Reducing Communication Overhead of Federated Learning through Clustering Analysis

Ahmed A. Al-Saedi, V. Boeva, E. Casalicchio
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引用次数: 4

Abstract

Training of machine learning models in a Datacen-ter, with data originated from edge nodes, incurs high communication overheads and violates a user's privacy. These challenges may be tackled by employing Federated Learning (FL) machine learning technique to train a model across multiple decentralized edge devices (workers) using local data. In this paper, we explore an approach that identifies the most representative updates made by workers and those are only uploaded to the central server for reducing network communication costs. Based on this idea, we propose a FL model that can mitigate communication overheads via clustering analysis of the worker local updates. The Cluster Analysis-based Federated Learning (CA-FL) model is studied and evaluated in human activity recognition (HAR) datasets. Our evaluation results show the robustness of CA - FL in comparison with traditional FL in terms of accuracy and communication costs on both IID and non-IID cases.
通过聚类分析降低联邦学习的通信开销
在数据中心中训练机器学习模型,使用来自边缘节点的数据,会产生很高的通信开销,并侵犯用户的隐私。这些挑战可以通过采用联邦学习(FL)机器学习技术来解决,该技术使用本地数据跨多个分散的边缘设备(工作人员)训练模型。在本文中,我们探索了一种方法,该方法确定了工人所做的最具代表性的更新,并且这些更新仅上传到中央服务器以减少网络通信成本。基于这个想法,我们提出了一个FL模型,该模型可以通过对工作本地更新的聚类分析来减少通信开销。基于聚类分析的联邦学习(CA-FL)模型在人类活动识别(HAR)数据集中进行了研究和评估。我们的评估结果表明,在IID和非IID情况下,CA - FL在准确性和通信成本方面与传统FL相比具有稳健性。
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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