Towards an Immersive Learning Knowledge Tree - a Conceptual Framework for Mapping Knowledge and Tools in the Field

Authors

  • Dennis Beck Curriculum & Instruction University of Arkansas Fayetteville, U.S.A.
  • Christian Gütl Technical University of Graz Graz, Austria
  • Scott Warren University of North Texas Denton, U.S.A.
  • Leonel Morgado Universidade Aberta & INESC TEC Coimbra, Portugal
  • Andreas Dengel Julius-Maximilians-Universität Würzburg Würzburg, Germany
  • Jonathon Richter Immersive Learning Research Network Missoula, U.S.A.
  • Mark Lee Charts Sturt University Albury-Wodonga, Australia
  • Minjuan Wang School of Journalism & Media Studies San Diego State University San Diego, U.S.A.

DOI:

https://doi.org/10.56198/

Keywords:

immersive learning, Knowledge Tree, research, epistemology, ontology

Abstract

The interdisciplinary field of immersive learning research is scattered. Combining efforts for better exploration of this field from the different disciplines requires researchers to communicate and coordinate effectively. We call upon the community of immersive learning researchers for planting the Knowledge Tree of Immersive Learning Research, a proposal for a systematization effort for this field, combining both scholarly and practical knowledge, cultivating a robust and ever-growing knowledge base and methodological toolbox for immersive learning. This endeavor aims at promoting evidence-informed practice and guiding future research in the field. This paper contributes with the rationale for three objectives: 1) Developing common scientific terminology amidst the community of researchers; 2) Cultivating a common understanding of methodology, and 3) Advancing common use of theoretical approaches, frameworks, and models.

Published

31-10-2025

Conference Proceedings Volume

Section

Conference Proceeedings

How to Cite

Towards an Immersive Learning Knowledge Tree - a Conceptual Framework for Mapping Knowledge and Tools in the Field. (2025). Immersive Learning Research - Academic, 1(1), 349-356. https://doi.org/10.56198/

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