Competence-based recommender systems: a systematic literature review |
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Authors: | Hector Yago Julia Clemente Daniel Rodriguez |
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Affiliation: | 1. Computer Engineering, University of Alcala, Alcalá de Henares, Madrid, Spain;2. Computer Science Department, Universidad de Alcala, Alcalá de Henares, Madrid, Spainhector.yago@uah.es;4. Computer Science Department, Universidad de Alcala, Alcalá de Henares, Madrid, Spain |
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Abstract: | ABSTRACTCompetence-based learning is increasingly widespread in many institutions since it provides flexibility, facilitates the self-learning and brings the academic and professional worlds closer together. Thus, the competence-based recommender systems emerged taking the advantages of competences to offer suggestions (performance of a learning experience, assistance of an expert or recommendation of a learning resource) to the user (learner or instructor). The objective of this work is to conduct a new Systematic Literature Review (SLR) concerning competence-based recommender systems to analyse in relation to their nature and assessment of competences an others key factors that provide more flexible and exhaustive recommendations. To do so, a SLR research methodology was followed in which 25 competence-based recommender systems related to learning or instruction environments were classified according to multiple criteria. We evaluate the role of competences in these proposals and enumerate the emerging challenges. Also a critical analysis of current proposals is carried out to determine their strengths and weakness. Finally, future research paths to be explored are grouped around two main axes closely interlinked; first about the typical challenges related to recommender systems and second, concerning ambitious emerging challenges. |
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Keywords: | Recommender system systematic literature review competence-based learning adaptive learning emerging challenges |
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