learning

Khadija Sultana, K. Ahmed, Bruce Gu, Hua Wang
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Abstract

To fully exploit the enormous data generated by the devices in edge computing, edge federated learning (EFL) is envisioned as a promising solution. The distributed collaborative training in EFL deals with the delay and privacy issues as compared to the traditional model training. However, the existence of straggling devices degrades the model performance. The stragglers are manifested due to the data or system heterogeneity. In this paper, we introduce elastic optimized edge federated learning (FedEN) approach to mitigate the straggling-effect due to the data heterogeneity. This issue can be alleviated by the reinforced device selection by the edge server which can solve device heterogeneity to some extent. But, the statistical heterogeneity remains unsolved. Specifically, we define the problem of stragglers in EFL. Then, we formulate the optimization problem to be solved at the edge devices. We experimented on the MNIST and CIFAR-10 datasets for the proposed model. Simulated experiments demonstrates that the proposed approach improves the training performance. The results confirm the improved performance of FedEN approach over the baselines.
弹性优化边缘联邦学习
为了充分利用边缘计算中设备产生的大量数据,边缘联合学习(EFL)被认为是一种很有前途的解决方案。与传统的模型训练相比,分布式协同训练解决了延迟和隐私问题。但是,离散器件的存在会降低模型的性能。离散是由于数据或系统的异质性造成的。在本文中,我们引入弹性优化边缘联邦学习(FedEN)方法来缓解由于数据异质性造成的离散效应。边缘服务器加强设备选择,在一定程度上解决了设备异构问题,可以缓解这一问题。但是,统计异质性仍未得到解决。具体来说,我们定义了英语学习中的掉队问题。然后,我们提出了在边缘器件上要解决的优化问题。我们在MNIST和CIFAR-10数据集上对所提出的模型进行了实验。仿真实验表明,该方法提高了训练性能。结果证实了FedEN方法在基线上的改进性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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