决策树在学生辍学档案检测中的应用

R. T. Pereira, Javier Caicedo Zambrano
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引用次数: 16

摘要

该研究项目旨在利用数据挖掘技术,从哥伦比亚帕斯托市Nariño大学本科专业学生的社会经济、学术、学科和机构数据中确定学生退学模式。建立了从2004年上半年到2006年下半年录取的学生的数据存储库。三个完整的队列进行了分析,观察期为6年,直到2011年。使用基于决策树的分类技术发现社会经济和学术学生退学档案。所产生的知识将支持大学工作人员有效的决策,专注于制定与当前设置的学生保留计划相关的政策和战略。
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Application of Decision Trees for Detection of Student Dropout Profiles
The results of the research project that aims to identify patterns of student dropout from socioeconomic, academic, disciplinary and institutional data of students from undergraduate programs at the University of Nariño from Pasto city (Colombia), using data mining techniques are presented. Built a data repository with the records of students who were admitted in the period from the first half of 2004 and the second semester of 2006. Three complete cohorts were analyzed with an observation period of six years until 2011. Socioeconomic and academic student dropout profiles were discovered using classification technique based on decision trees. The knowledge generated will support effective decision-making of university staff focused to develop policies and strategies related to student retention programs that are currently set.
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