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Educational data mining and learning analytics for 21st century higher education: A review and synthesis

机译:21世纪高等教育的教育数据挖掘和学习分析:回顾与综合

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The potential influence of data mining analytics on the students' learning processes and outcomes has been realized in higher education. Hence, a comprehensive review of educational data mining (EDM) and learning analytics (LA) in higher education was conducted. This review covered the most relevant studies related to four main dimensions: computer-supported learning analytics (CSLA), computer-supported predictive analytics (CSPA), computer-supported behavioral analytics (CSBA), and computer-supported visualization analytics (CSVA) from 2000 till 2017. The relevant EDM and LA techniques were identified and compared across these dimensions. Based on the results of 402 studies, it was found that specific EDM and LA techniques could offer the best means of solving certain learning problems. Applying EDM and LA in higher education can be useful in developing a student-focused strategy and providing the required tools that institutions will be able to use for the purposes of continuous improvement.
机译:数据挖掘分析对学生学习过程和结果的潜在影响已在高等教育中实现。因此,对高等教育中的教育数据挖掘(EDM)和学习分析(LA)进行了全面回顾。这篇综述涵盖了与以下四个主要方面相关的最相关研究:计算机支持的学习分析(CSLA),计算机支持的预测分析(CSPA),计算机支持的行为分析(CSBA)和来自以下方面的计算机支持的可视化分析(CSVA) 2000年至2017年。确定了相关的EDM和LA技术,并在这些方面进行了比较。根据402个研究的结果,发现特定的EDM和LA技术可以提供解决某些学习问题的最佳方法。在高等教育中应用EDM和LA有助于制定以学生为中心的策略,并提供机构可以用来持续改进的必要工具。

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