Multi-class Support Vector Machine (SVM) Classifiers -- An Application in Hypothyroid Detection and Classification

F. F. Chamasemani, Y. P. Singh
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引用次数: 109

Abstract

The paper presents a Multi-class Support Vector Machine classifier and its application to hypothyroid detection and classification. Support Vector Machines (SVM) have been well known method in the machine learning community for binary classification problems. Multi-class SVMs (MCSVM) are usually implemented by combining several binary SVMs. The objective of this work is to show: first, robustness of various kind of kernels for Multi-class SVM classifier, second, a comparison of different constructing methods for Multi-class SVM, such as One-Against-One and One-Against-All, and finally comparing the classifiers' accuracy of Multi-class SVM classifier to AdaBoost and Decision Tree. The simulation results show that One-Against-All Support Vector Machines (OAASVM) are superior to One-Against-One Support Vector Machines (OAOSVM) with polynomial kernels. The accuracy of OAASVM is also higher than AdaBoost and Decision Tree classifier on hypothyroid disease datasets from UCI machine learning dataset.
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多类支持向量机分类器——在甲状腺功能减退检测与分类中的应用
提出了一种多类支持向量机分类器及其在甲状腺功能减退检测和分类中的应用。支持向量机(SVM)是机器学习领域中解决二值分类问题的常用方法。多类支持向量机(MCSVM)通常由多个二值支持向量机组合实现。本研究的目的是为了证明:首先,多类SVM分类器的各种核的鲁棒性;其次,多类SVM的不同构造方法(如One-Against-One和One-Against-All)的比较;最后,将多类SVM分类器的分类器精度与AdaBoost和Decision Tree进行比较。仿真结果表明,单对全支持向量机(OAASVM)优于多项式核的单对一支持向量机(OAOSVM)。在来自UCI机器学习数据集的甲状腺功能减退数据集上,OAASVM的准确率也高于AdaBoost和Decision Tree分类器。
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