Helping university students to choose elective courses by using a hybrid multi-criteria recommendation system with genetic optimization
Author
Esteban, Aurora
Zafra Gómez, Amelia
Romero Morales, C.
Publisher
ElsevierDate
2020Subject
Recommendation systemCourse recommendation
Hybrid multi-criteria filtering
Genetic algorithm
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Show full item recordAbstract
The wide availability of specific courses together with the flexibility of academic plans in university
studies reveal the importance of Recommendation Systems (RSs) in this area. These systems appear
as tools that help students to choose courses that suit to their personal interests and their academic
performance.
This paper presents a hybrid RS that combines Collaborative Filtering (CF) and Content-based
Filtering (CBF) using multiple criteria related both to student and course information to recommend the
most suitable courses to the students. A Genetic Algorithm (GA) has been developed to automatically
discover the optimal RS configuration which include both the most relevant criteria and the configuration
of the rest of parameters. The experimental study has used real information of Computer Science
Degree of University of Cordoba (Spain) including information gathered from students during three
academic years, counting on 2500 entries of 95 students and 63 courses. Experimental results show a
study of the most relevant criteria for the course recommendation, the importance of using a hybrid
model that combines both student information and course information to increase the reliability of
the recommendations as well as an excellent performance compared to previous models.