Multiple educational data mining approaches to discover patterns in university admissions for program prediction

Julius Cesar O. Mamaril, Melvin A. Ballera
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Abstract

This paper presented the utilization of pattern discovery techniques by using multiple relationships and clustering educational data mining approaches to establish a knowledge base that will aid in the prediction of ideal college program selection and enrollment forecasting for incoming freshmen. Results show a significant level of accuracy in predicting college programs for students by mining two years of student college admission and graduation final grade scholastic records. The results of educational predictive data mining methods can be applied in improving the services of the admission department of an educational institution, particularly in its course alignment, student mentoring, admission forecast, marketing, and enrollment preparedness.
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多种教育数据挖掘方法,发现大学招生模式,用于项目预测
本文介绍了利用模式发现技术,通过使用多关系和聚类教育数据挖掘方法来建立一个知识库,该知识库将有助于预测理想的大学课程选择和新生入学预测。结果表明,通过挖掘两年的学生大学入学和毕业的最终成绩成绩记录,预测学生的大学课程具有显着的准确性。教育预测数据挖掘方法的结果可以应用于改善教育机构招生部门的服务,特别是在课程设置、学生指导、入学预测、市场营销和入学准备方面。
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