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Analysis of New Student Selection using Clustering Algorithms

机译:使用聚类算法分析新学生选择

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This research describes the analysis and implementation of clustering method which will be used to process data Seleksi Nasional Masuk Perguruan Tinggi Negeri (SNMPTN) a new student selection, at Surabaya State University. Processing a large number of new student data becomes an annual issue in Surabaya State University. Based on data in 2016, the number of applicants reached 29,779 people. With a large amount of data takes a long time in processing the data to determine the participants who are selected. Our approach uses a clustering method to process participant data and determine the applicant who selected as a new student at Surabaya state university. For analysis and evaluation the accurate and appropriate clustering methods, we selected different clustering techniques that were previously used as benchmarks. The use of clustering may also reduce the cost spent on the application processing and the time the applicants have to wait for the outcome, and could further increase the chances of high-quality applicants getting admission to courses for which they chose. These result also expected can be applied to solve the problem with a similar case.
机译:本研究介绍了泗水州立大学将用于处理数据Seleksi Nasional Masuk Perguruan Tinggi Negeri(Snmptn)的数据的分析和实施。处理大量新学生数据成为泗水州立大学的年度问题。根据2016年的数据,申请人的数量达到29,779人。在处理数据以确定所选的参与者时,大量数据需要很长时间。我们的方法使用聚类方法来处理参与者数据,并确定被选中作为泗水州立大学新生的申请人。为了分析和评估准确和适当的聚类方法,我们选择了先前用作基准的不同聚类技术。聚类的使用也可能降低在应用程序处理上花费的成本,申请人必须等待结果的时间,并进一步增加高质量申请人在他们选择的课程中获得入场的机会。这些结果也可以应用于解决类似案例的问题。

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