Robust ART-2 neural network learning framework

Jiang-Bo Yin, Hongbin Shen
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引用次数: 1

Abstract

The ART-2 network is a typical adaptive resonance theory based neural network approach for clustering purpose and has been successfully used in many fields. However, one of the fatal shortcomings of traditional ART-2 is that its final results heavily depend on a pre-defined fixed vigilance threshold parameter, which makes it infeasible to be applied in different complicated applications. Another disadvantage of traditional ART-2 method is that the number of categories in the network will increase all the time with the continuous input. Considering these points, an improved algorithm of ART-2 has been presented in this paper called the Robust ART-2. We first systematically analyze the dynamic changes of the optimal vigilance threshold with the succession inputs and propose a new adaptive method to make the network itself can automatically choose the optimal threshold in various situations. Then we introduce a constraint parameter to confine the scale of ART-2 network by limiting the maximal number of categories of network. Simulation experiments including artificial and benchmark data sets demonstrate the effectiveness of our algorithm.
鲁棒ART-2神经网络学习框架
ART-2网络是一种典型的基于自适应共振理论的神经网络聚类方法,已成功应用于许多领域。然而,传统ART-2的一个致命缺点是其最终结果严重依赖于预先定义的固定警戒阈值参数,这使得它无法应用于不同的复杂应用。传统ART-2方法的另一个缺点是,随着输入的不断增加,网络中的类别数量会不断增加。考虑到这些问题,本文提出了一种改进的ART-2算法,称为鲁棒ART-2。首先系统地分析了最优警觉性阈值随连续输入的动态变化,提出了一种新的自适应方法,使网络本身能够在各种情况下自动选择最优阈值。然后引入约束参数,通过限制网络的最大类别数来限制ART-2网络的规模。包括人工数据集和基准数据集的仿真实验证明了该算法的有效性。
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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