SPLGJul 15, 2020

Federated Learning in Mobile Edge Computing: An Edge-Learning Perspective for Beyond 5G

arXiv:2007.08030v11 citations
AI Analysis

This work addresses the problem of real-time training for IoT applications in beyond 5G networks, presenting an incremental improvement over existing federated learning methods.

The paper tackles the challenge of training efficiency and accuracy for delay-sensitive federated learning in mobile edge computing by designing a novel framework that dynamically configures communication resources and selects IoT devices based on dataset influence, achieving improved performance in simulations.

Owing to the large volume of sensed data from the enormous number of IoT devices in operation today, centralized machine learning algorithms operating on such data incur an unbearable training time, and thus cannot satisfy the requirements of delay-sensitive inference applications. By provisioning computing resources at the network edge, Mobile Edge Computing (MEC) has become a promising technology capable of collaborating with distributed IoT devices to facilitate federated learning, and thus realize real-time training. However, considering the large volume of sensed data and the limited resources of both edge servers and IoT devices, it is challenging to ensure the training efficiency and accuracy of delay-sensitive training tasks. Thus, in this paper, we design a novel edge computing-assisted federated learning framework, in which the communication constraints between IoT devices and edge servers and the effect of various IoT devices on the training accuracy are taken into account. On one hand, we employ machine learning methods to dynamically configure the communication resources in real-time to accelerate the interactions between IoT devices and edge servers, thus improving the training efficiency of federated learning. On the other hand, as various IoT devices have different training datasets which have varying influence on the accuracy of the global model derived at the edge server, an IoT device selection scheme is designed to improve the training accuracy under the resource constraints at edge servers. Extensive simulations have been conducted to demonstrate the performance of the introduced edge computing-assisted federated learning framework.

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