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[期刊论文]

Graph deconvolutional networks

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author:

Zhang, Chun-Yang (Zhang, Chun-Yang.) [1] (Scholars:张春阳) | Hu, Junfeng (Hu, Junfeng.) [2] | Yang, Lin (Yang, Lin.) [3] (Scholars:杨霖) | Unfold

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EI Scopus SCIE

Abstract:

Graphs and networks are very common data structure for modelling complex systems that are composed of a number of nodes and topologies, such as social networks, citation networks, biological protein-protein interactions networks, etc. In recent years, machine learning has become an efficient technique to obtain representation of graph for downstream graph analysis tasks, including node classification, link prediction, and community detection. Different with traditional graph analytical models, the representation learning on graph tries to learn low dimensional embeddings by means of machine learning models that could be trained in supervised, unsupervised or semi-supervised manners. Compared with traditional approaches that directly use input node attributes, these embeddings are much more informative and helpful for graph analysis. There are a number of developed models in this respect, that are different in the ways of measuring similarity of vertexes in both original space and feature space. In order to learn more efficient node representation with better generalization property, we propose a task-independent graph representation model, called as graph deconvolutional network (GDN), and corresponding unsupervised learning algorithm in this paper. Different with graph convolution network (GCN) from the scratch, which produces embeddings by convolving input attribute vectors with learned filters, the embeddings of the proposed GDN model are desired to be convolved with filters so that reconstruct the input node attribute vectors as far as possible. The embeddings and filters are alternatively optimized in the learning procedure. The correctness of the proposed GDN model is verified by multiple tasks over several datasets. The experimental results show that the GDN model outperforms existing alternatives with a big margin. (C) 2020 Elsevier Inc. All rights reserved.

Keyword:

Graph representation Machine learning Node embedding Representation learning Unsupervised learning

Community:

  • [ 1 ] [Zhang, Chun-Yang]Fuzhou Univ, Coll Math & Comp Sci, Fuzhou, Peoples R China
  • [ 2 ] [Hu, Junfeng]Fuzhou Univ, Coll Math & Comp Sci, Fuzhou, Peoples R China
  • [ 3 ] [Yang, Lin]Fuzhou Univ, Coll Math & Comp Sci, Fuzhou, Peoples R China
  • [ 4 ] [Yao, Zhiliang]Fuzhou Univ, Coll Math & Comp Sci, Fuzhou, Peoples R China
  • [ 5 ] [Chen, C. L. Philip]South China Univ Technol, Sch Comp Sci & Engn, Guangzhou, Peoples R China

Reprint 's Address:

  • 胡俊峰 杨霖

    [Hu, Junfeng]Fuzhou Univ, Coll Math & Comp Sci, Fuzhou, Peoples R China;;[Yang, Lin]Fuzhou Univ, Coll Math & Comp Sci, Fuzhou, Peoples R China

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Version:

Source :

INFORMATION SCIENCES

ISSN: 0020-0255

Year: 2020

Volume: 518

Page: 330-340

6 . 7 9 5

JCR@2020

0 . 0 0 0

JCR@2023

ESI Discipline: COMPUTER SCIENCE;

ESI HC Threshold:149

JCR Journal Grade:1

CAS Journal Grade:1

Cited Count:

WoS CC Cited Count: 12

SCOPUS Cited Count: 20

30 Days PV: 1

查看更多>>操作日志

管理员  2025-04-28 17:45:10  更新被引

管理员  2024-08-08 21:32:05  更新被引

管理员  2024-04-16 23:11:14  更新被引

管理员  2024-03-29 12:18:48  更新被引

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