Heterogeneity-aware device selection for efficient federated edge learning

Yiran Shi , Jieyan Nie , Xingwei Li , Hui Li
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Abstract

Federated learning (FL) combined with mobile edge computing (FEEL) provides an end-to-edge synergetic learning approach to allow end devices to participate in machine learning model training parallelly while ensuring user privacy is maintained. However, conventional FL approaches often overlook two critical characteristics in the real-edge scenario: system heterogeneity and statistical heterogeneity. This oversight can detrimentally impact both the training efficiency and the model's accuracy. Specifically, it brings intolerable training delays and severe training accuracy degradation. To address these issues, this paper proposes a novel Quality-aware online Device Selection (QDS) algorithm. The QDS algorithm leverages a greedy selection method that guarantees the deadline restrictions and reflects upon their historical performance metrics, as indicated by their loss function values from preceding training rounds. This rigorous selection process ensures that the participating device set is optimally positioned to balance the dual objectives of training efficiency and model accuracy. Furthermore, we have developed a training loss-based device selection mechanism, aimed at prioritizing higher-quality devices for early submission of local updates prior to the designated deadline. Experimental findings demonstrate that the proposed QDS significantly enhances both the speed and accuracy of training when contrasted with baseline methods.

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针对高效联盟边缘学习的异构感知设备选择
联合学习(FL)与移动边缘计算(FEEL)相结合,提供了一种端到边缘的协同学习方法,允许终端设备并行参与机器学习模型训练,同时确保用户隐私得到维护。然而,传统的 FL 方法往往忽略了真实边缘场景中的两个关键特征:系统异构性和统计异构性。这种忽略会对训练效率和模型的准确性产生不利影响。具体来说,它会带来难以忍受的训练延迟和严重的训练精度下降。为了解决这些问题,本文提出了一种新颖的质量感知在线设备选择(QDS)算法。QDS 算法采用了一种贪婪选择方法,该方法保证了截止时间限制,并反映了它们的历史性能指标,这些指标由它们在前几轮训练中的损失函数值表示。这种严格的选择过程可确保参与的设备集处于最佳位置,以平衡训练效率和模型准确性这两个目标。此外,我们还开发了一种基于训练损失的设备选择机制,旨在优先选择质量较高的设备,以便在指定截止日期前尽早提交本地更新。实验结果表明,与基线方法相比,所提出的 QDS 能显著提高训练速度和准确性。
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