基于各层权重的联邦学习聚类模型成本降低

Hyungbin Kim, Yongho Kim, Hyunhee Park
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引用次数: 7

摘要

联邦学习(FL)具有与现有机器学习不同的学习框架,现有机器学习必须集中训练数据。联邦学习具有保护隐私的优点,因为学习是在每个客户机设备上而不是在中央服务器上执行的,并且只有权重参数值(即学习结果)被发送到中央服务器。然而,与云计算相比,联邦学习的性能表现出相对较低的性能,并且在现实中,由于服务器与多个客户端之间的通信成本较高,因此难以构建联邦学习环境。在本文中,我们提出了带有聚类算法的联邦学习(FLC)。本文提出的FLC是一种通过分析机器学习模型每层的权重来聚类具有相似特征的客户端的方法,并在聚类客户端之间进行联邦学习。所提出的FLC可以通过减少每个模型对应的客户端数量来降低每个模型的通信成本。大量的仿真结果证实,与标准的联邦学习相比,通过所提出的FLC,准确率提高了2.4%,损失降低了47%。
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Reducing Model Cost Based on the Weights of Each Layer for Federated Learning Clustering
Federated Learning (FL) has a different learning framework from existing machine learning, which had to centralize training data. Federated learning has the advantage of protecting privacy because learning is performed on each client device rather than the central server, and only the weight parameter values, which are the learning results, are sent to the central server. However, the performance of federated learning shows relatively low performance compared to cloud computing, and in reality, it is difficult to build a federated learning environment due to the high communication cost between the server and multiple clients. In this paper, we propose Federated Learning with Clustering algorithms (FLC). The proposed FLC is a method of clustering clients with similar characteristics by analyzing the weights of each layer of a machine learning model, and performing federated learning among the clustered clients. The proposed FLC can reduce the communication cost for each model by reducing the number of clients corresponding to each model. As a result of extensive simulation, it is confirmed that the accuracy is improved by 2.4% and the loss by 47% through the proposed FLC compared to the standard federated learning.
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