减少大学生辍学的智能学习结果预测系统建模

B. Sungwanna, Pallop Piriyasurawong
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引用次数: 2

摘要

本研究的目的是;1)分析智能学习结果预测系统的影响因素,减少大学生辍学。2)构建智能学习结果预测系统模型,减少大学生辍学现象。本研究采用目的抽样的方法,选取北碧大学2012-2014学年英语教育专业的141名本科生为样本。研究结果如下:1)基于信息增益法的属性权重指标技术进行因子分析。学习成绩预测因子有14个因子,如第一学期至第五学期的GPA平均值和9门学科的学习成绩。2)通过交叉验证检验的质量衡量,构建了学习成绩预测智能系统的模型,以减少本科生的辍学率;10倍交叉验证和Naïve贝叶斯技术,准确率指数最高为84.33%,其次是使用决策树技术创建学生学习结果预测,准确率指数为73.86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Modeling of an Intelligent System for Learning Result Prediction to Reduce Drop-Out of Undergraduate Students
The objectives of this research were to; 1) analyze the factors of an intelligent system for learning result prediction to reduce drop-out of undergraduate students. 2) construct a modeling of an intelligent system for learning result prediction to reduce drop-out of undergraduate students. The samples were 141 undergraduate students who study English Education program in Academic year 2012-2014 at Kanchanaburi Rajabhat University by purposive sampling. The research results were as follows 1) the factors analysis was based on the attribute weight indexing technique using the Information Gain method. The learning results prediction factors had 14 factors, for example, mean of GPA from semester 1 to 5 and learning results about 9 subjects, 2) constructing a modeling of an intelligent system for learning result prediction to reduce drop-out of undergraduate students by measuring the quality with Cross-validation Test; 10-fold cross-validation and Naïve Bayes technique, the highest accuracy index is 84.33 percent, and followed by the creation of student’s learning result prediction by using Decision Tree technique, 73.86 percent of accuracy index.
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