IJMST
Vol. 1 No. 2 (2025): May

Data Analysis of Student Monitoring Using the K-Means Clustering Method

Sulistiani (Unknown)
Habibi , Ahmad Rizky Nusantara (Unknown)
Maulana , Adrian (Unknown)
Talirongan , Hidear (Unknown)
Abao , Anrom G. (Unknown)
Elmalky , Ahmed Mahmoud Zaki (Unknown)
Firdaus, Asno Azzawagama (Unknown)



Article Info

Publish Date
10 May 2025

Abstract

This study aims to group student monitoring data by focusing on two main variables, namely anxiety level and mood score, using the K-Means Clustering method. The research data was obtained from the Kaggle platform, which contains 1000 rows of data with nine attributes, including Student ID, Date, Class Time, Attendance Status, Stress Level, Sleep Hours, Anxiety Level, Mood Score, and Risk Level. The research process involved several stages, from problem identification, data collection, data cleaning and preprocessing, to the application of the K-Means algorithm. The analysis results showed that the data could be divided into two main groups: Cluster 1 consists of students with low to moderate anxiety levels and high mood scores, while Cluster 2 includes students with high anxiety and low mood scores. These findings provide relevant information for schools or campuses to design more effective psychological support and emotional monitoring programs. Additionally, this clustering method can serve as a foundation for developing an early detection system for psychological issues among students.

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Journal Info

Abbrev

ijmst

Publisher

Subject

Computer Science & IT

Description

Indonesian Journal of Modern Science and Technology is an academic Indonesian journal that specializes in a variety of modern research in science and technology relevant to development. The journal is designed as a platform for researchers, academics, and practitioners to share their latest ...