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2004 | OriginalPaper | Chapter

Principal Components Analysis

Authors : Anthony C. Atkinson, Marco Riani, Andrea Cerioli

Published in: Exploring Multivariate Data with the Forward Search

Publisher: Springer New York

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Principal components analysis is a way of reducing the number of variables in the model. It may be that some of the variables are highly correlated with each other, so that not all are needed for a description of the subject of study; perhaps a few linear combinations of the variables would suffice. Other variables may be unrelated to any features of interest. The data on communities in Emilia-Romagna offer many such possibilities. In Chapter 4 we arbitrarily divided the variables into three groups. But do we need all the nine demographic variables in order to describe the variation in the communities or would a few variables suffice, or a few combinations of variables? Then the other variables would be contributing nothing but noise to the measurements.

Metadata
Title
Principal Components Analysis
Authors
Anthony C. Atkinson
Marco Riani
Andrea Cerioli
Copyright Year
2004
Publisher
Springer New York
DOI
https://doi.org/10.1007/978-0-387-21840-3_5