Automated monitoring of human–computer interaction for assessing teachers’ digital competence based on LMS data extraction
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Fecha de publicación
2024-05-23ISSN
1424-8220
Resumen
The fast-paced evolution of technology has compelled the digitalization of education, requiring educators to interact with computers and develop digital competencies relevant to the teaching–learning process. This need has prompted various organizations to define frameworks for assessing digital competency emphasizing teachers’ interaction with computer technologies in education. Different authors have presented assessment methods for teachers’ digital competence based on the video analysis of recorded classes using sensors such as cameras, microphones, or electroencephalograms. The main limitation of these solutions is the large number of resources they require, making it difficult to assess large numbers of teachers in resource-constrained environments. This article proposes the automation of teachers’ digital competence evaluation process based on monitoring metrics obtained from teachers’ interaction with a Learning Management System (LMS). Based on the Digital Competence Framework for Educators (DigCompEdu), indicators were defined and extracted that allow automatic measurement of a teacher’s competency level. A tool was designed and implemented to conduct a successful proof of concept capable of automating the evaluation process of all university faculty, including 987 lecturers from different fields of knowledge. Results obtained allow for drawing conclusions on technological adoption according to the teacher’s profile and planning educational actions to improve these competencies.
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Artículo
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Versión publicada
Lengua
Inglés
Materias (CDU)
004 - Informática
378 - Enseñanza superior. Universidades
62 - Ingeniería. Tecnología
68 - Industrias, oficios y comercio de artículos acabados. Tecnología cibernética y automática
Palabras clave
Páginas
19 p.
Publicado por
MDPI
Publicado en
Sensors, 2024. Vol. 24, 11, 3326
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