Development of Mobile-Interfaced Machine Learning-Based Predictive Models for Improving Students Performance in Programming Courses
Temitayo Matthew Fagbola, Ibrahim Adepoju Adeyanju, Olatayo Olaniyan,, Adebimpe Esan, Bolaji Omodunbi, Ayodele Oloyede, Funmilola Egbetola

TL;DR
This paper develops mobile-interfaced machine learning models, specifically using M5P Decision Tree and Linear Regression Classifier, to predict and improve student performance in programming courses by analyzing various influencing factors.
Contribution
It introduces a variable-based LRC model that effectively predicts student performance and identifies key factors affecting outcomes in programming education.
Findings
LRC model achieved the best predictive accuracy among tested models.
Student attitude and lecturer influence significantly affect performance.
Factors like power supply and facilities impact student success.
Abstract
Student performance modelling (SPM) is a critical step to assessing and improving students performances in their learning discourse. However, most existing SPM are based on statistical approaches, which on one hand are based on probability, depicting that results are based on estimation; and on the other hand, actual influences of hidden factors that are peculiar to students, lecturers, learning environment and the family, together with their overall effect on student performance have not been exhaustively investigated. In this paper, Student Performance Models (SPM) for improving students performance in programming courses were developed using M5P Decision Tree (MDT) and Linear Regression Classifier (LRC). The data used was gathered using a structured questionnaire from 295 students in 200 and 300 levels of study who offered Web programming, C or JAVA at Federal University, Oye-Ekiti,…
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Taxonomy
TopicsOnline Learning and Analytics · Online and Blended Learning · Innovations in Educational Methods
