Pembobotan TF-IDF pada Judul Penelitian Dosen Sebagai Dasar Klasifikasi Menggunakan Algoritma K-NN (Studi Kasus: Universitas Siliwangi)

The rapid and inexpensive development of digital storage media technology has led to an increase in the number of electronic documents stored on storage systems such as those in universities. Various academic  scientific works, such as articles , research reports, etc., are available in digitally ....

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Main Author: Agus Supriatman
Format: Article
Language:English
Published: University of Serambi Mekkah 2021-01-01
Series:Jurnal Serambi Engineering
Subjects:
Online Access:https://ojs.serambimekkah.ac.id/jse/article/view/2645
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author Agus Supriatman
author_facet Agus Supriatman
author_sort Agus Supriatman
collection DOAJ
description The rapid and inexpensive development of digital storage media technology has led to an increase in the number of electronic documents stored on storage systems such as those in universities. Various academic  scientific works, such as articles , research reports, etc., are available in digitally .  In addition to teaching activities, lecturers are also required to research to deepen their knowledge. With so  much research, of course, the resulting research will be very diverse,  which is why it is deemed necessary to have groupings related to the title or topic of the research carried out so that it can support the management of Siliwangi University in achieving its goals.   Using TF-IDF weighting in text mining on a research title data set, it is known that the optimal number of k in this study is k = 4 with an accuracy rate of 90.7% and the resulting number of each group is 115 scientific  titles, 142  social titles, and 98 educational titles  for a total of 355 research titles.
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spelling doaj.art-3a4329a8715e4d4ab1b157974e54f8f82022-12-22T04:21:52ZengUniversity of Serambi MekkahJurnal Serambi Engineering2528-35612541-19342021-01-016110.32672/jse.v6i1.26452246Pembobotan TF-IDF pada Judul Penelitian Dosen Sebagai Dasar Klasifikasi Menggunakan Algoritma K-NN (Studi Kasus: Universitas Siliwangi)Agus Supriatman0Program Studi Pascasarjana Magister Sistem Informasi, STMIK LIKMI, BandungThe rapid and inexpensive development of digital storage media technology has led to an increase in the number of electronic documents stored on storage systems such as those in universities. Various academic  scientific works, such as articles , research reports, etc., are available in digitally .  In addition to teaching activities, lecturers are also required to research to deepen their knowledge. With so  much research, of course, the resulting research will be very diverse,  which is why it is deemed necessary to have groupings related to the title or topic of the research carried out so that it can support the management of Siliwangi University in achieving its goals.   Using TF-IDF weighting in text mining on a research title data set, it is known that the optimal number of k in this study is k = 4 with an accuracy rate of 90.7% and the resulting number of each group is 115 scientific  titles, 142  social titles, and 98 educational titles  for a total of 355 research titles.https://ojs.serambimekkah.ac.id/jse/article/view/2645research, classification, k-nn, tf-idf, text mining
spellingShingle Agus Supriatman
Pembobotan TF-IDF pada Judul Penelitian Dosen Sebagai Dasar Klasifikasi Menggunakan Algoritma K-NN (Studi Kasus: Universitas Siliwangi)
Jurnal Serambi Engineering
research, classification, k-nn, tf-idf, text mining
title Pembobotan TF-IDF pada Judul Penelitian Dosen Sebagai Dasar Klasifikasi Menggunakan Algoritma K-NN (Studi Kasus: Universitas Siliwangi)
title_full Pembobotan TF-IDF pada Judul Penelitian Dosen Sebagai Dasar Klasifikasi Menggunakan Algoritma K-NN (Studi Kasus: Universitas Siliwangi)
title_fullStr Pembobotan TF-IDF pada Judul Penelitian Dosen Sebagai Dasar Klasifikasi Menggunakan Algoritma K-NN (Studi Kasus: Universitas Siliwangi)
title_full_unstemmed Pembobotan TF-IDF pada Judul Penelitian Dosen Sebagai Dasar Klasifikasi Menggunakan Algoritma K-NN (Studi Kasus: Universitas Siliwangi)
title_short Pembobotan TF-IDF pada Judul Penelitian Dosen Sebagai Dasar Klasifikasi Menggunakan Algoritma K-NN (Studi Kasus: Universitas Siliwangi)
title_sort pembobotan tf idf pada judul penelitian dosen sebagai dasar klasifikasi menggunakan algoritma k nn studi kasus universitas siliwangi
topic research, classification, k-nn, tf-idf, text mining
url https://ojs.serambimekkah.ac.id/jse/article/view/2645
work_keys_str_mv AT agussupriatman pembobotantfidfpadajudulpenelitiandosensebagaidasarklasifikasimenggunakanalgoritmaknnstudikasusuniversitassiliwangi