DocumentCode
917043
Title
Direction-Dependent Learning Approach for Radial Basis Function Networks
Author
Singla, Puneet ; Subbarao, Kamesh ; Junkins, John L.
Author_Institution
Dept. of Aerosp. Eng., Texas A&M Univ., College Station, TX
Volume
18
Issue
1
fYear
2007
Firstpage
203
Lastpage
222
Abstract
Direction-dependent scaling, shaping, and rotation of Gaussian basis functions are introduced for maximal trend sensing with minimal parameter representations for input output approximation. It is shown that shaping and rotation of the radial basis functions helps in reducing the total number of function units required to approximate any given input-output data, while improving accuracy. Several alternate formulations that enforce minimal parameterization of the most general radial basis functions are presented. A novel "directed graph" based algorithm is introduced to facilitate intelligent direction based learning and adaptation of the parameters appearing in the radial basis function network. Further, a parameter estimation algorithm is incorporated to establish starting estimates for the model parameters using multiple windows of the input-output data. The efficacy of direction-dependent shaping and rotation in function approximation is evaluated by modifying the minimal resource allocating network and considering different test examples. The examples are drawn from recent literature to benchmark the new algorithm versus existing methods
Keywords
Gaussian processes; approximation theory; directed graphs; learning (artificial intelligence); parameter estimation; radial basis function networks; Gaussian basis functions; directed graph; direction-dependent learning; input output approximation; parameter estimation algorithm; radial basis function networks; Approximation error; Benchmark testing; Function approximation; Intelligent networks; Least squares approximation; Neural networks; Parameter estimation; Radial basis function networks; Radio access networks; Resource management; Approximation methods; nonlinear estimation; radial basis function network learning; radial basis functions (RBFs); Algorithms; Artificial Intelligence; Cluster Analysis; Nonlinear Dynamics; Pattern Recognition, Automated;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2006.881805
Filename
4049837
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