Methods of computational intelligence

B. Wilamowski
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引用次数: 9

Abstract

Comparison of various methods of computational intelligence are presented and illustrated with examples. These methods include neural networks, fuzzy systems, and evolutionary computation. The presentation is focused on neural networks, their learning algorithms and special architectures. General learning rule as a function of the incoming signals is discussed. Other learning rules such as Hebbian learning, perceptron learning, LMS (least mean square) learning, delta learning, WTA (winner take all) learning, and PCA (principal component analysis) are presented as a derivation of the general learning rule. Architecture specific learning algorithms for cascade correlation networks, Sarajedini and Hecht-Nielsen networks, functional link networks, polynomial networks, counterpropagation networks, RBF (radial basis function) networks are described.
计算智能方法
对计算智能的各种方法进行了比较,并举例说明。这些方法包括神经网络、模糊系统和进化计算。演讲的重点是神经网络,它们的学习算法和特殊架构。讨论了作为输入信号函数的一般学习规则。其他学习规则,如Hebbian学习,感知器学习,LMS(最小均方)学习,delta学习,WTA(赢家通吃)学习和PCA(主成分分析)作为一般学习规则的推导而提出。描述了级联相关网络、萨拉热窝网络和Hecht-Nielsen网络、功能链路网络、多项式网络、反传播网络、RBF(径向基函数)网络的结构特定学习算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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