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Feature Weights Determining of Pattern Classification by Using a Rough Genetic Algorithm with Fuzzy Similarity Measure

机译:使用具有模糊相似度量的粗糙遗传算法,具有粗遗传算法的特征权重确定模式分类

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The classification problem is one of the typical problems encountered in data mining and machine learning. In this paper, a rough genetic algorithm (RGA) is applied to the classification problem in an undetermined environment based on a fuzzy distance function by calculating attribute weights. The RGA, a genetic algorithm based on rough values, can complement the existing tools developed in rough computing. Computational experiments are conducted on benchmark problems downloaded from UCI machine learning databases. Experimental results, compared with the usual CA [1] and C4.5 algorithms, verify the efficiency of the developed algorithm. Furthermore, the weights acquired by the proposed learning method are applicable not only to fuzzy similarity functions but also to any similarity functions. As an application, a new distance metric called weighted discretized value difference metric (WDVDM) is proposed. Experimental results show that WDVDM is an improvement on the discretized value difference metric (DVDM).
机译:分类问题是数据挖掘和机器学习中遇到的典型问题之一。本文基于计算属性权重,将粗遗传算法(RGA)基于模糊距离功能应用于未确定环境中的分类问题。 RGA是一种基于粗糙值的遗传算法,可以补充粗糙计算中开发的现有工具。计算实验是在从UCI机器学习数据库下载的基准问题上进行的。实验结果与通常的CA [1]和C4.5算法相比,验证了发达算法的效率。此外,所提出的学习方法获取的权重不仅适用于模糊相似性功能,而且适用于任何相似性功能。作为应用程序,提出了一种新的距离度量,称为加权离散值差分度量(WDVDM)。实验结果表明,WDVDM是对离散值差异度量(DVDM)的改进。

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