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科技与出版  2026, Vol. 45 Issue (3): 152-160    
学术探索
AI辅助阅读对深度阅读能力的影响机制研究——基于认知路径重构视角的分析
王大可1,2
1. 上海交通大学媒体与传播学院, 200240, 上海
2. 上海交通大学出版传媒研究院, 200240, 上海
Impact of AI-Assisted Reading on Deep Reading Competence: Evidence from Cognitive Pathway Reconstruction
WANG Dake1,2
1. School of Media and Communication, Shanghai Jiao Tong University, 200240, Shanghai, China
2. Institute of Publishing and Media Studies, Shanghai Jiao Tong University, 200240, Shanghai, China
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摘要: 

随着大型语言模型的广泛应用,AI辅助阅读正在深刻改变人类的阅读实践和认知模式。本研究以认知路径重构为理论视角,结合对1025名用户的问卷调查数据,探讨AI辅助阅读对深度阅读能力的影响机制。研究发现,AI工具从根本上重构了深度阅读的认知路径,体现在认知加工从渐进探索转向即时获取、知识建构从独立自主转向人机协同、专注形态呈现结构性分化三个维度。这种重构产生了复杂的双重效应,在促进信息处理效率的同时,可能对认知自主性产生深远影响。

关键词 AI辅助阅读深度阅读认知路径认知自主性大语言模型    
Abstract

With the widespread application of large language models, AI-assisted reading is increasingly reshaping reading practices and cognitive modes. Against this background, this study examines the mechanism through which AI-assisted reading influences deep reading competence by adopting cognitive pathway reconstruction as its theoretical perspective and by drawing on questionnaire data from 1,025 users. Rather than treating AI-assisted reading as either simply beneficial or simply harmful, the study focuses on how AI tools reorganize the cognitive pathways through which readers acquire information, construct knowledge, and sustain attentional engagement, and how such reorganization may generate both enabling and constraining effects on deep reading. The analysis is based on a questionnaire survey conducted in April 2025 among users who regularly engage in AI-assisted reading. The sample is characterized by a relatively young, highly educated, and urban profile: 64.4% of respondents are aged 18 to 34, 87.7% hold a bachelor's degree or higher, and 55.0% live in first-tier cities. On this basis, the study uses descriptive statistics and comparative analysis to investigate patterns of AI tool use in reading, perceived changes in reading-related behavior, and self-reported shifts in capacities associated with deep reading. Through this mechanism-oriented design, the study seeks to reveal not merely whether AI changes reading, but how the organization and sequence of cognition in reading are being reconfigured. The findings show that AI-assisted reading reconstructs deep-reading pathways along three dimensions. First, cognitive processing shifts from gradual exploration to more immediate acquisition. A substantial proportion of respondents' report using AI for terminology clarification (77.9%), content summarization (67.6%), and assistance in understanding complex texts (54.2%). These practices indicate that AI compresses the path of information access and reduces some of the cognitive burden traditionally associated with exploratory reading. At the same time, such efficiency gains may weaken readers' motivation to undertake the generative cognitive effort required for sustained and self-directed deep reading. Second, knowledge construction shifts from independent autonomy to human–AI collaboration. Although 84.2% of respondents report improved knowledge integration ability, the study suggests that this improvement should not be understood simply as a direct enhancement of intrinsic cognitive competence. Instead, AI-assisted reading introduces a collaborative mode in which interpretation, summarization, and perspective generation are partially externalized to AI systems, thereby reconfiguring the locus and process of meaning construction. Third, the form of attentional engagement shows structural differentiation. Unlike the first two dimensions, which display relatively clear directional tendencies, changes in sustained attention are more heterogeneous: 48.9% of respondents report improvement, whereas 25.7% report decline. This suggests that AI-assisted reading does not exert a uniform effect on concentration, but instead reorganizes attentional patterns in differentiated ways. Taken together, the study argues that cognitive pathway reconstruction produces a complex dual effect. While AI-assisted reading can enhance information-processing efficiency and broaden access to knowledge, it may also exert a profound influence on cognitive autonomy, knowledge internalization, and the conditions necessary for sustained deep reading. These findings highlight the need for continued attention to how deep reading competence can be preserved and developed in AI-mediated reading environments.

Key wordsAI-assisted reading    deep reading    cognitive pathway    cognitive autonomy    large language models
出版日期: 2026-05-15
基金资助:上海市哲学社会科学规划一般项目“人工智能传播的‘双智能’共振风险防范与‘人机共生’新生态规制研究”(2023BXW002)

引用本文:

王大可. AI辅助阅读对深度阅读能力的影响机制研究——基于认知路径重构视角的分析[J]. 科技与出版, 2026, 45(3): 152-160.
WANG Dake. Impact of AI-Assisted Reading on Deep Reading Competence: Evidence from Cognitive Pathway Reconstruction. Science-Technology & Publication, 2026, 45(3): 152-160.

链接本文:

http://kjycb.tsinghuajournals.com/CN/      或      http://kjycb.tsinghuajournals.com/CN/Y2026/V45/I3/152

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