Association pattern of students thesis examination using fp-growth algorithms

The thesis examination is the final project for students to graduate from their majors. This thesis researches scientific work between a student and a supervisor in finding solutions to a problem. In the thesis examination, students must present their research results to be criticized by the examine...

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Main Authors: Ika Arfiani, Herman Yuliansyah, Tia Purwantias
Format: Article
Language:English
Published: Universitas Ahmad Dahlan 2020-09-01
Series:Jurnal Informatika
Subjects:
Online Access:http://journal.uad.ac.id/index.php/JIFO/article/view/17691
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spelling doaj-e5f7e9ce55a74ea59f41aec3335d66fe2021-05-03T04:32:24ZengUniversitas Ahmad DahlanJurnal Informatika1978-05242020-09-0114310211110.26555/jifo.v14i3.a176917606Association pattern of students thesis examination using fp-growth algorithmsIka Arfiani0Herman Yuliansyah1Tia Purwantias2Teknik Informatika, Universitas Ahmad DahlanTeknik Informatika, Universitas Ahmad DahlanTeknik Informatika, Universitas Ahmad DahlanThe thesis examination is the final project for students to graduate from their majors. This thesis researches scientific work between a student and a supervisor in finding solutions to a problem. In the thesis examination, students must present their research results to be criticized by the examiner. This article aims to analyze the association pattern of student thesis examinations at a private university. Although the thesis's implementation has been carried out following procedures, to determine the composition of the board of examiners needs to be analyzed by examining the pattern of relationships between research topics, supervisors, and examiners. This study uses 448 data and uses FP-Growth Algorithms to find the rules. The research methodology starts from preparing the Dataset, cleansing data, selecting data, loading data into applications, transforming data, itemset frequencies, forming patterns, and analyzing rules. This study found 145 patterns of association rules with a minimum support value = 4 and a minimum trust value = 50%. The association rule pattern of 77.78% is under scientific group data. The benefits of the association pattern produced in this study can determine the composition of the examiners on the student thesis examination according to the research topic and scientific field of the examiners.http://journal.uad.ac.id/index.php/JIFO/article/view/17691data mining, association rules mining, fp-growth algorithms, students thesis examination, data patterns.
collection DOAJ
language English
format Article
sources DOAJ
author Ika Arfiani
Herman Yuliansyah
Tia Purwantias
spellingShingle Ika Arfiani
Herman Yuliansyah
Tia Purwantias
Association pattern of students thesis examination using fp-growth algorithms
Jurnal Informatika
data mining, association rules mining, fp-growth algorithms, students thesis examination, data patterns.
author_facet Ika Arfiani
Herman Yuliansyah
Tia Purwantias
author_sort Ika Arfiani
title Association pattern of students thesis examination using fp-growth algorithms
title_short Association pattern of students thesis examination using fp-growth algorithms
title_full Association pattern of students thesis examination using fp-growth algorithms
title_fullStr Association pattern of students thesis examination using fp-growth algorithms
title_full_unstemmed Association pattern of students thesis examination using fp-growth algorithms
title_sort association pattern of students thesis examination using fp-growth algorithms
publisher Universitas Ahmad Dahlan
series Jurnal Informatika
issn 1978-0524
publishDate 2020-09-01
description The thesis examination is the final project for students to graduate from their majors. This thesis researches scientific work between a student and a supervisor in finding solutions to a problem. In the thesis examination, students must present their research results to be criticized by the examiner. This article aims to analyze the association pattern of student thesis examinations at a private university. Although the thesis's implementation has been carried out following procedures, to determine the composition of the board of examiners needs to be analyzed by examining the pattern of relationships between research topics, supervisors, and examiners. This study uses 448 data and uses FP-Growth Algorithms to find the rules. The research methodology starts from preparing the Dataset, cleansing data, selecting data, loading data into applications, transforming data, itemset frequencies, forming patterns, and analyzing rules. This study found 145 patterns of association rules with a minimum support value = 4 and a minimum trust value = 50%. The association rule pattern of 77.78% is under scientific group data. The benefits of the association pattern produced in this study can determine the composition of the examiners on the student thesis examination according to the research topic and scientific field of the examiners.
topic data mining, association rules mining, fp-growth algorithms, students thesis examination, data patterns.
url http://journal.uad.ac.id/index.php/JIFO/article/view/17691
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