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基于张量图卷积的多视图聚类
引用本文:刘改,吴峰,刘诗仪.基于张量图卷积的多视图聚类[J].计算机系统应用,2022,31(4):296-302.
作者姓名:刘改  吴峰  刘诗仪
作者单位:西安工程大学计算机科学学院,西安710699
基金项目:西安市科技计划(2020KJRC0027)
摘    要:针对多视图聚类进行的数据表示学习,通常采用浅层模型与线性函数实现数据嵌入,该方式无法有效挖掘多种视图间丰富的数据关系.为充分表示不同视图间的一致性信息与互补性信息,本文提出基于张量图卷积的多视图聚类方法(TGCNMC).该方法首先将传统的平面图拼接为张量图,并采用张量图卷积学习各视图中数据的近邻结构;接着利用图间卷积进...

关 键 词:图卷积神经网络  多视图学习  聚类  深度学习  机器学习
收稿时间:2021/6/22 0:00:00
修稿时间:2021/7/20 0:00:00

Tensor Graph Convolution Networks for Multi-view Clustering
LIU Gai,WU Feng,LIU Shi-Yi.Tensor Graph Convolution Networks for Multi-view Clustering[J].Computer Systems& Applications,2022,31(4):296-302.
Authors:LIU Gai  WU Feng  LIU Shi-Yi
Abstract:The shallow models and linear functions are usually utilized for data embedding in data representation learning aimed at multi-view clustering. This strategy, however, cannot effectively mine the rich data relationships among the multiple views. For better representation of the consistency and complementarity information among different views, a tensor graph convolution network for multi-view clustering (TGCNMC) is proposed in this study. This method splices the traditional plane graphs into tensor graphs and uses tensor graph convolution to learn the neighbor relationships of the data in each view. Then, inter-graph convolution is adopted to transfer information among multiple views and thereby to capture the synergistic effect among the data of multiple views and reveal the consistency and complementarity information in those data. Finally, the self-monitoring method is employed for data clustering. Extensive experiments are carried out on standard data sets and the corresponding clustering results are better than those of the existing methods, which indicates that this method can represent multi-view data comprehensively, mine the relationships among views effectively, and deal with downstream clustering tasks beneficially.
Keywords:graph convolution neural network  multi-view learning  clustering  deep learning  machine learning
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