使用大型语言模型作为预见性推理的框架

Olya Kudina, Brian Ballsun-Stanton, Mark Alfano
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引用次数: 0

摘要

本文考察了基于聊天的大型语言模型(llm)的潜在教育用途,超越了最初的炒作和怀疑。虽然法学硕士的输出经常引起人们的兴趣,类似于人类的写作,但它们是不可预测的,必须有洞察力地使用。一些比喻——比如计算器、汽车和醉酒的导师——突出了学生与法学硕士互动的不同模式,我们在论文中对此进行了探讨。我们建议法学硕士通过脚手架培养预言性推理,即在预测和回应对论点的潜在反对意见时提供技术伴奏,从而在学生的学习中发挥潜力。在这里,法学硕士的技术限制可以在培养预期推理时重新定义为有益的。无论他们的输出是否准确,评估它们都能刺激学习。法学硕士要求学生批判性地参与,强调分析思维而不是单纯的死记硬背。这种互动有助于巩固知识。此外,我们还探讨了法学硕士课程如何让学生为建设性的集体讨论做好准备,并通过突出潜在的研究盲点,为解决认知不公正问题提供了第一步。因此,虽然承认在教育中使用法学硕士的社会政治和伦理复杂性,但我们建议,当以知情的方式使用法学硕士时,它们可以通过预期推理促进批判性思维。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of large language models as scaffolds for proleptic reasoning

This paper examines the potential educational uses of chat-based large language models (LLMs), moving past initial hype and skepticism. Although LLM outputs often evoke fascination and resemble human writing, they are unpredictable and must be used with discernment. Several metaphors—like calculators, cars, and drunk tutors—highlight distinct models for student interactions with LLMs, which we explore in the paper. We suggest that LLMs hold a potential in students’ learning by fostering proleptic reasoning through scaffolding, i.e., presenting a technological accompaniment in anticipating and responding to potential objections to arguments. Here, the technical limitations of LLMs can be reframed as beneficial when fostering anticipatory reasoning. Whether their outputs are accurate or not, evaluating them stimulates learning. LLMs require students to critically engage, emphasizing analytical thinking over mere memorization. This interaction helps solidify knowledge. Additionally, we explore how engaging with LLMs can prepare students for constructive collective discussions and provide first steps in addressing epistemic injustices by highlighting potential research blind spots. Thus, while acknowledging the sociopolitical and ethical complexities of using LLMs in education, we suggest that when used in an informed way, they can promote critical thinking through anticipatory reasoning.

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