Moving Beyond Review: Applying Language Models to Planning and Translation in Reflection
AI 摘要
论文提出Pensée工具,利用LLM辅助学生反思性写作的计划和翻译阶段,提升反思深度和质量。
主要贡献
- 提出基于LLM的反思性写作辅助工具Pensée
- 验证了在计划和翻译阶段提供AI支持可以提升反思深度和结构质量
- 提供了AI支持反思性写作过程的实证研究证据
方法论
通过对照实验(N=93),操纵AI在写作不同阶段的支持情况,评估Pensée对反思深度和结构质量的影响。
原文摘要
Reflective writing is known to support the development of students' metacognitive skills, yet learners often struggle to engage in deep reflection, limiting learning gains. Although large language models (LLMs) have been shown to improve writing skills, their use as conversational agents for reflective writing has produced mixed results and has largely focused on providing feedback on reflective texts, rather than support during planning and organizing. In this paper, inspired by the Cognitive Process Theory of writing (CPT), we propose the first application of LLMs to the planning and translation steps of reflective writing. We introduce Pensée, a tool to explore the effects of explicit AI support during these stages by scaffolding structured reflection planning using a conversational agent, and supporting translation by automatically extracting key concepts. We evaluate Pensée in a controlled between-subjects experiment (N=93), manipulating AI support across writing phases. Results show significantly greater reflection depth and structural quality when learners receive support during planning and translation stages of CPT, though these effects reduce in a delayed post-test. Analyses of learner behavior and perceptions further illustrate how CPT-aligned conversational support shapes reflection processes and learner experience, contributing empirical evidence for theory-driven uses of LLMs in AI-supported reflective writing.