A Quality Data Set for Data Challenge: Featuring 160 Students’ Learning Behaviors and Learning Strategies in a Programming Course

Authors

  • Owen LUInternational College of Innovation, National Chengchi University, TaiwanAuthor
  • Anna HUANGComputer Science & Information Engineering, National Central University, TaiwanAuthor
  • Brendan FLANAGANAcademic Center for Computing and Media Studies, Kyoto University, JapanAuthor
  • Hiroaki OGATAAcademic Center for Computing and Media Studies, Kyoto University, JapanAuthor
  • Stephen YANGComputer Science & Information Engineering, National Central University, TaiwanAuthor

Abstract

Emerging science requires data collection to support the research and development of advanced methodologies. In the educational field, conceptual frameworks such as Learning Analytics (LA) or Intelligent Tutoring System (ITS) also require data. Prior studies demonstrated the efficiency of academic data, for example, risk student prediction and learning strategies unveiling. However, a publicly available data set was lacking for benchmarking these experiments. To contribute to educational science and technology research and development, we conducted a programming course series two years ago and collected 160 students' learning data. The data set includes two well-designed learning systems and measurements of two welldefined learning strategies: Self-regulated Learning (SRL) and Strategy Inventory for Language Learning (SILL). Then we summarized this data set as a Learning Behavior and Learning Strategies data set (LBLS-160) in this study; here, 160 indicates a total of 160 students. Compared to the prior studies, the LBLS data set is focused on students' book reading behaviors, code programming behaviors, and measurement results on students' learning strategies. Additionally, to demonstrate the usability and availability of the LBLS data set, we conducted a simple risk student prediction task, which is in line with the challenge of crosscourse testing accuracy. Furthermore, to facilitate the development of educational science, this study summarized three data challenges for the LBLS data set.

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Published

2022-11-28

How to Cite

A Quality Data Set for Data Challenge: Featuring 160 Students’ Learning Behaviors and Learning Strategies in a Programming Course. (2022).International Conference on Computers in Education, 64-73.https://library.apsce.net/index.php/ICCE/article/view/4571