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基于排序种群编码的进化尖峰神经网络的知识提取。

Knowledge extraction from evolving spiking neural networks with rank order population coding.

机构信息

School of Electrical Engineering, Manukau Institute of Technology, Auckland, New Zealand.

出版信息

Int J Neural Syst. 2010 Dec;20(6):437-45. doi: 10.1142/S012906571000253X.

Abstract

This paper demonstrates how knowledge can be extracted from evolving spiking neural networks with rank order population coding. Knowledge discovery is a very important feature of intelligent systems. Yet, a disproportionally small amount of research is centered on the issue of knowledge extraction from spiking neural networks which are considered to be the third generation of artificial neural networks. The lack of knowledge representation compatibility is becoming a major detriment to end users of these networks. We show that a high-level knowledge can be obtained from evolving spiking neural networks. More specifically, we propose a method for fuzzy rule extraction from an evolving spiking network with rank order population coding. The proposed method was used for knowledge discovery on two benchmark taste recognition problems where the knowledge learnt by an evolving spiking neural network was extracted in the form of zero-order Takagi-Sugeno fuzzy IF-THEN rules.

摘要

本文展示了如何利用具有等级群体编码的进化尖峰神经网络来提取知识。知识发现是智能系统的一个非常重要的特征。然而,只有很少的研究集中在从被认为是第三代人工神经网络的尖峰神经网络中提取知识的问题上。缺乏知识表示兼容性,这对这些网络的最终用户来说是一个主要的不利因素。我们表明,可以从进化的尖峰神经网络中获得高级知识。更具体地说,我们提出了一种从具有等级群体编码的进化尖峰网络中提取模糊规则的方法。所提出的方法用于两个基准味觉识别问题的知识发现,其中通过进化尖峰神经网络学习的知识以零阶 Takagi-Sugeno 模糊 IF-THEN 规则的形式提取。

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