Title :
The Chebyshev-polynomials-based unified model neural networks for function approximation
Author :
Lee, Tsu-Tian ; Jeng, Jin-Tsong
Author_Institution :
Dept. of Electr. Eng., Nat. Taiwan Inst. of Technol., Taipei, Taiwan
fDate :
12/1/1998 12:00:00 AM
Abstract :
In this paper, we propose the approximate transformable technique, which includes the direct transformation and indirect transformation, to obtain a Chebyshev-Polynomials-Based (CPB) unified model neural networks for feedforward/recurrent neural networks via Chebyshev polynomials approximation. Based on this approximate transformable technique, we have derived the relationship between the single-layer neural networks and multilayer perceptron neural networks. It is shown that the CPB unified model neural networks can be represented as a functional link networks that are based on Chebyshev polynomials, and those networks use the recursive least square method with forgetting factor as learning algorithm. It turns out that the CPB unified model neural networks not only has the same capability of universal approximator, but also has faster learning speed than conventional feedforward/recurrent neural networks. Furthermore, we have also derived the condition such that the unified model generating by Chebyshev polynomials is optimal in the sense of error least square approximation in the single variable ease. Computer simulations show that the proposed method does have the capability of universal approximator in some functional approximation with considerable reduction in learning time
Keywords :
Chebyshev approximation; neural nets; polynomials; transfer functions; Chebyshev polynomials approximation; Chebyshev-polynomials-based unified model neural networks; approximate transformable technique; computer simulations; function approximation; learning time; Chebyshev approximation; Computer errors; Feedforward neural networks; Least squares approximation; Least squares methods; Multi-layer neural network; Multilayer perceptrons; Neural networks; Polynomials; Recurrent neural networks;
Journal_Title :
Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on
DOI :
10.1109/3477.735405