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智慧校园环境下的学生轨迹数据分析技术 被引量:3

Students' Trajectory Data Analysis Technique in Intelligent Campus Environment
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摘要 轨迹数据是学生行为数据的重要组成部分,包含学生的日常行为、学习习惯、生活规律等丰富的信息,为校园学生管理、教学管理、安防预警等提供决策支持。智慧校园是学生轨迹数据采集和分析的基础。文章在实践经验基础上,对智慧校园环境下学生轨迹数据分析的概念、步骤和技术手段进行分析和归纳。 Trajectory data, which contains rich information about students' daily behavior, study habits, life rules and so on, is an important part of student behavior data. It provides decisive support for the management of students, teaching, and security and so on. Intelligent campus is the basis of student trajectory data acquisition and analysis. On the basis of practical experience, the paper analyzes and sums up the concept, steps and technical means of student trajectory data analysis in intelligent campus environment.
作者 门威 丹国萍
出处 《漯河职业技术学院学报》 2017年第5期7-9,共3页 Journal of Luohe Vocational Technical College
基金 河南省科技厅2017年度科技攻关项目(172102210235) 河南省教育厅2016年度高等学校重点项目(16B520008) 国家开放大学2016年度青年课题(G16F2406Q)
关键词 智慧校园 学生轨迹数据分析 校园管理 intelligent campus student trajectory data analysis campus management
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