Dialogue Act Patterns in GenAI-Mediated L2 Oral Practice: A Sequential Analysis of Learner-Chatbot Interactions
arXiv cs.CL / 4/8/2026
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Key Points
- The paper analyzes dialogue act (DA) patterns in 10-week GenAI voice chatbot–mediated English speaking practice with Grade 9 Chinese EFL learners, using human annotation across 70 sessions and 6,957 coded DAs.
- High-progress sessions involved more learner-initiated questions, while low-progress sessions showed more clarification-seeking behavior, suggesting differences in comprehension and interactional needs.
- Sequential analysis found that high-progress interactions more often used prompting-based corrective feedback sequences positioned after learner responses, emphasizing the importance of feedback type and timing.
- The study argues that applying a dialogic lens can improve GenAI chatbot design for L2 education and also contributes a pedagogy-informed DA coding framework.
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