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Main Authors: Xiao, Jiaren, Dai, Quanyu, Shen, Xiao, Xie, Xiaochen, Dai, Jing, Lam, James, Kwok, Ka-Wai
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2309.07402
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author Xiao, Jiaren
Dai, Quanyu
Shen, Xiao
Xie, Xiaochen
Dai, Jing
Lam, James
Kwok, Ka-Wai
author_facet Xiao, Jiaren
Dai, Quanyu
Shen, Xiao
Xie, Xiaochen
Dai, Jing
Lam, James
Kwok, Ka-Wai
contents Label scarcity in a graph is frequently encountered in real-world applications due to the high cost of data labeling. To this end, semi-supervised domain adaptation (SSDA) on graphs aims to leverage the knowledge of a labeled source graph to aid in node classification on a target graph with limited labels. SSDA tasks need to overcome the domain gap between the source and target graphs. However, to date, this challenging research problem has yet to be formally considered by the existing approaches designed for cross-graph node classification. This paper proposes a novel method called SemiGCL to tackle the graph \textbf{Semi}-supervised domain adaptation with \textbf{G}raph \textbf{C}ontrastive \textbf{L}earning and minimax entropy training. SemiGCL generates informative node representations by contrasting the representations learned from a graph's local and global views. Additionally, SemiGCL is adversarially optimized with the entropy loss of unlabeled target nodes to reduce domain divergence. Experimental results on benchmark datasets demonstrate that SemiGCL outperforms the state-of-the-art baselines on the SSDA tasks. The source codes of SemiGCL are publicly available at https://github.com/ JiarenX/SemiGCL.
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institution arXiv
publishDate 2023
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spellingShingle Semi-supervised Domain Adaptation on Graphs with Contrastive Learning and Minimax Entropy
Xiao, Jiaren
Dai, Quanyu
Shen, Xiao
Xie, Xiaochen
Dai, Jing
Lam, James
Kwok, Ka-Wai
Machine Learning
Label scarcity in a graph is frequently encountered in real-world applications due to the high cost of data labeling. To this end, semi-supervised domain adaptation (SSDA) on graphs aims to leverage the knowledge of a labeled source graph to aid in node classification on a target graph with limited labels. SSDA tasks need to overcome the domain gap between the source and target graphs. However, to date, this challenging research problem has yet to be formally considered by the existing approaches designed for cross-graph node classification. This paper proposes a novel method called SemiGCL to tackle the graph \textbf{Semi}-supervised domain adaptation with \textbf{G}raph \textbf{C}ontrastive \textbf{L}earning and minimax entropy training. SemiGCL generates informative node representations by contrasting the representations learned from a graph's local and global views. Additionally, SemiGCL is adversarially optimized with the entropy loss of unlabeled target nodes to reduce domain divergence. Experimental results on benchmark datasets demonstrate that SemiGCL outperforms the state-of-the-art baselines on the SSDA tasks. The source codes of SemiGCL are publicly available at https://github.com/ JiarenX/SemiGCL.
title Semi-supervised Domain Adaptation on Graphs with Contrastive Learning and Minimax Entropy
topic Machine Learning
url https://arxiv.org/abs/2309.07402