Title
Cross-validation based weights and structure determination of Chebyshev-polynomial neural networks for pattern classification.
Abstract
This paper first proposes a new type of single-output Chebyshev-polynomial feed-forward neural network (SOCPNN) for pattern classification. A new type of multi-output Chebyshev-polynomial feed-forward neural network (MOCPNN) is then proposed based on such an SOCPNN. Compared with multi-layer perceptron, the proposed SOCPNN and MOCPNN have lower computational complexity and superior performance, substantiated by both theoretical analyses and numerical verifications. In addition, two weight-and-structure-determination (WASD) algorithms, one for the SOCPNN and another for the MOCPNN, are proposed for pattern classification. These WASD algorithms can determine the weights and structures of the proposed neural networks efficiently and automatically. Comparative experimental results based on different real-world classification datasets with and without added noise prove that the proposed SOCPNN and MOCPNN have high accuracy, and that the MOCPNN has strong robustness in pattern classification when equipped with WASD algorithms.
Year
DOI
Venue
2014
10.1016/j.patcog.2014.04.026
Pattern Recognition
Keywords
Field
DocType
Cross validation,Chebyshev polynomial,Neural network,Pattern classification,Robustness
Chebyshev polynomials,Pattern recognition,Computer science,Robustness (computer science),Artificial intelligence,Artificial neural network,Cross-validation,Perceptron,Machine learning,Computational complexity theory
Journal
Volume
Issue
ISSN
47
10
0031-3203
Citations 
PageRank 
References 
3
0.39
21
Authors
5
Name
Order
Citations
PageRank
Yunong Zhang12344162.43
Yonghua Yin2697.58
Dongsheng Guo339931.61
Xiaotian Yu430.39
Lin Xiao556242.84