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Discretization method to optimize logistic regression on classification of student's cognitive domain

机译:在学生认知域分类上优化逻辑回归的离散化方法

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The accuracy level of the student determination in a class often has been paid less attention in educational data mining. So, this paper studies how to improve the performance of classification method to reach the higher of level accuracy. Therefore, we optimize logistic regression using equal frequency discretization method. Here, we test the student data by three intervals, four intervals, and five intervals. For logistic regression, we implement two regularization types, namely: lasso, ridge. Furthermore, to evaluate the results, we use the random sampling technique. Additionally, we measure the results by four classifier metrics, namely: F1, precision, accuracy, and recall. The experimental result shows that this method can be applied to optimize the logistic regression. On logistic regression_lasso and logistic regression_ridge, the three intervals achieve the highest of accuracy level. They can improve the accuracy level about 9% - 9.4%, respectively.
机译:在教育数据挖掘中,课程中学生决定的准确度往往受到关注。所以,本文研究了如何提高分类方法的性能,达到水平准确性越高。因此,我们使用等频离散化方法优化逻辑回归。在这里,我们以三个间隔,四个间隔和五个间隔测试学生数据。对于Logistic回归,我们实施了两个正则化类型,即:套索,岭。此外,为了评估结果,我们使用随机抽样技术。此外,我们通过四个分类器度量测量结果,即:F1,精度,准确性和召回。实验结果表明,该方法可以应用于优化逻辑回归。在Logistic回归_Lasso和Logistic Regention_ridge上,三个间隔达到最高精度水平。它们可以分别提高约9%-9.4%的准确度。

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