Leveraging the Potential of Large Language Models in Education Through Playful and Game-Based Learning

IF 10.1 1区 心理学 Q1 PSYCHOLOGY, EDUCATIONAL
Stefan E. Huber, Kristian Kiili, Steve Nebel, Richard M. Ryan, Michael Sailer, Manuel Ninaus
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引用次数: 0

Abstract

This perspective piece explores the transformative potential and associated challenges of large language models (LLMs) in education and how those challenges might be addressed utilizing playful and game-based learning. While providing many opportunities, the stochastic elements incorporated in how present LLMs process text, requires domain expertise for a critical evaluation and responsible use of the generated output. Yet, due to their low opportunity cost, LLMs in education may pose some risk of over-reliance, potentially and unintendedly limiting the development of such expertise. Education is thus faced with the challenge of preserving reliable expertise development while not losing out on emergent opportunities. To address this challenge, we first propose a playful approach focusing on skill practice and human judgment. Drawing from game-based learning research, we then go beyond this playful account by reflecting on the potential of well-designed games to foster a willingness to practice, and thus nurturing domain-specific expertise. We finally give some perspective on how a new pedagogy of learning with AI might utilize LLMs for learning by generating games and gamifying learning materials, leveraging the full potential of human-AI interaction in education.

通过游戏式学习发挥大型语言模型在教育中的潜力
本视角文章探讨了大型语言模型(LLMs)在教育领域的变革潜力和相关挑战,以及如何利用游戏式学习来应对这些挑战。虽然大型语言模型提供了许多机会,但由于其处理文本的方式中包含了随机因素,因此需要具备相关领域的专业知识,才能对生成的输出结果进行批判性评估和负责任的使用。然而,由于机会成本较低,教育领域的 LLM 可能会带来一些过度依赖的风险,从而可能无意中限制了此类专业知识的发展。因此,教育面临的挑战是,既要保持可靠的专业知识发展,又要不失去新出现的机会。为了应对这一挑战,我们首先提出了一种注重技能练习和人类判断的游戏方法。然后,我们借鉴基于游戏的学习研究,通过反思精心设计的游戏在培养练习意愿,从而培养特定领域专业知识方面的潜力,超越了这种游戏式的解释。最后,我们从一些角度探讨了新的人工智能学习教学法如何通过生成游戏和将学习材料游戏化来利用 LLMs 进行学习,从而在教育中充分发挥人与人工智能互动的潜力。
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来源期刊
Educational Psychology Review
Educational Psychology Review PSYCHOLOGY, EDUCATIONAL-
CiteScore
15.70
自引率
3.00%
发文量
62
期刊介绍: Educational Psychology Review aims to disseminate knowledge and promote dialogue within the field of educational psychology. It serves as a platform for the publication of various types of articles, including peer-reviewed integrative reviews, special thematic issues, reflections on previous research or new research directions, interviews, and research-based advice for practitioners. The journal caters to a diverse readership, ranging from generalists in educational psychology to experts in specific areas of the discipline. The content offers a comprehensive coverage of topics and provides in-depth information to meet the needs of both specialized researchers and practitioners.
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