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Analyzing students records to identify patterns of students' performance

机译:分析学生记录以识别学生的表现方式

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Academic failures among university students have been the subject of interest in higher education community. Students drop out due to poor academic performance as early as in the first year of their university enrolment. Many interested parties' debate and try to find reasons for this poor performance. Consequently, the ability to predict a student's performance could be useful in many ways to stakeholders of higher education institutions. This paper discusses the data mining technique used to identify the significant variables that affects and influences the performance of undergraduate students. Students' demographic and past academic performance data are then used to study the academic pattern. Early phases of the CRISP-DM methodology is also described in detail consisting business understanding, data understanding and data preparation. The data modeling and mining tool used identifies the most significant correlation of variables associated with academic success based on the past ten years of demographic and students' performance data of the College of Information Technology, Universiti Tenaga Nasional. Finally, the results from the application of the CHAID algorithm aimed at predicting students' academic success is presented.
机译:大学生中的学术失败一直是高等教育界的兴趣主题。由于在大学招生的第一年,学生造成的学术表现差。许多有关方面的辩论并试图找到这种糟糕表现的原因。因此,预测学生表现的能力可能是高等教育机构利益相关者的许多方式都有用。本文讨论了数据挖掘技术,用于确定影响和影响本科生绩效的重要变量。然后使用学生人口统计和过去的学术绩效数据来研究学术模式。还详细描述了CRISP-DM方法的早期阶段,包括业务理解,数据理解和数据准备。数据建模和采矿工具使用了基于过去十年的资讯科技学院的人口统计和学生绩效数据,识别与学术成功相关的变量相关的最重要相关性。最后,提出了旨在预测学生学业成功的CHAID算法的应用。

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