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Student Academic Performance Prediction using Supervised Learning Techniques

机译:使用监督学习技术的学生学习成绩预测

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Automatic Student performance prediction is a crucial job due to the large volume of data in educational databases. This job is being addressed by educational data mining (EDM). EDM develop methods for discovering data that is derived from educational environment. These methods are used for understanding student and their learning environment. The educational institutions are often curious that how many students will be pass/fail for necessary arrangements. In previous studies, it has been observed that many researchers have intension on the selection of appropriate algorithm for just classification and ignores the solutions of the problems which comes during data mining phases such as data high dimensionality ,class imbalance and classification error etc. Such types of problems reduced the accuracy of the model. Several well-known classification algorithms are applied in this domain but this paper proposed a student performance prediction model based on supervised learning decision tree classifier. In addition, an ensemble method is applied to improve the performance of the classifier. Ensemble methods approach is designed to solve classification, predictions problems. This study proves the importance of data preprocessing and algorithms fine-tuning tasks to resolve the data quality issues. The experimental dataset used in this work belongs to Alentejo region of Portugal which is obtained from UCI Machine Learning Repository. Three supervised learning algorithms (J48, NNge and MLP) are employed in this study for experimental purposes. The results showed that J48 achieved highest accuracy 95.78% among others.
机译:由于教育数据库中的数据量很大,自动进行学生成绩预测是一项至关重要的工作。教育数据挖掘(EDM)正在解决此工作。 EDM开发了发现来自教育环境的数据的方法。这些方法用于理解学生及其学习环境。教育机构通常对有多少学生将通过或未通过必要的安排感到好奇。在以前的研究中,已经观察到许多研究人员都在选择用于分类的适当算法,而忽略了数据挖掘阶段出现的问题的解决方案,例如数据高维,类不平衡和分类错误等。问题的出现降低了模型的准确性。该领域应用了几种著名的分类算法,但本文提出了一种基于监督学习决策树分类器的学生成绩预测模型。另外,采用集成方法来提高分类器的性能。集成方法方法旨在解决分类,预测问题。这项研究证明了数据预处理和算法微调任务对于解决数据质量问题的重要性。在这项工作中使用的实验数据集属于葡萄牙的Alentejo地区,该数据集来自UCI机器学习存储库。在本研究中,出于实验目的,采用了三种监督学习算法(J48,NNge和MLP)。结果表明,J48的最高准确率达到95.78%。

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