2020
DOI: 10.1360/n012019-00133
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Graph neural network

Abstract: 如果 v i 与 v j 有边连}, 这里 (i, j) = (j, i); • l vi : v i 的特征向量, 简记为 l i ; 表 1 模型分类 分类 模型 空间方法 GoriGNN [9, 10] 、LGNN [15] 、GGS-NN [16] 、GPNN [17] 、GGT-NN [18] 、FGNN [19] 谱方法 SpectralGCN [20] 、ChebNets [21] 、GCN [22] 、CayleyNets [23] 图生成 基于自编码器: SDNE [24] 、VGAE [25] 、DVNE [26] 基于生成对抗网络: GraphGAN [27] 、MolGAN [28] 、GraphSGAN [29] 其他生成方法: GraphRNN [30] 、DGNN [31]

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Cited by 7 publications
(2 citation statements)
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“…Graph structured data has emerged in recent years. Researchers have started to study how to build deep learning on graphs [34]. GCN [35] is an important branch of graph neural networks.…”
Section: B Deep Learning Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Graph structured data has emerged in recent years. Researchers have started to study how to build deep learning on graphs [34]. GCN [35] is an important branch of graph neural networks.…”
Section: B Deep Learning Methodsmentioning
confidence: 99%
“…(4) GCN [34]: GCN is a neural network method for spatial correlation analysis. A one-layer graph convolutional network is used, and the specific calculation process is detailed in Equation ( 4).…”
Section: B Baselinesmentioning
confidence: 99%