Review paper

Be careful with your principal components

Volume: 73, Issue: 10, Pages: 2151 - 2158
Published: Sep 2, 2019
Abstract
Principal components analysis (PCA) is a common method to summarize a larger set of correlated variables into a smaller and more easily interpretable axes of variation. However, the different components need to be distinct from each other to be interpretable otherwise they only represent random directions. This is a fundamental assumption of PCA and, thus, needs to be tested every time. Sample correlation matrices will always result in a pattern...
Paper Details
Title
Be careful with your principal components
Published Date
Sep 2, 2019
Journal
Volume
73
Issue
10
Pages
2151 - 2158
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