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Information Systems Students' Study Performance Prediction Using Data Mining Approach

机译:信息系统学生的数据挖掘方法对学习成绩的预测

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The quality of study program performance can be seen from the achievement of the accreditation status of the study program, where one element of the assessment instrument related to graduate profile is the study performance. Graduate on time is one of the indicators of a student's success in obtaining his undergraduate degree and becomes an important attribute, because by being able to predict the study period of students, higher education institutions can minimize the failure of students graduation by making planning, escorting studies, and more intensive guidance. If the data stored in the academic database is only processed for reporting purposes and has not been utilized optimally to support decision making, it is very unfortunate because the so large data are not used to extract what information are contained in the data. Regarding students on time graduation prediction, data mining classification can be performed against the data stored in academic database. This research aims to predict the students on time graduation using data mining decision tree classification with C4.5 algorithm and to find out what attributes influence the prediction. The attributes used consisted of gender, hometown, school hometown, shift, entrance exam grade, and Grade Point Average (GPA). The result showed that the most influential attribute was the GPA and C4.5 algorithm had a performance in classifying the data with an accuracy value of 78.612%, a precision value of 0.762, and a recall value of 0.786.
机译:学习计划绩效的质量可以从学习计划的认可状态中看出,其中与毕业生概况相关的评估工具之一是学习表现。准时毕业是学生获得大学学位的成功指标之一,并成为一个重要的属性,因为高校可以通过预测学生的学习时间,通过制定计划,陪同来最大程度地减少学生毕业的失败。研究,以及更深入的指导。如果存储在学术数据库中的数据仅出于报告目的而处理,而没有得到最佳利用来支持决策,那将是非常不幸的,因为没有使用如此大的数据来提取数据中包含的信息。关于学生的时间毕业预测,可以对存储在学术数据库中的数据进行数据挖掘分类。这项研究旨在使用C4.5算法的数据挖掘决策树分类来预测学生的按时毕业,并找出哪些属性会影响预测。使用的属性包括性别,家乡,学校家乡,班次,入学考试成绩和平均绩点(GPA)。结果表明,影响最大的属性是GPA,C4.5算法具有对数据进行分类的性能,准确性值为78.612%,准确性值为0.762,召回值为0.786。

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