PENGGOLONGAN UANG KULIAH TUNGGAL MENGGUNAKAN SUPPORT VECTOR MACHINE

Tuition fee is the payment of tuition fees each semester borne by each student based on their economic capabilities. Tuition fee is divided into five groups from tuition fee group 1 to tuition fee group 5. This research aims to find the accuracy of the classification of tuition fee using Support Vec...

Full description

Bibliographic Details
Main Authors: I GEDE SEKA SUYOGA, I PUTU EKA NILA KENCANA, I KOMANG GDE SUKARSA
Format: Article
Language:English
Published: Universitas Udayana 2017-11-01
Series:E-Jurnal Matematika
Online Access:https://ojs.unud.ac.id/index.php/mtk/article/view/35470
id doaj-cf29d3f35a1d4556bf8ce473195ee268
record_format Article
spelling doaj-cf29d3f35a1d4556bf8ce473195ee2682020-11-24T23:42:19ZengUniversitas UdayanaE-Jurnal Matematika2303-17512017-11-016422022510.24843/MTK.2017.v06.i04.p16935470PENGGOLONGAN UANG KULIAH TUNGGAL MENGGUNAKAN SUPPORT VECTOR MACHINEI GEDE SEKA SUYOGA0I PUTU EKA NILA KENCANA1I KOMANG GDE SUKARSA2Udayana UniversityUdayana UniversityUdayana UniversityTuition fee is the payment of tuition fees each semester borne by each student based on their economic capabilities. Tuition fee is divided into five groups from tuition fee group 1 to tuition fee group 5. This research aims to find the accuracy of the classification of tuition fee using Support Vector Machine (SVM). SVM is a method used for classification of the concept to find hyperplane (separator function) that can separate the data into a predetermined class. In this research, SVM is used to determine the accuracy of tuition fee classification. The variables used are income parents, father’s occupation, mother’s occupation, home ownership status, building, land area, electricity cost, water cost, phone cost, saving accounts, jewelry ownership, and a premium ownership. The results obtained are five hyperplanes to separate tuition fee with accuracy of the classification of tuition fee was 59,69%.https://ojs.unud.ac.id/index.php/mtk/article/view/35470
collection DOAJ
language English
format Article
sources DOAJ
author I GEDE SEKA SUYOGA
I PUTU EKA NILA KENCANA
I KOMANG GDE SUKARSA
spellingShingle I GEDE SEKA SUYOGA
I PUTU EKA NILA KENCANA
I KOMANG GDE SUKARSA
PENGGOLONGAN UANG KULIAH TUNGGAL MENGGUNAKAN SUPPORT VECTOR MACHINE
E-Jurnal Matematika
author_facet I GEDE SEKA SUYOGA
I PUTU EKA NILA KENCANA
I KOMANG GDE SUKARSA
author_sort I GEDE SEKA SUYOGA
title PENGGOLONGAN UANG KULIAH TUNGGAL MENGGUNAKAN SUPPORT VECTOR MACHINE
title_short PENGGOLONGAN UANG KULIAH TUNGGAL MENGGUNAKAN SUPPORT VECTOR MACHINE
title_full PENGGOLONGAN UANG KULIAH TUNGGAL MENGGUNAKAN SUPPORT VECTOR MACHINE
title_fullStr PENGGOLONGAN UANG KULIAH TUNGGAL MENGGUNAKAN SUPPORT VECTOR MACHINE
title_full_unstemmed PENGGOLONGAN UANG KULIAH TUNGGAL MENGGUNAKAN SUPPORT VECTOR MACHINE
title_sort penggolongan uang kuliah tunggal menggunakan support vector machine
publisher Universitas Udayana
series E-Jurnal Matematika
issn 2303-1751
publishDate 2017-11-01
description Tuition fee is the payment of tuition fees each semester borne by each student based on their economic capabilities. Tuition fee is divided into five groups from tuition fee group 1 to tuition fee group 5. This research aims to find the accuracy of the classification of tuition fee using Support Vector Machine (SVM). SVM is a method used for classification of the concept to find hyperplane (separator function) that can separate the data into a predetermined class. In this research, SVM is used to determine the accuracy of tuition fee classification. The variables used are income parents, father’s occupation, mother’s occupation, home ownership status, building, land area, electricity cost, water cost, phone cost, saving accounts, jewelry ownership, and a premium ownership. The results obtained are five hyperplanes to separate tuition fee with accuracy of the classification of tuition fee was 59,69%.
url https://ojs.unud.ac.id/index.php/mtk/article/view/35470
work_keys_str_mv AT igedesekasuyoga penggolonganuangkuliahtunggalmenggunakansupportvectormachine
AT iputuekanilakencana penggolonganuangkuliahtunggalmenggunakansupportvectormachine
AT ikomanggdesukarsa penggolonganuangkuliahtunggalmenggunakansupportvectormachine
_version_ 1725504991009964032