Manifold regularized multiple kernel learning with Hellinger distance

被引:0
作者
Tao Yang
Dongmei Fu
Xiaogang Li
Kamil Říha
机构
[1] University of Science & Technology Beijing,School of Automation and Electrical Engineering
[2] University of Science & Technology Beijing,Institute for Advanced Materials and Technology
[3] Brno University of Technology,Department of Telecommunications
来源
Cluster Computing | 2019年 / 22卷
关键词
Multiple kernel learning; Manifold regularization; Hellinger distance;
D O I
暂无
中图分类号
学科分类号
摘要
The aim of this paper is to solve the problem of unsupervised manifold regularization being used under supervised classification circumstance. This paper not only considers that the manifold information of data can provide useful information but also proposes a supervised method to compute the Laplacian graph by using the label information and the Hellinger distance for a comprehensive evaluation of the similarity of data samples. Meanwhile, multi-source or complex data is increasing nowadays. It is desirable to learn from several kernels that are adaptable and flexible to deal with this type of data. Therefore, our classifier is based on multiple kernel learning, and the proposed approach to supervised classification is a multiple kernel model with manifold regularization to incorporate intrinsic geometrical information. Finally, a classifier that minimizes the testing error and considers the geometrical structure of data is put forward. The results of experiments with other methods show the effectiveness of the proposed model and computing the inner potential geometrical information is useful for classification.
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页码:13843 / 13851
页数:8
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