DocumentCode :
3494509
Title :
Non-Gaussian component analysis using Density Gradient Covariance matrix
Author :
Reyhani, Nima ; Oja, Erkki
Author_Institution :
Dept. of Inf. & Comput. Sci., Aalto Univ., Espoo, Finland
fYear :
2011
fDate :
July 31 2011-Aug. 5 2011
Firstpage :
966
Lastpage :
972
Abstract :
High dimensional data are often modeled by signal plus noise where the signal belongs to a low dimensional manifold contaminated with high dimensional noise. Estimating the signal subspace when the noise is Gaussian and the signal is non-Gaussian is the main focus of this paper. We assume that the Gaussian noise variance can be high, so standard denoising approaches like Principal Component Analysis fail. The approach also differs from standard Independent Component Analysis in that no independent signal factors are assumed. This model is called non-Gaussian subspace/component analysis (NGCA). The previous approaches proposed for this subspace analysis use the fourth cumulant matrix or the Hessian of the logarithm of characteristic functions, which both have some practical and theoretical issues. We propose to use sample Density Gradient Covariances, which are similar to the Fisher information matrix for estimating the non-Gaussian subspace. Here, we use nonparametric kernel density estimator to estimate the gradients of density functions. Moreover, we extend the notion of non-Gaussian subspace analysis to a supervised version where the label or response information is present. For the supervised non-Gaussian subspace analysis, we propose to use conditional density gradient covariances which are computed by conditioning on the discretized response variable. A non-asymptotic analysis of density gradient covariance is also provided which relates the error of estimating the population DGC matrix using sample DGC to the number of dimensions and the number of samples.
Keywords :
Gaussian noise; Hessian matrices; covariance matrices; independent component analysis; principal component analysis; signal denoising; DGC matrix; Fisher information matrix; Gaussian noise variance; Hessian matrix; NGCA; density gradient covariance matrix; fourth cumulant matrix; independent component analysis; nonGaussian component analysis; nonparametric kernel density estimator; principal component analysis; signal subspace; standard denoising approaches; Analytical models; Covariance matrix; Estimation; Joints; Kernel; Matrix decomposition; Noise;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks (IJCNN), The 2011 International Joint Conference on
Conference_Location :
San Jose, CA
ISSN :
2161-4393
Print_ISBN :
978-1-4244-9635-8
Type :
conf
DOI :
10.1109/IJCNN.2011.6033327
Filename :
6033327
Link To Document :
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