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New Fuzzy Support Vector Machine for the Class Imbalance Problem in Medical Datasets Classification

机译:医疗数据集分类中的新模糊支持向量机。医学数据集分类中的不平衡问题

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In medical datasets classification, support vector machine (SVM) is considered to be one of the most successful methods. However, most of the real-world medical datasets usually contain some outliers/noise and data often have class imbalance problems. In this paper, a fuzzy support machine (FSVM) for the class imbalance problem (called FSVM-CIP) is presented, which can be seen as a modified class of FSVM by extending manifold regularization and assigning two misclassification costs for two classes. The proposed FSVM-CIP can be used to handle the class imbalance problem in the presence of outliers/noise, and enhance the locality maximum margin. Five real-world medical datasets, breast, heart, hepatitis, BUPA liver, and pima diabetes, from the UCI medical database are employed to illustrate the method presented in this paper. Experimental results on these datasets show the outperformed or comparable effectiveness of FSVM-CIP.
机译:在医疗数据集分类中,支持向量机(SVM)被认为是最成功的方法之一。但是,大多数现实世界医疗数据集通常包含一些异常值/噪音,数据通常具有类别不平衡问题。在本文中,提出了一种用于类别不平衡问题的模糊支撑机(FSVM)(称为FSVM-CIP),可以通过扩展歧管正则化并为两个类分配两个错误分类成本来视为FSVM的修改类别。所提出的FSVM-CIP可用于在存在异常值/噪声的情况下处理类别不平衡问题,并增强了位置最大边距。从UCI医疗数据库中使用五个现实世界医疗数据集,乳腺,心脏,肝炎,BUPA肝脏和PIMA糖尿病,以说明本文中提出的方法。这些数据集上的实验结果显示了FSVM-CIP的表现优于或相当的效果。

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