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Analysis of Influencing Factors of Learning Engagement and Teaching Presence in Online Programming Classes

  • Park, Ju-yeon (Department of Cha Mirisa Liberal Arts, Duksung Women's University) ;
  • Kim, Semin (Department of Computer Education, Jeonju National University of Education)
  • Received : 2020.09.29
  • Accepted : 2020.12.03
  • Published : 2020.12.31

Abstract

This study analyzed the influencing factors of learning engagement and teaching presence in online programming practice classes. The subjects of this study were students enrolled in an industrial specialized high school, who practiced creating Arduino circuits and programming using a web-based virtual practice tool called Tinkercad. This research adopted a tool that can measure task value, learning flow, learning engagement, and teaching presence. Based on this analysis, learning flow had a mediating effect between task value and online learning engagement, as well as between task value and teaching presence. Increasing learning engagement in online classes requires sensitizing the learners about task value, using hands-on platforms available online, and expanding interaction with instructors to increase learning flow of students. Furthermore, using virtual hands-on tools in online programming classes is relevant in increasing learning engagement. Future research tasks include: confirming the effectiveness of online learning engagement and teaching presence through pre- and post-tests, and conducting research on various practical subjects.

Keywords

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