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Recognition and Analysis of Poor Students on College Students Campus Card Consumption Data Based on Big Data

机译:基于大数据的大学生校园卡消费数据的认可与分析

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Subsidization for students from low-income families is a major student management work for colleges and universities. With deep and extensive use of big data in all sectors, relevant big data shall be used to identify poor students. Using big data rationally for targeted subsidization represents in-depth application of big data in educational field. In this thesis, the researchers collected 36546 data concerning dining consumption of students in three months, used Datist, a big data analysis software to build a model, acquired concerning dining habits, consuming behaviors, situations in school and consumption indicators of the students, and then selected poor students. This study laid a solid foundation for large-scale dynamic implementation of "campus big data and targeted subsidization", accurate recognition of poor students and rational student analysis in future.
机译:低收入家庭的学生补贴是高校的主要学生管理工作。随着所有部门的大数据深度和广泛使用,应使用相关的大数据来识别贫困学生。合理使用大数据用于目标补贴代表了教育领域大数据的深入应用。在本文中,研究人员在三个月内收集了36546个关于学生的用餐消费的数据,使用了一个大数据分析软件,建立了一个模型,获取有关餐饮习惯,消费行为,学校的情况以及学生的消费指标的型号,以及然后选择了贫困学生。本研究为“校园大数据和有针对性补贴”,准确识别贫困学生和未来理性学生分析的大规模动态实施奠定了坚实的基础。

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