Abstract :
[en] Principal component analysis (PCA) is a ubiquitous statistical technique for data analysis. PCA
is however limited by its linearity and may sometimes be too simple for dealing with real-world
data especially when the relations among variables are nonlinear. Recent years have witnessed the emergence of nonlinear generalizations of PCA, as for instance nonlinear principal component
analysis (NLPCA) [1] or vector quantization principal component analysis (VQPCA) [2].
VQPCA involves a two-step procedure, namely a clustering of the data space into several
regions and the application of PCA in each local region. In Ref. [3], VQPCA was applied for
the reconstruction of dynamical response and it was shown that it is potentially a more effective
tool than conventional PCA. The purpose of this technical note is to further investigate VQPCA
and to have a closer look at the choice of the distortion function used for clustering the
data space.
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