Unveiling the Best-fit Model: A Comparative Analysis of Classification Methods in Predicting Student Success

A. G. Daligcon, Jemima Priyadarshini, Lilibeth Rivera Decena
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Abstract

To reduce failure and personalize instruction, educators work to predict student achievement. For this objective, this study compared several categorization techniques. The study investigated techniques employing datasets from Portuguese schools, even though various circumstances make it difficult to gather full data and achieve high accuracy. Upon evaluating the various algorithms, including Random Forest and Decision Trees, the study determined that Random Forest was the most successful model, attaining a 94.55% accuracy rate. This demonstrates how machine learning—more especially, Random Forest—could forecast student achievement. The study opens the door for applying these techniques to early interventions and personalized learning. But more work needs to be done, such as creating publicly accessible educational datasets and investigating different strategies like regression algorithms to manage the nuances of grading systems more effectively.
揭开最合适模型的面纱:预测学生成功的分类方法比较分析
为了减少失败和实现个性化教学,教育工作者努力预测学生的成绩。为此,本研究比较了几种分类技术。尽管在各种情况下很难收集到完整的数据并达到较高的准确性,但本研究还是采用了葡萄牙学校的数据集来研究各种技术。在对包括随机森林和决策树在内的各种算法进行评估后,研究确定随机森林是最成功的模型,准确率达到 94.55%。这表明机器学习--尤其是随机森林--可以预测学生的成绩。这项研究为将这些技术应用于早期干预和个性化学习打开了大门。但我们还需要做更多的工作,比如创建可公开访问的教育数据集,研究不同的策略,如回归算法,以更有效地管理评分系统的细微差别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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