利用随机森林分类器提高预测学生学习成绩的准确性

Aditya Fajar Mulyana, Wiyanda Puspita, J. Jumanto
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引用次数: 0

摘要

这项研究旨在对学习成绩优异和辍学学生的学习成绩进行高精度分类,以便快速解决这些问题。像这样的事情需要快速处理,找出影响因素。此外,这项研究还旨在测试随机森林算法在分类问题方面的能力。随机森林算法是一种常用的问题分类算法。通过使用随机森林算法,准确度结果将优于单一决策树。这种算法非常善于处理和管理大型数据集。从这项研究中可以得出结论,这种方法可以提供良好的预测准确性,准确率相当高,达到 89%。利用这种随机森林可以作为学生学业成绩分类的一种替代方法。这种算法可以很好地处理大型数据集。本研究讨论了如何利用随机森林对学生的学业成绩进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Increased accuracy in predicting student academic performance using random forest classifier
This research aims to classify the academic performance of students who are successful and who have dropped out of school with high accuracy so that these matters can be addressed quickly. Things like this need fast handling to find out what factors influence it. In addition, this research was conducted to test how good the random forest algorithm is in classifying a problem. Random forest, which includes an algorithm that is commonly used for classifying a problem. By using the random forest algorithm, the accuracy results will be better than a single decision tree. This algorithm is quite good at handling and managing large datasets. From this study it can be concluded that this method can provide good prediction accuracy with a fairly high level of accuracy, namely 89%. Utilization of this random forest can be an alternative in classifying student academic achievement. This algorithm can work well in handling large datasets. This study discusses how the use of Random Forest can work to classify students' academic performance.
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