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Choosing Principal Components: A New Graphical Method Based on Bayesian Model Selection

Auer, Philipp; Gervini, Daniel
Communications in Statistics - Simulation and Computation , Volume 37 (5): 962-977 Taylor & FrancisMay 1, 2008

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Choosing Principal Components: A New Graphical Method Based on Bayesian Model Selection

Abstract

This article approaches the problem of selecting significant principal components from a Bayesian model selection perspective. The resulting Bayes rule provides a simple graphical technique that can be used instead of (or together with) the popular scree plot to determine the number of significant components to retain. We study the theoretical properties of the new method and show, by examples and simulation, that it provides more clear-cut answers than the scree plot in many interesting situations.
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Title
Choosing Principal Components: A New Graphical Method Based on Bayesian Model Selection
Author(s)
Auer, Philipp; Gervini, Daniel
Journal
Communications in Statistics - Simulation and Computation , Volume 37 (5): 962-977 Taylor & Francis – May 1, 2008
Publisher
Taylor & Francis
Copyright
© 2008 Informa plc
Subject
Dimension reduction
ISSN
0361-0918
D.O.I.
10.1080/03610910701855005
Publisher site
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