TeachTune: Reviewing Pedagogical Agents Against Diverse Student Profiles with Simulated Students
Large language models (LLMs) can empower teachers to build pedagogical conversational agents (PCAs) customized for their students. As students have different prior knowledge and motivation levels, teachers must review the adaptivity of their PCAs to diverse students. Existing chatbot reviewing metho...
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Zusammenfassung: | Large language models (LLMs) can empower teachers to build pedagogical
conversational agents (PCAs) customized for their students. As students have
different prior knowledge and motivation levels, teachers must review the
adaptivity of their PCAs to diverse students. Existing chatbot reviewing
methods (e.g., direct chat and benchmarks) are either manually intensive for
multiple iterations or limited to testing only single-turn interactions. We
present TeachTune, where teachers can create simulated students and review PCAs
by observing automated chats between PCAs and simulated students. Our technical
pipeline instructs an LLM-based student to simulate prescribed knowledge levels
and traits, helping teachers explore diverse conversation patterns. Our
pipeline could produce simulated students whose behaviors correlate highly to
their input knowledge and motivation levels within 5% and 10% accuracy gaps.
Thirty science teachers designed PCAs in a between-subjects study, and using
TeachTune resulted in a lower task load and higher student profile coverage
over a baseline. |
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DOI: | 10.48550/arxiv.2410.04078 |