DocumentCode
548451
Title
Supervised feature extraction algorithm by iterative calculations
Author
Takeuchi, Yohei ; Ito, Momoyo ; Kashihara, Koji ; Fukumi, Minoru
Author_Institution
Grad. Sch. of Adv. Technol. & Sci., Univ. of Tokushima, Tokushima, Japan
fYear
2011
fDate
21-23 June 2011
Firstpage
46
Lastpage
49
Abstract
In pattern recognition, the principal component analysis (PCA) is one of the most famous feature extraction methods for dimensionality reduction of high-dimensional datasets. Furthermore, Simple-PCA (SPCA) which is a faster version of the PCA, has been carried out effectively by iterative operated learning. However, in SPCA, when input data are distributed in a complex way, SPCA might not be efficient because it is learned without class information of the dataset. Thus, SPCA cannot be said that it is optimal for classification. In this paper, we propose a new learning algorithm, which is learned with the class information of the dataset. Eigenvectors spanning eigenspace of the dataset are obtained by calculation of data variations belonging to each class. We will show the derivation of the proposed algorithm and demonstrate some experiments to compare the SPCA with the proposed algorithm by using UCI datasets.
Keywords
data analysis; eigenvalues and eigenfunctions; feature extraction; iterative methods; principal component analysis; UCI datasets; dimensionality reduction; eigenvectors spanning eigenspace; high-dimensional dataset; iterative calculation; learning algorithm; pattern recognition; simple-principal component analysis; supervised feature extraction algorithm; Accuracy; Algorithm design and analysis; Classification algorithms; Equations; Feature extraction; Mathematical model; Principal component analysis;
fLanguage
English
Publisher
ieee
Conference_Titel
Next Generation Information Technology (ICNIT), 2011 The 2nd International Conference on
Conference_Location
Gyeongju
Print_ISBN
978-1-4577-0266-2
Electronic_ISBN
978-89-88678-39-8
Type
conf
Filename
5967470
Link To Document