Identifikasi Komentar Spam Bahasa Indonesia pada Instagram Menggunakan Gated Recurrent Unit

Date
2023Author
Reksoraharjo, Jessica Elizabeth
Advisor(s)
Muchtar, Muhammad Anggia
Nababan, Erna Budhiarti
Metadata
Show full item recordAbstract
Instagram is a popular social media platform that has become a primary space for
users to interact and share information. Although Instagram provides a positive
environment for interaction, the surge in users has brought about new challenges, such
as an increase in disruptive spam comments. These spam comments not only disturb
user experiences but also pose risks of harmful link sharing that can adversely affect
users. To address this issue, this study employs an approach utilizing the Gated
Recurrent Unit model and fastText word embedding. Research outcomes demonstrate
the effectiveness of this model in detecting spam comments with an accuracy rate of
0.961. These findings suggest that the Gated Recurrent Unit method holds potential in
identifying and mitigating spam comments on Instagram.
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- Undergraduate Theses [765]