Self-Regulated Reading with AI Support: An Eight-Week Study with Students
AI 摘要
研究大学生使用AI辅助阅读的行为模式和认知参与度,发现效率驱动下的“AI阅读”现象。
主要贡献
- 量化分析AI辅助阅读中不同认知层级的提示词频率和顺序
- 揭示学生在AI辅助阅读中存在的意图-行为差距
- 发现学生使用AI进行阅读的创新模式:通过AI生成摘要进行筛选
方法论
对15名大学生进行为期8周的纵向研究,收集并分析838条AI提示词,结合定量和定性分析。
原文摘要
College students increasingly use AI chatbots to support academic reading, yet we lack granular understanding of how these interactions shape their reading experience and cognitive engagement. We conducted an eight-week longitudinal study with 15 undergraduates who used AI to support assigned readings in a course. We collected 838 prompts across 239 reading sessions and developed a coding schema categorizing prompts into four cognitive themes: Decoding, Comprehension, Reasoning, and Metacognition. Comprehension prompts dominated (59.6%), with Reasoning (29.8%), Metacognition (8.5%), and Decoding (2.1%) less frequent. Most sessions (72%) contained exactly three prompts, the required minimum of the reading assignment. Within sessions, students showed natural cognitive progression from comprehension toward reasoning, but this progression was truncated. Across eight weeks, students' engagement patterns remained stable, with substantial individual differences persisting throughout. Qualitative analysis revealed an intention-behavior gap: students recognized that effective prompting required effort but rarely applied this knowledge, with efficiency emerging as the primary driver. Students also strategically triaged their engagement based on interest and academic pressures, exhibiting a novel pattern of reading through AI rather than with it: using AI-generated summaries as primary material to filter which sections merited deeper attention. We discuss design implications for AI reading systems that scaffold sustained cognitive engagement.