An Approach to Integrating Courses' Relationship into Predicting Student Performance

Huynh-Ly, Thanh-Nhan and Le, Huy-Thap and Nguyen, Thai-Nghe (2021) An Approach to Integrating Courses' Relationship into Predicting Student Performance. In: Current Topics on Mathematics and Computer Science Vol. 9. B P International, pp. 33-47. ISBN 978-93-91882-90-7

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Abstract

Predicting student learning performance to suggest courses is a vital role of an academic adviser in the Intelligent Tutoring System (ITS) as well as the university's E-learning system.Many different approaches, such as classification, regression, association rules, and recommender systems, have been used to solve this problem. Recently, using collaborative filtering in the recommender system, particularly the matrix factorization technique, to develop the courses' recommendation system was a measurable success.

Many breakthroughs have been made to increase prediction accuracy, such as leveraging student profiles, course features, or course relationships, but they have not yet been mined. This paper suggests a method for improving prediction accuracy by including course relationships into the course recommendation system. When we validate the published educational datasets, the experimental outcomes of the proposed approach are positive.

Item Type: Book Section
Subjects: Lib Research Guardians > Medical Science
Depositing User: Unnamed user with email support@lib.researchguardians.com
Date Deposited: 26 Oct 2023 04:49
Last Modified: 26 Oct 2023 04:49
URI: http://journal.edit4journal.com/id/eprint/1975

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