scispace - formally typeset
Journal ArticleDOI

Analysis of input-output clustering for determining centers of RBFN

Reads0
Chats0
TLDR
The main contribution of this paper is to present an approach for investigating the relationship between clustering process on input-output training samples and the mean squared output error in the context of a radial basis function netowork (RBFN).
Abstract
The key point in design of radial basis function networks is to specify the number and the locations of the centers. Several heuristic hybrid learning methods, which apply a clustering algorithm for locating the centers and subsequently a linear least-squares method for the linear weights, have been previously suggested. These hybrid methods can be put into two groups, which will be called as input clustering (IC) and input-output clustering (IOC), depending on whether the output vector is also involved in the clustering process. The idea of concatenating the output vector to the input vector in the clustering process has independently been proposed by several papers in the literature although none of them presented a theoretical analysis on such procedures, but rather demonstrated their effectiveness in several applications. The main contribution of this paper is to present an approach for investigating the relationship between clustering process on input-output training samples and the mean squared output error in the context of a radial basis function network (RBFN). We may summarize our investigations in that matter as follows: (1) A weighted mean squared input-output quantization error, which is to be minimized by IOC, yields an upper bound to the mean squared output error. (2) This upper bound and consequently the output error can be made arbitrarily small (zero in the limit case) by decreasing the quantization error which can be accomplished through increasing the number of hidden units.

read more

Citations
More filters
Journal ArticleDOI

Approximation theory and methods, by M. J. D. Powell. Pp 339. £25 (hardcover), £8·50 (paperback). 1981. ISBN 0-521-22472-1/29514-9 (Cambridge University Press)

TL;DR: In this article, the authors consider the problem of finding the best approximation operator for a given function, and the uniqueness of best approximations and the existence of best approximation operators.
Journal ArticleDOI

Clustering: A neural network approach

TL;DR: A comprehensive overview of competitive learning based clustering methods is given and two examples are given to demonstrate the use of the clustering Methods.
Journal ArticleDOI

Automatic detection of epileptiform events in EEG by a three-stage procedure based on artificial neural networks

TL;DR: A three-stage procedure based on artificial neural networks for the automatic detection of epileptiform events (EVs) in a multichannel electroencephalogram (EEG) signal is introduced and the overall performance of the system is determined with respect to EVs.
Journal ArticleDOI

RBF neural network center selection based on Fisher ratio class separability measure

TL;DR: In this article, the authors propose to choose RBF centers based on Fisher ratio class separability measure with the objective of achieving maximum discriminative power, and implement this idea using a multistep procedure that combines Fisher ratio, an orthogonal transform, and a forward selection search method.

RBF neural network center selection based on Fisher ration class separability measure

K. Z. Mao
TL;DR: The motivation of employing the orthogonal transform is to decouple the correlations among the responses of the hidden layer neurons so that the class separability provided by individual RBF neurons can be evaluated independently.
References
More filters
Book

Pattern classification and scene analysis

TL;DR: In this article, a unified, comprehensive and up-to-date treatment of both statistical and descriptive methods for pattern recognition is provided, including Bayesian decision theory, supervised and unsupervised learning, nonparametric techniques, discriminant analysis, clustering, preprosessing of pictorial data, spatial filtering, shape description techniques, perspective transformations, projective invariants, linguistic procedures, and artificial intelligence techniques for scene analysis.
Journal ArticleDOI

Identification and control of dynamical systems using neural networks

TL;DR: It is demonstrated that neural networks can be used effectively for the identification and control of nonlinear dynamical systems and the models introduced are practically feasible.
Journal ArticleDOI

Fast learning in networks of locally-tuned processing units

TL;DR: This work proposes a network architecture which uses a single internal layer of locally-tuned processing units to learn both classification tasks and real-valued function approximations (Moody and Darken 1988).
Journal Article

Radial Basis Functions, Multi-Variable Functional Interpolation and Adaptive Networks

David S. Broomhead, +1 more
- 28 Mar 1988 - 
TL;DR: The relationship between 'learning' in adaptive layered networks and the fitting of data with high dimensional surfaces is discussed, leading naturally to a picture of 'generalization in terms of interpolation between known data points and suggests a rational approach to the theory of such networks.