Implementing cluster analysis tool for the identification of students typologies

Lotfi Najdi, Brahim Er-Raha
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引用次数: 3

Abstract

The identification of students' typologies plays interesting role in adapting educational strategies and improving academic performances. In this work, we show how unsupervised learning techniques can be applied to educational data for the extraction of typologies and profiles of graduate students based on educational outcomes in combination with the time to degree. We also describe a web-based tool for clustering student's data, based on R programming and shiny, in order to make the clustering analysis, more accessible for university decision maker. The clustering tool presented in this article will enhance the understanding of different learning characteristics of graduate students and could be used to adapt teaching approaches and strategies according to the identified student profiles.
实施聚类分析工具识别学生类型
学生类型的识别在适应教育策略和提高学习成绩方面起着有趣的作用。在这项工作中,我们展示了如何将无监督学习技术应用于教育数据,以基于教育成果结合学位时间提取研究生的类型学和概况。我们还描述了一个基于R编程和shiny的基于web的学生数据聚类工具,以使聚类分析更易于大学决策者使用。本文提出的聚类工具将增强对研究生不同学习特征的理解,并可根据已识别的学生特征调整教学方法和策略。
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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