From explained variance of correlated components to PCA without orthogonality constraints
Block Principal Component Analysis (Block PCA) of a data matrix A, where loadings Z are determined by maximization of AZ 2 over unit norm orthogonal loadings, is difficult to use for the design of sparse PCA by 1 regularization, due to the difficulty of taking care of both the orthogonality constrai...
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Zusammenfassung: | Block Principal Component Analysis (Block PCA) of a data matrix A, where
loadings Z are determined by maximization of AZ 2 over unit norm orthogonal
loadings, is difficult to use for the design of sparse PCA by 1 regularization,
due to the difficulty of taking care of both the orthogonality constraint on
loadings and the non differentiable 1 penalty. Our objective in this paper is
to relax the orthogonality constraint on loadings by introducing new objective
functions expvar(Y) which measure the part of the variance of the data matrix A
explained by correlated components Y = AZ. So we propose first a comprehensive
study of mathematical and numerical properties of expvar(Y) for two existing
definitions Zou et al. [2006], Shen and Huang [2008] and four new definitions.
Then we show that only two of these explained variance are fit to use as
objective function in block PCA formulations for A rid of orthogonality
constraints. |
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DOI: | 10.48550/arxiv.2402.04692 |