DocumentCode :
395181
Title :
Non-parametric expectation-maximization for Gaussian mixtures
Author :
Sakuma, Jun ; Kobayashi, Shigenobu
Author_Institution :
Dept. of Computational Intelligence & Syst. Sci., Tokyo Inst. of Technol., Yokohama, Japan
Volume :
1
fYear :
2002
fDate :
18-22 Nov. 2002
Firstpage :
517
Abstract :
We propose a non-parametric EM algorithm, where nonparametric kernel density estimation is used instead of conventional parametric density estimation. Our proposal kernel function, the constructive elliptical basis function (CEBF), is an extension of the EBF and can effectively represent ill-scaled and non-separable distributions without a covariance matrix even in high dimensionality in a nonparametric manner. The overlapping CEBFs with a fixed smoothing parameter can be used as an approximation of Gaussian distribution in a statistical sense. Using CEBFs as kernel functions, we propose non-parametric expectation-maximization (NPEM) for the Gaussian mixture model (GMM). Then we show that NPEM obtains better estimation in terms of log likelihood than traditional EM algorithms when the given data set has high dimensionality or holds multiple components by numerical experiments.
Keywords :
Gaussian distribution; covariance matrices; function approximation; maximum likelihood estimation; probability; Gaussian distribution; constructive elliptical basis function; covariance matrix; expectation-maximization algorithm; log likelihood; nonparametric EM algorithm; probabilistic density function; Computational intelligence; Computational modeling; Covariance matrix; Density functional theory; Equations; Gaussian distribution; Kernel; Proposals; Smoothing methods; Vectors;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Information Processing, 2002. ICONIP '02. Proceedings of the 9th International Conference on
Print_ISBN :
981-04-7524-1
Type :
conf
DOI :
10.1109/ICONIP.2002.1202224
Filename :
1202224
Link To Document :
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