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@inproceedings{2279697, author = {Gnadlinger, Florian and Selmanagić, André and Simbeck, Katharina and Kriglstein, Simone}, address = {Prague}, booktitle = {Proceedings of the 15th International Conference on Computer Supported Education - Volume 1}, doi = {http://dx.doi.org/10.5220/0011964700003470}, editor = {Jelena Jovanovic, Irene-Angelica Chounta, James Uhomoibhi and Bruce McLaren}, keywords = {Adaptive Learning; Educational Technology; Virtual Learning Environments; Dynamic Bayesian Network; Evidence-Centered Design}, howpublished = {elektronická verze "online"}, language = {eng}, location = {Prague}, isbn = {978-989-758-641-5}, pages = {272-280}, publisher = {SciTePress}, title = {Adapting Is Difficult! Introducing a Generic Adaptive Learning Framework for Learner Modeling and Task Recommendation Based on Dynamic Bayesian Networks}, year = {2023} }
TY - JOUR ID - 2279697 AU - Gnadlinger, Florian - Selmanagić, André - Simbeck, Katharina - Kriglstein, Simone PY - 2023 TI - Adapting Is Difficult! Introducing a Generic Adaptive Learning Framework for Learner Modeling and Task Recommendation Based on Dynamic Bayesian Networks PB - SciTePress CY - Prague SN - 9789897586415 KW - Adaptive Learning KW - Educational Technology KW - Virtual Learning Environments KW - Dynamic Bayesian Network KW - Evidence-Centered Design N2 - The process of learning is a personal experience, strongly influenced by the learning environment. Virtual learning environments (VLEs) provide the potential for adaptive learning, which aims to individualize learning experiences in order to improve learning outcomes. Adaptive learning environments achieve individualization by analyzing the learners and altering the instruction according to their specific needs and goals. Despite ongoing research in adaptive learning, the effort to design, develop and implement such environments remains high. Therefore, we introduce a novel, generalized adaptive learning framework based on the methodological Evidence-Centered Design (ECD) framework. Our framework focuses on the analysis of learners’ competencies and the subsequent recommendation of tasks with an appropriate difficulty level. With this paper and the open-source adaptive learning framework, we contribute to the ongoing discussion about generalized adaptive learning technology. ER -
GNADLINGER, Florian, André SELMANAGI$\backslash$'C, Katharina SIMBECK a Simone KRIGLSTEIN. Adapting Is Difficult! Introducing a Generic Adaptive Learning Framework for Learner Modeling and Task Recommendation Based on Dynamic Bayesian Networks. Online. In Jelena Jovanovic, Irene-Angelica Chounta, James Uhomoibhi and Bruce McLaren. \textit{Proceedings of the 15th International Conference on Computer Supported Education - Volume 1}. Prague: SciTePress, 2023, s.~272-280. ISBN~978-989-758-641-5. Dostupné z: https://dx.doi.org/10.5220/0011964700003470.
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