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Evaluating the effectiveness of educational data mining techniques for early prediction of students' academic failure in introductory programming courses

机译:评估教育数据挖掘技术在编程课程入门中对学生学习成绩的早期预测的有效性

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The data about high students' failure rates in introductory programming courses have been alarming many educators, raising a number of important questions regarding prediction aspects. In this paper, we present a comparative study on the effectiveness of educational data mining techniques to early predict students likely to fail in introductory programming courses. Although several works have analyzed these techniques to identify students' academic failures, our study differs from existing ones as follows: (i) we investigate the effectiveness of such techniques to identify students likely to fail at early enough stage for action to be taken to reduce the failure rate; (ii) we analyse the impact of data preprocessing and algorithms fine-tuning tasks, on the effectiveness of the mentioned techniques. In our study we evaluated the effectiveness of four prediction techniques on two different and independent data sources on introductory programming courses available from a Brazilian Public University: one comes from distance education and the other from on-campus. The results showed that the techniques analyzed in our study are able to early identify students likely to fail, the effectiveness of some of these techniques is improved after applying the data preprocessing and/or algorithms fine-tuning, and the support vector machine technique outperforms the other ones in a statistically significant way. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在入门编程课程中有关高学生失败率的数据已使许多教育者震惊,提出了有关预测方面的许多重要问题。在本文中,我们对教育数据挖掘技术对早期预测可能在入门编程课程中失败的学生的有效性进行了比较研究。尽管有几本著作分析了这些技术来识别学生的学业失败,但是我们的研究与现有技术存在以下差异:(i)我们调查了这种技术在足够早的阶段识别出可能失败的学生的有效性,以便采取行动以减少学生的学习失败。失败率; (ii)我们分析了数据预处理和算法微调任务对上述技术的有效性的影响。在我们的研究中,我们评估了两种预测技术在巴西公立大学提供的入门编程课程的两种不同且独立的数据源上的有效性:一种来自远程教育,另一种来自校园内。结果表明,我们的研究中分析的技术能够尽早识别出可能失败的学生,在应用了数据预处理和/或算法微调后,其中某些技术的有效性得到了提高,并且支持向量机技术的性能优于其他具有统计意义的方式。 (C)2017 Elsevier Ltd.保留所有权利。

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