最终GPA成绩预测模型的比较研究——以Rajabhat Rajanagarindra大学为例

Narongsak Putpuek, Natcha Rojanaprasert, K. Atchariyachanvanich, Thananya Thamrongthanyawong
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引用次数: 20

摘要

最近,教育数据的分析对所有大学来说都变得很重要。泰国Rajabhat Rajanagarindra大学希望根据学生的个人背景来研究和分析他们的表现。因此,本研究旨在利用2010 - 2012学年教育学院的数据,比较研究生最终平均绩点(GPA)水平的预测模型。采用两种决策树(C4.5和ID3)算法,结合Naïve贝叶斯和k近邻数据挖掘技术,按照CRISP-DM流程对数据进行分析。提出影响毕业GPA的因素包括学生的性别、获得的奖学金、以前的教育背景、录取类型、高中的人才和省份。分析表明,Naïve Bayes算法总体准确率最高,为43.18%。这有助于预测学生未来的毕业GPA成绩,支持教师为学生提供教育建议,培养学生未来的素质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Study of Prediction Models for Final GPA Score: A Case Study of Rajabhat Rajanagarindra University
Recently, the analysis of educational data has become important to all universities. Rajabhat Rajanagarindra University, Thailand, wanted to study and analyze the students’ performance based on their personal background. Thus, this research aimed to compare prediction models for the level of the final grade point average (GPA) score of graduated students using the data from the Faculty of Education during the 2010 to 2012 academic years. Two decision tree (C4.5 and ID3) algorithms, plus Naïve Bayes and K-nearest neighbor data mining techniques were adopted to analyze the data according to the CRISP-DM process. Factors that were proposed to influence the graduation GPA include the student’s gender, scholarship awarded, previous educational background, admission type, talent and province of high school. The analysis revealed that the Naïve Bayes algorithm gave the best overall accuracy of 43.18%. This could help predict the graduation GPA score of students in the future and support teachers to make educational advice for their students and to develop the student quality in the future.
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