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Main Authors: Yuan, Jin, Hou, Feng, Du, Yangzhou, Shi, Zhongchao, Geng, Xin, Fan, Jianping, Rui, Yong
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2204.05104
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author Yuan, Jin
Hou, Feng
Du, Yangzhou
Shi, Zhongchao
Geng, Xin
Fan, Jianping
Rui, Yong
author_facet Yuan, Jin
Hou, Feng
Du, Yangzhou
Shi, Zhongchao
Geng, Xin
Fan, Jianping
Rui, Yong
contents Domain adaptation (DA) tries to tackle the scenarios when the test data does not fully follow the same distribution of the training data, and multi-source domain adaptation (MSDA) is very attractive for real world applications. By learning from large-scale unlabeled samples, self-supervised learning has now become a new trend in deep learning. It is worth noting that both self-supervised learning and multi-source domain adaptation share a similar goal: they both aim to leverage unlabeled data to learn more expressive representations. Unfortunately, traditional multi-task self-supervised learning faces two challenges: (1) the pretext task may not strongly relate to the downstream task, thus it could be difficult to learn useful knowledge being shared from the pretext task to the target task; (2) when the same feature extractor is shared between the pretext task and the downstream one and only different prediction heads are used, it is ineffective to enable inter-task information exchange and knowledge sharing. To address these issues, we propose a novel \textbf{S}elf-\textbf{S}upervised \textbf{G}raph Neural Network (SSG), where a graph neural network is used as the bridge to enable more effective inter-task information exchange and knowledge sharing. More expressive representation is learned by adopting a mask token strategy to mask some domain information. Our extensive experiments have demonstrated that our proposed SSG method has achieved state-of-the-art results over four multi-source domain adaptation datasets, which have shown the effectiveness of our proposed SSG method from different aspects.
format Preprint
id arxiv_https___arxiv_org_abs_2204_05104
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Self-Supervised Graph Neural Network for Multi-Source Domain Adaptation
Yuan, Jin
Hou, Feng
Du, Yangzhou
Shi, Zhongchao
Geng, Xin
Fan, Jianping
Rui, Yong
Machine Learning
Domain adaptation (DA) tries to tackle the scenarios when the test data does not fully follow the same distribution of the training data, and multi-source domain adaptation (MSDA) is very attractive for real world applications. By learning from large-scale unlabeled samples, self-supervised learning has now become a new trend in deep learning. It is worth noting that both self-supervised learning and multi-source domain adaptation share a similar goal: they both aim to leverage unlabeled data to learn more expressive representations. Unfortunately, traditional multi-task self-supervised learning faces two challenges: (1) the pretext task may not strongly relate to the downstream task, thus it could be difficult to learn useful knowledge being shared from the pretext task to the target task; (2) when the same feature extractor is shared between the pretext task and the downstream one and only different prediction heads are used, it is ineffective to enable inter-task information exchange and knowledge sharing. To address these issues, we propose a novel \textbf{S}elf-\textbf{S}upervised \textbf{G}raph Neural Network (SSG), where a graph neural network is used as the bridge to enable more effective inter-task information exchange and knowledge sharing. More expressive representation is learned by adopting a mask token strategy to mask some domain information. Our extensive experiments have demonstrated that our proposed SSG method has achieved state-of-the-art results over four multi-source domain adaptation datasets, which have shown the effectiveness of our proposed SSG method from different aspects.
title Self-Supervised Graph Neural Network for Multi-Source Domain Adaptation
topic Machine Learning
url https://arxiv.org/abs/2204.05104