DocumentCode :
63940
Title :
Binary- and Multi-class Group Sparse Canonical Correlation Analysis for Feature Extraction and Classification
Author :
Zhao Zhang ; Mingbo Zhao ; Chow, Tommy W. S.
Author_Institution :
Dept. of Electron. Eng., City Univ. of Hong Kong, Kowloon, China
Volume :
25
Issue :
10
fYear :
2013
fDate :
Oct. 2013
Firstpage :
2192
Lastpage :
2205
Abstract :
This paper incorporates the group sparse representation into the well-known canonical correlation analysis (CCA) framework and proposes a novel discriminant feature extraction technique named group sparse canonical correlation analysis (GSCCA). GSCCA uses two sets of variables and aims at preserving the group sparse (GS) characteristics of data within each set in addition to maximize the global interset covariance. With GS weights computed prior to feature extraction, the locality, sparsity and discriminant information of data can be adaptively determined. The GS weights are obtained from an NP-hard group-sparsity promoting problem that considers all highly correlated data within a group. By defining one of the two variable sets as the class label matrix, GSCCA is effectively extended to multiclass scenarios. Then GSCCA is theoretically formulated as a least-squares problem as CCA does. Comparative analysis between this work and the related studies demonstrate that our algorithm is more general exhibiting attractive properties. The projection matrix of GSCCA is analytically solved by applying eigen-decomposition and trace ratio (TR) optimization. Extensive benchmark simulations are conducted to examine GSCCA. Results show that our approach delivers promising results, compared with other related algorithms.
Keywords :
computational complexity; correlation methods; covariance analysis; eigenvalues and eigenfunctions; feature extraction; image classification; optimisation; sparse matrices; GS characteristics; GS weights; GSCCA; NP-hard group-sparsity promoting problem; TR optimization; adaptive determination; binary-class group sparse canonical correlation analysis; class label matrix; data locality; data sparsity; discriminant feature extraction technique; discriminant information; eigen-decomposition; feature classification; global interset covariance maximization; least squares problem; multiclass group sparse canonical correlation analysis; projection matrix; trace ratio optimization; Correlation; Encoding; Feature extraction; Iron; Optimization; Sparse matrices; Vectors; Canonical correlation analysis; Correlation; Encoding; Feature extraction; Iron; Optimization; Sparse matrices; Vectors; feature extraction; group sparse representation; multiclass classification;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2012.217
Filename :
6341730
Link To Document :
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