COMPARISON OF KERNEL ESTIMATORS, PERCEPTRONS AND RADIAL-BASIS FUNCTIONS FOR OCR AND SPEECH CLASSIFICATION

被引:3
作者
ALPAYDIN, E
GURGEN, F
机构
[1] Department of Computer Engineering, Bogaziçi University, Istanbul
关键词
KERNEL ESTIMATORS; PERCEPTRONS; BACKPROPAGATION; RADIAL-BASIS FUNCTIONS; OPTICAL CHARACTER RECOGNITION; SPEECH RECOGNITION;
D O I
10.1007/BF01414175
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
We compare kernel estimators, single and multi-layered perceptrons and radial-basis functions for the problems of classification of handwritten digits and speech phonemes. By taking two different applications and employing many techniques, we report here a two-dimensional study whereby a domain-independent assessment of these learning methods can be possible. We consider a feed-forward network with one hidden layer. As examples of the local methods, we use kernel estimators like k-nearest neighbour (k-nn), Parzen windows, generalised k-nn, and Grow and Learn (Condensed Nearest Neighbour). We have also considered fuzzy k-nn due to its similarity. As distributed networks, we use linear perceptron, pairwise separating linear perceptron and multi-layer perceptrons with sigmoidal hidden units. We also tested the radial-basis function network, which is a combination of local and distributed networks. Four criteria are taken for comparison: correct classification of the test set; network size; learning time; and the operational complexity. We found that perceptrons, when the architecture is suitable, generalise better than local, memory-based kernel estimators, but require a longer training and more precise computation. Local networks are simple, learn very quickly and acceptably, but use more memory.
引用
收藏
页码:38 / 49
页数:12
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