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An Efficient Approach for Multiclass Student Performance Prediction based upon Machine Learning

机译:基于机器学习的多班学生表现预测的有效方法

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The field of educational data mining has enabled the researchers, educators to predict the student's pass rate, failure rate, dropout rate etc. The main reason for dropouts of the student is the failure of students. Several researchers have proposed various educational data mining techniques for predicting the student performance and analyzed existing techniques on educational datasets. In this paper, we have analyzed the performance of four machine learning algorithms on educational dataset used for the early prediction of student performance. While there is a rich literature survey in student performance prediction, our work differs from existing works as follows:(i) Our prediction is not limited to binary classification of pass and fail but we have used a multiclass classification in which student are divided into three classes namely poor, average, good performing students;(ii) We have used data preprocessing, feature extraction, fine tuning of parameters of algorithms to build the model which is not focused by many researchers;(iii) We have built a more accurate model with 95% accuracy and lesser execution time;(iv) We have studied the relationship between various attributes through a correlation heatmap. This paper will elaborate on student performance prediction techniques and give a comparative study among them.
机译:教育数据挖掘领域使研究人员,教育工作者能够预测学生的及格率,失败率,辍学率等。导致学生辍学的主要原因是学生的失败。一些研究人员提出了各种教育数据挖掘技术来预测学生的表现,并分析了教育数据集上的现有技术。在本文中,我们分析了四种机器学习算法在用于早期预测学生表现的教育数据集上的表现。尽管在学生成绩预测方面有大量文献调查,但我们的工作与现有工作有以下不同:(i)我们的预测不仅限于通过和失败的二进制分类,而是使用了将学生分为三类的多类分类班级,即贫困,中等,表现良好的学生;(ii)我们使用了数据预处理,特征提取,算法参数的微调来构建模型,而这并不是许多研究人员所关注的;(iii)我们建立了更准确的模型具有95%的准确性和更少的执行时间;(iv)我们已经通过相关热图研究了各种属性之间的关系。本文将详细介绍学生成绩预测技术,并进行比较研究。

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