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BP神经网络学习算法的联合优化
引用本文:彭松,方祖祥.BP神经网络学习算法的联合优化[J].电路与系统学报,2000,5(3):26-30.
作者姓名:彭松  方祖祥
作者单位:复旦大学,电子工程系,上海,200433
摘    要:针对BP网络学习速度的缓慢性,本文提出了一种联合优化后的快速学习算法。其改进具体表现在以下方面:(1)采用Cauchy误差估计器代替传统的LMS误差估计器,(2)对常规的Sigmoid函数引入形态因子;(2)采用非单调线性搜索法实现学习步长的自适应变化。最后,本文以模式分类,函数逼近和数据压缩的典型应用为例分别与标准BP常规改进算法进行比较,验证了该算法的优越性。

关 键 词:BP神经网络  学习算法  联合优化
文章编号:1007-0249(2000)03-0026-05
修稿时间:2000年1月18日

The Joint Optimization of BP Learning Algorithm
PENG Song,FANG Zu-xiang.The Joint Optimization of BP Learning Algorithm[J].Journal of Circuits and Systems,2000,5(3):26-30.
Authors:PENG Song  FANG Zu-xiang
Abstract:To accelerate the training speed of BP network, a joint-optimized fast BP learning algorithm is proposed. improvements can be achieved as following: 1) Conventional LMS error estimator is replaced by Cauchy error estimator: 2) Shape factor is adopted in Sigmoid function, 3) The adaptive changes of learning rate is realized by using non-sole linear search. Effectiveness of this algorithm is verified by comparison of performance of this algorithm with conventional modified and standard BP algorithms in typical BP network applications as pattern-classification, approximation of mathematical function and data compression.
Keywords:BP neural networks  Cauchy error estimator  shape Factor  non-sole linear search
本文献已被 CNKI 维普 万方数据 等数据库收录!
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