2023
DOI: 10.33395/sinkron.v8i4.12629
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Comparison of NB and SVM in Sentiment Analysis of Cyberbullying using Feature Selection

Selamet Riadi,
Ema Utami,
Ainul Yaqin

Abstract: In the past few decades, the internet has become an inseparable part of human life. It provides ease of access and permeates almost every aspect of human existence. One of the internet platforms that is widely used by people around the world is social media. Apart from being spoiled with the convenience and efficiency offered by social media to support daily life, it has gained popularity among a wide audience. This has positive implications when utilized effectively, but it cannot be denied that there are neg… Show more

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Cited by 2 publications
(2 citation statements)
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References 14 publications
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“…Naive Bayes adalah salah satu metode klasifikasi yang populer dan digunakan secara luas. Naive Bayes merupakan metode yang sederhana untuk klasifikasi berbasis probabilitas yang menghitung serangkaian kemungkinan dengan menjumlahkan frekuensi dan kombinasi nilai dari kumpulan data yang diberikan [16]. Berikut adalah rumus dari algoritma ini.…”
Section: Naïve Bayes Classifierunclassified
“…Naive Bayes adalah salah satu metode klasifikasi yang populer dan digunakan secara luas. Naive Bayes merupakan metode yang sederhana untuk klasifikasi berbasis probabilitas yang menghitung serangkaian kemungkinan dengan menjumlahkan frekuensi dan kombinasi nilai dari kumpulan data yang diberikan [16]. Berikut adalah rumus dari algoritma ini.…”
Section: Naïve Bayes Classifierunclassified
“…Therefore, it is necessary to select relevant features from the dataset so that the performance and efficiency of machine learning work have a significant impact. The application of feature selection can improve the performance of the algorithm in carrying out classification (Riadi, Utami, & Yaqin, 2023). Feature selection is also useful in terms of simplifying training data (Wardhani & Lhaksmana, 2022).…”
Section: Introductionmentioning
confidence: 99%