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Efficient Kernel Extreme Learning Machine and Neutrosophic C-means-based Attribute Weighting Method for Medical Data Classification

机译:高效的内核极端学习机和基于中性学C型均值的医学数据分类的属性加权方法

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摘要

This paper proposes an integrated system neutrosophic C-means-based attribute weighting-kernel extreme learning machine (NCMAW-KELM) for medical data classification using NCM clustering and KELM. To do that, NCMAW is developed, and then combined with classification method in classification of medical data. The proposed approach contains two steps. In the first step, input attributes are weighted using NCMAW method. The purpose of the weighting method is twofold: (i) to improve the classification performance in the classification of the medical data, (ii) to transform from nonlinearly separable dataset to linearly separable dataset. Finally, KELM algorithm is used for medical data classification purpose. In KELM algorithm, four types of kernels, such as Polynomial, Sigmoid, Radial basis function and Linear, are used. The simulation result on our three datasets demonstrates that the sigmoid kernel is outperformed to ELM in most cases. From the results, NCMAW-KELM approach may be a promising method in medical data classification problem.
机译:本文提出了一种用于使用NCM聚类和KELM的医学数据分类的集成系统中使用基础基于中性学C-Meancy的属性加权 - 内核极端学习机(NCMAW-KELM)。为此,开发NCMAW,然后在医学数据分类中结合分类方法。该方法包含两个步骤。在第一步中,使用NCMAW方法加权输入属性。加权方法的目的是双重的:(i),以改善医疗数据分类的分类性能,(ii)从非线性可分离数据集转换为线性可分离的数据集。最后,Kelm算法用于医疗数据分类目的。在KELM算法中,使用四种类型的核,例如多项式,S形,径向基函数和线性。我们三个数据集上的仿真结果表明,在大多数情况下,Sigmoid内核表现为ELM。从结果中,NCMAW-KELM方法可能是医学数据分类问题中有希望的方法。

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