基于神经网络的大学生成绩数据驱动预测分析

Rojina Deuja, Rozy Karna, Ramesh Kusatha
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引用次数: 3

摘要

对教育研究数据的科学探索通常被称为教育数据挖掘(EDM)。EDM专注于设计评估来自教育环境的数据的方法,以了解学生和他们学习的场所。这篇论文特别针对那些正在接受高等教育的学生。尽管学生们对获得学位有很大的倾向,但成功率却非常低。已经进行了大量的研究,试图开发方法来识别那些有可能表现不理想的学生。在我们的方法中,我们探索了理论上被认为会影响大学学生表现的多种因素,并使用神经网络来预测他们的成绩。我们还引入了对课程难度的科学评估,然后将其作为学生在该课程中表现的衡量标准。因此,该模型可以被利用来确定学生最有可能执行在票面价值和帮助他们取得更好的成绩。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Predictive Analysis of Student Performance In College Using Neural Networks
The scientific exploration of data for educational research is often referred to as Educational Data Mining (EDM). EDM concentrates upon devising methods for evaluating data coming from educational settings to understand students and the locale in which they study. This paper, in particular, encompasses those students who are currently pursuing their higher education. In spite of a substantial inclination of students towards getting a degree, the success rate is remarkably low. Numerous studies have been conducted, seeking to develop methodologies that identify students who are at risk of unsatisfactory performance. In our approach, we explore multiple factors that have been theoretically assumed to affect the performance of students in college and use neural networks to predict their grades. We also introduce the scientific assessment of course difficulty prior to using it as a measure for a students’ performance in that course. The model can, therefore, be utilized to identify students who are most likely to perform under par and assist them in achieving better grades.
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