AbstractLearning Analytics (LA) is an emerging field in which sophisticated analytic tools are used to improve '/> Application of learning analytics using clustering data Mining for Students' disposition analysis
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Application of learning analytics using clustering data Mining for Students' disposition analysis

机译:基于聚类数据挖掘的学习分析在学生性格分析中的应用

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AbstractLearning Analytics (LA) is an emerging field in which sophisticated analytic tools are used to improve learning and education. It draws from, and is closely tied to, a series of other fields of study like business intelligence, web analytics, academic analytics, educational data mining, and action analytics. The main objective of this research work is to find meaningful indicators or metrics in a learning context and to study the inter-relationships between these metrics using the concepts of Learning Analytics and Educational Data Mining, thereby, analyzing the effects of different features on student’s performance using Disposition analysis. In this project, K-means clustering data mining technique is used to obtain clusters which are further mapped to find the important features of a learning context. Relationships between these features are identified to assess the student’s performance.
机译: Abstract 学习分析(LA)是一个新兴领域,其中使用了复杂的分析工具改善学习和教育。它借鉴并与其他一系列研究领域紧密相关,例如商业智能,Web分析,学术分析,教育数据挖掘和行动分析。这项研究工作的主要目的是在学习环境中找到有意义的指标或指标,并使用“学习分析”和“教育数据挖掘”的概念研究这些指标之间的相互关系,从而分析不同特征对学生表现的影响使用处置分析。在该项目中,K-means聚类数据挖掘技术用于获取聚类,将其进一步映射以查找学习上下文的重要特征。确定这些功能之间的关系以评估学生的表现。

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