Data Mining Modeling Feasibility Patterns of Graduates Ability With Stakeholder Needs Using Apriori Algorithm

Titin Winarti, Henny Indriyawati
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引用次数: 1

Abstract

This The speed of information, the accuracy of data, the ease of information services, and accountability are very important reasons for the implementation of the system. Semarang University (USM) is a private university in Semarang that has the most 2 students in Central Java. Based on the 2019 USM tracer data showing horizontal alignment, namely how close the relationship between the field of study and alumni work is, it appears that there is still a discrepancy in the ability of graduates with stakeholders.  The Apriori algorithm is the best-known algorithm for finding high-frequency patterns  Rules that state associations between attributes are often called affinity analysis or market basket analysis. The use of the Apriori Algorithm in data mining calculations using data from the Semarang University tracer that the limit of the minimum support is 50% and the minimum confidence is 100% so that it forms 4 rules. From the four rules produced that modeling using the Apriori Algorithm can produce several rule formations so that it can provide an evaluation to the University for compiling steps, this can be seen because the resulting rules are different because each graduate relationship with the desired desires and different styles.  
基于Apriori算法的毕业生能力可行性模型挖掘
信息的快速性、数据的准确性、信息服务的便捷性和可问责性是该系统得以实施的重要原因。三宝垄大学(USM)是三宝垄的一所私立大学,拥有中爪哇最多的2名学生。根据2019年USM示踪数据显示的水平一致性,即研究领域与校友工作之间的关系有多密切,似乎毕业生与利益相关者的能力仍然存在差异。Apriori算法是最著名的用于发现高频模式的算法,属性之间状态关联的规则通常被称为亲和分析或市场购物篮分析。使用Apriori算法进行数据挖掘计算,使用三宝垄大学跟踪器的数据,最小支持度的限制为50%,最小置信度的限制为100%,从而形成4条规则。从产生的四个规则中可以看出,使用Apriori算法建模可以产生几个规则的形成,从而可以为大学提供一个评估的编译步骤,这可以看出,因为产生的规则是不同的,因为每个毕业生的愿望与期望的关系和风格不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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