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Data mining in educational technology classroom research: Can it make a contribution?

机译:教育技术课堂研究中的数据挖掘:它可以做出贡献吗?

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摘要

The paper addresses and explains some of the key questions about the use of data mining in educational technology classroom research. Two examples of use of data mining techniques, namely, association rules mining and fuzzy representations are presented, from a study conducted in Europe and another in Australia. Both of these studies examine student learning, behaviors, and experiences within computer-supported classroom activities. In the first study, the technique of association rules mining was used to understand better how learners with different cognitive types interacted with a simulation to solve a problem. Association rules mining was found to be a useful method for obtaining reliable data about learners' use of the simulation and their performance with it. The study illustrates how data mining can be used to advance educational software evaluation practices in the field of educational technology. In the second study, the technique of fuzzy representations was employed to inductively explore questionnaire data. The study provides a good example of how educational technologists can use data mining for guiding and monitoring school-based technology integration efforts. Based on the outcomes, the implications of the study are discussed in terms of the need to develop educational data mining tools that can display results, information, explanations, comments, and recommendations in meaningful ways to non-expert users in data mining. Lastly, issues related to data privacy are addressed. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文解决并解释了有关在教育技术课堂研究中使用数据挖掘的一些关键问题。在欧洲和澳大利亚进行的一项研究中,给出了使用数据挖掘技术的两个示例,即关联规则挖掘和模糊表示。这两项研究都在计算机支持的课堂活动中考察了学生的学习,行为和经验。在第一个研究中,使用关联规则挖掘技术来更好地了解具有不同认知类型的学习者如何与模拟交互以解决问题。发现关联规则挖掘是一种获取有关学习者对模拟的使用及其性能的可靠数据的有用方法。这项研究说明了如何使用数据挖掘来推进教育技术领域的教育软件评估实践。在第二项研究中,采用模糊表示技术来归纳探索问卷数据。该研究提供了一个很好的例子,说明了教育技术人员如何使用数据挖掘来指导和监视基于学校的技术集成工作。根据结果​​,就需要开发教育数据挖掘工具的需求来讨论研究的意义,该工具可以以有意义的方式向数据挖掘的非专家用户显示结果,信息,解释,评论和建议。最后,解决了与数据隐私有关的问题。 (C)2017 Elsevier Ltd.保留所有权利。

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