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Perspectives to Predict Dropout in University Students with Machine Learning

机译:用机器学习预测大学生辍学的观点

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This study analyzes the performance of four machine learning algorithms with different perspectives for defining data files, in the prediction of university student desertion. The algorithms used were: Random Forest, Neural Networks, Support Vector Machines and Logistic Regression. It was found that the Random Forest algorithm with 10 variables randomly sampled as candidates in each division, was the best for predicting dropouts and that the ideal perspective for training the algorithm is to use information on all semesters that students take within a given period of time, using a classification variable that defines the non-dropout as the graduated student. In a first validation sample, this approach correctly predicted 91% of dropouts, with a sensitivity of 87%.
机译:本研究分析了四种用于定义数据文件的具有不同视角的机器学习算法在预测大学生逃学中的性能。使用的算法是:随机森林,神经网络,支持向量机和Logistic回归。结果发现,随机森林算法在每个部门中随机抽取10个变量作为候选变量,是预测辍学率的最佳方法,并且训练该算法的理想观点是使用学生在给定时间内所有学期的信息,使用将非辍学者定义为已毕业学生的分类变量。在第一个验证样本中,此方法正确地预测了91%的辍学率,灵敏度为87%。

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