DocumentCode :
343007
Title :
Learning of nonlinear FIR models under uniform distribution
Author :
Najarian, Kayvan ; Dumont, Guy A. ; Davies, Michael S. ; Heckman, Nancy E.
Author_Institution :
Pulp & Paper Centre, British Columbia Univ., Vancouver, BC, Canada
Volume :
2
fYear :
1999
fDate :
2-4 Jun 1999
Firstpage :
864
Abstract :
The PAC learning theory creates a framework to assess the learning properties of a modeling procedure. This paper presents a bound on the size of the training data set required to train a nonlinear FIR model, where the input data are assumed to be generated according to the uniform distribution. The bound is further specified for a family of feedforward neural networks, which utilizes a sigmoid activation function. The learning properties of a neural identification task have been assessed using the aforesaid family of neural networks. Also, using the structural risk minimization algorithm, a learning procedure for the modeling tasks in which the exact number of the hidden neurons is unknown, is introduced
Keywords :
feedforward neural nets; identification; learning (artificial intelligence); minimisation; probability; PAC learning theory; feedforward neural networks; neural identification; nonlinear FIR models; probability; probably approximately correct learning; sigmoid activation function; structural risk minimization; Feedforward neural networks; Finite impulse response filter; Neural networks; Neurons; Risk management; Statistical distributions; Stochastic processes; Training data;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
American Control Conference, 1999. Proceedings of the 1999
Conference_Location :
San Diego, CA
ISSN :
0743-1619
Print_ISBN :
0-7803-4990-3
Type :
conf
DOI :
10.1109/ACC.1999.783163
Filename :
783163
Link To Document :
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