Generating Situated Reflection Triggers about Alternative Solution Paths: A Case Study of Generative AI for Computer-Supported Collaborative Learning
CoRR(2024)
摘要
An advantage of Large Language Models (LLMs) is their contextualization
capability - providing different responses based on student inputs like
solution strategy or prior discussion, to potentially better engage students
than standard feedback. We present a design and evaluation of a
proof-of-concept LLM application to offer students dynamic and contextualized
feedback. Specifically, we augment an Online Programming Exercise bot for a
college-level Cloud Computing course with ChatGPT, which offers students
contextualized reflection triggers during a collaborative query optimization
task in database design. We demonstrate that LLMs can be used to generate
highly situated reflection triggers that incorporate details of the
collaborative discussion happening in context. We discuss in depth the
exploration of the design space of the triggers and their correspondence with
the learning objectives as well as the impact on student learning in a pilot
study with 34 students.
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