Classification Of Direction Using Naive Bayes Classifier Method (Case Study Of Hidayatul Islam Leces Vocational School)

Abstract— Determining student majors is an important process in the world of education that can affect students' future. In this thesis, we conducted a study on determining student majors using the Naive Bayes Classifier algorithm at SMK Hidayatul Islam. The purpose of this study was to test th...

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Main Authors: Dwi Yanto, Heri Susanto, Ninanesia Rusdiana, Kiky Zulkifli
Format: Article
Language:Indonesian
Published: LP3M Universitas Nurul Jadid 2025-04-01
Series:Journal of Electrical Engineering and Computer
Subjects:
Online Access:https://ejournal.unuja.ac.id/index.php/jeecom/article/view/11160
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author Dwi Yanto
Heri Susanto
Ninanesia Rusdiana
Kiky Zulkifli
author_facet Dwi Yanto
Heri Susanto
Ninanesia Rusdiana
Kiky Zulkifli
author_sort Dwi Yanto
collection DOAJ
description Abstract— Determining student majors is an important process in the world of education that can affect students' future. In this thesis, we conducted a study on determining student majors using the Naive Bayes Classifier algorithm at SMK Hidayatul Islam. The purpose of this study was to test the accuracy of the Naive Bayes Classifier algorithm in predicting student majors and to provide recommendations that can support decision making in determining student majors. This study uses historical data of SMK Hidayatul Islam students which includes various attributes such as academic grades, Mathematics, Science, Language, Science, and Average report card grades. The data was processed and trained on the Naive Bayes Classifier algorithm using machine learning methods. Furthermore, the algorithm was tested using separate test data. The results showed that the Naive Bayes Classifier algorithm provided an accuracy of 97.50% in determining student majors at SMK Hidayatul Islam. This shows a very good ability to predict student majors based on existing attributes. With high accuracy, this algorithm can be an effective tool in helping the student major decision-making process. However, it should be noted that the results of this study need to be considered in the specific context of SMK Hidayatul Islam and the characteristics of its students. Factors such as students' interests and talents, parents' views, and job market needs should also be important considerations in determining students' majors. Therefore, the Naive Bayes Classifier algorithm should be used as one component in a broader decision-making process, which involves consideration of these various factors.
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institution OA Journals
issn 2715-0410
2715-6427
language Indonesian
publishDate 2025-04-01
publisher LP3M Universitas Nurul Jadid
record_format Article
series Journal of Electrical Engineering and Computer
spelling doaj-art-e4f958925c034360ba5f20c5130ff0692025-08-20T01:55:32ZindLP3M Universitas Nurul JadidJournal of Electrical Engineering and Computer2715-04102715-64272025-04-017125226210.33650/jeecom.v7i1.111603939Classification Of Direction Using Naive Bayes Classifier Method (Case Study Of Hidayatul Islam Leces Vocational School)Dwi Yanto0Heri Susanto1Ninanesia Rusdiana2Kiky Zulkifli3Akademi Manajemen Informatika Dan Komputer TarunaAkademi Manajemen Informatika Dan Komputer TarunaAkademi Manajemen Informatika Dan Komputer TarunaAkademi Manajemen Informatika Dan Komputer TarunaAbstract— Determining student majors is an important process in the world of education that can affect students' future. In this thesis, we conducted a study on determining student majors using the Naive Bayes Classifier algorithm at SMK Hidayatul Islam. The purpose of this study was to test the accuracy of the Naive Bayes Classifier algorithm in predicting student majors and to provide recommendations that can support decision making in determining student majors. This study uses historical data of SMK Hidayatul Islam students which includes various attributes such as academic grades, Mathematics, Science, Language, Science, and Average report card grades. The data was processed and trained on the Naive Bayes Classifier algorithm using machine learning methods. Furthermore, the algorithm was tested using separate test data. The results showed that the Naive Bayes Classifier algorithm provided an accuracy of 97.50% in determining student majors at SMK Hidayatul Islam. This shows a very good ability to predict student majors based on existing attributes. With high accuracy, this algorithm can be an effective tool in helping the student major decision-making process. However, it should be noted that the results of this study need to be considered in the specific context of SMK Hidayatul Islam and the characteristics of its students. Factors such as students' interests and talents, parents' views, and job market needs should also be important considerations in determining students' majors. Therefore, the Naive Bayes Classifier algorithm should be used as one component in a broader decision-making process, which involves consideration of these various factors.https://ejournal.unuja.ac.id/index.php/jeecom/article/view/11160classification of student majors naive bayes classifier accuracy
spellingShingle Dwi Yanto
Heri Susanto
Ninanesia Rusdiana
Kiky Zulkifli
Classification Of Direction Using Naive Bayes Classifier Method (Case Study Of Hidayatul Islam Leces Vocational School)
Journal of Electrical Engineering and Computer
classification of student majors naive bayes classifier accuracy
title Classification Of Direction Using Naive Bayes Classifier Method (Case Study Of Hidayatul Islam Leces Vocational School)
title_full Classification Of Direction Using Naive Bayes Classifier Method (Case Study Of Hidayatul Islam Leces Vocational School)
title_fullStr Classification Of Direction Using Naive Bayes Classifier Method (Case Study Of Hidayatul Islam Leces Vocational School)
title_full_unstemmed Classification Of Direction Using Naive Bayes Classifier Method (Case Study Of Hidayatul Islam Leces Vocational School)
title_short Classification Of Direction Using Naive Bayes Classifier Method (Case Study Of Hidayatul Islam Leces Vocational School)
title_sort classification of direction using naive bayes classifier method case study of hidayatul islam leces vocational school
topic classification of student majors naive bayes classifier accuracy
url https://ejournal.unuja.ac.id/index.php/jeecom/article/view/11160
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AT herisusanto classificationofdirectionusingnaivebayesclassifiermethodcasestudyofhidayatulislamlecesvocationalschool
AT ninanesiarusdiana classificationofdirectionusingnaivebayesclassifiermethodcasestudyofhidayatulislamlecesvocationalschool
AT kikyzulkifli classificationofdirectionusingnaivebayesclassifiermethodcasestudyofhidayatulislamlecesvocationalschool