期刊詳細資料 Journal detailed information  
作者(Author)Jianjun Wang、Bai-Li Chen、Chan-Yun Yang
篇名(Article title)Approximation of algebraic and trigonometric polynomials by feedforward neural networks
期刊名(Journal name)Neural Computing and Applications
國際期刊(International Journal)SCI
中文摘要(Abstrct)
ABSTRCTThis paper presents a function approximation to a general class of polynomials by using one-hidden-layer feedforward neural networks(FNNs). Both the approximations of algebraic polynomial and trigonometric polynomial functions are discussed in details. For algebraic polynomial functions, an one-hidden-layer FNN with chosen number of hidden-layer nodes and corresponding weights is established by a constructive method to approximate the polynomials to a remarkable high degree of accuracy. For trigonometric functions, an upper bound of approximation is therefore derived by the constructive FNNs. In addition, algorithmic examples are also included to confirm the accuracy performance of the constructive FNNs method. The results show that it improves efficiently the approximations of both algebraic polynomials and trigonometric polynomials. Consequently, the work is really of both theoretical and practical significance in constructing a one-hidden-layer FNNs for approximating the class of polynomials. The work also paves potentially the way for extending the neural networks to approximate a general class of complicated functions both in theory and practice.
中文關鍵字(Keyword)
KEYWORD
卷期(Volume No)Vol. 21 No. 1
頁數(Page number)pp. 73~80
年份(Year)2012
語言(Language)英文 English