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Identifying Non-Performing Students in Higher Educational Institutions Using Data Mining Techniques

机译:使用数据挖掘技术识别高等教育机构中的非表演学生

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摘要

The educational institutes are focusing on improving the performance of students by using several data mining techniques. Since there is an increase in the number of drop out students every year, if we are able to predict whether a student will complete the course or not, it is possible to take some preventive actions beforehand. The primary data set used for modelling has been taken from a reputed technical institute of Uttar Pradesh which consists of data of 6,807 students containing 20 academic and non-academic attributes. The most relevant attributes are extracted using CorrelationAttributeEval (in WEKA) technique using Ranker search method which ranks the attributes as per their evaluation. Synthetic minority oversampling technique (SMOTE) filter is applied to deal with the skewed data set. The models are built from eight classifiers that are analysed for predicting the most appropriate model to classify whether a student will complete the course or withdraw his/her admission.
机译:教育机构专注于通过使用多种数据挖掘技术来提高学生的性能。 由于每年的辍学学生数量增加,如果我们能够预测学生是否会完成课程,因此可以预先采取一些预防措施。 用于建模的主要数据集已从北方邦的知名技术研究所占据,其中包括6,807名学生的数据,其中包含20个学术和非学术属性。 使用Crountar Search方法使用RountelationAttributeeVal(在Weka)技术中提取最相关的属性,该方法根据其评估等属性排列属性。 合成少数群体过采样技术(SMOTE)过滤器用于处理偏斜数据集。 该模型由八个分类器构建,分析为预测最合适的模型来分类学生是否会完成课程或撤销他/她的入学。

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