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Analysis of Academic Results for Informatics Course Improvement Using Association Rule Mining

机译:协会规则挖掘的信息学课程改善学术成果分析

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In this chapter we analyze the application of association rule mining for assessing student academic results and extracting recommendations for the improvement of course content. We propose a framework for mining educational data using association rules, and a novel metric for assessing the strength of an association rule, called "cumulative interestingness". In a case study, we analyze the Informatics course examination results using association rules, rank course topics following their importance for final course marks based on the strength of the association rules, and propose which specific course topic should be improved to achieve higher student learning effectiveness and progress.
机译:在本章中,我们分析了关联规则挖掘的适用,以评估学生的学术成果,提取建议,提出改善课程内容。我们向采用关联规则提出挖掘教育数据的框架,以及评估关联规则实力的新型度量,称为“累积有趣”。在一个案例研究中,我们使用关联规则分析信息课程课程审查结果,在基于关联规则的实力的基础上对最终课程标志的重要性,并提出应该改善哪些具体课程主题以实现更高的学生学习效果和进步。

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