提高尼日利亚理工教育学习成绩的预测模型

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引用次数: 0

摘要

本研究提出了一种基于机器学习的方法,以增强尼日利亚理工教育系统中学生学业成绩的分类和优化。理工学院系统是提供技术和职业教育的关键,但在培养学生的学术成就方面仍然存在挑战。本文探讨了影响学习成绩的复杂性,并提出了使用机器学习算法进行改进的策略。本研究利用线性和支持向量回归模型预测学生的累积平均绩点(CGPA)。模型开发和评估采用了来自Ikot Osurua的Akwa Ibom州立理工学院的数据集,包括总课程、学分单位、部门和以前的平均绩点(GPA)。两种模型都实现了类似的预测性能,但线性回归略优于支持向量回归。结果强调了总课程、院系类型和以前的GPA等变量在预测CGPA方面的重要作用。这项研究为评估和提高尼日利亚理工教育系统学生的学习成绩提供了一个有价值的工具,在高等教育中有更广泛的应用潜力。进一步的研究包括扩展数据集和考虑结果记录之外的其他因素,以增强模型的鲁棒性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Modeling for Enhancing Academic Performance in Nigerian Polytechnic Education
This study presents a machine learning-based approach to enhance the classification and optimization of students’ academic performance within Nigeria’s polytechnic education system. The polytechnic system is pivotal in providing technical and vocational education, but challenges persist in nurturing students’ academic achievement. This article explores the complexities influencing academic performance and proposes strategies for improvement using machine learning algorithms. The research utilizes linear and support vector regression models to predict students’ cumulative grade point averages (CGPA). A dataset from Akwa Ibom State Polytechnic, Ikot Osurua, comprising total courses, credit units, department, and previous grade point average (GPA), is employed for model development and evaluation. Both models achieve similar predictive performance, but linear regression slightly outperforms support vector regression. The results highlight the significant role of variables like total courses, the type of academic department, and previous GPA in predicting CGPA. This study offers a valuable tool for assessing and improving students’ academic performance in Nigeria’s polytechnic education system, with potential for broader applications in higher education. Further research involves expanding the dataset and considering additional factors beyond result records to enhance the model’s robustness and applicability.
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