TY - JOUR
T1 - Predicting Learning Achievement through Self-Regulated Learning Strategies, Motivation, and Programming Behaviors
AU - Wang, Pei Xuan
AU - Hsu, Ting Chia
N1 - Publisher Copyright:
© 2024 CEUR-WS. All rights reserved.
PY - 2024
Y1 - 2024
N2 - With the growth of digital learning, there has been an increase in research related to learning analytics. Learning analytics can be used to identify potential problems and improve the quality of education by measuring, collecting, analyzing, and reporting data about the learners and their background to understand the learner's learning situation and learning environment. In addition, further analysis of students' learning behaviors can be used to provide adaptive and personalized teaching suggestions. This study aimed to analyze operational data from the coding process on an online learning platform, as well as data obtained from students' self-regulated learning strategy scales and self-regulated learning motivation scales. The objective was to investigate the correlation of these factors with students' academic achievement and to determine whether these factors can be utilized to predict student learning outcomes. The results of the study revealed a significant correlation between programming behavior and student grades. Variances in self-regulated learning strategies and motivation levels exhibit notable differences in academic performance. When incorporating these performance-related values as features in the development of predictors, it proves effective in forecasting students' learning outcomes. However, due to the limited sample size in this study, the predictive model may experience reduced accuracy or overfitting issues when applied to larger datasets. Therefore, for future predictions with larger samples, considerations should be made to adjusting model hyperparameters or modifying the features used to improve the accuracy of the predictions.
AB - With the growth of digital learning, there has been an increase in research related to learning analytics. Learning analytics can be used to identify potential problems and improve the quality of education by measuring, collecting, analyzing, and reporting data about the learners and their background to understand the learner's learning situation and learning environment. In addition, further analysis of students' learning behaviors can be used to provide adaptive and personalized teaching suggestions. This study aimed to analyze operational data from the coding process on an online learning platform, as well as data obtained from students' self-regulated learning strategy scales and self-regulated learning motivation scales. The objective was to investigate the correlation of these factors with students' academic achievement and to determine whether these factors can be utilized to predict student learning outcomes. The results of the study revealed a significant correlation between programming behavior and student grades. Variances in self-regulated learning strategies and motivation levels exhibit notable differences in academic performance. When incorporating these performance-related values as features in the development of predictors, it proves effective in forecasting students' learning outcomes. However, due to the limited sample size in this study, the predictive model may experience reduced accuracy or overfitting issues when applied to larger datasets. Therefore, for future predictions with larger samples, considerations should be made to adjusting model hyperparameters or modifying the features used to improve the accuracy of the predictions.
KW - Learning Achievement
KW - Random Forest
KW - SRL Motivation
KW - SRL Strategy
UR - http://www.scopus.com/inward/record.url?scp=85191978817&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85191978817&partnerID=8YFLogxK
M3 - Conference article
AN - SCOPUS:85191978817
SN - 1613-0073
VL - 3667
SP - 23
EP - 31
JO - CEUR Workshop Proceedings
JF - CEUR Workshop Proceedings
T2 - 2024 Joint of International Conference on Learning Analytics and Knowledge Workshops, LAK-WS 2024
Y2 - 18 March 2024 through 22 March 2024
ER -