Structuring versus Problematizing: How LLM-based Agents Scaffold Learning in Diagnostic Reasoning
Fatma Betül Güreş, Tanya Nazaretsky, Seyed Parsa Neshaei, Tanja Käser
TLDR
This paper explores how LLM-based agents, using structuring and problematizing scaffolding, support diagnostic reasoning in vocational students.
Key contributions
- Introduces PharmaSim Switch, an SBL environment with an LA/LLM pharmacist agent for training.
- Compares "structuring" vs. "problematizing" LLM scaffolding in a 63-student diagnostic reasoning study.
- Both scaffolding types effectively supported diagnostic strategies, with performance tied to scenario complexity.
- Structuring led to more accurate participation, while problematizing fostered more constructive engagement.
Why it matters
This study highlights the potential of combining different LLM-based scaffolding methods to enhance diagnostic reasoning. It provides insights for designing more effective AI-powered educational systems that cater to various learning styles and engagement types.
Original Abstract
Supporting students in developing diagnostic reasoning is a key challenge across educational domains. Novices often face cognitive biases such as premature closure and over-reliance on heuristics, and they struggle to transfer diagnostic strategies to new cases. Scenario-based learning (SBL) enhanced by Learning Analytics (LA) and large language models (LLM) offers a promising approach by combining realistic case experiences with personalized scaffolding. Yet, how different scaffolding approaches shape reasoning processes remains insufficiently explored. This study introduces PharmaSim Switch, an SBL environment for pharmacy technician training, extended with an LA- and LLM-powered pharmacist agent that implements pedagogical conversations rooted in two theory-driven scaffolding approaches: \emph{structuring} and \emph{problematizing}, as well as a student learning trajectory. In a between-groups experiment, 63 vocational students completed a learning scenario, a near-transfer scenario, and a far-transfer scenario under one of the two scaffolding conditions. Results indicate that both scaffolding approaches were effective in supporting the use of diagnostic strategies. Performance outcomes were primarily influenced by scenario complexity rather than students' prior knowledge or the scaffolding approach used. The structuring approach was associated with more accurate Active and Interactive participation, whereas problematizing elicited more Constructive engagement. These findings underscore the value of combining scaffolding approaches when designing LA- and LLM-based systems to effectively foster diagnostic reasoning.
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