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Using cluster analysis for data mining in educational technology research

机译:在教育技术研究中使用聚类分析进行数据挖掘

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Cluster analysis is a group of statistical methods that has great potential for analyzing the vast amounts of web server-log data to understand student learning from hyperlinked information resources. In this methodological paper we provide an introduction to cluster analysis for educational technology researchers and illustrate its use through two examples of mining click-stream server-log data that reflects student use of online learning environments. Cluster analysis can be used to help researchers develop profiles that are grounded in learner activity—like sequence for accessing tasks and information, or time spent engaged in a given activity or examining resources—during a learning session. The examples in this paper illustrate the use of a hierarchical clustering method (Ward’s clustering) and a non-hierarchical clustering method (k-Means clustering) to analyze characteristics of learning behavior while learners engage in a problem-solving activity in an online learning environment. A discussion of advantages and limitations of using cluster analysis as a data mining technique in educational technology research concludes the article.
机译:聚类分析是一组统计方法,在分析大量Web服务器日志数据以了解学生从超链接信息资源中学习方面,具有很大的潜力。在此方法论论文中,我们为教育技术研究人员提供了聚类分析的简介,并通过挖掘挖掘流式服务器日志数据的两个示例说明了聚类分析的使用,这些数据反映了学生对在线学习环境的使用。聚类分析可用于帮助研究人员开发基于学习者活动的配置文件,例如在学习过程中访问任务和信息的顺序,或从事给定活动或检查资源所花费的时间。本文中的示例说明了使用分层聚类方法(Ward的聚类)和非分层聚类方法(k-Means聚类)来分析学习者在在线学习环境中从事解决问题活动时的学习行为特征。总结了在教育技术研究中使用聚类分析作为数据挖掘技术的优缺点的结论。

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