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The Pattern cognition and Classification used ART Ueural uetwork

机译:模式的识别和分类运用了ART的语言手段。

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This paper classify using Adaptive Resonance Theory 1(ART1) as a vigilance parameter of pattern clustering algorithm. Inherent characteristics of the model are analyzed. In particular the vigilance parameter and its role in classification of patterns is examined. Our estimates show that the vigilance parameter as designed originally does not necessarily increase the number of categories with its value but can decrease also. This is against the claim of solving the stability-plasticity dilemma. However, we have proposed a modified vigilance parameter setting criterion which takes into account the problem of subset and superset patterns and stably categorizes arbitrarily many input patterns in one list presentation when the vigilance parameter is closer to one. And this paper goal is the input pattern cognition and classification using neural network.
机译:本文采用自适应共振理论1(ART1)作为模式聚类算法的警戒参数进行分类。分析了模型的固有特性。尤其要检查警惕性参数及其在模式分类中的作用。我们的估计表明,最初设计的警戒性参数并不一定会增加类别数量及其值,但也会降低。这违反了解决稳定性-可塑性难题的主张。但是,我们提出了一种改进的警戒参数设置准则,该准则考虑了子集和超集模式的问题,并在警戒参数更接近一个时,将多个输入模式稳定地分类在一个列表表示中。本文的目标是利用神经网络对输入模式进行识别和分类。

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