支持向量机核函数在分娩分类中的比较

Putroue Keumala Intan
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引用次数: 8

摘要

通过医疗小组在确定必须立即进行的分娩过程方面的努力,可以降低分娩期间的产妇死亡率。机器学习在分娩分类方面可以成为医疗团队确定分娩过程的解决方案。其中一种可以使用的分类方法是支持向量机(SVM)方法,它能够确定一个超平面,该超平面将形成一个良好的决策边界,从而能够对数据进行适当的分类。在支持向量机中,有一个核函数,它通过将数据转换到更高的维度来解决非线性分类情况。在本研究中,将使用四个核函数;在分娩分类过程中使用线性、径向基函数(RBF)、多项式和Sigmoid,以确定能够产生最高准确率值的核函数。通过研究得出,线性核函数支持向量机生成的精度值高于其他核函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Kernel Function on Support Vector Machine in Classification of Childbirth
The maternal mortality rate during childbirth can be reduced through the efforts of the medical team in determining the childbirth process that must be undertaken immediately. Machine learning in terms of classifying childbirth can be a solution for the medical team in determining the childbirth process. One of the classification methods that can be used is the Support Vector Machine (SVM) method which is able to determine a hyperplane that will form a good decision boundary so that it is able to classify data appropriately. In SVM, there is a kernel function that is useful for solving non-linear classification cases by transforming data to a higher dimension. In this study, four kernel functions will be used; Linear, Radial Basis Function (RBF), Polynomial, and Sigmoid in the classification process of childbirth in order to determine the kernel function that is capable of producing the highest accuracy value. Based on research that has been done, it is obtained that the accuracy value generated by SVM with linear kernel functions is higher than the other kernel functions.
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