Filter-Based Feature Selection Method for Predicting Students’ Academic Performance

Dafid, Ermatita
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引用次数: 1

Abstract

Generally, almost all higher education often face the same problem of improving their quality according to students' academic performance. The need to get early information about the poor students' academic performance has forced higher education to find the best solution that the prediction model could achieve. Data mining offers various algorithms for predicting. Therefore, constructing an accurate prediction model becomes a challenging task for higher education. Two factors that drive the accuracy of the prediction model are classifiers and feature selection. Each classifier gives the best result if it meets the appropriate categorized data on a dataset. A few research has provided excellent results in predicting students' academic performance. But, the research only focuses on the classification technique rather than the right feature selection. Vice versa, a few research have reported excellent results increasing the prediction model accuracy. But the research only focuses on feature selection techniques rather than carrying out the right classifier on the right data. Therefore, the prediction model has not given the best accuracy yet. Unlike than existing framework to build a model and select the features ignoring the categorized data on a dataset, this research proposes the right filter-based feature selection methods and the right classifiers based on categorized data. The result will help the researcher find the best combination of filter-based feature selection methods and classifiers. Various classification algorithms and various feature selections that have been tested show classification with appropriate classifiers for specific categorized data and proper feature selection increase the prediction model's accuracy.
基于滤波器的特征选择方法预测学生学业成绩
一般来说,几乎所有的高等教育都面临着根据学生的学习成绩来提高质量的问题。由于需要尽早获得有关贫困学生学习成绩的信息,高等教育不得不寻找预测模型所能实现的最佳解决方案。数据挖掘提供了各种预测算法。因此,构建准确的预测模型成为高等教育面临的一项具有挑战性的任务。驱动预测模型准确性的两个因素是分类器和特征选择。如果每个分类器满足数据集上适当的分类数据,则给出最佳结果。一些研究在预测学生的学习成绩方面提供了很好的结果。但是,目前的研究主要集中在分类技术上,而不是正确的特征选择。反之,也有少数研究报告了极好的结果,提高了预测模型的准确性。但是研究只关注特征选择技术,而不是在正确的数据上进行正确的分类器。因此,预测模型还没有给出最好的精度。与现有的忽略数据集上已分类数据的模型构建和特征选择框架不同,本研究提出了基于过滤器的特征选择方法和基于已分类数据的分类器。该结果将帮助研究者找到基于滤波器的特征选择方法和分类器的最佳组合。经过测试的各种分类算法和各种特征选择表明,针对特定的分类数据使用合适的分类器进行分类,适当的特征选择可以提高预测模型的准确性。
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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