Scientific journal paper Q3
Principal components analysis with spline optimal transformations for continuous data
Nuno Lavado (Lavado, N); Teresa Calapez (Calapez, T.);
Journal Title
IAENG International Journal of Applied Mathematics
Year (definitive publication)
2011
Language
English
Country
Hong Kong (Special Administrative Region of the People's Republic of China)
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Abstract
A new approach to generalize Principal Components Analysis in order to handle nonlinear structures has been recently proposed by the authors: quasi-linear PCA (qlPCA). It includes spline transformation of the original variables and the qualifier quasi was chosen to emphasize the exclusive use of linear splines. Alternating least squares fitting of a suitable objective loss function is the mechanism for achieving spline optimal transformation and nonlinear principal components. Optimal transformations are explicitly known after convergence and allow a straightforward projection of new observations onto the nonlinear principal components space as well as reconstruction the original variables. QlPCA reports model summary in a linear PCA fashion and allows the introduction of the piecewise loadings concept. This paper provides further details on qlPCA and its properties. Results of a simulation study are also presented.
Acknowledgements
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Keywords
CATPCA; Linear PCA; Nonlinear principal components analysis; qLPCA
  • Mathematics - Natural Sciences