2023
DOI: 10.47002/metik.v7i2.583
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Analisis DistilBERT dengan Support Vector Machine (SVM) untuk Klasifikasi Ujaran Kebencian pada Sosial Media Twitter

Naufal Azmi Verdikha,
Reza Habid,
Asslia Johar Latipah

Abstract: Hate speech is a significant issue in content management on social media platforms. Effective classification of hate speech plays a crucial role in maintaining a safe social media environment, combating discrimination, and protecting users. This study evaluates a hate speech classification model using SVM with linear and polynomial kernels. The dataset used consists of labeled Indonesian-language tweets. The importance of developing an effective classification model to address hate speech has led to the utiliz… Show more

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“…Exploratory Data Analysis (EDA) involves analyzing the dataset initially by starting with deleting unused columns, and filling in missing values. Additionally, the Case Folding process is conducted, which involves converting all letters to lowercase, removing symbols, emojis, and repetitive words [16], and identifying and converting slang words into standard Indonesian words. These steps aim to clean the dataset to facilitate the preprocessing stage.…”
Section: System Implementationmentioning
confidence: 99%
“…Exploratory Data Analysis (EDA) involves analyzing the dataset initially by starting with deleting unused columns, and filling in missing values. Additionally, the Case Folding process is conducted, which involves converting all letters to lowercase, removing symbols, emojis, and repetitive words [16], and identifying and converting slang words into standard Indonesian words. These steps aim to clean the dataset to facilitate the preprocessing stage.…”
Section: System Implementationmentioning
confidence: 99%