Cross-validation methods in principal component analysis: A comparison |
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Authors: | Giancarlo Diana Chiara Tommasi |
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Affiliation: | (1) Dipartimento di Scienze Statistiche, Università di Padova, Via Cesare Battisti, 241, 35121 Padova, Italy |
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Abstract: | In principal component analysis (PCA), it is crucial to know how many principal components (PCs) should be retained in order to account for most of the data variability. A class of “objective” rules for finding this quantity is the class of cross-validation (CV) methods. In this work we compare three CV techniques showing how the performance of these methods depends on the covariance matrix structure. Finally we propose a rule for the choice of the “best” CV method and give an application to real data. |
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Keywords: | Principal component analysis cross-validation methods |
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