Predicting open education competency level: A machine learning approach
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Ibarra-Vázquez, Gerardo; Ramírez-Montoya, María Soledad; Buenestado Fernández, Mariana
Fecha
2023Derechos
Attribution-NonCommercial-NoDerivatives 4.0 International
Publicado en
Heliyon, 2023, 9, e20597
Editorial
Elsevier
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Palabras clave
Open education
Competency level
Machine learning
Educational innovation
Higher education
Resumen/Abstract
This article aims to study open education competency data through machine learning models to
determine whether models can be built on decision rules using the features from the students?
perceptions and classify them by the level of competency. Data was collected from a convenience
sample of 326 students from 26 countries using the eOpen instrument. Based on a quantitative
research approach, we analyzed the eOpen data using two machine learning models considering
these findings: 1) derivation of decision rules from students? perceptions of knowledge, skills, and
attitudes or values related to open education to predict their competence level using Decision
Trees and Random Forests models, 2) analysis of the prediction errors in the machine learning
models to find bias, and 3) description of decision trees from the machine learning models to
understand the choices that both models made to predict the competency levels. The results
confirmed our hypothesis that the students? perceptions of their knowledge, skills, and attitudes or
values related to open education and its sub-competencies produced satisfactory data for building
machine learning models to predict the participants? competency levels.
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