Analysis of an European union election using principal component analysis

被引:0
|
作者
Paulo C. Rodrigues
Ana T. Lima
机构
[1] Nova University of Lisbon,
[2] Poznań University of Life Sciences,undefined
[3] Utrecht University,undefined
来源
Statistical Papers | 2009年 / 50卷
关键词
Compositional data; Principal component analysis; Crude PCA; Logcontrast PCA; Electoral data; 02.50.Sk; 02.70.Rr; 62H25; 62P25;
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学科分类号
摘要
While studying the results from one European Parliament election, the question of principal component analysis (PCA) suitability for this kind of data was raised. Since multiparty data should be seen as compositional data (CD), the application of PCA is inadvisable and may conduct to ineligible results. This work points out the limitations of PCA to CD and presents a practical application to the results from the European Parliament election in 2004. We present a comparative study between the results of PCA, Crude PCA and Logcontrast PCA (Aitchison in: Biometrika 70:57–61, 1983; Kucera, Malmgren in: Marine Micropaleontology 34:117–120, 1998). As a conclusion of this study, and concerning the mentioned data set, the approach which produced clearer results was the Logcontrast PCA. Moreover, Crude PCA conducted to misleading results since nonlinear relations were presented between variables and the linear PCA proved, once again, to be inappropriate to analyse data which can be seen as CD.
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页码:895 / 904
页数:9
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