Detection of the spread of Covid-19 in Indonesia using K-Means Clustering Algorithm / Mohammad Yazdi Pusadan ... [et al.]

The purpose of this study is to apply the K-Means algorithm to perform clustering on COVID-19 data to determine the high spread of the virus in regions in Indonesia based on the frequency of the data. The data source used as training data comes from the official Kaggle website, the data used in this...

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Main Authors: Pusadan, Mohammad Yazdi, Rabbani, Mohammad Abied, Ardiansyah, Rizka, Ngemba, Hajra Rasmita
Format: Book Section
Language:English
Published: Faculty of Computer and Mathematical Sciences 2023
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Online Access:https://ir.uitm.edu.my/id/eprint/93953/1/93953.pdf
https://ir.uitm.edu.my/id/eprint/93953/
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spelling my.uitm.ir.939532024-05-02T03:15:38Z https://ir.uitm.edu.my/id/eprint/93953/ Detection of the spread of Covid-19 in Indonesia using K-Means Clustering Algorithm / Mohammad Yazdi Pusadan ... [et al.] Pusadan, Mohammad Yazdi Rabbani, Mohammad Abied Ardiansyah, Rizka Ngemba, Hajra Rasmita Integer programming The purpose of this study is to apply the K-Means algorithm to perform clustering on COVID-19 data to determine the high spread of the virus in regions in Indonesia based on the frequency of the data. The data source used as training data comes from the official Kaggle website, the data used in this study is data on the spread of the coronavirus collected from 2020 to 2021 with a total of 20,816 training data. The clustering process to obtain regional data that has a high spread of COVID-19 is based on the number of cases, death rates, and cure rates in provinces in Indonesia. The process of determining the performance of the cluster is continued based on the internal validity test based on the silhouette index. In this study, the method used is K-Means to perform clustering based on area grouping. The implementation of the K-Means Clustering algorithm for detecting the level of spread of COVID-19 data in Indonesia by using the parameter k=3 is quite good with areas in Indonesia that have a high the spread of COVID-19 and the results of the cluster validity test get silhouette values on O = (Total Case, Total Death) and P = (Total Case, Total Death, Total Recovered) have the same cluster value, which is 0.93 which means the cluster quality is very good. Faculty of Computer and Mathematical Sciences 2023 Book Section NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/93953/1/93953.pdf Detection of the spread of Covid-19 in Indonesia using K-Means Clustering Algorithm / Mohammad Yazdi Pusadan ... [et al.]. (2023) In: International Jasin Multimedia & Computer Science Invention and Innovation Exhibition (i-JaMCSIIX 2023). Faculty of Computer and Mathematical Sciences, Kampus Jasin, p. 41. (Submitted)
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Integer programming
spellingShingle Integer programming
Pusadan, Mohammad Yazdi
Rabbani, Mohammad Abied
Ardiansyah, Rizka
Ngemba, Hajra Rasmita
Detection of the spread of Covid-19 in Indonesia using K-Means Clustering Algorithm / Mohammad Yazdi Pusadan ... [et al.]
description The purpose of this study is to apply the K-Means algorithm to perform clustering on COVID-19 data to determine the high spread of the virus in regions in Indonesia based on the frequency of the data. The data source used as training data comes from the official Kaggle website, the data used in this study is data on the spread of the coronavirus collected from 2020 to 2021 with a total of 20,816 training data. The clustering process to obtain regional data that has a high spread of COVID-19 is based on the number of cases, death rates, and cure rates in provinces in Indonesia. The process of determining the performance of the cluster is continued based on the internal validity test based on the silhouette index. In this study, the method used is K-Means to perform clustering based on area grouping. The implementation of the K-Means Clustering algorithm for detecting the level of spread of COVID-19 data in Indonesia by using the parameter k=3 is quite good with areas in Indonesia that have a high the spread of COVID-19 and the results of the cluster validity test get silhouette values on O = (Total Case, Total Death) and P = (Total Case, Total Death, Total Recovered) have the same cluster value, which is 0.93 which means the cluster quality is very good.
format Book Section
author Pusadan, Mohammad Yazdi
Rabbani, Mohammad Abied
Ardiansyah, Rizka
Ngemba, Hajra Rasmita
author_facet Pusadan, Mohammad Yazdi
Rabbani, Mohammad Abied
Ardiansyah, Rizka
Ngemba, Hajra Rasmita
author_sort Pusadan, Mohammad Yazdi
title Detection of the spread of Covid-19 in Indonesia using K-Means Clustering Algorithm / Mohammad Yazdi Pusadan ... [et al.]
title_short Detection of the spread of Covid-19 in Indonesia using K-Means Clustering Algorithm / Mohammad Yazdi Pusadan ... [et al.]
title_full Detection of the spread of Covid-19 in Indonesia using K-Means Clustering Algorithm / Mohammad Yazdi Pusadan ... [et al.]
title_fullStr Detection of the spread of Covid-19 in Indonesia using K-Means Clustering Algorithm / Mohammad Yazdi Pusadan ... [et al.]
title_full_unstemmed Detection of the spread of Covid-19 in Indonesia using K-Means Clustering Algorithm / Mohammad Yazdi Pusadan ... [et al.]
title_sort detection of the spread of covid-19 in indonesia using k-means clustering algorithm / mohammad yazdi pusadan ... [et al.]
publisher Faculty of Computer and Mathematical Sciences
publishDate 2023
url https://ir.uitm.edu.my/id/eprint/93953/1/93953.pdf
https://ir.uitm.edu.my/id/eprint/93953/
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score 13.214268