Analisis Pengelompokan Peraturan Kementerian dengan Menggunakan K-Means Clustering

Thousands Ministry Regulations are found in Indonesia shows that it is a big number. These regulations are intended to focus on various fields in order to be upheld in the public interest. It has recently been discovered that the numbers are increasing and some are no longer enforced. Clustering in...

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Main Authors: Resistania Anggita Putri, Nida Inayah Maghfirani, Galih Rendi Setyawan, Adam Achmad Rayhan, Nur Aini Rakhmawati
Format: Article
Language:English
Published: LPPM ISB Atma Luhur 2020-05-01
Series:Jurnal Sisfokom
Subjects:
Online Access:http://jurnal.atmaluhur.ac.id/index.php/sisfokom/article/view/817
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spelling doaj-bac7ee3d4a31493db3c7101e4c4e72fe2020-12-11T16:26:12ZengLPPM ISB Atma LuhurJurnal Sisfokom2301-79882581-05882020-05-019215215710.32736/sisfokom.v9i2.817539Analisis Pengelompokan Peraturan Kementerian dengan Menggunakan K-Means ClusteringResistania Anggita Putri0Nida Inayah Maghfirani1Galih Rendi Setyawan2Adam Achmad Rayhan3Nur Aini Rakhmawati4Institut Teknologi Sepuluh NopemberInstitut Teknologi Sepuluh NopemberInstitut Teknologi Sepuluh NopemberInstitut Teknologi Sepuluh NopemberInstitut Teknologi Sepuluh NopemberThousands Ministry Regulations are found in Indonesia shows that it is a big number. These regulations are intended to focus on various fields in order to be upheld in the public interest. It has recently been discovered that the numbers are increasing and some are no longer enforced. Clustering in data mining can be used to find out the focus of problems are often discussed at each ministry. The method that will be used for clustering ministry regulation data is the K-Means algorithm. K-Means is a non-hierarchical data clustering method partitions data into clusters so data that has the same characteristics will be grouped into one cluster and data that has different characteristics will be grouped into another cluster. This research was conducted by conducting data collection, data cleaning, data processing, and visualization of the results. The results of this paper are grouping the best ministerial regulations into four clusters that have an inertia value of 405.142786991133. Cluster 0 is a collection of regulations on the empowerment of children, women, and victims of violence. Cluster 1 is a collection of regulations on environmental policies in both flora and fauna. Cluster 2 is a collection of regulations relating to science and professionalism. Cluster 3 is a collection of regulations relating to the safety of the creative economy in the field of tourism.http://jurnal.atmaluhur.ac.id/index.php/sisfokom/article/view/817clusteringk-meansregulationsministry
collection DOAJ
language English
format Article
sources DOAJ
author Resistania Anggita Putri
Nida Inayah Maghfirani
Galih Rendi Setyawan
Adam Achmad Rayhan
Nur Aini Rakhmawati
spellingShingle Resistania Anggita Putri
Nida Inayah Maghfirani
Galih Rendi Setyawan
Adam Achmad Rayhan
Nur Aini Rakhmawati
Analisis Pengelompokan Peraturan Kementerian dengan Menggunakan K-Means Clustering
Jurnal Sisfokom
clustering
k-means
regulations
ministry
author_facet Resistania Anggita Putri
Nida Inayah Maghfirani
Galih Rendi Setyawan
Adam Achmad Rayhan
Nur Aini Rakhmawati
author_sort Resistania Anggita Putri
title Analisis Pengelompokan Peraturan Kementerian dengan Menggunakan K-Means Clustering
title_short Analisis Pengelompokan Peraturan Kementerian dengan Menggunakan K-Means Clustering
title_full Analisis Pengelompokan Peraturan Kementerian dengan Menggunakan K-Means Clustering
title_fullStr Analisis Pengelompokan Peraturan Kementerian dengan Menggunakan K-Means Clustering
title_full_unstemmed Analisis Pengelompokan Peraturan Kementerian dengan Menggunakan K-Means Clustering
title_sort analisis pengelompokan peraturan kementerian dengan menggunakan k-means clustering
publisher LPPM ISB Atma Luhur
series Jurnal Sisfokom
issn 2301-7988
2581-0588
publishDate 2020-05-01
description Thousands Ministry Regulations are found in Indonesia shows that it is a big number. These regulations are intended to focus on various fields in order to be upheld in the public interest. It has recently been discovered that the numbers are increasing and some are no longer enforced. Clustering in data mining can be used to find out the focus of problems are often discussed at each ministry. The method that will be used for clustering ministry regulation data is the K-Means algorithm. K-Means is a non-hierarchical data clustering method partitions data into clusters so data that has the same characteristics will be grouped into one cluster and data that has different characteristics will be grouped into another cluster. This research was conducted by conducting data collection, data cleaning, data processing, and visualization of the results. The results of this paper are grouping the best ministerial regulations into four clusters that have an inertia value of 405.142786991133. Cluster 0 is a collection of regulations on the empowerment of children, women, and victims of violence. Cluster 1 is a collection of regulations on environmental policies in both flora and fauna. Cluster 2 is a collection of regulations relating to science and professionalism. Cluster 3 is a collection of regulations relating to the safety of the creative economy in the field of tourism.
topic clustering
k-means
regulations
ministry
url http://jurnal.atmaluhur.ac.id/index.php/sisfokom/article/view/817
work_keys_str_mv AT resistaniaanggitaputri analisispengelompokanperaturankementeriandenganmenggunakankmeansclustering
AT nidainayahmaghfirani analisispengelompokanperaturankementeriandenganmenggunakankmeansclustering
AT galihrendisetyawan analisispengelompokanperaturankementeriandenganmenggunakankmeansclustering
AT adamachmadrayhan analisispengelompokanperaturankementeriandenganmenggunakankmeansclustering
AT nurainirakhmawati analisispengelompokanperaturankementeriandenganmenggunakankmeansclustering
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