AIOct 30, 2023

Leveraging generative artificial intelligence to simulate student learning behavior

arXiv:2310.19206v124 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses the need for more adaptable curricula design in education, though it is incremental as it applies existing LLMs to a new domain.

The paper tackled the problem of simulating student learning behaviors by using large language models (LLMs) to create virtual students with specific demographics, validating this through three experiments with datasets of up to N=4524, showing realistic behaviors and strong links to factors like test questions and engagement.

Student simulation presents a transformative approach to enhance learning outcomes, advance educational research, and ultimately shape the future of effective pedagogy. We explore the feasibility of using large language models (LLMs), a remarkable achievement in AI, to simulate student learning behaviors. Unlike conventional machine learning based prediction, we leverage LLMs to instantiate virtual students with specific demographics and uncover intricate correlations among learning experiences, course materials, understanding levels, and engagement. Our objective is not merely to predict learning outcomes but to replicate learning behaviors and patterns of real students. We validate this hypothesis through three experiments. The first experiment, based on a dataset of N = 145, simulates student learning outcomes from demographic data, revealing parallels with actual students concerning various demographic factors. The second experiment (N = 4524) results in increasingly realistic simulated behaviors with more assessment history for virtual students modelling. The third experiment (N = 27), incorporating prior knowledge and course interactions, indicates a strong link between virtual students' learning behaviors and fine-grained mappings from test questions, course materials, engagement and understanding levels. Collectively, these findings deepen our understanding of LLMs and demonstrate its viability for student simulation, empowering more adaptable curricula design to enhance inclusivity and educational effectiveness.

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