@inproceedings{,
author={Kocsor, Andr{\'a}s and T{\'o}th, L{\'a}szl{\'o} and Felf{\"o}ldi, L{\'a}szl{\'o}},
title={Application of Feature Transformation and Learning Methods in Phoneme Classification},
abstract={This paper examines the applicability of some learning techniques to the
classification of phonemes. The methods tested were artificial neural nets
(ANN), support vector machines (SVM) and Gaussian mixture modeling. We
compare these methods with a traditional hidden Markov phoneme model (HMM)
working with the linear prediction-based cepstral coefficient features
(LPCC). We also tried to combine the learners with feature transformation
methods, like linear discriminant analysis (LDA), principal component analysis
(PCA) and independent component analysis (ICA). We found that the discriminative
learners can attain the efficiency of the HMM, and after LDA they can attain
practically the same score on only 27 features. PCA and ICA proved ineffective,
apparently because of the discrete cosine transform inherent in LPCC.},
booktitle={Engineering of Intelligent Systems : 14th International Conference on Industrial
and Engineering Applications of Artificial Intelligence and Expert Systems,
IEA/AIE 2001, LNAI vol. 2070},
year={2001},
month={June},
publisher={Springer-Verlag GmbH},
address={Budapest, Hungary},
editor={L. Monostori, J. V{\'a}ncza, M. Ali },
pages={502-512}
}