Impulse force based ART network with GA optimization

Hui Liu, Yue Liu, Jian Liu, Bofeng Zhang, Gengfeng Wu
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引用次数: 11

Abstract

The different effects of input attributes on category results in supervised ART (adaptive resonance theory) network is quite important during the predictive stage in the application that was ignored by the traditional researches. In fact, some of the attributes have larger effect than the others on category results, but, even for the experts in that field, it is difficult to evaluate the effect. In this paper we present a novel supervised ART network namely impulse force based ART (IFART) network. It enhances the prediction accuracy of the supervised ART network by using genetic algorithm optimized impulsive forces on attributes. Then some experiments on benchmark data sets are given to show its good performance.
基于冲力的ART网络遗传算法优化
在有监督自适应共振网络中,输入属性对分类结果的不同影响在预测阶段的应用中非常重要,而传统的研究忽视了这一点。事实上,有些属性对分类结果的影响比其他属性更大,但是,即使对该领域的专家来说,也很难评估这种影响。本文提出了一种新的监督式ART网络,即基于冲量的ART (IFART)网络。利用遗传算法优化属性上的冲力,提高了监督式ART网络的预测精度。在基准数据集上进行了实验,证明了该方法的良好性能。
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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