Journal of Computer Science, Information Technology and Telecommunication Engineering (JCoSITTE)
Vol 7, No 1 (2026)

Academic Performance Prediction of PTIK Students through Machine Learning Models at Universitas Negeri Medan

Tansa Trisna Astono Putri (Universitas Negeri Medan)
Reni Rahmadani (Universitas Negeri Medan)
Rosma Siregar (Universitas Negeri Medan)
Hanapi Hasan (Universitas Negeri Medan)



Article Info

Publish Date
01 Apr 2026

Abstract

This study addressed the need for an effective approach to predicting student academic performance in higher education using data-driven methods. The study aimed to implement machine learning models to predict the academic performance of students in the Information and Communication Technology Education Study Program at Universitas Negeri Medan. A quantitative predictive design was employed using a dataset of 40 student records. Five classification models were tested, namely Logistic Regression, Decision Tree, Random Forest, Support Vector Machine, and Naïve Bayes. The results showed that all models produced strong predictive performance. Decision Tree achieved the highest accuracy at 93.1%, Logistic Regression produced the highest precision at 95.9% and the highest F1-score at 93.2%, while Support Vector Machine obtained the highest recall at 93.2%. These findings indicated that machine learning was feasible for predicting student academic performance in the study program. The study concluded that Logistic Regression provided the most balanced overall performance and had strong potential to support early academic intervention and data-based academic decision making in higher education.

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Journal Info

Abbrev

jcositte

Publisher

Subject

Computer Science & IT Control & Systems Engineering Decision Sciences, Operations Research & Management Electrical & Electronics Engineering

Description

ournal of Computer Science, Information Technology and Telecommunication Engineering (JCoSITTE) is being published in the months of March and September. It is academic, online, open access (abstract), peer reviewed international journal. The aim of the journal is to: Disseminate original, ...