首页> 外文期刊>International Journal of Emerging Technologies in Learning (iJET) >Association Rule Mining for Selecting Proper Students to Take Part in Proper Discipline Competition: A Case Study of Zhejiang University of Finance and Economics
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Association Rule Mining for Selecting Proper Students to Take Part in Proper Discipline Competition: A Case Study of Zhejiang University of Finance and Economics

机译:协会规则挖掘选择适当学生参加适当的纪律比赛:以浙江财经大学为例

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摘要

In recent years, the educational issues have attracted more and more researchers’ and teachers’ attention. On the other hand, the development of data mining technology, provides a new method to extract the useful information from the complex educational data. In order to increase the chance of students to be awarded in discipline competition, it is better to select the proper students to take part in the proper discipline competition. Therefore, in this study, we collect the information of 164 undergraduate students as a case study. All students majored in Software Engineering in Zhejiang University of Finance and Economics. The Apriori algorithm with group strategy is used to find the relationship between the students’ courses scores and competition awards. According to the results of association rule mining, we find that the students with higher scores of C# Development, Object-Oriented, Internet Web Design, Data Structure(C#), and Basic Programming will have a higher probability to be awarded in the competition.
机译:近年来,教育问题吸引了越来越多的研究人员和教师的关注。另一方面,数据挖掘技术的开发提供了一种从复杂的教育数据中提取有用信息的新方法。为了增加学生在纪律竞争中获得学生的机会,最好选择适当的学生参加适当的纪律竞争。因此,在这项研究中,我们收集164名本科学生作为案例研究的信息。所有学生在浙江财经大学软件工程专业。具有组策略的Apriori算法用于找到学生课程分数与竞争奖之间的关系。根据协会规则挖掘的结果,我们发现学生的C#开发成绩更高,面向对象,互联网网页设计,数据结构(C#)以及基本编程将在竞争中获得更高的概率。

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