Implementasi Model Fine-Tuning BERT dalam Deteksi Konten Judi Online di Media Sosial Twitter (Aplikasi X)
Implementation of BERT Fine-Tuning Model for Detecting Online Gambling Content on Social Media Platform X

Date
2025Author
Simanjuntak, Azriel Giantovani
Advisor(s)
Huzaifah, Ade Sarah
Nababan, Erna Budhiarti
Metadata
Show full item recordAbstract
The rapid growth of social media usage has had a significant impact on society,
particularly in terms of social interaction, information dissemination, and economic
activity. However, behind these benefits, social media has also become a platform for
the spread of harmful and unlawful content, including online gambling. Many users are
influenced by such content, especially on the X Application platform. Therefore, this
study aims to develop a web-based system capable of detecting online gambling-related
content in tweets using the IndoBERT language model through a fine-tuning approach.
The data used in this study were collected from Indonesian-language tweets related to
online gambling activity on the X Application (Twitter). A total of 2,498 tweets were
collected and divided into 70% training data (1,954 tweets) and 30% testing data (544
tweets). The evaluation results show that the model can identify online gambling and
non-gambling content with an accuracy of 91%, precision of 94.5%, recall of 97.1%,
and an F1-score of 95.3%.
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- Undergraduate Theses [858]