A Novel Associative Memory System Based on Newton's Forward Interpolation

Junsong Wang, Shigang Cui, Xiaoqin Deng, Xingshou Xu, Yundong Li
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引用次数: 1

Abstract

A novel highorder associative memory system based on the Newton's forward Interpolation (NFIAMS) is preposed, which can carry out errorfree approximations to multivariable polynomial functions of arbitrary order. The theory, interpolation algorithm and traning rules of the NFIAMS are discussed in detail. The results of simulating examples indicate that it has more advantadges than CMACtype AMS, such as highprecision of learning, much smaller memory requirement without the datacollision problem and much less computational effort for training and faster convergence rates than that attainable with multilayer BP neural networks.
一种基于牛顿正插值的联想记忆系统
提出了一种基于牛顿前向插值(NFI AMS)的高阶联想记忆系统,该系统可以对任意阶的多变量多项式函数进行无误差逼近。详细讨论了NFI AMS的原理、插值算法和训练规则。模拟实例的结果表明,它比CMAC型AMS具有更高的学习精度,更小的内存需求,没有数据冲突问题,训练的计算量更少,收敛速度更快
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