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Sparsifying the least-squares approach to PCA

Authors :
Rosember Guerra-Urzola
Niek C. de Schipper
Anya Tonne
Klaas Sijtsma
Juan C. Vera
Katrijn Van Deun
Department of Methodology and Statistics
Dean Office
Econometrics and Operations Research
Research Group: Operations Research
Source :
Advances in Data Analysis and Classification, 17(1), 269-286. Springer Verlag
Publication Year :
2023
Publisher :
Springer Verlag, 2023.

Abstract

Sparse PCA methods are used to overcome the difficulty of interpreting the solution obtained from PCA. However, constraining PCA to obtain sparse solutions is an intractable problem, especially in a high-dimensional setting. Penalized methods are used to obtain sparse solutions due to their computational tractability. Nevertheless, recent developments permit efficiently obtaining good solutions of cardinality-constrained PCA problems allowing comparison between these approaches. Here, we conduct a comparison between a penalized PCA method with its cardinality-constrained counterpart for the least-squares formulation of PCA imposing sparseness on the component weights. We compare the penalized and cardinality-constrained methods through a simulation study that estimates the sparse structure’s recovery, mean absolute bias, mean variance, and mean squared error. Additionally, we use a high-dimensional data set to illustrate the methods in practice. Results suggest that using cardinality-constrained methods leads to better recovery of the sparse structure.

Details

Language :
English
ISSN :
18625347
Volume :
17
Issue :
1
Database :
OpenAIRE
Journal :
Advances in Data Analysis and Classification
Accession number :
edsair.doi.dedup.....b432e7d8c751f6da4059175444c80e03
Full Text :
https://doi.org/10.1007/s11634-022-00499-2