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Prediction of Students Performance Using Frequent Pattern Tree

机译:基于频繁模式树的学生成绩预测

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Data stored in educational database is increasing day by day. Data mining algorithms can be used to find hidden patterns from the student's database. These patterns can be used to find academic performance of students. The main aim of this study was to determine factors that influence the student's performance. This paper proposes Generalized Sequential Pattern mining algorithm for finding frequent patterns from student's database and Frequent Pattern tree algorithm to build the tree based on frequent patterns. This tree can be used for predicting the student's performance as pass or fail. Once the student is found at the risk of failure he/she can be provided guidance for performance improvement.
机译:教育数据库中存储的数据每天都在增加。数据挖掘算法可用于从学生的数据库中查找隐藏的模式。这些模式可用于查找学生的学习成绩。这项研究的主要目的是确定影响学生表现的因素。提出了一种从学生数据库中查找频繁模式的广义顺序模式挖掘算法,并提出了基于频繁模式树的频繁模式树算法。这棵树可用于预测学生的表现是否合格。一旦发现学生有失败的风险,就可以为他/她提供绩效改进的指导。

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