基于神经网络与模糊逻辑混合模型的大学生学习成绩预测

Mahmoud Attieh, Mohammed Awad
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引用次数: 0

摘要

摘要:人工智能技术可以用于预测大学生的学习成绩,旨在检测影响其学习过程的因素,从而使教师和大学管理部门能够采取更有效的措施来提高大学生的学习成绩。通过对学生在课程水平和学位水平上的表现进行分析和预测,来识别学生的表现,从而提高教育质量。本研究的重点是一年级学生在两门大学必修课程中的表现,这取决于出勤率、评估分数、考试、作业和项目等特征。预测学生在整个学位中的表现将取决于这些特征;高中平均成绩,每学期的平均绩点(GPA),放弃课程,学位中选择的核心课程,学习时间和最终GPA。采用混合自适应神经模糊推理系统(ANFIS)模型进行预测。这样,根据所选课程或整个学位收集的数据集,可以预测未来的结果,并提出建议,进行纠正步骤,以改善最终的结果。应用模型的实验结果表明,anfisus - grid优于anfisus - cluster,其中每个模型的误差最低,为0.7%,仅在13个样本中的一个样本中失败,而修改后的ANFISCluster的误差为0.15%。关键词:大学生成绩预测模糊逻辑神经网络自适应神经模糊推理系统
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting of University Students' Performance Using A Hybrid Model of Neural Networks and Fuzzy Logic
Abstract: Artificial intelligence techniques can be applied in forecasting the academic performance of university students, with aim of detecting the factors that influence their learning process which allows instructors and university administration to take more effective actions to increase the university student's performance. Identifying the students' performance will improve the quality of education which will be through analyzing and forecasting the students' performance at the course level and degree level. This research focuses on first-year students' performance in two university-requirement courses, depending on features such as attendance, assessment marks, exams, assignments, and projects. Forecasting the students' performance in the whole degree will depend on these features; high school average, Grade Point Average (GPA) for each semester, drop courses, selected core courses in the degree, period of study, and final GPA. A hybrid Adaptive Neuro-Fuzzy Inference System (ANFIS) model was used toperform the forecasting process. In this way, based on the datasets collected from the selected courses, or the whole degree, the future results can be forecasted and suggestions can be made to carry out corrective steps to improve the final results. The experiments result of the applied models performed that ANFIS-Grid outperforms the ANFIS-Cluster, wherein each model produces the lowest error of 0.7%, where it just fails in one sample from thirteen samples, while the ANFISCluster after modification produces an error equal to 0.15%. Keywords:University Student Performance, Forecasting, Fuzzy logic, Neural Network, Adaptive Neuro-Fuzzy Inference System.
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CiteScore
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