Modelling online assessment in management subjects through educational data mining

M. Ayub, Hapnes Toba, M. Wijanto, Steven Yong
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引用次数: 7

Abstract

Educational data mining(EDM) has been used widely to investigate data that come from a learning process, including blended learning. This study explores educational data from a Learning Course Management System (LMS) and academic data in two courses of Management Study Program, Faculty of Economics at Maranatha Christian University, which are Change Management (CM) in undergraduate program and Creative Leadership (CL) in master degree program as case studies. The main aim of this research is to provide feedback for the learning process through the LMS in order to improve students' achievement. EDM methods used are association rule mining and J48 classification. The results of association rule mining are two sets of interesting rules for the CM course and three sets of rules for CL course. Using J48 classification, two J48 pruned trees are obtained for each course. Based on those results, some suggestions are proposed to enhance the LMS and to encourage students' involvement in blended learning.
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基于教育数据挖掘的管理学科在线评估建模
教育数据挖掘(EDM)已被广泛用于研究来自学习过程的数据,包括混合学习。本研究以马拉纳塔基督教大学经济学院管理研究项目本科课程的“变革管理”(CM)和硕士课程的“创造性领导”(CL)为个案,探讨了学习课程管理系统(LMS)的教育数据和学术数据。本研究的主要目的是通过LMS为学习过程提供反馈,以提高学生的学习成绩。使用的EDM方法是关联规则挖掘和J48分类。关联规则挖掘的结果是CM课程的两组有趣规则和CL课程的三组规则。采用J48分类,每个球场得到两棵J48剪枝树。基于这些研究结果,本文提出了一些建议,以加强LMS,鼓励学生参与混合学习。
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