Title :
Power linear discriminant analysis
Author :
Sakai, Makoto ; Kitaoka, Norihide ; Nakagawa, Seiichi
Author_Institution :
DENSO Corp., Nisshin
Abstract :
Dimensionality reduction is one of the important preprocessing steps to handle high-dimensional data. Linear discriminant analysis (LDA) is a classical and popular approach for this purpose. LDA finds an optimal linear transformation, which maximizes the ratio of the variance in the between-class distance to the variance in the within-class distance. On the other hand, in order to overcome the limitation in LDA resulting from the assumption of equal covariance, several heteroscedastic extensions, such as heteroscedastic discriminant analysis (HDA), have been proposed. However, it is difficult to find one particular criterion suitable for any kind of data set in carrying out dimensionality reduction while preserving discriminative information. In this paper, we propose a new generalized framework which we call power linear discriminant analysis (PLDA). PLDA can describe various criteria including LDA and HDA with one parameter. Numerical results show that the PLDA is effective for various data sets.
Keywords :
covariance matrices; data analysis; statistical analysis; LDA; covariance matrix; dimensionality reduction; heteroscedastic discriminant analysis; high-dimensional data handling; optimal linear transformation; power linear discriminant analysis; Covariance matrix; Gaussian processes; Linear discriminant analysis; Machine learning; Machine vision; Maximum likelihood estimation; Parameter estimation; Pattern recognition; Speech recognition;
Conference_Titel :
Signal Processing and Its Applications, 2007. ISSPA 2007. 9th International Symposium on
Conference_Location :
Sharjah
Print_ISBN :
978-1-4244-0778-1
Electronic_ISBN :
978-1-4244-1779-8
DOI :
10.1109/ISSPA.2007.4555418