Analysis of Postgraduates’ Behavior and Learning Achievements based on Clustering Method

Yongchao Shen, Jiawen Li, Menghua Huo
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Abstract

With the rapid development of information technology, the application of big data in the education management has attracted more and more scholars’ attention. The widespread use of information recognition methods, especially the Ecards’ swiping technology provides an important support for the collection of students’ data. In this paper, the data of dormitory access, library access, breakfast consumption, published paper and course grades are combined to describe the characteristics of graduate students. Then academic graduate students are clustered into seven categories, from which data portraits for "straight A student" and "top researcher" are obtained. The colleges are divided into three categories according to the nature of their students’ paper, thus we can explore the differences of students’ behavior in different colleges. The research shows the prospect of machine learning in education management, and provides some inspiration to managers in this field.
基于聚类方法的研究生行为与学习成绩分析
随着信息技术的飞速发展,大数据在教育管理中的应用引起了越来越多学者的关注。信息识别手段的广泛应用,尤其是电子贺卡的刷卡技术,为学生数据的采集提供了重要的支持。本文结合研究生的宿舍出入、图书馆出入、早餐消费、发表论文、课程成绩等数据来描述研究生的特点。然后将学术型研究生分为7类,从中获得“优等生”和“顶尖研究员”的数据画像。根据学生论文的性质将学院分为三类,从而我们可以探索不同学院学生行为的差异。该研究显示了机器学习在教育管理中的前景,并为该领域的管理者提供了一些启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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