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An overview and comparison of supervised data mining techniques for student exam performance prediction

机译:监督数据挖掘技术对学生考试成绩预测的概述和比较

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Recent increase in the availability of learning data has given educational data mining an importance and momentum, in order to better understand and optimize the learning process and environments in which it occurs. The aim of this paper is to provide a comprehensive analysis and comparison of state of the art supervised machine learning techniques applied for solving the task of student exam performance prediction, i.e. discovering students at a "high risk" of dropping out from the course, and predicting their future achievements, such as for instance, the final exam scores. For both classification and regression tasks, the overall highest precision was obtained with artificial neural networks by feeding the student engagement data and past performance data, while the usage of demographic data did not show significant influence on the precision of predictions. To exploit the full potential of the student exam performance prediction, it was concluded that adequate data acquisition functionalities and the student interaction with the learning environment is a prerequisite to ensure sufficient amount of data for analysis.
机译:为了更好地了解和优化学习过程和学习环境,学习数据的可用性最近的增长使教育数据挖掘变得越来越重要。本文的目的是提供全面的分析和比较,用于解决学生考试成绩预测任务的有监督监督的机器学习技术,即发现处于“辍学”风险的学生,以及预测他们将来的成绩,例如期末考试成绩。对于分类和回归任务,通过输入学生参与度数据和过去的表现数据,使用人工神经网络可以获得整体上最高的精度,而人口统计数据的使用对预测的精度没有显着影响。为了充分发挥学生考试成绩预测的潜力,得出的结论是,适当的数据采集功能以及学生与学习环境的互动是确保有足够数量的数据进行分析的前提。

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