Building Contextual Knowledge Graphs for Personalized Learning Recommendations Using Text Mining and Semantic Graph Completion

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Autoren

  • Hasan Abu-Rasheed
  • Mareike Dornhofer
  • C. Weber
  • Gabor Kismihok
  • Ulrike Buchmann
  • Madjid Fathi

Externe Organisationen

  • Universität Siegen
  • Technische Informationsbibliothek (TIB) Leibniz-Informationszentrum Technik und Naturwissenschaften und Universitätsbibliothek
Forschungs-netzwerk anzeigen

Details

OriginalspracheEnglisch
Titel des SammelwerksProceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023
Herausgeber/-innenMaiga Chang, Nian-Shing Chen, Rita Kuo, George Rudolph, Demetrios G Sampson, Ahmed Tlili
Herausgeber (Verlag)Institute of Electrical and Electronics Engineers Inc.
Seiten36-40
Seitenumfang5
ISBN (elektronisch)9798350300543
PublikationsstatusVeröffentlicht - 2023
Extern publiziertJa
Veranstaltung23rd IEEE International Conference on Advanced Learning Technologies, ICALT 2023 - Hybrid, Orem, USA / Vereinigte Staaten
Dauer: 10 Juli 202313 Juli 2023

Publikationsreihe

NameProceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023

Abstract

Modelling learning objects (LO) within their context enables the learner to advance from a basic, remembering-level, learning objective to a higher-order one, i.e., a level with an application- and analysis objective. While hierarchical data models are commonly used in digital learning platforms, using graph-based models enables representing the context of LOs in those platforms. This leads to a foundation for personalized recommendations of learning paths. In this paper, the transformation of hierarchical data models into knowledge graph (KG) models of LOs using text mining is introduced and evaluated. We utilize custom text mining pipelines to mine semantic relations between elements of an expert-curated hierarchical model. We evaluate the KG structure and relation extraction using graph quality-control metrics and the comparison of algorithmic semantic-similarities to expert-defined ones. The results show that the relations in the KG are semantically comparable to those defined by domain experts, and that the proposed KG improves representing and linking the contexts of LOs through increasing graph communities and betweenness centrality.

ASJC Scopus Sachgebiete

Zitieren

Building Contextual Knowledge Graphs for Personalized Learning Recommendations Using Text Mining and Semantic Graph Completion. / Abu-Rasheed, Hasan; Dornhofer, Mareike; Weber, C. et al.
Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023. Hrsg. / Maiga Chang; Nian-Shing Chen; Rita Kuo; George Rudolph; Demetrios G Sampson; Ahmed Tlili. Institute of Electrical and Electronics Engineers Inc., 2023. S. 36-40 (Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023).

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Abu-Rasheed, H, Dornhofer, M, Weber, C, Kismihok, G, Buchmann, U & Fathi, M 2023, Building Contextual Knowledge Graphs for Personalized Learning Recommendations Using Text Mining and Semantic Graph Completion. in M Chang, N-S Chen, R Kuo, G Rudolph, DG Sampson & A Tlili (Hrsg.), Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023. Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023, Institute of Electrical and Electronics Engineers Inc., S. 36-40, 23rd IEEE International Conference on Advanced Learning Technologies, ICALT 2023, Hybrid, Orem, USA / Vereinigte Staaten, 10 Juli 2023. https://doi.org/10.1109/ICALT58122.2023.00016
Abu-Rasheed, H., Dornhofer, M., Weber, C., Kismihok, G., Buchmann, U., & Fathi, M. (2023). Building Contextual Knowledge Graphs for Personalized Learning Recommendations Using Text Mining and Semantic Graph Completion. In M. Chang, N.-S. Chen, R. Kuo, G. Rudolph, D. G. Sampson, & A. Tlili (Hrsg.), Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023 (S. 36-40). (Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023). Institute of Electrical and Electronics Engineers Inc.. https://doi.org/10.1109/ICALT58122.2023.00016
Abu-Rasheed H, Dornhofer M, Weber C, Kismihok G, Buchmann U, Fathi M. Building Contextual Knowledge Graphs for Personalized Learning Recommendations Using Text Mining and Semantic Graph Completion. in Chang M, Chen NS, Kuo R, Rudolph G, Sampson DG, Tlili A, Hrsg., Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023. Institute of Electrical and Electronics Engineers Inc. 2023. S. 36-40. (Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023). doi: 10.1109/ICALT58122.2023.00016
Abu-Rasheed, Hasan ; Dornhofer, Mareike ; Weber, C. et al. / Building Contextual Knowledge Graphs for Personalized Learning Recommendations Using Text Mining and Semantic Graph Completion. Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023. Hrsg. / Maiga Chang ; Nian-Shing Chen ; Rita Kuo ; George Rudolph ; Demetrios G Sampson ; Ahmed Tlili. Institute of Electrical and Electronics Engineers Inc., 2023. S. 36-40 (Proceedings - 2023 IEEE International Conference on Advanced Learning Technologies, ICALT 2023).
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abstract = "Modelling learning objects (LO) within their context enables the learner to advance from a basic, remembering-level, learning objective to a higher-order one, i.e., a level with an application- and analysis objective. While hierarchical data models are commonly used in digital learning platforms, using graph-based models enables representing the context of LOs in those platforms. This leads to a foundation for personalized recommendations of learning paths. In this paper, the transformation of hierarchical data models into knowledge graph (KG) models of LOs using text mining is introduced and evaluated. We utilize custom text mining pipelines to mine semantic relations between elements of an expert-curated hierarchical model. We evaluate the KG structure and relation extraction using graph quality-control metrics and the comparison of algorithmic semantic-similarities to expert-defined ones. The results show that the relations in the KG are semantically comparable to those defined by domain experts, and that the proposed KG improves representing and linking the contexts of LOs through increasing graph communities and betweenness centrality.",
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