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Lee, Hoon
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Task-Oriented Edge Networks: Decentralized Learning Over Wireless Fronthaul

Author(s)
Lee, HoonKim, Seung-Wook
Issued Date
2024-05
DOI
10.1109/JIOT.2023.3347234
URI
https://scholarworks.unist.ac.kr/handle/201301/82902
Citation
IEEE INTERNET OF THINGS JOURNAL, v.11, no.9, pp.15540 - 15556
Abstract
This article studies task-oriented edge networks where multiple edge Internet of Things nodes execute machine learning tasks with the help of powerful deep neural networks (DNNs) at a network cloud. Separate edge nodes (ENs) result in a partially observable system where they can only get partitioned features of the global network states. These local observations need to be forwarded to the cloud via resource-constrained wireless fronthual links. Individual ENs compress their local observations into uplink fronthaul messages using task-oriented encoder DNNs. Then, the cloud carries out a remote inference task by leveraging received signals. Such a distributed topology requests a decentralized training and decentralized execution (DTDE) learning framework for designing edge-cloud cooperative inference rules and their decentralized training strategies. First, we develop fronthaul-cooperative DNN architecture along with proper uplink coordination protocols suitable for wireless fronthaul interconnection. Inspired by the nomographic function, an efficient cloud inference model becomes an integration of a number of shallow DNNs. This modulized architecture brings versatile calculations that are independent of the number of ENs. Next, we present a decentralized training algorithm of separate edge-cloud DNNs over downlink wireless fronthaul channels. An appropriate downlink coordination protocol is proposed, which backpropagates gradient vectors wirelessly from the cloud to the ENs. Numerical results demonstrate the viability of the proposed DTDE framework for optimizing task-oriented edge networks.
Publisher
Institute of Electrical and Electronics Engineers Inc.
ISSN
2327-4662
Keyword (Author)
task-oriented edge networkwireless backpropagationDecentralized learning
Keyword
COMMUNICATIONCOMPUTATION

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