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A directed graph convolutional neural network for edge-structured signals in link-fault detection

Kenning, Michael; Deng, Jingjing; Edwards, Michael; Xie, Xianghua

Authors

Michael Kenning

Michael Edwards

Xianghua Xie



Abstract

The growing interest in graph deep learning has led to a surge of research focusing on learning various characteristics of graph-structured data. Directed graphs have generally been treated as incidental to definitions on the more general class of undirected graphs. The implicit class imbalance in some graph problems also proves difficult to tackle. Moreover, a body of work has begun to grow that considers how to learn signals structured on the edges of graphs. In this paper, we propose the directed graph convolutional neural network (DGCNN), and describe a simple way to mitigate the inherent class imbalance in graphs. The model is applied to edge-structured signals from datacenter simulations using the structure of a directed linegraph to represent the second-order structure of its underlying graph. We demonstrate that the DGCNN’s improves over undirected models and other directed models by applying our model to locating link-faults in a datacenter simulation.

Citation

Kenning, M., Deng, J., Edwards, M., & Xie, X. (2022). A directed graph convolutional neural network for edge-structured signals in link-fault detection. Pattern Recognition Letters, 153, 100-106. https://doi.org/10.1016/j.patrec.2021.12.003

Journal Article Type Article
Acceptance Date Dec 8, 2021
Online Publication Date Dec 15, 2021
Publication Date 2022-01
Deposit Date Nov 3, 2022
Journal Pattern Recognition Letters
Print ISSN 0167-8655
Electronic ISSN 1872-7344
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 153
Pages 100-106
DOI https://doi.org/10.1016/j.patrec.2021.12.003
Public URL https://durham-repository.worktribe.com/output/1186095