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基于极大极小准则的异联想记忆网络学习算法
引用本文:梁学斌,吴立德.基于极大极小准则的异联想记忆网络学习算法[J].电子学报,1996,24(8):28-32.
作者姓名:梁学斌  吴立德
作者单位:复旦大学计算机科学系
基金项目:国家攀登计划基金,国家自然科学基金
摘    要:提出了设计异联想记忆网络的极大极小准则,即设计出的连接权阵应使得网络最小的记忆模式对的吸引域达到最大。首先给出了一种快速学习算法,它设计出的网络连接权值只取1,0或-1;再进一步发展了一个启发性迭代学习算法,称为约束感知器优化学习算法,它以快速学习算法的结果作为连接权阵的迭代实值。

关 键 词:异联想记忆模型  极大极小准则  快速学习算法

Learning Algorithms ot Bidirectional Associative Memory Based on Max-Min Criterion
Liang Xuebin, Wu Lide.Learning Algorithms ot Bidirectional Associative Memory Based on Max-Min Criterion[J].Acta Electronica Sinica,1996,24(8):28-32.
Authors:Liang Xuebin  Wu Lide
Abstract:A max-min criterion for design of bidirectional associative memory, which requires the smallest domain of attraction to be maximized, is proposed in this paper. A quick learning algorithm is first given, by which the designed connection weights are 1,0 or -1. Further, a constrained perceptron optimization algorithm is presented, which takes the weights obtained by quick algorithm as initial iteration value. Computer experimental results confirm the advantages of the proposed algorithms.
Keywords:Bidirectional associative memory  Max-Min criterion  Quick learning algorithm  Constrained perceptron optimization algorithm
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