教授 博士生导师 硕士生导师
性别: 男
毕业院校: 中国科技大学
学位: 博士
所在单位: 软件学院、国际信息与软件学院
学科: 计算机应用技术. 软件工程
电子邮箱: xczhang@dlut.edu.cn
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论文类型: 期刊论文
发表时间: 2016-12-01
发表刊物: PATTERN RECOGNITION LETTERS
收录刊物: SCIE、EI、Scopus
卷号: 84
页面范围: 56-62
ISSN号: 0167-8655
关键字: Multi-view similarity; Similarity construction; Local linear neighbor
摘要: Graph based multi-view data analysis has become a hot topic in the past decade, and multi-view similarity matrix is fundamental for such tasks. Existing multi-view similarity matrix construction methods cannot learn local geometrical information in the original data space from multiple views simultaneously. Considering the fact that an appropriate similarity matrix is block-wise with intra-class similarity, it is more reasonable to learn a similarity matrix by using local geometrical information in multiple original data space. In this paper, we propose to construct a unified similarity matrix by using local linear neighbors in multiple views. In each view, the similarity matrix can be reconstructed with the weights of the neighbors of each data point in the original space. In multiple views, we seek for a unified similarity matrix which consists of the similarity matrix in each view. The unified similarity matrix can be used for spectral clustering, label propagation and other graph based learning algorithms. Experimental results show that spectral clustering and label propagation algorithms using the unified similarity matrix outperform those using other multi-view similarity matrices, they also outperform typical multi-view spectral clustering algorithms and typical multi-view label propagation algorithms. (C) 2016 Elsevier B.V. All rights reserved.