TY - JOUR
T1 - Analytics of learning strategies
T2 - Role of course design and delivery modality
AU - Matcha, Wannisa
AU - Gašević, Dragan
AU - Ahmad Uzir, Nora’Ayu
AU - Jovanović, Jelena
AU - Pardo, Abelardo
AU - Lim, Lisa
AU - Maldonado-Mahauad, Jorge
AU - Gentili, Sheridan
AU - Pérez-Sanagustín, Mar
AU - Tsai, Yi Shan
N1 - Publisher Copyright:
© 2020, UTS ePRESS. All rights reserved.
PY - 2020/9/19
Y1 - 2020/9/19
N2 - Generalizability of the value of methods based on learning analytics remains one of the big challenges in the field of learning analytics. One approach to testing generalizability of a method is to apply it consistently in different learning contexts. This study extends a previously published work by examining the generalizability of a learning analytics method proposed for detecting learning tactics and strategies from trace data. The method was applied to the datasets collected in three different course designs and delivery modalities, including flipped classroom, blended learning, and massive open online course. The proposed method combines process mining and sequence analysis. The detected learning strategies are explored in terms of their association with academic performance. The results indicate the applicability of the proposed method across different learning contexts. Moreover, the findings contribute to the understanding of the learning tactics and strategies identified in the trace data: learning tactics proved to be responsive to the course design, whereas learning strategies were found to be more sensitive to the delivery modalities than to the course design. These findings, well aligned with self-regulated learning theory, highlight the association of learning contexts with the choice of learning tactics and strategies.
AB - Generalizability of the value of methods based on learning analytics remains one of the big challenges in the field of learning analytics. One approach to testing generalizability of a method is to apply it consistently in different learning contexts. This study extends a previously published work by examining the generalizability of a learning analytics method proposed for detecting learning tactics and strategies from trace data. The method was applied to the datasets collected in three different course designs and delivery modalities, including flipped classroom, blended learning, and massive open online course. The proposed method combines process mining and sequence analysis. The detected learning strategies are explored in terms of their association with academic performance. The results indicate the applicability of the proposed method across different learning contexts. Moreover, the findings contribute to the understanding of the learning tactics and strategies identified in the trace data: learning tactics proved to be responsive to the course design, whereas learning strategies were found to be more sensitive to the delivery modalities than to the course design. These findings, well aligned with self-regulated learning theory, highlight the association of learning contexts with the choice of learning tactics and strategies.
KW - Course design
KW - Data mining
KW - Learning strategies
KW - Learning tactics
KW - Modality
KW - Self-regulated learning
UR - https://www.scopus.com/pages/publications/85103906987
U2 - 10.18608/JLA.2020.72.3
DO - 10.18608/JLA.2020.72.3
M3 - Artículo
AN - SCOPUS:85103906987
SN - 1929-7750
VL - 7
SP - 45
EP - 71
JO - Journal of Learning Analytics
JF - Journal of Learning Analytics
IS - 2
ER -