TY - JOUR
T1 - A mixed method approach to studying self-regulated learning in MOOCs
T2 - Combining trace data with interviews
AU - Jansen, Renée
AU - van Leeuwen, Anouschka
AU - Janssen, Jeroen
AU - Kester, L.
N1 - Funding Information:
The authors would like to offer their gratitude to the Committee of National Foundation of Natural Sciences of China (NFNSC) and to the Natural Sciences and Engineering Research Council of Canada (NSERC) who sponsored the project. Mr. Pei and Mr. Li offered their kind helps in the course of the experiments. Gratitude is also extended to the Watch Manufacturing Factory of Hangzhou which helped machine the testing elements.
Publisher Copyright:
© 2020 European Association for Research on Learning and Instruction. All right reserved.
PY - 2020
Y1 - 2020
N2 - To be successful in online education, learners should be able to self-regulate their learning due to the autonomy offered to them. Accurate measurement of learners’ selfregulated learning (SRL) in online education is necessary to determine which learners are in need of support and how to best offer support. Trace data is gathered automatically and unobtrusively during online education, and is therefore considered a valuable source to measure learners’ SRL. However, measuring SRL with trace data is challenging for two main reasons. First, without information on the how and why of learner behaviour it is difficult to interpret trace data correctly. Second, SRL activities outside of the online learning environment are not captured in trace data. To address these two challenges, we propose a mixed method approach with a sequential design. Such an approach is novel for the measurement of SRL. We present a pilot study in which we combined trace data with interview data to analyse learners’ SRL in online courses. In the interview, cued retrospective reporting was conducted by presenting learners with visualizations of their trace data. In the second part of the interview, learners’ activities outside of the online course environment were discussed. The results show that the mixed-method approach is indeed a promising approach to address the two described challenges. Suggestions for future research are provided, and include methodological considerations such as how to best visualize trace data for cued retrospective recall.
AB - To be successful in online education, learners should be able to self-regulate their learning due to the autonomy offered to them. Accurate measurement of learners’ selfregulated learning (SRL) in online education is necessary to determine which learners are in need of support and how to best offer support. Trace data is gathered automatically and unobtrusively during online education, and is therefore considered a valuable source to measure learners’ SRL. However, measuring SRL with trace data is challenging for two main reasons. First, without information on the how and why of learner behaviour it is difficult to interpret trace data correctly. Second, SRL activities outside of the online learning environment are not captured in trace data. To address these two challenges, we propose a mixed method approach with a sequential design. Such an approach is novel for the measurement of SRL. We present a pilot study in which we combined trace data with interview data to analyse learners’ SRL in online courses. In the interview, cued retrospective reporting was conducted by presenting learners with visualizations of their trace data. In the second part of the interview, learners’ activities outside of the online course environment were discussed. The results show that the mixed-method approach is indeed a promising approach to address the two described challenges. Suggestions for future research are provided, and include methodological considerations such as how to best visualize trace data for cued retrospective recall.
KW - Interview
KW - Mixed-method research
KW - Online 0education
KW - Self-regulated learning
KW - Trace data
UR - http://www.scopus.com/inward/record.url?scp=85087619174&partnerID=8YFLogxK
U2 - 10.14786/flr.v8i2.539
DO - 10.14786/flr.v8i2.539
M3 - Article
VL - 8
SP - 35
EP - 64
JO - Frontline Learning Research
JF - Frontline Learning Research
IS - 2
ER -