DocumentCode :
2717988
Title :
Integrated approximation and non-convex optimization using radial basis function networks
Author :
Saha, Avijit ; Tang, D.S. ; Wu, Chuan-lin
Author_Institution :
Dept. of Electr. & Comput. Eng., Texas Univ., Austin, TX, USA
fYear :
1991
fDate :
8-14 Jul 1991
Firstpage :
695
Abstract :
The authors consider the problem of learning inverse maps x ´=f1(y) within the framework of radial basis function networks. If the forward function y=f( x) is approximated using a radial basis function network, it is found that the linear weights can be a good indicator of the network output. Centers then correspond to classes in the input space of the function, and the superposed weights correspond to properties associated with the respective classes. This provides suitable grounds for implementing efficient search strategies, for nonconvex and constrained or unconstrained optimization. The authors highlight the advantages of this scheme over other proposed methods for nonconvex optimization and present experimental results
Keywords :
function approximation; learning systems; neural nets; optimisation; search problems; approximation; forward function; input space; inverse map learning; linear weights; neural nets; nonconvex optimization; radial basis function networks; search strategies; Adaptive control; Constraint optimization; Control systems; Monte Carlo methods; Neural networks; Optimization methods; Radial basis function networks; Simulated annealing; Synthetic aperture sonar; Temperature;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 1991., IJCNN-91-Seattle International Joint Conference on
Conference_Location :
Seattle, WA
Print_ISBN :
0-7803-0164-1
Type :
conf
DOI :
10.1109/IJCNN.1991.155420
Filename :
155420
Link To Document :
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