DocumentCode :
327682
Title :
Model complexity validation for PDF estimation using Gaussian mixtures
Author :
Sardo, L. ; Kittler, J.
Author_Institution :
Center for Vision, Speech & Signal Process., Surrey Univ., Guildford, UK
Volume :
1
fYear :
1998
fDate :
16-20 Aug 1998
Firstpage :
195
Abstract :
Semiparametric density estimation using Gaussian mixtures is a powerful means that can give as good performance as a nonparametric estimator, without its heavy computational burden. A maximum penalised likelihood principle was previously proposed by the authors (1996) for selecting the best approximating mixture for an unknown density function. We propose here a test carried on the training set to validate the model choice. The selected model is required to give a calibrated prediction, i.e. if it predicts the frequencies of the training sample reasonably well, the penalty term adopted is accepted otherwise it is relaxed
Keywords :
Gaussian distribution; computational complexity; modelling; Gaussian mixtures; PDF estimation; best approximating mixture; computational burden; maximum penalised likelihood principle; model complexity validation; semiparametric density estimation; unknown density function; Calibration; Density functional theory; Frequency estimation; Information technology; Mathematics; Power engineering and energy; Predictive models; Signal processing; Speech processing; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Pattern Recognition, 1998. Proceedings. Fourteenth International Conference on
Conference_Location :
Brisbane, Qld.
ISSN :
1051-4651
Print_ISBN :
0-8186-8512-3
Type :
conf
DOI :
10.1109/ICPR.1998.711114
Filename :
711114
Link To Document :
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