CLUSTERING ANALYSIS OF ADMISSION OF NEW STUDENTS USING K-MEANS CLUSTERING AND K-MEDOIDS ALGORITHMS TO INCREASE CAMPUS MARKETING POTENTIAL

Tech-E Pub Date : 2023-08-29 DOI:10.31253/te.v7i1.2264
Hasan Amin
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Abstract

Acceptance of new students is a very important activity for a high school or university. The admissions data has not been utilized by the campus in making strategic decisions, marketing potential, and considering invitations through academic admissions. So, to assist in processing the new student admissions data, in this study the design and analysis of new student admissions data was carried out using stages in data mining. The clustering method approach can be applied in analyzing the potential level of PMB quality produced by utilizing the PMB recording dataset for the 2023 period. 86 data records. The K-Means and K-Medoids algorithm models that are applied have results that show a new insight, namely grouping based on 2 clusters, cluster 1 (C0) is a pass category while cluster 2 (C1) has not been determined. The results of the K-Medoids algorithm which has cluster 1 (C0) 60 results, cluster 2 (C1) has 26 results is a potential pass of 60 and has not yet been determined 26 of the data tested 86 while the results of the K-Means cluster 1 algorithm (C0) 40 , cluster 2 ( C1 ) 46 is a potential pass consisting of 40 and 46 undetermined data from the 86 datasets tested. Testing using the RapidMiner Studio application can also produce similar insights, namely each cluster has Davies Bouldin Index or DBI results from each K-Means and K-Medoids algorithm. K-Means has a Davies Bouldin Index result of -0.533 while K-Medoids has a Davies Bouldin Index result of -0.877
利用k-means聚类和k-medoids算法对新生录取进行聚类分析,以增加校园营销潜力
对于高中或大学来说,接纳新生是一项非常重要的活动。招生数据没有被学校用于制定战略决策、营销潜力和通过学术招生考虑邀请。因此,为了帮助处理新生入学数据,本研究采用数据挖掘中的阶段法对新生入学数据进行设计和分析。聚类方法可用于分析2023年PMB记录数据产生的PMB质量潜在水平。86条数据记录。所应用的K-Means和K-Medoids算法模型的结果显示了一个新的见解,即基于2个聚类进行分组,聚类1 (C0)是一个通过的类别,而聚类2 (C1)尚未确定。K-Medoids算法的结果有集群1 (C0) 60个结果,集群2 (C1)有26个结果,测试的86个数据中有26个数据尚未确定,而K-Means集群1算法的结果(C0) 40,集群2 (C1) 46是一个潜在的通过,由测试的86个数据集中的40个和46个未确定数据组成。使用RapidMiner Studio应用程序进行测试也可以产生类似的见解,即每个集群都有来自每个K-Means和k - mediids算法的Davies Bouldin Index或DBI结果。K-Means的Davies Bouldin Index结果为-0.533,K-Medoids的Davies Bouldin Index结果为-0.877
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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