利用教育数据挖掘预测学生表现

Nehal Eleyan, Mariam Al Akasheh, Esraa Faisal Malik, O. Hujran
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引用次数: 0

摘要

数据挖掘方法已经成功地应用于多个行业,包括教育行业,它们被称为教育数据挖掘方法。教育数据挖掘旨在从原始数据中提取深入的知识,以构建可用于教育部门的自动化系统。随着数据挖掘技术的进步,挖掘教育数据以加强教育实践已成为可能。因此,本研究使用教育数据挖掘技术来预测中学生的最终成绩。本研究采用了几种机器学习(ML)算法,如分类树、回归树、逻辑回归和多元回归。此外,使用R编程语言开发预测模型。本研究中使用的数据集来自葡萄牙的两所中学。结果表明,分类树和逻辑回归优于回归树和多元回归。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Student Performance Using Educational Data Mining
Data mining methods have been employed successfully in several industries, including education, where they are known as educational data mining methods. Educational data mining aims to extract in-depth knowledge from raw data to build automated systems that could be used in the educational sector. With the advancement of data mining technologies, it is now possible to mine educational data to enhance educational practices. This study, therefore, uses educational data mining techniques to predict the final grades of secondary school students. This study has employed several Machine Learning (ML) algorithms, such as classification trees, regression trees, logistic Regression, and Multiple Regression. In addition, the R programming language was used to develop the prediction models. The dataset used in this study was obtained from two secondary schools in Portugal. According to the findings, classification trees and logistic Regression fared better than regression trees and multiple Regression.
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