Enhancing Personalized Educational Content Recommendation through Cosine Similarity-Based Knowledge Graphs and Contextual Signals

Author:

Troussas Christos1ORCID,Krouska Akrivi1ORCID,Tselenti Panagiota1ORCID,Kardaras Dimitrios K.2,Barbounaki Stavroula3

Affiliation:

1. Department of Informatics and Computer Engineering, University of West Attica, 122 43 Egaleo, Greece

2. Business Informatics Lab, Department of Business Administration, School of Business, Athens University of Economics and Business, 104 34 Athens, Greece

3. Department of Midwifery, University of West Attica, 122 43 Egaleo, Greece

Abstract

The extensive pool of content within educational software platforms can often overwhelm learners, leaving them uncertain about what materials to engage with. In this context, recommender systems offer significant support by customizing the content delivered to learners, alleviating the confusion and enhancing the learning experience. To this end, this paper presents a novel approach for recommending adequate educational content to learners via the use of knowledge graphs. In our approach, the knowledge graph encompasses learners, educational entities, and relationships among them, creating an interconnected framework that drives personalized e-learning content recommendations. Moreover, the presented knowledge graph has been enriched with contextual signals referring to various learners’ characteristics, such as prior knowledge level, learning style, and current learning goals. To refine the recommendation process, the cosine similarity technique was employed to quantify the likeness between a learner’s preferences and the attributes of educational entities within the knowledge graph. The above methodology was incorporated in an intelligent tutoring system for learning the programming language Java to recommend content to learners. The software was evaluated with highly promising results.

Publisher

MDPI AG

Subject

Information Systems

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