Implementasi Teknik Data Mining untuk Evaluasi Kinerja Mahasiswa Berdasarkan Data Akademik

<p class="BodyAbstract">One indicator of college efficiency is the study period of the students. It is important for university managers to improve the ratio of students who graduate on time. This research aims to analyze the characteristics that affect the study period of students f...

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Main Author: Gita Indah Marthasari
Format: Article
Language:English
Published: University of Darussalam Gontor 2017-11-01
Series:Fountain of Informatics Journal
Subjects:
Online Access:https://ejournal.unida.gontor.ac.id/index.php/FIJ/article/view/1216
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spelling doaj-b6bb04b76c6b439a8b67d3c706f546f42020-11-25T04:02:36ZengUniversity of Darussalam GontorFountain of Informatics Journal2541-43132548-51132017-11-0122566310.21111/fij.v2i2.1216867Implementasi Teknik Data Mining untuk Evaluasi Kinerja Mahasiswa Berdasarkan Data AkademikGita Indah Marthasari0Universitas Muhammadiyah Malang<p class="BodyAbstract">One indicator of college efficiency is the study period of the students. It is important for university managers to improve the ratio of students who graduate on time. This research aims to analyze the characteristics that affect the study period of students from academic data. The methods used are association rule mining (ARM) and clustering. We propose a framework to analyze academic data using ARM dan clustering method. ARM method is a method to find association rules that meet minimum support and minimum confidence. The algorithm used is Apriori. While clustering using Simple Expectation-Maximization (EM-clustering) algorithm. Simple EM is a model-based algorithm that searches for maximum likelihood estimation in the probability model. The variables analyzed were student achievement index, province of the students, and type of high school. The analysis is done using WEKA. Research begins with the collection of data from the primary source of the Biro Administrasi Akademik (BAA) Universitas Muhammadiyah Malang (UMM). Then, we do the data cleaning and transformation. Analyzing process is done in two step. First, do a rule search using Apriori algorithm. The regulated parameters are the minimum support and minimum confidence value. Second, we use Simple EM algorithm for the clustering process. The experiments were conducted to find the clustering result with the largest log likelihood value. Based on the experiment, the method used successfully describes the characteristics based on the study period.</p>https://ejournal.unida.gontor.ac.id/index.php/FIJ/article/view/1216masa studialgoritma apriorialgoritma simple expectation maximizationdata mining untuk pendidikanweka
collection DOAJ
language English
format Article
sources DOAJ
author Gita Indah Marthasari
spellingShingle Gita Indah Marthasari
Implementasi Teknik Data Mining untuk Evaluasi Kinerja Mahasiswa Berdasarkan Data Akademik
Fountain of Informatics Journal
masa studi
algoritma apriori
algoritma simple expectation maximization
data mining untuk pendidikan
weka
author_facet Gita Indah Marthasari
author_sort Gita Indah Marthasari
title Implementasi Teknik Data Mining untuk Evaluasi Kinerja Mahasiswa Berdasarkan Data Akademik
title_short Implementasi Teknik Data Mining untuk Evaluasi Kinerja Mahasiswa Berdasarkan Data Akademik
title_full Implementasi Teknik Data Mining untuk Evaluasi Kinerja Mahasiswa Berdasarkan Data Akademik
title_fullStr Implementasi Teknik Data Mining untuk Evaluasi Kinerja Mahasiswa Berdasarkan Data Akademik
title_full_unstemmed Implementasi Teknik Data Mining untuk Evaluasi Kinerja Mahasiswa Berdasarkan Data Akademik
title_sort implementasi teknik data mining untuk evaluasi kinerja mahasiswa berdasarkan data akademik
publisher University of Darussalam Gontor
series Fountain of Informatics Journal
issn 2541-4313
2548-5113
publishDate 2017-11-01
description <p class="BodyAbstract">One indicator of college efficiency is the study period of the students. It is important for university managers to improve the ratio of students who graduate on time. This research aims to analyze the characteristics that affect the study period of students from academic data. The methods used are association rule mining (ARM) and clustering. We propose a framework to analyze academic data using ARM dan clustering method. ARM method is a method to find association rules that meet minimum support and minimum confidence. The algorithm used is Apriori. While clustering using Simple Expectation-Maximization (EM-clustering) algorithm. Simple EM is a model-based algorithm that searches for maximum likelihood estimation in the probability model. The variables analyzed were student achievement index, province of the students, and type of high school. The analysis is done using WEKA. Research begins with the collection of data from the primary source of the Biro Administrasi Akademik (BAA) Universitas Muhammadiyah Malang (UMM). Then, we do the data cleaning and transformation. Analyzing process is done in two step. First, do a rule search using Apriori algorithm. The regulated parameters are the minimum support and minimum confidence value. Second, we use Simple EM algorithm for the clustering process. The experiments were conducted to find the clustering result with the largest log likelihood value. Based on the experiment, the method used successfully describes the characteristics based on the study period.</p>
topic masa studi
algoritma apriori
algoritma simple expectation maximization
data mining untuk pendidikan
weka
url https://ejournal.unida.gontor.ac.id/index.php/FIJ/article/view/1216
work_keys_str_mv AT gitaindahmarthasari implementasiteknikdatamininguntukevaluasikinerjamahasiswaberdasarkandataakademik
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