Exploring the Efficacy of ChatGPT in Analyzing Student Teamwork Feedback with an Existing Taxonomy
Teamwork is a critical component of many academic and professional settings. In those contexts, feedback between team members is an important element to facilitate successful and sustainable teamwork. However, in the classroom, as the number of teams and team members and frequency of evaluation incr...
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Zusammenfassung: | Teamwork is a critical component of many academic and professional settings.
In those contexts, feedback between team members is an important element to
facilitate successful and sustainable teamwork. However, in the classroom, as
the number of teams and team members and frequency of evaluation increase, the
volume of comments can become overwhelming for an instructor to read and track,
making it difficult to identify patterns and areas for student improvement. To
address this challenge, we explored the use of generative AI models,
specifically ChatGPT, to analyze student comments in team based learning
contexts. Our study aimed to evaluate ChatGPT's ability to accurately identify
topics in student comments based on an existing framework consisting of
positive and negative comments. Our results suggest that ChatGPT can achieve
over 90\% accuracy in labeling student comments, providing a potentially
valuable tool for analyzing feedback in team projects. This study contributes
to the growing body of research on the use of AI models in educational contexts
and highlights the potential of ChatGPT for facilitating analysis of student
comments. |
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DOI: | 10.48550/arxiv.2305.11882 |