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On the Error-Propagation of Inexact Hotelling's Deflation for Principal Component Analysis

Authors :
Liao, Fangshuo
Kim, Junhyung Lyle
Barnum, Cruz
Kyrillidis, Anastasios
Publication Year :
2023

Abstract

Principal Component Analysis (PCA) aims to find subspaces spanned by the so-called principal components that best represent the variance in the dataset. The deflation method is a popular meta-algorithm that sequentially finds individual principal components, starting from the most important ones and working towards the less important ones. However, as deflation proceeds, numerical errors from the imprecise estimation of principal components propagate due to its sequential nature. This paper mathematically characterizes the error propagation of the inexact Hotelling's deflation method. We consider two scenarios: $i)$ when the sub-routine for finding the leading eigenvector is abstract and can represent various algorithms; and $ii)$ when power iteration is used as the sub-routine. In the latter case, the additional directional information from power iteration allows us to obtain a tighter error bound than the sub-routine agnostic case. For both scenarios, we explicitly characterize how the errors progress and affect subsequent principal component estimations.<br />Comment: ICML2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.04283
Document Type :
Working Paper