了解大语言模型在个性化和支架式策略中的作用,以应对学习拖延症。

Ananya Bhattacharjee, Yuchen Zeng, Sarah Yi Xu, Dana Kulzhabayeva, Minyi Ma, Rachel Kornfield, Syed Ishtiaque Ahmed, Alex Mariakakis, Mary P Czerwinski, Anastasia Kuzminykh, Michael Liut, Joseph Jay Williams
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引用次数: 0

摘要

传统的学业拖延干预措施往往无法捕捉到导致学业拖延的细致入微的个体特定因素。大型语言模型(LLMs)允许开放式输入,包括根据个人独特需求定制干预措施的能力,因此在弥补这一不足方面具有巨大潜力。然而,在这种情况下,用户对 LLMs 的期望和潜在局限性仍未得到充分探索。为了解决这个问题,我们对 15 名大学生和 6 名专家进行了访谈和焦点小组讨论,并在讨论中介绍了一种用于生成个性化建议以管理拖延症的技术探针。我们的研究结果突出表明,有必要让学习管理软件提供结构化、以截止日期为导向的步骤,并加强用户支持机制。此外,我们的结果还表明,有必要根据忙碌程度等因素采用自适应的提问方式。这些发现为开发基于 LLM 的拖延管理工具提供了重要的设计意义,同时也提醒人们不要将 LLM 用于治疗指导。
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Understanding the Role of Large Language Models in Personalizing and Scaffolding Strategies to Combat Academic Procrastination.

Traditional interventions for academic procrastination often fail to capture the nuanced, individual-specific factors that underlie them. Large language models (LLMs) hold immense potential for addressing this gap by permitting open-ended inputs, including the ability to customize interventions to individuals' unique needs. However, user expectations and potential limitations of LLMs in this context remain underexplored. To address this, we conducted interviews and focus group discussions with 15 university students and 6 experts, during which a technology probe for generating personalized advice for managing procrastination was presented. Our results highlight the necessity for LLMs to provide structured, deadline-oriented steps and enhanced user support mechanisms. Additionally, our results surface the need for an adaptive approach to questioning based on factors like busyness. These findings offer crucial design implications for the development of LLM-based tools for managing procrastination while cautioning the use of LLMs for therapeutic guidance.

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