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 pro...

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Main Author: Putroue Keumala Intan
Format: Article
Language:English
Published: Faculty of Science and Technology, UIN Sunan Ampel Surabaya 2019-10-01
Series:Mantik: Jurnal Matematika
Subjects:
svm
Online Access:http://jurnalsaintek.uinsby.ac.id/index.php/mantik/article/view/683
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spelling doaj-1b047bd18fe94a8ab84358ce648373912021-05-02T17:09:41ZengFaculty of Science and Technology, UIN Sunan Ampel SurabayaMantik: Jurnal Matematika2527-31592527-31672019-10-0152909910.15642/mantik.2019.5.2.90-99683Comparison of Kernel Function on Support Vector Machine in Classification of ChildbirthPutroue Keumala Intan0UIN Sunan Ampel SurabayaThe 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.http://jurnalsaintek.uinsby.ac.id/index.php/mantik/article/view/683svmchildbirthkernel functions
collection DOAJ
language English
format Article
sources DOAJ
author Putroue Keumala Intan
spellingShingle Putroue Keumala Intan
Comparison of Kernel Function on Support Vector Machine in Classification of Childbirth
Mantik: Jurnal Matematika
svm
childbirth
kernel functions
author_facet Putroue Keumala Intan
author_sort Putroue Keumala Intan
title Comparison of Kernel Function on Support Vector Machine in Classification of Childbirth
title_short Comparison of Kernel Function on Support Vector Machine in Classification of Childbirth
title_full Comparison of Kernel Function on Support Vector Machine in Classification of Childbirth
title_fullStr Comparison of Kernel Function on Support Vector Machine in Classification of Childbirth
title_full_unstemmed Comparison of Kernel Function on Support Vector Machine in Classification of Childbirth
title_sort comparison of kernel function on support vector machine in classification of childbirth
publisher Faculty of Science and Technology, UIN Sunan Ampel Surabaya
series Mantik: Jurnal Matematika
issn 2527-3159
2527-3167
publishDate 2019-10-01
description 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.
topic svm
childbirth
kernel functions
url http://jurnalsaintek.uinsby.ac.id/index.php/mantik/article/view/683
work_keys_str_mv AT putrouekeumalaintan comparisonofkernelfunctiononsupportvectormachineinclassificationofchildbirth
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