PERANCANGAN FRAMEWORK DETEKSI HOAX PADA MEDIA SOSIAL TWITTER UNTUK SIBER POLRI
The development of information technology in Indonesia is growing rapidly. The 2018 Indonesian Internet Service Providers Association (APJII) survey explained that Indonesian internet users reached 171.17 million people or 64.8% of the total Indonesian population of 264.16 million people. Inte...
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id-itb.:545162021-03-18T10:31:20ZPERANCANGAN FRAMEWORK DETEKSI HOAX PADA MEDIA SOSIAL TWITTER UNTUK SIBER POLRI Hafif, Muhammad Indonesia Theses Framework, Detection, Social Media, and Hoax INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/54516 The development of information technology in Indonesia is growing rapidly. The 2018 Indonesian Internet Service Providers Association (APJII) survey explained that Indonesian internet users reached 171.17 million people or 64.8% of the total Indonesian population of 264.16 million people. Internet content (social media) most frequently visited by Indonesians is 50.7% Facebook, 17.8% Instagram, 15.1% Youtube, 1.7% Twitter, and 0.4% Linkedin. The negative impact of using social media is fake news or hoaxes. hoaxes that have a negative impact make people uneasy. The police need to be ready and pro-active in dealing with the threats caused by these hoaxes. Identification of hoax content has been carried out by the internet community who are members of the turnbackhoax.id site. The site is managed by MAFINDO (Indonesian anti hoax society). The method of identification or classification carried out on the turnbackhoax.id site is still done manually, so that if the information is growing, it will be difficult because more information is entered. Previous research on hoaxes was carried out by (Petkovic et al., 2005), (Vukovic et al., 2009), (Chen et al., 2014) and (Rasywir and Purwarianti, 2015), but this research is related to the hoax email domain and classification system experiments for hoax news using the method of Levenshtein Distance, Fuzzy Logic, Feed Forward Neural Network, Naïve Bayes, Support Vector Machine and C4.5 Algorithm. Previous hoax detection still has shortcomings related to not being able to detect and classify tweets that do not include news sites. So that in this study a new measure, measuring instrument and framework can be used by the Police, so that the Cyber Police can act more quickly in preventive efforts. text |
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The development of information technology in Indonesia is growing rapidly. The 2018
Indonesian Internet Service Providers Association (APJII) survey explained that Indonesian
internet users reached 171.17 million people or 64.8% of the total Indonesian population of
264.16 million people. Internet content (social media) most frequently visited by Indonesians
is 50.7% Facebook, 17.8% Instagram, 15.1% Youtube, 1.7% Twitter, and 0.4% Linkedin. The
negative impact of using social media is fake news or hoaxes. hoaxes that have a negative
impact make people uneasy. The police need to be ready and pro-active in dealing with the
threats caused by these hoaxes. Identification of hoax content has been carried out by the
internet community who are members of the turnbackhoax.id site. The site is managed by
MAFINDO (Indonesian anti hoax society).
The method of identification or classification carried out on the turnbackhoax.id site is still
done manually, so that if the information is growing, it will be difficult because more
information is entered. Previous research on hoaxes was carried out by (Petkovic et al., 2005),
(Vukovic et al., 2009), (Chen et al., 2014) and (Rasywir and Purwarianti, 2015), but this
research is related to the hoax email domain and classification system experiments for hoax
news using the method of Levenshtein Distance, Fuzzy Logic, Feed Forward Neural Network,
Naïve Bayes, Support Vector Machine and C4.5 Algorithm. Previous hoax detection still has
shortcomings related to not being able to detect and classify tweets that do not include news
sites. So that in this study a new measure, measuring instrument and framework can be used
by the Police, so that the Cyber Police can act more quickly in preventive efforts.
|
format |
Theses |
author |
Hafif, Muhammad |
spellingShingle |
Hafif, Muhammad PERANCANGAN FRAMEWORK DETEKSI HOAX PADA MEDIA SOSIAL TWITTER UNTUK SIBER POLRI |
author_facet |
Hafif, Muhammad |
author_sort |
Hafif, Muhammad |
title |
PERANCANGAN FRAMEWORK DETEKSI HOAX PADA MEDIA SOSIAL TWITTER UNTUK SIBER POLRI |
title_short |
PERANCANGAN FRAMEWORK DETEKSI HOAX PADA MEDIA SOSIAL TWITTER UNTUK SIBER POLRI |
title_full |
PERANCANGAN FRAMEWORK DETEKSI HOAX PADA MEDIA SOSIAL TWITTER UNTUK SIBER POLRI |
title_fullStr |
PERANCANGAN FRAMEWORK DETEKSI HOAX PADA MEDIA SOSIAL TWITTER UNTUK SIBER POLRI |
title_full_unstemmed |
PERANCANGAN FRAMEWORK DETEKSI HOAX PADA MEDIA SOSIAL TWITTER UNTUK SIBER POLRI |
title_sort |
perancangan framework deteksi hoax pada media sosial twitter untuk siber polri |
url |
https://digilib.itb.ac.id/gdl/view/54516 |
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1822001803488657408 |