K-prototypes Algorithm for Clustering Schools Based on The Student Admission Data in IPB University

Authors

  • Sri Sulastri BPS-Statistics Indonesia, Indonesia; Department of Statistics, IPB University, Indonesia
  • Lismayani Usman BPS-Statistics Indonesia, Indonesia; Department of Statistics, IPB University, Indonesia
  • Utami Dyah Syafitri Department of Statistics, IPB University, Indonesia

DOI:

https://doi.org/10.29244/ijsa.v5i2p228-242

Keywords:

clustering, k-prototypes, student admission

Abstract

The new student admissions was regularly held every year by all grades of education, including in IPB University. Since 2013, IPB University has a track record of every school that has succeeded in sending their graduates, even until they successfully completed their education at IPB University. It was recorded that there were 5,345 schools that included in the data. It was necessary to making every school in the data into the clusters, so IPB could see which schools were classified as good or not good in terms of sending their graduates to continue their education at IPB based on the characteristics of the clusters. This study using the k-prototypes algorithm because it can be used on the data that consisting of categorical and numerical data (mixed type data). The k-prototypes algorithm could maintain the efficiency of the k-means algorithm in handling large data sizes, but eliminated the limitations of k-means. The results showed that the optimal number of clusters in this study were four clusters. The fourth cluster (421 school members) was the best cluster related to the student admission at IPB University. On the other hand, the third cluster (391 school members) was the worst cluster in this study.

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References

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Published

2021-06-27

How to Cite

Sulastri, S., Usman, L., & Syafitri, U. D. (2021). K-prototypes Algorithm for Clustering Schools Based on The Student Admission Data in IPB University. Indonesian Journal of Statistics and Its Applications, 5(2), 228–242. https://doi.org/10.29244/ijsa.v5i2p228-242

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Articles