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一种新的基于构造型RBF神经元网络分类算法
引用本文:黄国宏,邵惠鹤.一种新的基于构造型RBF神经元网络分类算法[J].控制与决策,2005,20(12):1411-1414.
作者姓名:黄国宏  邵惠鹤
作者单位:上海交通大学,自动化研究所,上海,200030
摘    要:依据RBF神经元模型的几何解释,提出一种新的构造型神经网络分类算法.首先从样本数据本身入手,通过引入一个密度估计函数来对样本数据进行聚类分析;然后在特征空间里构造超球面,以逼近样本点分布的几何轮廓,从而将神经网络训练问题转化为点集"包含"问题.该算法有效克服了传统神经网络训练时间长、学习复杂的缺陷,同时也考虑了神经网络规模的优化问题.实验证明了该算法的有效性.

关 键 词:模式识别  神经网络  最大密度覆盖  M-P神经元  构造型神经网络
文章编号:1001-0920(2005)12-1411-04
收稿时间:2004-11-05
修稿时间:2005-01-24

Classification Algorithm Based on Constructive RBF Neuron Networks
HUANG Guo-hong,SHAO Hui-he.Classification Algorithm Based on Constructive RBF Neuron Networks[J].Control and Decision,2005,20(12):1411-1414.
Authors:HUANG Guo-hong  SHAO Hui-he
Abstract:According to the geometrical representation of RBF neural model,a classification algorithm is proposed.Starting with the sample data directly,clustering analysis is proceeded by introducing a density function.And then hyperspheres are constructed to draw up the distribution of the sample data in feature space.The training problem of neural networks can be transformed into the "including" problem of a point set.The proposed algorithm can reduce the long training time and learning complexity of traditional neural networks.At the same time,the optimization of the neural network is also considered and computer simulation results show that the proposed neural network is quite efficient.
Keywords:Pattern recognition  Neural networks  Max density covering  M-P neuron  Constructive neural networks
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