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Early Detection of Poor Academic Performers Using Machine Learning Predictive Modeling

机译:利用机器学习预测建模早期检测贫困学术表演者

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摘要

The student's academic development, retention, and attainment gap are considered as the common key factors that influence the institutional academic performance. In this regard, educational institutions are focusing to reduce the attainment gap between good, average, and poor performing students. Two different datasets are taken for this study. Students' data is collected through questionnaire, and Dataset 1 (D1) is created. The second dataset (D2) is taken from the repository. Both the datasets have been preprocessed followed by attribute selection and predictive modeling. In this study, predictive models have been built, and the learners are classified as high, average, and low performers based on their academic scores as well as on their demographic characters. The three classifier models are applied on the datasets. Based on the evaluation measures, the best classifier is identified. This early identification of low performance students will help the educators as well as the learners to put a special care to enhance the learning process as well as to improve the academic performance.
机译:学生的学术发展,保留和达到差距被视为影响体制学业绩效的共同关键因素。在这方面,教育机构专注于减少良好,平均和穷人表演学生之间的达到差距。这项研究拍摄了两个不同的数据集。学生的数据通过调查问卷收集,并创建数据集1(D1)。第二个数据集(D2)取自存储库。数据集已被预处理,然后是属性选择和预测建模。在这项研究中,已经建立了预测模型,基于他们的学术分数以及他们的人口统计,学习者被归类为高,平均和低的表演者。三个分类器模型应用于数据集。根据评估措施,确定了最佳分类器。这种早期的低绩效学生将帮助教育工作者以及学习者特别注意提升学习过程,并提高学业成绩。

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