Predicting High School Students' Academic Performance: A Comparative Study of Supervised Machine Learning Techniques
Fecha
2021Autor
Sanchez-Pozo N.N.
Mejia-Ordonez J.S.
Chamorro D.C.
Mayorca-Torres D.
Peluffo-Ordonez D.H.
Metadatos
Mostrar el registro completo del ítemResumen
The proliferation of mobile devices and the rapid development of information and communication technologies have revolutionized education. Educational data has evolved to be voluminously massive, broadly various, and produced at high velocity. Therefore, computerized techniques for integrating, processing, and transforming data into valuable knowledge have become necessary to improve internal academic processes. Specifically, educational data mining is an emerging discipline concerned with analyzing the massive amounts of academic data generated and stored by educational institutions. In this sense, machine learning algorithms aid decision-makers who are establishing strategies to improve students' learning experience and institutional effectiveness by revealing hidden patterns in academic performance. Thus, this paper describes our comparative study of machine learning techniques to predict academic performance. We selected the features that best fit the discovery of patterns in the academic performance of high school students, resulting in a balance between accuracy and interpretability. We implemented six supervised learning algorithms for pattern recognition: Light Gradient Boosting Machine, Gradient Boosting, AdaBoost, Logistic Regression, Random Forest, and K-nearest Neighbors. The experimental results showed that the Gradient Boosting (Gbc) algorithm achieved the highest accuracy (96.77%), superior to other classification techniques considered. © 2021 IEEE.
Colecciones
- Artículos Scopus [165]
Descripción
UNIVERSIDAD MARIANA
- Calle 18 No. 34-104 Pasto (N)
- (057) + 7244460 - Cel 3127306850
- informacion@umariana.edu.co
- NIT: 800092198-5
- Código SNIES: 1720
- Res. 1362 del 3 de febrero de 1983
NORMATIVIDAD INSTITUCIONAL
PROGRAMAS DE ESTUDIO
Para la recepción de notificaciones judiciales se encuentra habilitada la cuenta de correo electronico notificacionesjudiciales@umariana.edu.co
CONVOCATORIASINSCRIPCIÓN DE HOJAS DE VIDAGESTIÓN DEL TALENTO HUMANO
POLÍTICA DE PROTECCIÓN DE DATOS PERSONALESCONDICIONES DE USO U TÉRMINOS LEGALESRÉGIMEN TRIBUTARIO ESPECIAL 2021
Copyright Universidad Mariana
Tecnología implementada por