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- Title
A General Null Space Property for Sparse Principal Component Analysis.
- Authors
Han, Xuanli; Peng, Jigen; Cui, Angang; Zhao, Fujun; Li, Kexue
- Abstract
Sparse principal component analysis (SPCA) has achieved great success in improving interpretable ability of the derived results and has become a powerful technique for modern data analysis. It presents that principal component can be modified to produce sparse loadings by imposing sparsity-induced penalty, which is often l 1 -regularized constraint. In order to analyze the l 1 -regularized sparsity-induced model, in this paper, we propose a general null space property of a matrix A relative to a index set S and give a necessary and sufficient condition for the exact or approximate sparse principal components. Meanwhile, the conclusions with respect to the stable and robust situations are given in the case of exact or approximate sparse principal components, respectively.
- Subjects
PRINCIPAL components analysis
- Publication
Circuits, Systems & Signal Processing, 2022, Vol 41, Issue 8, p4570
- ISSN
0278-081X
- Publication type
Article
- DOI
10.1007/s00034-022-01991-y