中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
Multi-aspect self-supervised learning for heterogeneous information network

文献类型:期刊论文

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作者Che, Feihu1,2; Tao, Jianhua1,2,3; Yang, Guohua1; Liu, Tong1; Zhang, Dawei1
刊名KNOWLEDGE-BASED SYSTEMS ; KNOWLEDGE-BASED SYSTEMS
出版日期2021-12-05 ; 2021-12-05
卷号233页码:14
关键词Heterogeneous information network Heterogeneous information network Self-supervised Contrastive learning Graph neural network Self-supervised Contrastive learning Graph neural network
ISSN号0950-7051 ; 0950-7051
DOI10.1016/j.knosys.2021.107474 ; 10.1016/j.knosys.2021.107474
通讯作者Tao, Jianhua(jhtao@nlpr.ia.ac.cn)
英文摘要Graph neural networks (GNNs) have made remarkable advancements in processing graph-structured data with all nodes and edges belonging to the same type. However, various types of node and relations exist in heterogeneous information networks (HINs), and due to this, HINs contain rich structural and semantic information. To tackle this heterogeneity, existing methods usually apply several well-designed metapaths to HINs to obtain the corresponding homogeneous subgraphs. However, these methods either fail to capture the interconnections between the same nodes in different subgraphs or require qualified labels. To address these issues, we propose a new multi-aspect self-supervised learning (SSL) framework for HIN representation in an unsupervised manner: (1) we design a new contrastive learning model to capture the similarities between the same nodes in different homogeneous subgraphs, and (2) we maximize the mutual information between the local patches and the global representation in one subgraph. Extensive experiments on various downstream tasks demonstrate the superiority of our model in comparison to the existing state-of-the-art methods. (c) 2021 Elsevier B.V. All rights reserved.;

Graph neural networks (GNNs) have made remarkable advancements in processing graph-structured data with all nodes and edges belonging to the same type. However, various types of node and relations exist in heterogeneous information networks (HINs), and due to this, HINs contain rich structural and semantic information. To tackle this heterogeneity, existing methods usually apply several well-designed metapaths to HINs to obtain the corresponding homogeneous subgraphs. However, these methods either fail to capture the interconnections between the same nodes in different subgraphs or require qualified labels. To address these issues, we propose a new multi-aspect self-supervised learning (SSL) framework for HIN representation in an unsupervised manner: (1) we design a new contrastive learning model to capture the similarities between the same nodes in different homogeneous subgraphs, and (2) we maximize the mutual information between the local patches and the global representation in one subgraph. Extensive experiments on various downstream tasks demonstrate the superiority of our model in comparison to the existing state-of-the-art methods. (c) 2021 Elsevier B.V. All rights reserved.

WOS研究方向Computer Science ; Computer Science
语种英语 ; 英语
WOS记录号WOS:000709919000012 ; WOS:000709919000012
出版者ELSEVIER ; ELSEVIER
源URL[http://ir.ia.ac.cn/handle/173211/46303]  
专题模式识别国家重点实验室_智能交互
通讯作者Tao, Jianhua
作者单位1.Chinese Acad Sci, Inst Automat, Natl Lab Pattern Recognit, Beijing, Peoples R China
2.Univ Chinese Acad Sci, Sch Artificial Intelligence, Beijing, Peoples R China
3.CAS Ctr Excellence Brain Sci & Intelligence Techn, Beijing, Peoples R China
推荐引用方式
GB/T 7714
Che, Feihu,Tao, Jianhua,Yang, Guohua,et al. Multi-aspect self-supervised learning for heterogeneous information network, Multi-aspect self-supervised learning for heterogeneous information network[J]. KNOWLEDGE-BASED SYSTEMS, KNOWLEDGE-BASED SYSTEMS,2021, 2021,233, 233:14, 14.
APA Che, Feihu,Tao, Jianhua,Yang, Guohua,Liu, Tong,&Zhang, Dawei.(2021).Multi-aspect self-supervised learning for heterogeneous information network.KNOWLEDGE-BASED SYSTEMS,233,14.
MLA Che, Feihu,et al."Multi-aspect self-supervised learning for heterogeneous information network".KNOWLEDGE-BASED SYSTEMS 233(2021):14.

入库方式: OAI收割

来源:自动化研究所

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