高等教育学生成绩的早期预测

Dr. Geeta Tripathi, Kethati Nandini Reddy, Kotagoda Sahithi, Maddineni Ajay Kumar
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引用次数: 0

摘要

评估学生的学习成绩是评价任何教育机构的一个基本方面。在应对与学习过程相关的挑战时,学生的学习成绩至关重要,也是量化学习成果的关键因素之一。教育数据挖掘(EDM)这一研究课题是在利用数据知识提升教育系统的潜力基础上发展起来的。教育数据挖掘(EDM)是指开发各种方法来分析从教育环境中收集到的数据,从而更全面、更准确地了解学生,提高他们的教育成果。评估学生的学习成绩是评价任何教育机构的关键部分。学生成绩是量化学习成果的关键变量之一,在解决学习过程中的问题时意义重大。教育数据挖掘(EDM)这一研究领域的诞生,正是出于利用数据知识提升教育系统的潜力。教育数据挖掘是开发评估从教育环境中获取信息的方法的过程。这样就能更准确、更深入地了解学生的信息,提高他们的学业成绩。本文通过 T-SNE 算法的聚类技术,将学业成绩测试(AAT)、综合能力测试(GAT)、录取分数、一级课程和其他早期因素用于降维机制。这样,研究就可以探究这些方面与 GPA 之间的关系。关于分类方法,本研究展示了对各种机器学习模型进行的测试,这些模型利用课程成绩和高考成绩等不同属性预测学生在初始阶段的成绩。为了衡量模型的质量,我们采用了各种评估方法。根据研究结果,教育机构似乎可以降低早期学生的不及格率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Prediction of Students Performance in Higher Education
Evaluating students' learning performance is a fundamental aspect of evaluating any educational institution. When addressing challenges related to the learning process, student performance is critical, and it is one of the key factors used to quantify learning outcomes. The topic of research known as educational data mining (EDM) has grown out of the potential to leverage data knowledge to enhance educational systems. EDM is the development of methods to analyze data collected from educational environments, enabling a more complete and precise understanding of students and the enhancement of their educational results. Evaluating the students' learning results is a crucial part of evaluating any educational institution. One of the key variables used to quantify learning outcomes is student performance, which is significant when addressing problems with the learning process. The field of research known as educational data mining, or EDM, was born out of the potential to leverage data knowledge to enhance educational systems. EDM is the process of developing methods for evaluating information obtained from educational environments. This makes it possible to learn more precise and in-depth information about students and enhances their academic achievement. Academic achievement tests (AAT), general aptitude tests (GAT), admission scores, first-level courses, and other early-stage factors are used in the paper's dimensionality reduction mechanism by T-SNE algorithm for the clustering technique. This allows the study to investigate the relationship between these aspects and GPAs. Regarding the categorization method, the study showcases tests conducted on various machine learning models that forecast student achievement in the initial phases by utilizing diverse attributes such as course grades and entrance exam results. To gauge the models' quality, we employ various evaluation measures. Based on the findings, it appears that early student failure rates can be reduced by educational institutions.
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