生成式人工智能驱动下的小学语文阅读教学进阶路径

    Research on the advanced path of primary school Chinese reading teaching driven by GAI

    • 摘要: 生成式人工智能(GAI)是一种基于算法模型生成文本、图片、声音等内容的技术,正深度融入教育领域。当前小学语文阅读教学面临教学同质化、文本静态化、评估经验化等问题,制约了教学质量提升与学生成长发展。鉴于此,可依托ACT-R架构捕捉学习者认知图谱,建构差异化任务系统,完善个性化阅读设计;融合跨媒介叙事重构多模态文本,激活认知张力,界定文化语境迁移伦理边界,深化文本理解与文化传承;通过历史语境数字化孪生构建具身体验,搭建GAI伴学认知脚手架,促成意义内化、助力批判思维发展;基于微观证据链采集与灵活干预系统自进化,达成素养培育闭环追踪评估,从而支撑教学实施,落实语文核心素养。

       

      Abstract: Generative artificial intelligence (GAI) is a technology that produces text, images, sounds, and other content based on algorithmic models, and it has become deeply integrated into the field of education. Currently, primary school Chinese reading instruction encounters numerous challenges, including teaching homogenization, static texts, and empirical assessment methods. These issues hinder the enhancement of teaching quality as well as the growth and development of students. In light of this, the ACT-R architecture can be beveraged to model learners’ cognitive maps, construct a differentiated task system that outlines personalized reading pathways. Additionally, by integrating cross-media narratives to reconstruct multimodal texts, we can activate cognitive tension while defining ethical boundaries for cultural context transfer—thereby deepening text comprehension and fostering cultural inheritance. Furthermore, employing digital twins of historical contexts allows us to create embodied experiences. This approach facilitates the establishment of GAI companion cognitive scaffolds that promote meaning internalization and support critical thinking development. By collecting micro-evidence chains alongside flexible intervention systems for self-evolution, we can achieve closed-loop tracking and assessment of quality cultivation—ultimately supporting effective teaching implementation and realizing core Chinese literacy objectives.

       

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