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Unification of neural and wavelet networks and fuzzy systems

机译:神经和小波网络与模糊系统的统一

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摘要

Analyzes several commonly used soft computing paradigms (neural and wavelet networks and fuzzy systems, Bayesian classifiers, fuzzy partitions, etc.) and tries to outline similarities and differences among each other. These are exploited to produce the weighted radial basis functions paradigm which may act as a neuro-fuzzy unification paradigm. Training rules (both supervised and unsupervised) are also unified by the proposed algorithm. Analyzing differences and similarities among existing paradigms helps to understand that many soft computing paradigms are very similar to each other and can be grouped in just two major classes. The many reasons to unify soft computing paradigms are also shown in the paper. A conversion method is presented to convert perceptrons, radial basis functions, wavelet networks, and fuzzy systems from each other.
机译:分析几种常用的软计算范例(神经网络和小波网络以及模糊系统,贝叶斯分类器,模糊分区等),并尝试概述彼此之间的异同。利用这些来产生加权径向基函数范式,该范式可以充当神经模糊统一范式。所提出的算法也统一了训练规则(有监督的和无监督的)。分析现有范例之间的差异和相似性有助于理解许多软计算范例彼此非常相似,并且可以分为两个主要类。本文还显示了统一软计算范例的许多原因。提出了一种将感知器,径向基函数,小波网络和模糊系统彼此转换的转换方法。

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