Vol. 12 No. 3 (2026): In Progress
Open Access
Peer Reviewed

Implementation System for Cluster Analysis and Data Sentiment Using the K-Means Method to Determine the Most Discussed Topics

Authors

Wanra Tarigan , Djoni , Thamrin , Lismardiana

DOI:

10.29303/jppipa.v12i3.14838

Published:

2026-03-25

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Abstract

The Community Activities Restrictions Enforcement (CARE) government rule, that is currently a matter of public concern, was implemented in 2021. Community Activities Restrictions Enforcement (CARE) highlights the community's pros and cons. Twitter and YouTube are social media that facilitate direct user expression. The material offered on social media platforms Twitter and YouTube is likewise quite diversified. Therefore, an automatic approach for topic detection is required, such as Mini Batch K-means Clustering, which facilitates user access to information. This study employs the Mini Batch method, which utilizes just a limited set of data for the clustering procedure. Based on testing with the Sum of Squared Error, this study's clustering results for tweet data including the phrase Community Activities Restrictions Enforcement (CARE) produced 12 cluster groups. The clustering results will be represented using Word Cloud, and the system will display the percentage of words based on Word Cloud.

Keywords:

Clustering Community Activities Restrictions Enforcement (CARE) Data sentiment K-Means

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Author Biographies

Wanra Tarigan, Universitas Mandiri Bina Prestasi

Author Origin : Indonesia

Djoni, Universitas Mikroskil

Author Origin : Indonesia

Thamrin, Institut Bisnis Informasi Teknologi dan Bisnis

Author Origin : Indonesia

Lismardiana, Universitas Mandiri Bina Prestasi

Author Origin : Indonesia

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How to Cite

Tarigan, W., Djoni, Thamrin, & Lismardiana. (2026). Implementation System for Cluster Analysis and Data Sentiment Using the K-Means Method to Determine the Most Discussed Topics. Jurnal Penelitian Pendidikan IPA, 12(3), 584–592. https://doi.org/10.29303/jppipa.v12i3.14838