@article{,
author={Kocsor, Andr{\'a}s, T{\'o}th, L{\'a}szl{\'o}},
title={Kernel-Based Feature Extraction with a Speech Technology Application},
abstract={Kernel-based nonlinear feature extraction and classification algorithms
are a popular new research direction in machine learning. This paper examines
their applicability to the classification of phonemes in a phonological
awareness drilling software package. We first give a concise overview of
the nonlinear feature extraction methods such as kernel principal component
analysis (KPCA), kernel independent component analysis (KICA), kernel linear
discriminant analysis (KLDA), and kernel springy discriminant analysis
(KSDA). The overview deals with all the methods in a unified framework,
regardless of whether they are unsupervised or supervised. The effect of
the transformations on a subsequent classification is tested in combination
with learning algorithms such as Gaussian mixture modeling (GMM), artificial
neural nets (ANN), projection pursuit learning (PPL), decision tree-based
classification (C4.5), and support vector machines (SVMs). We found, in
most cases, that the transformations have a beneficial effect on the classification
performance. Furthermore, the nonlinear supervised algorithms yielded the
best results.},
journal={IEEE Transactions on Signal Processing},
volume={52},
year={2004},
pages={2250-2263},
month={August},
number={8}
}