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dc.contributor.authorChen, Hongxuen_US
dc.contributor.authorYin, Hongzhien_US
dc.contributor.authorChen, Tongen_US
dc.contributor.authorQuoc Viet Hung Nguyenen_US
dc.contributor.authorPeng, Wen-Chihen_US
dc.contributor.authorLi, Xueen_US
dc.date.accessioned2019-09-02T07:45:37Z-
dc.date.available2019-09-02T07:45:37Z-
dc.date.issued2019-01-01en_US
dc.identifier.isbn978-1-5386-7474-1en_US
dc.identifier.issn1084-4627en_US
dc.identifier.urihttp://dx.doi.org/10.1109/ICDE.2019.00059en_US
dc.identifier.urihttp://hdl.handle.net/11536/152545-
dc.description.abstractNetwork embedding has been proven effective to learn low-dimensional vector representations for network vertices, and recently received a tremendous amount of research attention. However, most of existing methods for network embedding merely focus on preserving the first and second order proximities between nodes, and the important properties of node centrality are neglected. Various centrality measures such as Degree, Closeness, Betweenness, Eigenvector and PageRank centralities have been designed to measure the importance of individual nodes. In this paper, we focus on a novel yet unsolved problem that aims to learn low-dimensional continuous nodes representations that not only preserve the network structure, but also keep the centrality information. We propose a generalizable model, namely GraphCSC, that utilizes both linkage information and centrality information to learn low-dimensional vector representations for network vertices. The learned embeddings by GraphCSC are able to preserve different centrality information of nodes. In addition, we further propose GraphCSC-M, a more comprehensive model that can preserve different centrality information simultaneously through learning multiple centrality specific embeddings, and a novel attentive multi-view learning approach is developed to compress multiple embeddings of one node into a compact vector representation. Extensive experiments have been conducted to demonstrate that our model is able to preserve different centrality information of nodes, and achieves better performance on several benchmark tasks compared with recent state-of-the-art network embedding methods.en_US
dc.language.isoen_USen_US
dc.titleExploiting Centrality Information with Graph Convolutions for Network Representation Learningen_US
dc.typeProceedings Paperen_US
dc.identifier.doi10.1109/ICDE.2019.00059en_US
dc.identifier.journal2019 IEEE 35TH INTERNATIONAL CONFERENCE ON DATA ENGINEERING (ICDE 2019)en_US
dc.citation.spage590en_US
dc.citation.epage601en_US
dc.contributor.department資訊工程學系zh_TW
dc.contributor.departmentDepartment of Computer Scienceen_US
dc.identifier.wosnumberWOS:000477731600052en_US
dc.citation.woscount0en_US
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