Discovering the Collaborative Filtering (CF) Recommender System for Resource Selection in a Moodle Learning Environment


Εξώφυλλο πρακτικών συνεδρίου
Δημοσιευμένα: Mar 19, 2024
Theodora Kouvara
Vassilios Verykios
Περίληψη

This paper investigates the feasibility and potential benefits of implementing a Collaborative Filtering (CF) Recommender System within a Moodle Learning Environment. With the rapid proliferation of e-learning platforms, the integration of sophisticated recommender systems is becoming increasingly critical to mitigate the challenges associated with resource discovery. The CF system capitalizes on the collective intelligence encapsulated in user interactions and preferences to provide personalized resource recommendations. This paper elucidates a comprehensive use case scenario of deploying user-based collaborative filtering algorithms within the Moodle infrastructure, with a specific emphasis on the memory-based process. Furthermore, the study delineates the potential implications of assimilating a CF system, including the facilitation of personalized learning, enhancement of user engagement, optimization of resource discovery, and promotion of inclusive learning. Future research trajectories encompass refining the underlying algorithms, addressing ethical and privacy considerations, amalgamating with other emergent technologies, assessing system effectiveness, and optimizing user interface and user experience.

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