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Relevant factors and classification of student alcohol consumption

机译:学生饮酒的相关因素和分类

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Educational data mining is the process of applying data mining tools and techniques to analyze data for educational purpose. This paper carries out educational data mining to study the student alcohol consumption through a public dataset which includes student attributes and their grades. The decision tree algorithm and the random forest algorithm are applied to perform classification and to analyze the variable importance. The regression model is then employed to illustrate the relationship between alcohol consumption level and the students' final grades. Our analysis provides knowledge on the relationship between student characteristics and alcohol consumption. The study also compares performance of the decision tree algorithm and the random forest algorithm.
机译:教育数据挖掘是应用数据挖掘工具和技术来分析教育目的数据的过程。本文通过公共数据集进行教育数据挖掘来研究学生饮酒,包括学生属性及其成绩。判决树算法和随机林算法应用于执行分类并分析变量重要性。然后采用回归模型来说明酒精消费水平与学生的最终成绩之间的关系。我们的分析提供了关于学生特征与酒精消费之间关系的知识。该研究还比较了决策树算法和随机林算法的性能。

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