An Approach for Personalized Recommendation of Educational Materials through Content-Based Filtering in Virtual Learning Environments

Authors

DOI:

https://doi.org/10.5753/rbie.2023.3292

Keywords:

Adaptive Systems, Recommendation, Personalized Learning

Abstract

The Adaptive and Intelligent Educational Systems area is constantly evolving and aims to create personalized learning environments through the application of recent technologies, including Artificial Intelligence techniques, combined with pedagogical theories. This work aims to contribute to the area of AI in education, using an approach that combines Semantic Web technologies and a bio-inspired algorithm to perform personalized recommendation of learning objects through content-based filtering.In contrast to other approaches, this study combines repositories of Virtual Learning Environments (VLE) with materials available on the Web (YouTube and Wikipedia) to provide educational resources in diverse formats on a specific topic. Web materials are retrieved and structured as learning objects. The approach was tested in the Classroom eXperience (CX) VLE, and an extension resource was also created for Moodle. Experiments were carried out to test the approach. One of the experiments aimed to analyze students' opinions regarding personalized recommendation. Students positively evaluated recommendations that considered their knowledge level and offered additional materials on the topic. Another experiment considered three different recommendation processes to observe students' preferences. Recommendations considered the use and non-use of learning styles in the process. The overall average rating was relatively better when ignoring the use of learning styles, but there was no statistical significance.

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Published

2023-10-11

How to Cite

PEREIRA JÚNIOR, C. X.; ARAÚJO, R. D.; DORÇA, F. A. An Approach for Personalized Recommendation of Educational Materials through Content-Based Filtering in Virtual Learning Environments. Brazilian Journal of Computers in Education, [S. l.], v. 31, p. 731–758, 2023. DOI: 10.5753/rbie.2023.3292. Disponível em: https://sol.sbc.org.br/journals/index.php/rbie/article/view/3292. Acesso em: 14 may. 2024.

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