Educational Data Mining: Employing Machine Learning Techniques and Hyperparameter Optimization to Improve Students’ Academic Performance

Mohamed Bellaj, Ahmed Ben Dahmane, Said Boudra, Mohammed Lamarti Sefian
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Abstract

Educational data mining (EDM) is a specialized field within data mining that focuses on extracting valuable insights from academic data across high school and university levels. A common practice in EDM involves predicting students’ grades to identify at-risk individuals and improve the efficiency of academic tasks. This knowledge benefits students, parents, and institutions equally. Early detection enables interventions that improve student performance. The literature presents various prediction strategies, each with its own unique advantages and disadvantages. This study aims to comprehensively evaluate the methods, tools, and applications of machine learning (ML) and data mining (DM) in education. The main goal is to improve the accuracy of predicting academic achievements by employing eight widely recognized ML algorithms: naïve bayes (NB), k-nearest neighbors (KNN), support vector machine (SVM), random forest (RF), logistic regression (LR), extreme gradient boost (XGBOOST), and ensemble voting classifier (EVC). The focus is on improving data quality by eliminating instances of noise. Performance evaluation involves assessing parameters such as accuracy, precision, F-measure, and recall. Incorporating cross-validation and hyperparameter tuning improves classification accuracy. The ML models outperform other ensemble approaches, providing a valuable tool for predicting student performance and assisting educators in making proactive decisions through timely alerts.
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教育数据挖掘:运用机器学习技术和超参数优化提高学生学业成绩
教育数据挖掘(EDM)是数据挖掘的一个专业领域,重点是从高中和大学的学术数据中提取有价值的见解。教育数据挖掘的一个常见做法是预测学生的成绩,以识别高危人群并提高学习任务的效率。这些知识对学生、家长和教育机构同样有益。通过早期发现,可以采取干预措施,提高学生成绩。文献介绍了各种预测策略,每种策略都有其独特的优缺点。本研究旨在全面评估机器学习(ML)和数据挖掘(DM)在教育领域的方法、工具和应用。主要目标是采用八种广受认可的机器学习算法来提高学业成绩预测的准确性:奈夫贝叶斯(NB)、k-近邻(KNN)、支持向量机(SVM)、随机森林(RF)、逻辑回归(LR)、极梯度提升(XGBOOST)和集合投票分类器(EVC)。重点是通过消除噪声实例来提高数据质量。性能评估包括评估准确率、精确度、F-measure 和召回率等参数。交叉验证和超参数调整可提高分类准确率。ML 模型的表现优于其他集合方法,为预测学生成绩提供了有价值的工具,并通过及时警报协助教育工作者做出前瞻性决策。
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