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An enhanced general fuzzy min-max neural network for classification

机译:增强的通用模糊最小-最大神经网络进行分类

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This paper proposes the enhanced general fuzzy min-max neural network (EGFM) classification model to perform supervised classification of data. The aim is to overcome a number of limitations of the general fuzzy min-max neural network (GFMM) and improve its classification performance. New hyperbox expansion, overlap and contraction rules proposed in enhanced fuzzy min-max (EFMM) neural network algorithm are used to improve the GFMM learning algorithm. The proposed EGFM classifier is mainly a merging of GFMM and EFMM classifiers to overcome some unidentified cases of hyperboxes overlap and consequent contraction problems in some regions. Accuracy and efficiency of EGFM classifier are evaluated using different standard datasets taken from UCI machine learning repository and the results are better than those from GFMM classifier.
机译:本文提出了增强的通用模糊最小-最大神经网络(EGFM)分类模型,以进行数据的监督分类。目的是克服通用模糊最小-最大神经网络(GFMM)的许多限制,并改善其分类性能。增强模糊最小-最大(EFMM)神经网络算法中提出的新的超框扩展,重叠和收缩规则用于改进GFMM学习算法。拟议中的EGFM分类器主要是GFMM和EFMM分类器的合并,以克服某些未识别的超盒子重叠情况以及某些区域中随之而来的收缩问题。使用来自UCI机器学习存储库的不同标准数据集评估EGFM分类器的准确性和效率,其结果优于GFMM分类器。

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