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Large language models for whole-learner support: opportunities and challenges. | LitMetric

AI Article Synopsis

  • Large language models (LLMs) are being increasingly utilized in education to create personalized learning experiences that cater to the whole learner, considering both cognitive and non-cognitive traits.
  • The article identifies three major challenges to achieving this personalized approach: improving how LLMs represent learners, developing adaptive technologies for tailored support, and effectively creating and evaluating educational agents powered by LLMs.
  • To tackle these challenges, the authors discuss methods for interpreting LLM behaviors, utilizing feedback and support strategies, and the complexities of using natural language for designing educational agents.

Article Abstract

In recent years, large language models (LLMs) have seen rapid advancement and adoption, and are increasingly being used in educational contexts. In this perspective article, we explore the open challenge of leveraging LLMs to create personalized learning environments that support the "whole learner" by modeling and adapting to both cognitive and non-cognitive characteristics. We identify three key challenges toward this vision: (1) improving the interpretability of LLMs' representations of whole learners, (2) implementing adaptive technologies that can leverage such representations to provide tailored pedagogical support, and (3) authoring and evaluating LLM-based educational agents. For interpretability, we discuss approaches for explaining LLM behaviors in terms of their internal representations of learners; for adaptation, we examine how LLMs can be used to provide context-aware feedback and scaffold non-cognitive skills through natural language interactions; and for authoring, we highlight the opportunities and challenges involved in using natural language instructions to specify behaviors of educational agents. Addressing these challenges will enable personalized AI tutors that can enhance learning by accounting for each student's unique background, abilities, motivations, and socioemotional needs.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11518847PMC
http://dx.doi.org/10.3389/frai.2024.1460364DOI Listing

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