Computer Engineering and Applications ›› 2009, Vol. 45 ›› Issue (31): 22-24.DOI: 10.3778/j.issn.1002-8331.2009.31.007

• 博士论坛 • Previous Articles     Next Articles

Parameter self-adaptive of self-organizing feature map

SU Hong-quan,ZHU Yi-sheng   

  1. Information Science and Technology College,Dalian Maritime University,Dalian,Liaoning 116026,China
  • Received:2009-06-16 Revised:2009-09-09 Online:2009-11-01 Published:2009-11-01
  • Contact: SU Hong-quan

自组织神经网络的参数自适应方法

苏洪全,朱义胜   

  1. 大连海事大学 信息科学技术学院,辽宁 大连 116026
  • 通讯作者: 苏洪全

Abstract: The principal goal of the self-organizing feature map is to transform an incoming signal pattern of arbitrary dimension into a one- or two-dimensional discrete map,and to perform this transformation adaptively in a topologically ordered fashion.The learning process is controlled by learning coefficient and the width of neighborhood function,which have to be chosen empirically because there aren’t exist rules or a method for their calculation.To improve the learning ability of the self-organizing maps,a method is presented,which the learning coefficient and the width of neighborhood function is predicted by linear Kalman fitler and the Kalman filter based on the unscented transform respectively.

Key words: self-organizing feature map, Kalman filter, unscented transform

摘要: 自组织神经网络的主要目的是将任意维数的输入信号模式转变成为一维或二维的离散映射,并且以拓扑有序的方式自适应地实现这个过程。学习过程中,对邻域宽度函数和学习率函数参数是根据经验选择的,没有一定的规则或方法,因此,邻域保持映射的获得往往先于参数的学习过程。将线性Kalman滤波器和基于无先导变换的Kalman滤波器分别用于学习率函数和邻域宽度函数的预测,可以提高自组织神经网络的学习能力。改进后的算法可以根据输入数据自适应地调整邻域宽度函数和学习率函数。

关键词: 自组织神经网络, 卡尔曼滤波器, 无先导变换

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