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利用初始残差和解耦操作的自适应深层图卷积
引用本文:张继杰,杨艳,刘勇.利用初始残差和解耦操作的自适应深层图卷积[J].计算机应用,2022,42(1):9-15.
作者姓名:张继杰  杨艳  刘勇
作者单位:黑龙江大学 计算机科学技术学院,哈尔滨 150080
黑龙江省数据库与并行计算重点实验室(黑龙江大学),哈尔滨 150080
基金项目:黑龙江省自然科学基金资助项目(LH2020F043)。
摘    要:传统的图卷积网络(GCN)及其很多变体都是在浅层时达到最佳的效果,而没有充分利用图中节点的高阶邻居信息.随后产生的深层图卷积模型可以解决以上问题却又不可避免地产生了过平滑的问题,导致模型无法有效区分图中不同类别的节点.针对此问题,提出了一种利用初始残差和解耦操作的自适应深层图卷积模型ID-AGCN.首先,对节点的表示转...

关 键 词:节点分类  初始残差  解耦  自适应  图卷积网络
收稿时间:2021-07-19
修稿时间:2021-08-13

Adaptive deep graph convolution using initial residual and decoupling operations
ZHANG Jijie,YANG Yan,LIU Yong.Adaptive deep graph convolution using initial residual and decoupling operations[J].journal of Computer Applications,2022,42(1):9-15.
Authors:ZHANG Jijie  YANG Yan  LIU Yong
Affiliation:School of Computer Science and Technology,Heilongjiang University,Harbin Heilongjiang 150080,China
Key Laboratory of Database and Parallel Computing of Heilongjiang Province (Heilongjiang University),Harbin Heilongjiang 150080,China
Abstract:The traditional Graph Convolutional Network (GCN) and many of its variants achieve the best effect in the shallow layers, and do not make full use of higher-order neighbor information of nodes in the graph. The subsequent deep graph convolution models can solve the above problem, but inevitably generate the problem of over-smoothing, which makes the models impossible to effectively distinguish different types of nodes in the graph. To address this problem, an adaptive deep graph convolution model using initial residual and decoupling operations, named ID-AGCN (model using Initial residual and Decoupled Adaptive Graph Convolutional Network), was proposed. Firstly, the node’s representation transformation as well as feature propagation was decoupled. Then, the initial residual was added to the node’s feature propagation process. Finally, the node representations obtained from different propagation layers were combined adaptively, appropriate local and global information was selected for each node to obtain node representations containing rich information, and a small number of labeled nodes were used for supervised training to generate the final node representations. Experimental result on three datasets Cora, CiteSeer and PubMed indicate that the classification accuracy of ID-AGCN is improved by about 3.4 percentage points, 2.3 percentage points and 1.9 percentage points respectively, compared with GCN. The proposed model has superiority in alleviating over-smoothing.
Keywords:node classification  initial residual  decoupling  adaptive  Graph Convolutional Network(GCN)
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