Data Mining for Determining The Best Cluster Of Student Instagram Account As New Student Admission Influencer

Ahmad Irfan Abdullah, A. Priadana, M. Muhajir, Syahrir Nawir Nur
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引用次数: 2

Abstract

Purpose: This study aims to apply the web data extraction method to extract student Instagram account data and the K-Means data mining method to perform clustering automatically to determine the best cluster of students' Instagram accounts as influencers for new student admissions.Design/methodology/approach: This study implemented the web data extraction method to extract student Instagram account data. This study also implemented a data mining method called K-Means to cluster data and the Silhouette Coefficient method to determine the best number of clusters.Findings/result: This study has succeeded in determining the seven best student accounts from 100 accounts that can be used as influencers for new student admissions with the highest Silhouette Score for the number of influencers selected between 5-10, which is 0.608 of the 22 clusters.Originality/value/state of the art: Research related to the determination of the best cluster of students' Instagram accounts as new student admissions influencers using web data extraction and K-Means has never been done in previous studies.
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数据挖掘确定学生Instagram账户的最佳集群作为新生入学影响者
目的:本研究旨在应用web数据提取方法提取学生Instagram账户数据,并使用K-Means数据挖掘方法自动进行聚类,以确定学生Instagram账户作为新生入学影响者的最佳聚类。设计/方法/方法:本研究采用web数据提取方法提取学生Instagram账户数据。本研究还实现了一种称为K-Means的数据挖掘方法来聚类数据和轮廓系数方法来确定最佳聚类数量。发现/结果:本研究成功地从100个账户中确定了7个最好的学生账户,这些账户可以作为新生入学的影响者,所选择的影响者数量在5-10之间,剪影得分最高,在22个集群中为0.608。原创性/价值/艺术水平:使用网络数据提取和K-Means确定学生Instagram账户的最佳集群作为新生入学影响者的研究在以前的研究中从未做过。
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7
审稿时长
24 weeks
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