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Oct 14, 2024
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Large language models (LLMs) can both help and harm learning outcomes in coding education, depending on how students use them.

Objective: To investigate how generative AI, specifically large language models (LLMs), impacts learning outcomes in coding classes.

Methods:

  • Study 1: Field data analysis from two university-level programming courses
  • Studies 2 and 3: Controlled laboratory experiments with randomly assigned treatment (LLM access) and control groups

Key Findings:

  • LLM usage has both positive and negative effects on learning outcomes
  • Students benefit when using LLMs as personal tutors for explanations
  • Learning is impaired when students excessively rely on LLMs to solve practice exercises
  • Copy-and-paste functionality enables solution-seeking behavior, which negatively impacts learning
  • Students without prior domain knowledge gain more from LLM access
  • LLM use increases students' perceived learning progress beyond actual progress

Implications:

  • LLMs show promising potential as learning support tools, but students must be cautious of pitfalls
  • Educators should guide students on effective LLM use for learning
  • LLM integration in education requires careful consideration of usage patterns

Limitations:

  • Laboratory experiments may not fully reflect real-world learning environments
  • Focus on short-term learning outcomes; long-term effects not studied

Future Directions:

  • Investigate long-term effects of LLM use on learning
  • Develop strategies to mitigate negative impacts of LLM use in education
  • Explore LLM effects in other educational domains beyond coding

Title and Authors: "AI Meets the Classroom: When Does ChatGPT Harm Learning?" by Matthias Lehmann, Philipp B. Cornelius, and Fabian J. Sting

Published On: August 29, 2024 Published By: arXiv (preprint)

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