Title :
A neural-network approach to nonparametric and robust classification procedures
Author :
Voudouri-Maniati, Evriclea ; Kurz, Ludwik ; Kowalski, John M.
Author_Institution :
Dept. of Electr. Eng., Manhattan Coll., Riverdale, NY, USA
fDate :
3/1/1997 12:00:00 AM
Abstract :
In this paper algorithms of neural-network type are introduced for solving estimation and classification problems when assumptions about independence, Gaussianity, and stationarity of the observation samples are no longer valid. Specifically, the asymptotic normality of several nonparametric classification tests is demonstrated and their implementation using a neural-network approach is presented. Initially, the neural nets train themselves via learning samples for nominal noise and alternative hypotheses distributions resulting in near optimum performance in a particular stochastic environment. In other than the nominal environments, however, high efficiency is maintained by adapting the optimum nonlinearities to changing conditions during operation via parallel networks, without disturbing the classification process. Furthermore, the superiority in performance of the proposed networks over more traditional neural nets is demonstrated in an application involving pattern recognition
Keywords :
Bayes methods; multilayer perceptrons; nonparametric statistics; parameter estimation; pattern classification; statistical analysis; asymptotic normality; high efficiency; hypotheses distributions; learning samples; near optimum performance; neural network approach; nominal noise distributions; nonparametric classification; pattern recognition; robust classification; stochastic environment; Application software; Biological neural networks; Computer vision; Neural networks; Parameter estimation; Pattern recognition; Robustness; Signal processing algorithms; Speech recognition; Testing;
Journal_Title :
Neural Networks, IEEE Transactions on