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Method for Quality Evaluation of Digital Learning Tools

Identifiers
URI: http://hdl.handle.net/20.500.12251/1484
ISSN: 23401117
ISBN: 9788461705573
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Author
Mora García, Raúl Tomás; Céspedes López, María Francisca; Pérez Sánchez, Vicente Raúl; Álvarez Canteli, Irina
Date
2014
Subject/s

Metodología didáctica

Herramientas educativas

Plataforma educativa

Evaluación de la calidad

Universidad de Alicante

Rendimiento académico

Digitalización

Unesco Subject/s

5801.05 Pedagogía Experimental

6303.03 Metodología

5801.03 Desarrollo del Programa de Estudios

5801.06 Evaluación de Alumnos

5801.07 Métodos Pedagógicos

Abstract

The students' overcrowding in classrooms and the offer of digital media courses imply the need of new learning objects in education, as these reusable electronic tools allow objective evaluation in large groups by using few resources. The aim of this research is a proposal for a massive assessment in the quality of digital learning tools used in the students' learning process, by using statistical methods (cluster analysis). This method facilitates the classification and identification of gaps within the assessment and self-learning instruments from different psychometric indicators. The research corresponds to a study case using a learning virtual platform (moodle) where different digital learning objects were implemented and used by students as tools for learning and assessment. Teachers analysed the results applied to objective evaluation and self-assessment tests, which determined whether they were properly designed learning activities and their discriminatory properties. In conclusion, the use of statistical methods massively detected failures or errors in the design of objective tests, allowing an important improvement in the quality and reuse of these resources

The students' overcrowding in classrooms and the offer of digital media courses imply the need of new learning objects in education, as these reusable electronic tools allow objective evaluation in large groups by using few resources. The aim of this research is a proposal for a massive assessment in the quality of digital learning tools used in the students' learning process, by using statistical methods (cluster analysis). This method facilitates the classification and identification of gaps within the assessment and self-learning instruments from different psychometric indicators. The research corresponds to a study case using a learning virtual platform (moodle) where different digital learning objects were implemented and used by students as tools for learning and assessment. Teachers analysed the results applied to objective evaluation and self-assessment tests, which determined whether they were properly designed learning activities and their discriminatory properties. In conclusion, the use of statistical methods massively detected failures or errors in the design of objective tests, allowing an important improvement in the quality and reuse of these resources

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