KLUSTERING TOPIK PADA KOLOM KOMENTAR INSTAGRAM TENTANG KABINET MERAH PUTIH MENGGUNAKAN METODE K-MEANS

Authors : Sefani Cahyo Auliya Rahayu; Ario Yudo Husodo; Ramaditia Dwiyansaputra
article cite 0 Year 2025
source: Jurnal Teknologi Informasi Komputer dan Aplikasinya (JTIKA )
Abstract

This research attempts to determine the primary themes that Indonesians talked on President Prabowo Subianto's "Merah Putih" cabinet by using clustering analysis of Instagram comments. Using crawling data from the Instagram platform with the hashtag #KabinetMerahPutih, comments were gathered using the K-Means Clustering approach. Prior to the data being analyzed to create five clusters, the cleaning and pre-processing procedure, which included tokenization with IndoBERT and dimensionality reduction using Principal Component Analysis (PCA), was able to greatly improve the clustering quality, with the Silhouette Coefficient value rising from 0.010 to 0.200. Out of 23.780 initial data, 9.320 clean data were processed for this investigation. The findings demonstrate that the K-Means algorithm can group comments according to pertinent themes and offer profound understanding of support more responsive public policy analysis.


Concepts :
Linguistics and Language Analysis
Multimedia Learning Systems
Islamic Finance and Communication
article cite 0 Year 2025 source Jurnal Teknologi Informasi Komputer dan Aplikasinya (JTIKA )
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