Framework for the Development of an Enhanced Machine Learning Algorithm for Non-Cognitive Variables Influencing Students’ Performance using Feature Extraction

Ogunsakin O. Yetunde, Ayeni Joshua Ayobami, Ganiyu Aminat Abidemi
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Abstract

Machine learning is a powerful tool for creating computational models in scientific analysis in areas where there is need to extract hidden data such as educational data. In order to make planning easier and identify at-risk students who may be in danger of failing or dropping out of school due to their academic performance, Educational Data Mining (EDM) uses computational tools. In this paper, a framework using machine learning approach was proposed to develop an enhanced algorithm for non-cognitive variables influencing students’ performance using feature extraction. In the framework, the Decision Tree (DT) and Linear Support  Vector Machine (SVM) are proposed as base classifiers, and Random Forest (RF) and Gradient Boosting (GB) as ensemble classifiers. The DT classifier allows the classification process to be modelled as a series of hierarchical decisions on the features, forming a tree-like structure. Using this technique, planning and predicting students who might be at-risk of dropping out would have been made easier.
使用特征提取开发影响学生表现的非认知变量的增强机器学习算法的框架
机器学习是在需要提取隐藏数据(如教育数据)的领域中创建科学分析计算模型的强大工具。教育数据挖掘(EDM)使用计算工具,使计划更容易,并识别有可能因学业成绩不及格或辍学的高危学生。本文提出了一个使用机器学习方法的框架,利用特征提取来开发一种增强的算法,用于处理影响学生表现的非认知变量。在该框架中,提出了决策树(DT)和线性支持向量机(SVM)作为基分类器,随机森林(RF)和梯度增强(GB)作为集成分类器。DT分类器允许将分类过程建模为一系列关于特征的分层决策,形成树形结构。使用这种技术,计划和预测可能有退学风险的学生将变得更加容易。
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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