Practical and Ethical Challenges of Large Language Models in Education: A Systematic Scoping Review
Lixiang Yan, Lele Sha, Linxuan Zhao, Yuheng Li, Roberto, Martinez-Maldonado, Guanliang Chen, Xinyu Li, Yueqiao Jin, Dragan, Ga\v{s}evi\'c

TL;DR
This systematic review examines the current state, practical applications, and ethical challenges of large language models in education, providing recommendations for future research and development.
Contribution
It offers a comprehensive categorization of 53 LLM use cases in education and highlights key practical and ethical issues, guiding future advancements and responsible deployment.
Findings
Identified 53 use cases of LLMs in education across nine categories
Highlighted challenges like low technological readiness and lack of transparency
Provided recommendations for updating models and adopting a human-centered approach
Abstract
Educational technology innovations leveraging large language models (LLMs) have shown the potential to automate the laborious process of generating and analysing textual content. While various innovations have been developed to automate a range of educational tasks (e.g., question generation, feedback provision, and essay grading), there are concerns regarding the practicality and ethicality of these innovations. Such concerns may hinder future research and the adoption of LLMs-based innovations in authentic educational contexts. To address this, we conducted a systematic scoping review of 118 peer-reviewed papers published since 2017 to pinpoint the current state of research on using LLMs to automate and support educational tasks. The findings revealed 53 use cases for LLMs in automating education tasks, categorised into nine main categories: profiling/labelling, detection, grading,…
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Taxonomy
TopicsTopic Modeling · Text Readability and Simplification · Artificial Intelligence in Healthcare and Education
