Improving student test score prediction results using Machine Learning with R support

  • Lan Anh, Nguyen Thi
Keywords: Prediction of student performance, machine learning, imbalanced data

Abstract

Predicting final exam scores of students is important to forecast student accomplishment in the learning process and functioned to help the students who might fail. This paper presents a method that based on machine learning techniques to enhance prediction results by handling the imbalanced data issues. The experimental results achieves the highest performance with 43.70% of Precision, 45.1% of Recall and 44.04% of F1.

Tác giả

Lan Anh, Nguyen Thi

University of Education, Hue University

điểm /   đánh giá
Published
2024-07-15
Section
EQUIPMENT WITH NEW GENERAL EDUCATION PROGRAM