Proposing a novel feature selection algorithm based on Hesitant Fuzzy Sets and correlation concepts

M. K. Ebrahimpour, M. Eftekhari
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引用次数: 6

Abstract

In this paper, a Feature Selection (FS) method based on Hesitant Fuzzy Sets (HFS) is proposed. The ranking value of three filter methods (i.e. Fisher, Relief, Information Gain) for each feature are considered as Hesitant Fuzzy Elements (HFE) of that feature with respect to class relevancy, then hesitant correlation matrix of features is calculated. After that three similarity measures are considered to evaluate the second hesitant correlation matrix of features. The first correlation matrix represents the correlation of features with respect to their relevancy to the class. The second correlation matrix presents the correlation based on redundancy of features among themselves. One Hesitant Fuzzy Sets Clustering Algorithm (HFSCA) is run on these matrixes. Finally the intersection of clusters is considerd as a features subset which contains the highly relevance and lowly redundant features. The experimental results confirm the ability of our proposed method in both number of selected features and accuracy comparing to the other ones.
提出了一种基于犹豫模糊集和相关概念的特征选择算法
提出了一种基于犹豫模糊集(HFS)的特征选择方法。将每个特征的三种滤波方法(Fisher、Relief、Information Gain)的排序值作为该特征相对于类相关性的犹豫模糊元素(HFE),然后计算特征的犹豫相关矩阵。然后考虑三个相似性度量来评估特征的第二犹豫相关矩阵。第一个相关矩阵表示特征与类的相关性。第二个相关矩阵表示基于特征之间冗余的相关性。在这些矩阵上运行一种犹豫模糊集聚类算法(HFSCA)。最后,将聚类的交集作为一个特征子集,其中包含了高度相关和低冗余的特征。实验结果表明,与其他方法相比,该方法在特征选择数量和准确率方面都有较好的效果。
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