一种基于模糊特征选择和一致性度量的混合特征选择方法

Laleh Jalali, M. Nasiri, Behrooz Minaei
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引用次数: 5

摘要

本文提出了一种基于模糊方法和一致性度量处理分类问题的特征子集选择方法。在模糊分类器系统中,分类是通过一些模糊的If-Then规则来实现的,这些规则包括Low和High等语言术语,这些规则模糊了每个特征。首先将原始数据集投影到模糊空间中,然后根据一致性度量选择特征子集。该方法将模糊特征子集选择与一致性度量相结合,可以选择相关特征,获得比上述方法更高的平均分类准确率。通过减少用于9个真实数据集分类的特征数量,证明了所提出方法的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid feature selection method based on fuzzy feature selection and consistency measures
In This paper, we present a new method for dealing with feature subset selection based on fuzzy methods and consistency measures for handling classification problems. In fuzzy classifier systems the classification is obtained by a number of fuzzy If-Then rules including linguistic terms such as Low and High that fuzzify each feature. First, we project the original data set into a fuzzy space, then we select the feature subset based on the consistency measures. The proposed method which is an integration of fuzzy feature subset selection and consistency measures can select relevant features to get higher average classification accuracy rates than each of the above mentioned methods. The applicability of the proposed method has been demonstrated by reducing the number of features used for the classification of nine real-world data sets.
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