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Feb 24, 2025
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Semantic features extracted from students' small group conversations during AI literacy lessons significantly predict their interest in learning AI, while social knowledge construction characteristics do not show significant correlation.

Semantic features extracted from students' small group conversations during AI literacy lessons significantly predict their interest in learning AI, while social knowledge construction characteristics do not show significant correlation.

Objective: To examine how students' small group conversations during AI literacy lessons predict their situational interest in AI learning, focusing on identifying conversational characteristics that indicate student engagement.

Methods:

  • Study conducted in a high school cognitive science class
  • 17 students (15 females, 2 males, ages 16-18)
  • Two one-hour sessions
  • Students worked in five small groups
  • Data collection through:
    • Video recordings of group conversations
    • Transcript analysis using LIWC (Linguistic Inquiry and Word Count)
    • Interaction analysis model for social knowledge construction
    • 5-point Likert scale situational interest surveys
  • Analysis of three feature sets:
    • Basic features (sentence count, word length, etc.)
    • Annotation features (knowledge sharing, testing, etc.)
    • LIWC features (AI focus, creativity, innovation)

Key Findings:

  • LIWC features significantly improved prediction of student interest
  • Model with LIWC features showed highest adjusted R-square (0.74)
  • Positive correlations found between interest and:
    • AI-related content
    • Creativity/innovation discussions
    • Analytical conversations
  • Social construction of knowledge showed no significant relationship
  • Basic conversational features alone were poor predictors

Implications:

  • Semantic features can serve as indicators of student interest
  • Analysis could lead to development of real-time feedback tools
  • Findings support importance of content-focused discussions
  • Results could help improve AI literacy education effectiveness

Limitations:

  • Small sample size (14 unique students)
  • Limited to two sessions
  • Gender imbalance in participant group
  • Focus on single school/class context
  • Preliminary nature of analysis

Future Directions:

  • Incorporation of multimodal features
  • Development of classroom analytics tools
  • Analysis of paralinguistic cues
  • Integration of smartpen data
  • Exploration of cognitive and social process dynamics

Title and Authors: "Predicting Students' Interest from Small Group Conversational Characteristics: Insights from an AI Literacy Education with High School Students" by Shenghua Zha, Lujie Karen Chen, Woei Hung, Na Gong, Pamela Moore, and Bethany Klemetsrud

Published On: To be presented February 26-March 1, 2025

Published By: Proceedings of the 56th ACM Technical Symposium on Computer Science Education V. 2 (SIGCSE TS 2025)

The study provides valuable insights into how conversational analysis can predict student interest in AI education, suggesting potential tools for improving teaching effectiveness in this emerging field.

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