Research on the Construction of Smart Teaching Mode with Artificial Intelligence Technology Facilitating Education Informatization in Colleges and Universities

Ying Yin, Hansheng Peng, Hongliang Liu
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Abstract

Abstract Based on subject knowledge mapping, this paper dynamically collects learning data, portrays learners’ learning situations, and accurately regulates the learning process. Personalized learning path recommendations and learning communities are constructed through learner profiling and learning services. Secondly, structural equation modeling was used to hypothesize the three-level elements of the E-GPPE-C model. Finally, 103 college students in smart teaching classes were taken as research subjects, and the utility of the smart teaching model was analyzed separately through the steps of precondition validation and cross-lag model with random intercepts. The results show that the smart teaching model has β =0.286 for deep learning strategy, β =0.211 for the smart classroom, and β =0.20 for classroom participation, and they accurately indicate that smart teaching has a positive facilitating mechanism on the learning ability of college students. This study also provides a useful reference for the practice of smart teaching in various disciplines in colleges and universities.
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人工智能技术促进高校教育信息化的智慧教学模式构建研究
基于学科知识映射,动态收集学习数据,描绘学习者的学习情境,准确调节学习过程。通过学习者分析和学习服务构建个性化的学习路径推荐和学习社区。其次,采用结构方程模型对e- gpe - c模型的三层元进行了假设;最后以103名高校智能教学班学生为研究对象,分别通过前提验证和随机截距交叉滞后模型两步对智能教学模型的效用进行分析。结果表明,智能教学模式在深度学习策略、智能课堂和课堂参与方面的β =0.286、β =0.211和β =0.20,准确地表明智能教学对大学生学习能力有积极的促进机制。本研究也为高校各学科智能教学的实践提供了有益的参考。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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