Analysis of learning interactions can happen for different purposes. As educational practices increasingly take place in hybrid settings, data from both spaces are needed. At the same time, to analyse and make sense of machine aggregated data afforded by Technology-Enhanced Learning (TEL) environments, contextual information is needed. We posit that human labelled (classroom observations) and automated observations (multimodal learning data) can enrich each other. Researchers have suggested learning design (LD) for contextualisation, the availability of which is often limited in authentic settings. This paper proposes a Context-aware MMLA Taxonomy, where we categorize systematic documentation and data collection within different research designs and scenarios, paying special attention to authentic classroom contexts. Finally, we discuss further research directions and challenges.

Analysis of learning interactions can happen for different purposes. As educational practices increasingly take place in hybrid settings, data from both spaces are needed. At the same time, to analyse and make sense of machine aggregated data afforded by Technology-Enhanced Learning (TEL) environments, contextual information is needed. We posit that human labelled (classroom observations) and automated observations (multimodal learning data) can enrich each other. Researchers have suggested learning design (LD) for contextualisation, the availability of which is often limited in authentic settings. This paper proposes a Context-aware MMLA Taxonomy, where we categorize systematic documentation and data collection within different research designs and scenarios, paying special attention to authentic classroom contexts. Finally, we discuss further research directions and challenges.

Context-aware multimodal learning analytics taxonomy / Eradze, M.; Rodríguez, Triana; M. J., Laanpere. - 2610:(2020), pp. 1-6. (Intervento presentato al convegno 10th International Conference on Learning Analytics & Knowledge (LAK20) tenutosi a Frankfurt, Germany nel 23-26 March).

Context-aware multimodal learning analytics taxonomy

Eradze M.;
2020

Abstract

Analysis of learning interactions can happen for different purposes. As educational practices increasingly take place in hybrid settings, data from both spaces are needed. At the same time, to analyse and make sense of machine aggregated data afforded by Technology-Enhanced Learning (TEL) environments, contextual information is needed. We posit that human labelled (classroom observations) and automated observations (multimodal learning data) can enrich each other. Researchers have suggested learning design (LD) for contextualisation, the availability of which is often limited in authentic settings. This paper proposes a Context-aware MMLA Taxonomy, where we categorize systematic documentation and data collection within different research designs and scenarios, paying special attention to authentic classroom contexts. Finally, we discuss further research directions and challenges.
2020
mar-2020
10th International Conference on Learning Analytics & Knowledge (LAK20)
Frankfurt, Germany
23-26 March
2610
1
6
Eradze, M.; Rodríguez, Triana; M. J., Laanpere
Context-aware multimodal learning analytics taxonomy / Eradze, M.; Rodríguez, Triana; M. J., Laanpere. - 2610:(2020), pp. 1-6. (Intervento presentato al convegno 10th International Conference on Learning Analytics & Knowledge (LAK20) tenutosi a Frankfurt, Germany nel 23-26 March).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1221815
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