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Feature subset selection based on fuzzy entropy measures for handling classification problems

机译:基于模糊熵测度的特征子集选择方法

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摘要

In this paper, we present a new method for dealing with feature subset selection based on fuzzy entropy measures for handling classification problems. First, we discretize numeric features to construct the membership function of each fuzzy set of a feature. Then, we select the feature subset based on the proposed fuzzy entropy measure focusing on boundary samples. The proposed method can select relevant features to get higher average classification accuracy rates than the ones selected by the MIFS method (Battiti, R. in IEEE Trans. Neural Netw. 5(4):537-550, 1994), the FQI method (De, R.K., et al. in Neural Netw. 12(10):1429-1455, 1999), the OFEI method, Dong-and-Kothari's method (Dong, M., Kothari, R. in Pattern Recognit. Lett. 24(9):1215-1225, 2003) and the OFFSS method (Tsang, E.C.C., et al. in IEEE Trans. Fuzzy Syst. 11(2):202-213, 2003).
机译:本文提出了一种基于模糊熵测度的特征子集选择方法。首先,我们离散化数字特征以构造特征的每个模糊集的隶属函数。然后,基于针对边界样本的模糊熵测度,选择特征子集。相比于MIFS方法(Battiti,R.在IEEE Trans.Neural Netw.5(4):537-550,1994),FQI方法(Battiti,R. De,RK等人在《神经网络》(Neural Netw。12(10):1429-1455,1999)中进行了介绍,其中包括OFEI方法,Dong-and-Kothari方法(Dong,M.,Kothari,R.在Pattern Recognit.Lett.24中) (9):1215-1225,2003)和OFFSS方法(Tsang,ECC等,IEEE Trans.Fuzzy Syst.11(2):202-213,2003)。

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