Title :
Two-Stage Regularized Linear Discriminant Analysis for 2-D Data
Author :
Jianhua Zhao ; Lei Shi ; Ji Zhu
Author_Institution :
Sch. of Stat. & Math., Yunnan Univ. of Finance & Econ., Kunming, China
Abstract :
Fisher linear discriminant analysis (LDA) involves within-class and between-class covariance matrices. For 2-D data such as images, regularized LDA (RLDA) can improve LDA due to the regularized eigenvalues of the estimated within-class matrix. However, it fails to consider the eigenvectors and the estimated between-class matrix. To improve these two matrices simultaneously, we propose in this paper a new two-stage method for 2-D data, namely a bidirectional LDA (BLDA) in the first stage and the RLDA in the second stage, where both BLDA and RLDA are based on the Fisher criterion that tackles correlation. BLDA performs the LDA under special separable covariance constraints that incorporate the row and column correlations inherent in 2-D data. The main novelty is that we propose a simple but effective statistical test to determine the subspace dimensionality in the first stage. As a result, the first stage reduces the dimensionality substantially while keeping the significant discriminant information in the data. This enables the second stage to perform RLDA in a much lower dimensional subspace, and thus improves the two estimated matrices simultaneously. Experiments on a number of 2-D synthetic and real-world data sets show that BLDA+RLDA outperforms several closely related competitors.
Keywords :
covariance matrices; eigenvalues and eigenfunctions; statistical testing; 2D synthetic data set; BLDA; Fisher criterion; Fisher linear discriminant analysis; RLDA; between-class covariance matrices; bidirectional LDA; column correlations; real-world data sets; regularized LDA; regularized eigenvalues; statistical test; subspace dimensionality; two-stage regularized linear discriminant analysis; within-class covariance matrices; Correlation; Covariance matrices; Educational institutions; Eigenvalues and eigenfunctions; Gene expression; Learning systems; Linear discriminant analysis; 2-D data; dimension reduction; linear discriminant analysis (LDA); regularization; separable covariance;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2014.2350993