Using Machine Learning models to predict the on-time graduation status of students

Authors

  • Nguyễn Văn Thủy https://hvnh.edu.vn/tapchi/vi/tap-chi-moi-phat-hanh/so-255-thang-82023-10870.html

Keywords:

Predicting student learning outcomes, Machine learning, Deep learning, artificial intelligence.

Abstract

The study aims to perform optimal Machine Learning model selection to predict the on-time
graduation status of students. By using the dataset of students majoring in Banking faculty from the Banking
Academy during the period of 2010-2020 through Machine Learning models such as Logistic Regression,
K-Nearest Neighbors, Decision Tree, Random Forest, Support Vector Machine, XGBoost, and CatBoost, the
study has chosen Random Forest as the optimal model. The research has identified 2 attributes: Academic
processing information and Grade Point Average (GPA) of semesters 1 through 4 have a strong impact on
the ability of students to graduate on time or late, and proposed some recommendations to help the school
provide solutions to improve the graduation rate of students.

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Published

2023-08-23

Issue

Section

Bài viết