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Main Authors: Zhou, Jiajun, Xie, Chenxuan, Gong, Shengbo, Wen, Zhenyu, Zhao, Xiangyu, Xuan, Qi, Yang, Xiaoniu
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2212.09970
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_version_ 1866910496055099392
author Zhou, Jiajun
Xie, Chenxuan
Gong, Shengbo
Wen, Zhenyu
Zhao, Xiangyu
Xuan, Qi
Yang, Xiaoniu
author_facet Zhou, Jiajun
Xie, Chenxuan
Gong, Shengbo
Wen, Zhenyu
Zhao, Xiangyu
Xuan, Qi
Yang, Xiaoniu
contents In recent years, graph representation learning has achieved remarkable success while suffering from low-quality data problems. As a mature technology to improve data quality in computer vision, data augmentation has also attracted increasing attention in graph domain. To advance research in this emerging direction, this survey provides a comprehensive review and summary of existing graph data augmentation (GDAug) techniques. Specifically, this survey first provides an overview of various feasible taxonomies and categorizes existing GDAug studies based on multi-scale graph elements. Subsequently, for each type of GDAug technique, this survey formalizes standardized technical definition, discuss the technical details, and provide schematic illustration. The survey also reviews domain-specific graph data augmentation techniques, including those for heterogeneous graphs, temporal graphs, spatio-temporal graphs, and hypergraphs. In addition, this survey provides a summary of available evaluation metrics and design guidelines for graph data augmentation. Lastly, it outlines the applications of GDAug at both the data and model levels, discusses open issues in the field, and looks forward to future directions. The latest advances in GDAug are summarized in GitHub.
format Preprint
id arxiv_https___arxiv_org_abs_2212_09970
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Data Augmentation on Graphs: A Technical Survey
Zhou, Jiajun
Xie, Chenxuan
Gong, Shengbo
Wen, Zhenyu
Zhao, Xiangyu
Xuan, Qi
Yang, Xiaoniu
Machine Learning
In recent years, graph representation learning has achieved remarkable success while suffering from low-quality data problems. As a mature technology to improve data quality in computer vision, data augmentation has also attracted increasing attention in graph domain. To advance research in this emerging direction, this survey provides a comprehensive review and summary of existing graph data augmentation (GDAug) techniques. Specifically, this survey first provides an overview of various feasible taxonomies and categorizes existing GDAug studies based on multi-scale graph elements. Subsequently, for each type of GDAug technique, this survey formalizes standardized technical definition, discuss the technical details, and provide schematic illustration. The survey also reviews domain-specific graph data augmentation techniques, including those for heterogeneous graphs, temporal graphs, spatio-temporal graphs, and hypergraphs. In addition, this survey provides a summary of available evaluation metrics and design guidelines for graph data augmentation. Lastly, it outlines the applications of GDAug at both the data and model levels, discusses open issues in the field, and looks forward to future directions. The latest advances in GDAug are summarized in GitHub.
title Data Augmentation on Graphs: A Technical Survey
topic Machine Learning
url https://arxiv.org/abs/2212.09970