Knowledge graphs (KGs) are widely used in the education domain to offer learners a semantic representation of domain concepts from educational content and their relations, termed as educational knowledge graphs (EduKGs). Previous studies on EduKGs have incorporated concept extraction and weighting modules. However, these studies face limitations in terms of accuracy and performance. To address these challenges, this work aims to improve the concept extraction and weighting mechanisms by leveraging state-of-the-art word and sentence embedding techniques. Concretely, we enhance the SIFRank keyphrase extraction method by using SqueezeBERT and we propose a concept-weighting strategy based on SBERT. Furthermore, we conduct extensive experiments on different datasets, demonstrating significant improvements over several state-of-the-art keyphrase extraction and concept-weighting techniques.
Automatic Construction of Educational Knowledge Graphs: A Word Embedding-Based Approach
Qurat Ul Ain,Mohamed Amine Chatti,Komlan Gluck Charles Bakar,Shoeb Joarder,R. Alatrash
Published 2023 in Inf.
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- Publication year
2023
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Inf.
- Publication date
2023-09-27
- Fields of study
Computer Science, Education
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