Search for collections on University of Merdeka Malang Repository

Klasterisasi Komentar Cyberbullying Masyarakat di Instagram berdasarkan K-Means Clustering

Ramadhan, Viry Puspaning and Namung, Giasinta Mareskoti (2023) Klasterisasi Komentar Cyberbullying Masyarakat di Instagram berdasarkan K-Means Clustering. J-Intech: Journal of Information and Technology. pp. 32-39. ISSN P-ISSN: 2303-1425; E-ISSN: 2580-720X

[thumbnail of Klasterisasi Komentar Cyberbullying.pdf]
Preview
Text
Klasterisasi Komentar Cyberbullying.pdf

Download (308kB) | Preview
[thumbnail of HASIL CEK PLAGIASI_Klasterisasi Komentar Cyberbullying Masyarakat di Instagram.pdf]
Preview
Text
HASIL CEK PLAGIASI_Klasterisasi Komentar Cyberbullying Masyarakat di Instagram.pdf

Download (1MB) | Preview

Abstract

Cyberbullying has become a serious problem on social media platforms like Instagram. In an effort to overcome this problem, this study aims to classify cyberbullying comments made by Instagram users. The method used in this study is K-Means Clustering, which is a grouping technique commonly used in data analysis. The comment data collected from Instagram is then analyzed using the K-Means Clustering algorithm to identify patterns and groups of
similar comments. The findings from this study can provide a better understanding of the types and characteristics of cyberbullying comments that often appear on Instagram. By knowing groups of similar comments, prevention
and response measures can be designed more effectively. In addition, the results of clustering can also help in the development of automatic detection algorithms to identify cyberbullying comments on social media platforms. Based on the evaluation carried out on the clustering results with a silhouette score = 0.690152, namely in cluster C1, which is a negative cluster. So, the most dominant cyberbullying comments are negative comments.

Item Type: Article
Additional Information: Nama : Viry Puspaning Ramadhan NIDN :
Uncontrolled Keywords: Sentiment analysis, K-Means clustering, cyberbullying, social media
Divisions: Fakultas Teknologi Informasi > S1 Sistem Informasi
Depositing User: Surya Dannie
Date Deposited: 28 Nov 2023 03:16
Last Modified: 28 Nov 2023 03:16
URI: https://eprints.unmer.ac.id/id/eprint/3728

Actions (login required)

View Item View Item