4.7 Article

Sparse Principal Component Analysis With Preserved Sparsity Pattern

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 28, Issue 7, Pages 3274-3285

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2019.2895464

Keywords

Sparse principal component analysis; structured sparsity; group lasso

Funding

  1. Australian Research Council [FT. 130101394]

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Principal component analysis (PCA) is widely used for feature extraction and dimension reduction in pattern recognition and data analysis. Despite its popularity, the reduced dimension obtained from the PCA is difficult to interpret due to the dense structure of principal loading vectors. To address this issue, several methods have been proposed for sparse PCA, all of which estimate loading vectors with few non-zero elements. However, when more than one principal component is estimated, the associated loading vectors do not possess the same sparsity pattern. Therefore, it becomes difficult to determine a small subset of variables from the original feature space that have the highest contribution in the principal components. To address this issue, an adaptive block sparse PCA method is proposed. The proposed method is guaranteed to obtain the same sparsity pattern across all principal components. Experiments show that applying the proposed sparse PCA method can help improve the performance of feature selection for image processing applications. We further demonstrate that our proposed sparse PCA method can he used to improve the performance of blind source separation for functional magnetic resonance imaging data.

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