教育数据挖掘在高等教育机构学习成绩分析中的应用(UNJANI案例研究)

Y. H. Chrisnanto, Gunawan Abdullah
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引用次数: 1

摘要

教育是一个人一生中很重要的事情,因为有了足够的教育,一个人的生活会更好。教育可以通过具有建设性地提供个人学术能力的正式机构获得。本研究旨在利用数据挖掘(DM)技术确定学生在学术和非学术领域的表现,这些技术是针对学术数据分析的。学习成绩是通过教育数据挖掘(EDM)集成数据挖掘模型提供的,其中使用的技术包括分类(ID3, SVM),聚类(k-Means, k-Medoids),关联规则(Apriori)和异常检测(DBSCAN)。所使用的数据集是一段时间内研究结果形式的学术数据。EDM的结果可用于与学业绩效相关的分析,可用于高等教育机构学术管理的战略决策。本研究的结果表明,在数据挖掘中使用多种技术可以最大限度地利用相同的数据源分析学习成绩,并产生不同的分析模式。
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The uses of educational data mining in academic performance analysis at higher education institutions (case study at UNJANI)
Education is an important thing in a person's life, because by having adequate education, one's life will be better. Education can be obtained formally through formal institutions that constructively provide a person's abilities academically. This study aims to determine student performance in terms of academic and non-academic domains at a certain time during their education using techniques in data mining (DM) which are directed towards academic data analysis. Academic performance is delivered through the Educational Data Mining (EDM) integrated data mining model, in which the techniques used include classification (ID3, SVM), clustering (k-Means, k-Medoids), association rules (Apriori) and anomaly detection (DBSCAN). The data set used is academic data in the form of study results over a certain period of time. The results of EDM can be used for analysis related to academic performance which can be used for strategic decision making in aca-demic management at higher education institutions. The results of this study indicate that the use of several techniques in data mining together can maximize the ability to analyze academic performance with the same data source and produce different analysis patterns.
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