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多维离散傅立叶变换神经网络函数逼近
引用本文:卢宏涛,戚飞虎. 多维离散傅立叶变换神经网络函数逼近[J]. 上海交通大学学报, 2000, 34(7): 956-959
作者姓名:卢宏涛  戚飞虎
作者单位:上海交通大学,计算机科学与工程系,上海,200030
摘    要:利用多维离散傅立叶变换原理构造新颖的神经网络模型用于函数逼近,网络结构为分层前向网络。给出了网络的学习算法,网络的大部分权值都是固定的,只有输出层与最后隐层之间的权值需要调节。

关 键 词:神经网络 函数逼近 离散傅里叶变换 学习算法
修稿时间:1999-04-23

Function Approximation by Multidimensional Discrete Fourier Transform Based Neural Networks
LU Hong-tao,QI Fei-hu. Function Approximation by Multidimensional Discrete Fourier Transform Based Neural Networks[J]. Journal of Shanghai Jiaotong University, 2000, 34(7): 956-959
Authors:LU Hong-tao  QI Fei-hu
Abstract:A novel class of layered feedforward neural network models for function approximation was proposed based on the principle of multi dimensional discrete Fourier transform. A learning algorithm was introduced, in which most connection weights of the network are fixed, only those between the output layer and the last hidden layer are needed to be adjusted. Compared with other neural networks, the algorithm is simpler and learning speed is faster. The network can approximate any continuous function with any degree of accuracy provided its hidden nodes is as many as enough. The computer simulation shows its advanteges of fast convergence and high approximation accuracy over the back propagation (BP) network and fuzzy neural networks.
Keywords:discrete Fourier transform  neural networks  function approximation
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