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融合全局结构信息的拓扑优化图卷积网络
引用本文:富坤,高金辉,赵晓梦,李佳宁. 融合全局结构信息的拓扑优化图卷积网络[J]. 计算机应用, 2022, 42(2): 357-364. DOI: 10.11772/j.issn.1001-9081.2021030380
作者姓名:富坤  高金辉  赵晓梦  李佳宁
作者单位:河北工业大学 人工智能与数据科学学院,天津 300401
基金项目:国家自然科学基金资助项目(61806072)~~;
摘    要:基于拓扑优化的图卷积网络(TOGCN)是一类图卷积神经网络(GCNN)模型,它通过网络中的辅助信息优化网络拓扑结构,有利于反映节点间的联系程度;然而TOGCN模型仅注重局部节点之间的关联关系,对网络潜在的全局结构信息关注不足.融合全局特征信息,有助于提高模型的性能和处理信息缺失时的鲁棒性.提出了融合全局结构信息的拓扑优...

关 键 词:网络表示学习  图嵌入  图卷积神经网络  全局结构信息  拓扑优化
收稿时间:2021-03-14
修稿时间:2021-06-01

Topology optimization based graph convolutional network combining with global structural information
FU Kun,GAO Jinhui,ZHAO Xiaomeng,LI Jianing. Topology optimization based graph convolutional network combining with global structural information[J]. Journal of Computer Applications, 2022, 42(2): 357-364. DOI: 10.11772/j.issn.1001-9081.2021030380
Authors:FU Kun  GAO Jinhui  ZHAO Xiaomeng  LI Jianing
Affiliation:School of Artificial Intelligence,Hebei University of Technology,Tianjin 300401,China
Abstract:As a kind of Graph Convolutional Neural Network (GCNN), Topology Optimization based Graph Convolutional Network (TOGCN) model adopts auxiliary information in the network to optimize topological structure of the network, thereby helping to reflect the relational degrees between the nodes. However, TOGCN model only focuses on the association between local nodes, and not enough on the potential global structure information. Fusing global feature information, the model will help to improve performance as well as its robustness in dealing with incomplete information. A Global structure information Enhanced-TOGCN (GE-TOGCN) model was proposed, the attributes of neighboring nodes were utilized to optimize the topological graph, and the class information was regarded as the global structure information to maintain intra-class aggregation and inter-class separation. Firstly, the center vector of each class was calculated by the labeled nodes, then some unlabeled nodes were selected to update these class center vectors. Finally, all the nodes were assigned to the corresponding class according to their similarity to class center vectors, and a semi-supervised loss function was adopted to optimize the class center vector of each class and the final representation vectors of the nodes. On Cora and Citeseer datasets, node classification task and node visualization task were performed by using the obtained node representation vectors with the loss of label information. Experimental results show that compared with Graph Convolutional Network (GCN), Graph Learning-Convolutional Network (GLCN) and other models, GE-TOGCN has the classification accuracy increased by 1.2-12.0 percentage points on Cora dataset, and the classification accuracy increased by 0.9-9.9 percentage points on Citeseer dataset. In node visualization task, the proposed model has higher degree of intra-class node aggregation and more obvious boundaries between class clusters. In summary, the fusion of class global information can reduce the negative influence of label information loss on learning effects of the model, and the node representations obtained by the proposed model have better performance in downstream tasks.
Keywords:network representation learning  graph embedding  Graph Convolutional Neural Network (GCNN)  global structural information  topology optimization  
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