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TIMSS 2011 Student and Teacher Predictors for Mathematics Achievement Explored and Identified via Elastic Net

机译:通过Elastic Net探索和确定TIMSS 2011学生和教师的数学成就预测

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A substantial body of research has been conducted on variables relating to students' mathematics achievement with TIMSS. However, most studies have employed conventional statistical methods, and have focused on selected few indicators instead of utilizing hundreds of variables TIMSS provides. This study aimed to find a prediction model for students' mathematics achievement using as many TIMSS student and teacher variables as possible. Elastic net, the selected machine learning technique in this study, takes advantage of both LASSO and ridge in terms of variable selection and multicollinearity, respectively. A logistic regression model was also employed to predict TIMSS 2011 Korean 4th graders' mathematics achievement. Ten-fold cross-validation with mean squared error was employed to determine the elastic net regularization parameter. Among 162 TIMSS variables explored, 12 student and 5 teacher variables were selected in the elastic net model, and the prediction accuracy, sensitivity, and specificity were 76.06, 70.23, and 80.34%, respectively. This study showed that the elastic net method can be successfully applied to educational large-scale data by selecting a subset of variables with reasonable prediction accuracy and finding new variables to predict students' mathematics achievement. Newly found variables via machine learning can shed light on the existing theories from a totally different perspective, which in turn propagates creation of a new theory or complement of existing ones. This study also examined the current scale development convention from a machine learning perspective.
机译:TIMSS已对与学生的数学成就有关的变量进行了大量研究。但是,大多数研究都采用了常规的统计方法,并且侧重于选定的几个指标,而不是利用TIMSS提供的数百个变量。本研究旨在使用尽可能多的TIMSS学生和教师变量来找到学生数学成绩的预测模型。弹性网,这项研究中选择的机器学习技术,在变量选择和多重共线性方面分别利用了LASSO和ridge的优势。还使用逻辑回归模型来预测TIMSS 2011韩国四年级学生的数学成绩。使用具有均方误差的十倍交叉验证来确定弹性网正则化参数。在探索的162个TIMSS变量中,从弹性网模型中选择了12个学生变量和5个教师变量,预测准确性,敏感性和特异性分别为76.06%,70.23和80.34%。这项研究表明,通过选择具有合理预测精度的变量子集并找到新变量来预测学生的数学成绩,弹性网方法可以成功地应用于教育大规模数据。通过机器学习发现的新变量可以从完全不同的角度阐明现有理论,从而反过来传播新理论的创建或现有理论的补充。这项研究还从机器学习的角度检查了当前的规模开发惯例。

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