格拉哈卡里亚大学(Graha Karya University Muara Bulian)新生入学数据挖掘的实施情况

Azwar Anas, Akhmadi, Ade Jermawinsyah Zebua
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引用次数: 0

摘要

准学生在注册表上的选择产生了一种独特的模式,因为每个准学生都根据自己的背景、志向和学费做出了不同的选择,同时还参考了所提供的 9 门课程。如果不进行详细的挖掘和分析,成堆的课程学习选择组合表格对 UGK MB 没有任何意义。事实上,进行有用的数据挖掘将获得对 UGK MB 和其他决策者有用的知识和信息,以解决下一年招收新生的问题。数据挖掘(Data Mining)可以解决以往数据堆栈(通常也被称为此类数据块)的解答难题。研究的数据量为 135 表。使用的方法是 Apriori 算法分析。结果显示,在 1 项目集中,频率最高的是信息系统变量,其值为 58,支持率为 43%,置信度为 100%;频率最低的是会计变量,其值为 14,支持率为 10%,置信度为 100%。对于双项目集,关联规则是:如果第一选择是 PGSD 学习课程,那么第二选择就是 TIP 学习课程,频率值为 16,支持率为 12%,置信度为 53%,这是最高的关联规则。同时,最低的关联规则是规则。如果第一选择是农业技术专业,那么第二选择就是信息系统专业,其频率值为 4,支持率为 3%,置信度为 20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementasi Data Mining Penerimaan Mahasiswa Baru Universitas Graha Karya Muara Bulian
The choice of prospective students on the registration form produces a unique pattern because each prospective student has a different choice according to background, aspirations and tuition fees while still referring to the 9 courses offered. Piles of forms with combinations of program study options will have no meaning for UGK MB if detailed mining and analysis is not carried out. In fact, doing useful data mining will gain knowledge and information that is useful for UGK MB and other decision makers to address the process of admitting new students in the following year. Difficulties in answering past data stacks, which are often also known as chunks of data of this kind, can be ported with data mining (Data Mining). The amount of data studied is 135 forms. The method used is Apriori Algorithm analysis. The results show that for 1-itemset, the highest frequency occurs in the Information Systems variable with a value of 58, 43% support and 100% confidence, while the lowest frequency occurs in Accounting with a value of 14, 10% support and 100% confidence. For the 2-item set, the association rules If the first choice is the PGSD study program then the second choice is the TIP study program with a frequency value of 16, 12% support and 53% confidence and this is the highest association rule. Meanwhile, the lowest association rule is the rule. If the first choice is the Agro Technology study program, then the second choice is the Information Systems study program with a frequency of 4, 3% support and 20% confidence.
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