基于分层模型聚合的移动边缘网络联邦学习

Qiming Cao, Xing Zhang, Yushun Zhang, Yongdong Zhu
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引用次数: 2

摘要

随着物联网和移动设备性能的不断提高,一种新型的机器学习架构——联邦学习应运而生。在边缘节点上实现人工智能框架的需求也越来越大。本文提出了一种部署在边缘计算网络中的联邦学习系统,该系统以分布式形式实现服务器部分,并采用分层模型聚合和动态拓扑来减少带宽使用和时间消耗。实验证明了联合学习算法在系统中的有效性。仿真结果表明,系统的时间开销与传统系统的节点数成对数关系,而不是线性关系。
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Layered Model Aggregation based Federated Learning in Mobile Edge Networks
With the continuous improving of performance of the IoT and mobile devices, a new type of machine learning architecture, federated learning came into being. And there is also an increasing need to implement artificial intelligence frameworks on edge nodes. In this paper, we propose a federated learning system deployed in edge computing network, which realizes the server part in distributed form and uses layered model aggregation and dynamic topology to reduce bandwidth usage and time consuming. The experiment shows the effectiveness of federated learning algorithm in our system. And simulation results show that the time cost of our system increases logarithmically with the number of nodes rather than linearly in the traditional system.
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