模块化通用模糊超线段神经网络

P. Patil, M. Deshmukh
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引用次数: 0

摘要

本文描述了模块化通用模糊超线段神经网络(MGFHLSNN)及其学习算法,该算法是对Patil、Kulkarni和Sontakke(2002)提出的通用模糊超线段神经网络(GFHLSNN)的扩展,将监督学习和无监督学习结合在一个算法中,从而可以用于纯分类、纯聚类和混合分类/聚类。与U.V. Kulkami等人(2001)的模糊超线段神经网络(FHLSNN)不同,MGFHLSNN提供了更高程度的并行性,因为每个模块只暴露于一个类的模式,并且不进行重叠测试和去除训练,从而减少了训练时间。在该算法中,每个模块只捕获一个特定类的特性,并且在等效测试时间下,在泛化和训练时间方面具有优势。因此,它可以用于大量的现实数据库,其中可以动态添加新的模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modular general fuzzy hyperline segment neural network
This paper describes modular general fuzzy hyperline segment neural network (MGFHLSNN) with its learning algorithm, which is an extension of general fuzzy hyperline segment neural network (GFHLSNN) proposed by Patil, Kulkarni and Sontakke (2002) that combines supervised and unsupervised learning in a single algorithm so that it can be used for pure classification, pure clustering and hybrid classification/clustering. MGFHLSNN offers higher degree of parallelism since each module is exposed to the patterns of only one class and trained without overlap test and removal, unlike in fuzzy hyperline segment neural network (FHLSNN) by U.V. Kulkami et al. (2001) leading to reduction in training time. In proposed algorithm each module captures peculiarity of only one particular class and found superior in terms of generalization and training time with equivalent testing time. Thus, it can be used for voluminous realistic database, where new patterns can be added on fly.
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