个人信息Personal Information
教授
博士生导师
硕士生导师
性别:男
毕业院校:大连理工大学
学位:博士
所在单位:计算机科学与技术学院
电子邮箱:ybc@dlut.edu.cn
Maximally Correlated Principal Component Analysis Based on Deep Parameterization Learning
点击次数:
论文类型:期刊论文
发表时间:2019-08-01
发表刊物:ACM TRANSACTIONS ON KNOWLEDGE DISCOVERY FROM DATA
收录刊物:EI、SCIE
卷号:13
期号:4
ISSN号:1556-4681
关键字:Maximally correlated principal component analysis; deep parameterization learning; back propagation; classification
摘要:Dimensionality reduction is widely used to deal with high-dimensional data. As a famous dimensionality reduction method, principal component analysis (PCA) aiming at finding the low dimension feature of original data has made great successes, and many improved PCA algorithms have been proposed. However, most algorithms based on PCA only consider the linear correlation of data features. In this article, we propose a novel dimensionality reduction model called maximally correlated PCA based on deep parameterization learning (MCPCADP), which takes nonlinear correlation into account in the deep parameterization framework for the purpose of dimensionality reduction. The new model explores nonlinear correlation by maximizing Ky-Fan norm of the covariance matrix of nonlinearly mapped data features. A new BP algorithm for model optimization is derived. In order to assess the proposed method, we conduct experiments on both a synthetic database and several real-world databases. The experimental results demonstrate that the proposed algorithm is comparable to several widely used algorithms.