Characterizing Students' LLM Usage Behaviors and Their Association with Learning in Critical Thinking Tasks
Minju Park, Ivan Orozco Vasquez, Cristina Conati
TLDR
This study characterizes students' unrestricted LLM usage in critical thinking tasks and its association with learning outcomes.
Key contributions
- Analyzes unrestricted student LLM usage in critical thinking tasks (reading, critiquing papers).
- Presents a refined, initiative-based categorization of diverse LLM usage types.
- Examines how LLM usage frequency and type associate with student learning outcomes.
Why it matters
This paper offers critical insights into how students naturally integrate LLMs into complex critical thinking tasks, moving beyond constrained settings. Its findings on usage patterns and learning impacts can inform educators and developers on responsible LLM integration and future educational tool design.
Original Abstract
Large language models (LLMs) are becoming increasingly embedded in students' learning practices, yet much of what is known about how students use LLMs and how this usage impacts learning comes from problem-solving domains or constrained experimental settings. We present an analysis of data on LLM usage collected during two offerings of a research-oriented course where students learn to read, reason about, and critique academic papers. Without restrictions on whether or how to use LLMs, students reported their LLM usage practices when asked to do these activities as a series of homework assignments during the course. This paper extends prior work done on data from a single offering of the same course by presenting a refined bottom-up categorization of LLM usage types, cross-labeled by the extent of student initiative these usages entail. Furthermore, we examine how LLM use impacts student learning, measured by performance on three midterms, looking at factors such as frequency and type of usage.
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