DocumentCode
1400436
Title
A neural-network learning theory and a polynomial time RBF algorithm
Author
Roy, Asim ; Govil, Sandeep ; Miranda, Raymond
Author_Institution
Dept. of Decision & Inf. Syst., Arizona State Univ., Tempe, AZ, USA
Volume
8
Issue
6
fYear
1997
fDate
11/1/1997 12:00:00 AM
Firstpage
1301
Lastpage
1313
Abstract
This paper presents a new learning theory (a set of principles for brain-like learning) and a corresponding algorithm for the neural-network field. The learning theory defines computational characteristics that are much more brain-like than that of classical connectionist learning. Robust and reliable learning algorithms would result if these learning principles are followed rigorously when developing neural-network algorithms. This paper also presents a new algorithm for generating radial basis function (RBF) nets for function approximation. The design of the algorithm is based on the proposed set of learning principles. The net generated by this algorithm is not a typical RBF net, but a combination of “truncated” RBF and other types of hidden units. The algorithm uses random clustering and linear programming (LP) to design and train this “mixed” RBF net. Polynomial time complexity of the algorithm is proven and computational results are provided for the well known Mackey-Glass chaotic time series problem, the logistic map prediction problem, various neuro-control problems, and several time series forecasting problems. The algorithm can also be implemented as an online adaptive algorithm
Keywords
computational complexity; feedforward neural nets; function approximation; learning (artificial intelligence); linear programming; LP; Mackey-Glass chaotic time series problem; brain-like learning; computational characteristics; function approximation; linear programming; logistic map prediction problem; mixed RBF net; neural-network learning theory; neuro-control problems; polynomial time RBF algorithm; polynomial time complexity; radial basis function nets; random clustering; time series forecasting problems; truncated RBF; Adaptive algorithm; Algorithm design and analysis; Approximation algorithms; Chaos; Clustering algorithms; Function approximation; Linear programming; Logistics; Polynomials; Robustness;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.641453
Filename
641453
Link To Document