TY - JOUR
T1 - Measuring self-regulated learning and the role of AI
T2 - five years of research using multimodal multichannel data
AU - Molenaar, Inge
AU - Mooij, Susanne de
AU - Azevedo, Roger
AU - Bannert, Maria
AU - Järvelä, Sanna
AU - Gašević, Dragan
N1 - Funding Information:
This E-CIR research network “Measuring and Supporting Student's Self-Regulated Learning in Adaptive Educational Technologies”, in which Inge Molenaar, Sanna Järvelä, Maria Bannert, Dragan Gašević and Roger Azevedo were involved for more than five years, was funded by EARLI-Centre for Innovative Research. The work was also in part supported by funding from Jacobs Foundation (CELLA 2 CERES) awarded to the same five authors. The work of Maria Bannert, Inge Molenaar and Dragan Gašević was in part supported by funding from Deutsche Forschungsgemeinschaft , Nederlandse Organisatie voor Wetenschappelijk Onderzoek , Economic and Social Research Council of the United Kingdom (BA 2044/10–1 | GA 2739/1-1 | MO 2698/1-1) through Open Research Area (Call 5). The work of Dragan Gasevic was in part supported by the Australia Research Council (DP220101209). The work of Maria Bannert was in part supported by the Deutsche Forschungsgemeinschaft (BA 2044/7–1, 7–2). The work of Sanna Järvelä has been supported by the Finnish Academy (Grants No: 259214 and No: 324381). The work of Inge Molenaar has been supported by the National science organisation (Grant No: 451-16-017), European Rescearch Council ( ERC 948786 ) and the Jacobs Foundation Fellowship. The work of Roger Azevedo has been supported by several grants from the National Science Foundation ( DRL#1661202 , DRL#1916417 , DRL#1916417 , IIS#1917728 , and BCS#2128684 ).
Publisher Copyright:
© 2022 The Authors
PY - 2023/2
Y1 - 2023/2
N2 - Learning sciences are embracing the significant role technologies can play to better detect, diagnose, and act upon self-regulated learning (SRL). The field of SRL is challenged with the measurement of SRL processes to advance our understanding of how multimodal data can unobtrusively capture learners' cognitive, metacognitive, affective, and motivational states over time, tasks, domains, and contexts. This paper introduces a self-regulated learning processes, multimodal data, and analysis (SMA) grid and maps joint and individual research of the authors (63 papers) over the last five years onto the grid. This shows how multimodal data streams were used to investigate SRL processes. The two-dimensional space on the SMA grid is helpful for visualizing the relations and possible combinations between the data streams and how the measurement of SRL processes. This overview serves as an analytical introduction to the current special issue “Advancing SRL Research with Artificial Intelligence (AI)” and we encourage to position new research and unexplored frontiers. We emphasize the need for intensive and strategic collaboration to accelerate progress using new interdisciplinary methods to develop accurate measurement of SRL in educational technologies.
AB - Learning sciences are embracing the significant role technologies can play to better detect, diagnose, and act upon self-regulated learning (SRL). The field of SRL is challenged with the measurement of SRL processes to advance our understanding of how multimodal data can unobtrusively capture learners' cognitive, metacognitive, affective, and motivational states over time, tasks, domains, and contexts. This paper introduces a self-regulated learning processes, multimodal data, and analysis (SMA) grid and maps joint and individual research of the authors (63 papers) over the last five years onto the grid. This shows how multimodal data streams were used to investigate SRL processes. The two-dimensional space on the SMA grid is helpful for visualizing the relations and possible combinations between the data streams and how the measurement of SRL processes. This overview serves as an analytical introduction to the current special issue “Advancing SRL Research with Artificial Intelligence (AI)” and we encourage to position new research and unexplored frontiers. We emphasize the need for intensive and strategic collaboration to accelerate progress using new interdisciplinary methods to develop accurate measurement of SRL in educational technologies.
KW - Analytical techniques
KW - Artificial intelligence
KW - Learning analytics
KW - Multimodal data
KW - Process data
KW - Self-regulated learning
KW - SMA grid
UR - https://www.scopus.com/pages/publications/85140433868
U2 - 10.1016/j.chb.2022.107540
DO - 10.1016/j.chb.2022.107540
M3 - Article
AN - SCOPUS:85140433868
SN - 0747-5632
VL - 139
JO - Computers in Human Behavior
JF - Computers in Human Behavior
M1 - 107540
ER -