Hoax identification of Indonesian tweeters using ensemble classifier.

Fake information, better known as hoaxes, is often found on social media. Currently, social media is not only used to make friends or socialize with friends online, but some use it to spread hate speech and false information. Hoaxes are very dangerous in social life, especially in countries with lar...

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Main Authors: Syaifuddiin, Gus Nanang, Arifin, Rizal, Desriyanti, Desriyanti, Buntoro, Ghulam Asrofi, Rosyidin, Zulkham Umar, Pratama, Ridwan Yudha, Selamat, Ali
Format: Article
Language:English
Published: Iranian Academic Center for Education, Culture and Research 2023
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Online Access:http://eprints.utm.my/106757/1/AliSelamat2023_HoaxIdentificationofIndonesianTweetersUsingEnsembleClassifier.pdf
http://eprints.utm.my/106757/
http://jist.ir/Article/33532
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Institution: Universiti Teknologi Malaysia
Language: English
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spelling my.utm.1067572024-07-28T06:27:24Z http://eprints.utm.my/106757/ Hoax identification of Indonesian tweeters using ensemble classifier. Syaifuddiin, Gus Nanang Arifin, Rizal Desriyanti, Desriyanti Buntoro, Ghulam Asrofi Rosyidin, Zulkham Umar Pratama, Ridwan Yudha Selamat, Ali TA Engineering (General). Civil engineering (General) Fake information, better known as hoaxes, is often found on social media. Currently, social media is not only used to make friends or socialize with friends online, but some use it to spread hate speech and false information. Hoaxes are very dangerous in social life, especially in countries with large populations and ethnically diverse cultures, such as Indonesia. Although there have been many studies on detecting false information, the accuracy and efficiency still need to be improved. To help prevent the spread of these hoaxes, we built a model to identify false information in Indonesian using an ensemble classifier that combines the n-gram method, term frequency-inverse document frequency, and passive-aggressive classifier method. The evaluation process was carried out using 5000 samples from Twitter social media accounts in this study. The testing process is carried out using four schemes by dividing the dataset into training and test data based on the ratios of 90:10, 80:20, 70:30, and 60:40. The inspection results show that our software can accurately detect hoaxes at 91.8%. We also found an increase in the accuracy and precision of hoax detection testing using the proposed method compared to several previous studies. The results show that our proposed method can be developed and used in detecting hoaxes in Indonesian on various social media platforms. Iranian Academic Center for Education, Culture and Research 2023-06 Article PeerReviewed application/pdf en http://eprints.utm.my/106757/1/AliSelamat2023_HoaxIdentificationofIndonesianTweetersUsingEnsembleClassifier.pdf Syaifuddiin, Gus Nanang and Arifin, Rizal and Desriyanti, Desriyanti and Buntoro, Ghulam Asrofi and Rosyidin, Zulkham Umar and Pratama, Ridwan Yudha and Selamat, Ali (2023) Hoax identification of Indonesian tweeters using ensemble classifier. Journal of Information Systems and Telecommunication, 11 (42). pp. 94-101. ISSN 2322-1437 http://jist.ir/Article/33532 DOI:10.52547/JIST.33532.11.42.94
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
language English
topic TA Engineering (General). Civil engineering (General)
spellingShingle TA Engineering (General). Civil engineering (General)
Syaifuddiin, Gus Nanang
Arifin, Rizal
Desriyanti, Desriyanti
Buntoro, Ghulam Asrofi
Rosyidin, Zulkham Umar
Pratama, Ridwan Yudha
Selamat, Ali
Hoax identification of Indonesian tweeters using ensemble classifier.
description Fake information, better known as hoaxes, is often found on social media. Currently, social media is not only used to make friends or socialize with friends online, but some use it to spread hate speech and false information. Hoaxes are very dangerous in social life, especially in countries with large populations and ethnically diverse cultures, such as Indonesia. Although there have been many studies on detecting false information, the accuracy and efficiency still need to be improved. To help prevent the spread of these hoaxes, we built a model to identify false information in Indonesian using an ensemble classifier that combines the n-gram method, term frequency-inverse document frequency, and passive-aggressive classifier method. The evaluation process was carried out using 5000 samples from Twitter social media accounts in this study. The testing process is carried out using four schemes by dividing the dataset into training and test data based on the ratios of 90:10, 80:20, 70:30, and 60:40. The inspection results show that our software can accurately detect hoaxes at 91.8%. We also found an increase in the accuracy and precision of hoax detection testing using the proposed method compared to several previous studies. The results show that our proposed method can be developed and used in detecting hoaxes in Indonesian on various social media platforms.
format Article
author Syaifuddiin, Gus Nanang
Arifin, Rizal
Desriyanti, Desriyanti
Buntoro, Ghulam Asrofi
Rosyidin, Zulkham Umar
Pratama, Ridwan Yudha
Selamat, Ali
author_facet Syaifuddiin, Gus Nanang
Arifin, Rizal
Desriyanti, Desriyanti
Buntoro, Ghulam Asrofi
Rosyidin, Zulkham Umar
Pratama, Ridwan Yudha
Selamat, Ali
author_sort Syaifuddiin, Gus Nanang
title Hoax identification of Indonesian tweeters using ensemble classifier.
title_short Hoax identification of Indonesian tweeters using ensemble classifier.
title_full Hoax identification of Indonesian tweeters using ensemble classifier.
title_fullStr Hoax identification of Indonesian tweeters using ensemble classifier.
title_full_unstemmed Hoax identification of Indonesian tweeters using ensemble classifier.
title_sort hoax identification of indonesian tweeters using ensemble classifier.
publisher Iranian Academic Center for Education, Culture and Research
publishDate 2023
url http://eprints.utm.my/106757/1/AliSelamat2023_HoaxIdentificationofIndonesianTweetersUsingEnsembleClassifier.pdf
http://eprints.utm.my/106757/
http://jist.ir/Article/33532
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