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Entropy based fuzzy least squares twin support vector machine for class imbalance learning

机译:基于熵的模糊最小二乘级双支持向量机,用于类别不平衡学习

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摘要

In classification problems, the data samples belonging to different classes have different number of samples. Sometimes, the imbalance in the number of samples of each class is very high and the interest is to classify the samples belonging to the minority class. Support vector machine (SVM) is one of the widely used techniques for classification problems which have been applied for solving this problem by using fuzzy based approach. In this paper, motivated by the work of Fan et al. (Knowledge-Based Systems 115: 87-99 2017), we have proposed two efficient variants of entropy based fuzzy SVM (EFSVM). By considering the fuzzy membership value for each sample, we have proposed an entropy based fuzzy least squares support vector machine (EFLSSVM-CIL) and entropy based fuzzy least squares twin support vector machine (EFLSTWSVM-CIL) for class imbalanced datasets where fuzzy membership values are assigned based on entropy values of samples. It solves a system of linear equations as compared to the quadratic programming problem (QPP) as in EFSVM. The least square versions of the entropy based SVM are faster than EFSVM and give higher generalization performance which shows its applicability and efficiency. Experiments are performed on various real world class imbalanced datasets and compared the results of proposed methods with new fuzzy twin support vector machine for pattern classification (NFTWSVM), entropy based fuzzy support vector machine (EFSVM), fuzzy twin support vector machine (FTWSVM) and twin support vector machine (TWSVM) which clearly illustrate the superiority of the proposed EFLSTWSVM-CIL.
机译:在分类问题中,属于不同类的数据样本具有不同数量的样本。有时,每个班级的样本数量的不平衡非常高,并且兴趣是将属于少数阶级的样本分类。支持向量机(SVM)是通过使用基于模糊的方法来解决该问题的分类问题的广泛使用技术之一。在本文中,由FAN等人的工作动机。 (基于知识的系统115:87-99 2017),我们提出了两种基于熵的模糊SVM(EFSVM)的有效变体。通过考虑每个样本的模糊成员资格值,我们提出了一种基于熵的模糊最小二乘支持向量机(EFLSSVM-CIL)和基于熵的模糊最小二乘双胞胎支持向量机(EFLSTWSVM-CIL),用于类不平衡数据集,其中模糊会员值基于样本的熵值分配。它与像EFSVM中的二次编程问题(QPP)相比解决了一个线性方程系统。基于熵的SVM的最小二乘版本比EFSVM更快,并提供更高的泛化性能,显示其适用性和效率。对各种真实世界级的不平衡数据集进行实验,并将建议方法的结果与新的模糊双胞胎支持向量机进行图案分类(NFTWSVM),基于熵的模糊支持向量机(EFSVM),模糊双胞胎支持向量机(FTWSVM)和双重支持向量机(TWSVM)清楚地说明了所提出的EFLSTWSVM-CIL的优越性。

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