2023
DOI: 10.33395/sinkron.v8i1.12063
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Sentiment Analysis of Flood Disaster Management in Jakarta on Twitter Using Support Vector Machines

Abstract: Floods can cause negative impacts in various aspects, starting from economic, social, to health aspects. Even quoted from the site gis.bnpb.go.id, during 2022, there have been 1031 cases of flood disasters in Indonesia. Meanwhile in Jakarta, in 2022 there have been 14 cases of floods that caused hundreds of people to lose their homes. Several approaches can be taken to determine public opinion about flooding, one of which is text mining with an analysis of community sentiment. Sentiment analysis aims to determ… Show more

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Cited by 10 publications
(4 citation statements)
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“…KNN is very effective for datasets that have a small number of dimensions (features), but can become less efficient as the number of dimensions increases due to the complexity of calculating the distance between data points (Hermawan & Prianggono, 2023) (Triani, Dar, & Yanris, 2023). KNN does not require a learning model in the initial phase, but requires more time in the testing phase because it needs to calculate the distance from new data points to all other data points that already exist in the dataset (A. W. Sari, Hermanto, & Defriani, 2023). This method is widely used in various practical applications such as product recommendations, document classification, and pattern recognition (Zai, Sirait, Nainggolan, Sihombing, & Banjarnahor, 2023).…”
Section: Literature Reviewmentioning
confidence: 99%
“…KNN is very effective for datasets that have a small number of dimensions (features), but can become less efficient as the number of dimensions increases due to the complexity of calculating the distance between data points (Hermawan & Prianggono, 2023) (Triani, Dar, & Yanris, 2023). KNN does not require a learning model in the initial phase, but requires more time in the testing phase because it needs to calculate the distance from new data points to all other data points that already exist in the dataset (A. W. Sari, Hermanto, & Defriani, 2023). This method is widely used in various practical applications such as product recommendations, document classification, and pattern recognition (Zai, Sirait, Nainggolan, Sihombing, & Banjarnahor, 2023).…”
Section: Literature Reviewmentioning
confidence: 99%
“…Pada penelitian lainnya, Saddam dkk. melakukan analisis persepsi masyarakat terhadap penanganan banjir di DKI Jakarta menggunakan metode Support Vector Machine (SVM) [7].…”
Section: Pendahuluanunclassified
“…Pengujian dengan komposisi data training dan testing 70:30 menghasilkan nilai akurasi sebesar 90,60%. Metode Naïve Bayes memang banyak digunakan dalam berbagai penelitian analisis sentimen pada data media sosial, seperti analisis sentimen terhadap manajemen bencana [7], penyelenggaraan MotoGP [8], komentar pada grup Facebook [9], dan penyelenggaraan Pilkada [10]. Selain itu, metode SVM juga cukup populer digunakan seperti untuk analisis sentimen terkait transportasi umum [11] dan kebijakan PSBB [12].…”
Section: Pendahuluanunclassified