Predicción Temprana del Abandono y Desempeño en el Examen Final en una Asignatura de Estadística en Línea
Date
2020Abstract
Higher education students who either do
not complete the courses they have enrolled on or
interrupt their studies indefinitely remain a major
concern for practitioners and researchers. Within each
course, early prediction of student dropout helps
teachers to intervene in time to reduce dropout rates.
Early prediction of course achievement helps teachers
suggest new learning materials aimed at preventing atrisk students from failing or not completing the course.
Several machine learning techniques have been used to
classify or predict at-risk students, including tree-based
methods, which, though not the best performers, are
easy to interpret. This study presents two procedures for
identifying at-risk students (dropout-prone and nonachievers) early on in an online university statistics
course. These enable us to understand how classifiers
work. We found that student dropout and course
performance prediction was only determined by their
performance in the first half of the formative quizzes.
Nevertheless, other elements of participation on the
virtual campus were initially considered. The classifiers
will serve as a reference for intervention, despite their
moderate performance metrics.