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Rational Function Neural Network
Journal article

Rational Function Neural Network

Abstract

In this paper we observe that a particular class of rational function (RF) approximations may be viewed as feedforward networks. Like the radial basis function (RBF) network, the training of the RF network may be performed using a linear adaptive filtering algorithm. We illustrate the application of the RF network by considering two nonlinear signal processing problems. The first problem concerns the one-step prediction of a time series consisting of a pair of complex sinusoid in the presence of colored non-gaussian noise. Simulated data were used for this problem. In the second problem, we use the RF network to build a nonlinear dynamic model of sea clutter (radar backscattering from a sea surface); here, real-life data were used for the study.

Authors

Leung H; Haykin S

Journal

Neural Computation, Vol. 5, No. 6, pp. 928–938

Publisher

MIT Press

Publication Date

November 1, 1993

DOI

10.1162/neco.1993.5.6.928

ISSN

0899-7667

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