Date
Publisher
arXiv
The increasing adoption of generative AI (GenAI) tools such as chatbots in
education presents new opportunities to support students' self-regulated
learning (SRL), but also raises concerns about how learners actually engage in
planning, executing, and reflection when learning with a chatbot. While SRL is
typically conceptualized as a sequential process, little is known about how it
unfolds during real-world student-chatbot interactions. To explore this, we
proposed Gen-SRL, an annotation schema to categorize student prompts into 16
microlevel actions across 4 macrolevel phases. Using the proposed schema, we
annotated 212 chatbot interactions from a real-world English writing task. We
then performed frequency analysis and process mining (PM) techniques to
discover SRL patterns in depth. Our results revealed that students' SRL
behaviours were imbalanced, with over 82% of actions focused on task execution
and limited engagement in planning and reflection. In addition, the process
analysis showed nonsequential regulation patterns. Our findings suggest that
classical SRL theories cannot fully capture the dynamic SRL patterns that
emerge during chatbot interactions. Furthermore, we highlight the importance of
designing adaptive and personalized scaffolds that respond to students' dynamic
behaviours in chatbot-powered contexts. More importantly, this study offers a
new perspective for advancing SRL research and suggests directions for
developing chatbots that better support self-regulation.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
