Title :
Uniqueness of Non-Gaussianity-Based Dimension Reduction
Author :
Theis, Fabian J. ; Kawanabe, Motoaki ; Müller, Klaus-Robert
Author_Institution :
Inst. of Bioinf. & Syst. Biol., Helmholtz Center Munich, Neuherberg, Germany
Abstract :
Dimension reduction is a key step in preprocessing large-scale data sets. A recently proposed method named non-Gaussian component analysis searches for a projection onto the non-Gaussian part of a given multivariate recording, which is a generalization of the deflationary projection pursuit model. In this contribution, we discuss the uniqueness of the subspaces of such a projection. We prove that a necessary and sufficient condition for uniqueness is that the non-Gaussian signal subspace is of minimal dimension. Furthermore, we propose a measure for estimating this minimal dimension and illustrate it by numerical simulations. Our result guarantees that projection algorithms uniquely recover the underlying lower dimensional data signals.
Keywords :
Gaussian processes; independent component analysis; numerical analysis; signal processing; deflationary projection pursuit model; large-scale data set preprocessing; low dimensional data signals; minimal dimension estimation; nonGaussian component analysis; nonGaussian signal subspace; nonGaussianity-based dimension reduction; numerical simulations; Artificial neural networks; Eigenvalues and eigenfunctions; Equations; Estimation; Mathematical model; Signal processing algorithms; Tin; Identifiability; independent subspace analysis; non-Gaussian component analysis; projection pursuit;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2011.2159600