基于工程院校的学生学业成绩GPA预测分析与评价(神经网络建模方法)

H. Mustafa, Hanafy M. Ali
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引用次数: 0

摘要

预测学生的表现是学校和大学等学习环境中最重要的主题之一,因为它有助于设计有效的机制来提高学习成绩。教育机构在为学生提供高质量和以学生为中心的教育方面面临着许多挑战,每个学习者都喜欢自己的学习策略,这些策略源于不同的学习风格。学习风格模型可能包括心理、情感和生理组成部分的集体策略。在这些组成部分的基础上,本研究提出了工程教育中学习者偏好的特定量化学习方式。通过跟踪一般学习者在与专业密切相关的特定课程上的成绩(分数),获得了评估平均绩点(GPA)的有趣分析结果。此外,提出了一种具有监督学习的人工神经网络模型来模拟不同学习风格的表现。在此基础上,提出了实现毕业工程师概率最佳GPA的最优指导建议。仿真结果与实验实例研究结果相吻合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Analysis and Evaluation for Predicting Students’ Academic Performance GPA Considering an Engineering Institution (Neural Networks’ Modeling Approach)
Predicting students’ performance is one of the most important topics for learning contexts such as schools and universities, since it helps to design effective mechanisms that improve academic results. Educational Institutions face numerous challenges today in providing quality and student-centric education to Students Individual learners prefer their own strategies originated from diverse learning styles. Learning style models may include collective strategies for mental, emotional, and physiological components. On the basis of such components, this piece of research suggests a specific quantified learning style preferred by learners in engineering education. By following average learners’ achievements (marks) at specific courses closely related to the specialization, interesting analytical results for Grade Point Average (GPA) evaluation are obtained. Moreover, an ANN model with supervised learning is presented to simulate diverse learning styles performance. Accordingly, optimal guided advise is suggested in fulfillment of probabilistically best GPA of graduated engineers. Obtained simulation results are well supported by the findings of experimental case study.
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