基于反向传播神经网络的大学生学习周期分类

Purwono Prasetyawan, Imam Ahmad, Rohmat Indra Borman, Ardiansyah, Yogi Aziz Pahlevi, D. E. Kurniawan
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引用次数: 19

摘要

学生的学习时间是决定大学质量的指标之一。基于BAN-PT对高校认证的标准评估,学习时间成为认证形式评估的要素之一。大学在监督学生学习的发展方面发挥着重要作用。为此,大学被要求始终评估学生的表现。评估的一种方法是探索影响学生表现的学术数据知识。通过对学生学业数据进行数据挖掘,高校可以获得有用的信息。这些信息以后可以用作改进学生学习成绩的参考。之前的一些研究使用数据挖掘技术来预测学生的学习时间,本研究将分析影响大学生学习时间的因素,并使用反向传播训练算法对人工神经网络建模,对学习时间进行分类。研究结果表明:BPNN算法适用于本科学习时期的分类,准确率在85%以上。
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Classification of the Period Undergraduate Study Using Back-propagation Neural Network
The period of student study is one of the indicators of the determinants of the quality of a college. Based on the standard assessment of college accreditation by BAN-PT, the period of study became one of the elements of assessment of accreditation forms. Universities have an important role to monitor the development of student studies. For that, universities are required to always evaluate the performance of students. One way of evaluation that can be done is to explore the knowledge of academic data that will affect student performance. By utilizing data mining on student academic data, universities can obtain useful information. This information which later can be used as a reference in making improvements to the performance of student studies. Several previous studies used data mining techniques to predict the study period of students and this study will analyze the factors that influence the duration of undergraduate studies and modeling of ANN with backpropagation training algorithms to classify the study period. The result of this research is The BPNN algorithm is suitable for the classification of undergraduate study periods with accuracy rates above 85%.
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