NESG

Icono Icono

Icono Icono

All Sparse PCS Models Are Wrong, But Some Are Useful. Part I. Computation Scores, Residuals and Explained Variance

José Camacho; A. K. Smilde; Sacc; J. Westerhuis
Abstract:
Sparse Principal Component Analysis (sPCA) is a popular matrix factorization approach based on Principal Component Analysis (PCA) that combines variance maximization and sparsity with the ultimate goal of improving data interpretation. When moving from PCA to sPCA, there are a number of implications that the practitioner needs to be aware of. A relevant one is that scores and loadings in sPCA may not be orthogonal. For this reason, the traditional way of computing scores, residuals and variance explained that is used in the classical PCA can lead to unexpected properties and therefore incorrect interpretations in sPCA. This also affects how sPCA components should be visualized. In this paper we illustrate this problem both theoretically and numerically using simulations for several state-of-the-art sPCA algorithms, and provide proper computation of the different elements mentioned. We show that sPCA approaches present disparate and limited performance when modeling noise-free, sparse data. In a follow-up paper, we discuss the theoretical properties that lead to this undesired behavior. We title this series of papers after the famous phrase of George Box “All models are wrong, but some are useful” with the same original meaning: sPCA models are only approximations of reality and have structural limitations that should be taken into account by the practitioner, but properly applied they can be useful tools to understand data.
Research areas:
Year:
2020
Type of Publication:
Article
Keywords:
Sparse principal component analysis Explained variance Scores Residuals Exploratory data analysis
Journal:
Chemometrics and Intelligent Laboratory Systems
Volume:
196
Pages:
1039072-
DOI:
https://doi.org/10.1016/j.chemolab.2019.103907
Hits: 345