Abstract

The increasing new prospective students in a University to make the stack more and more data, departing from it then conducted a search for new knowledge with data mining. Grouping data for prospective new students will be made by the method Clustering and used the algorithm k-means. In this penmaru there are 5 data attributes are used i.e., hometown, gender, status to qualify for selection, driveways, and majors. This analysis is performed using WEKA software and the source data taken from admissions data (penmaru) in the form of a data warehouse. Class from the use of this method is the attribute of the majors. Iteration performed as many as 3 times and the number of a cluster at the Faculty of medicine and health sciences, i.e. 4 clusters, Faculty of social and political science 3 clusters. Method Clustering can be applied to the classification of data for prospective new students. Another thing that can be analyzed from the results of the grouping candidate data, promotion strategies from each Department to increase the quantity and quality.

Highlights

  • The increasing new prospective students in a University to make the stack more and more data, departing from it conducted a search for new knowledge with data mining

  • from it then conducted a search for new knowledge with data mining

  • Grouping data for prospective new students will be made by the method Clustering

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Summary

Rumusan Masalah

Berdasarkan latar belakang tersebut, permasalahan yang harus diselesaikan dalam penelitian adalah untuk mengetahui kesenjangan jumlah mahasiswa baru yang diterima terhadap jumlah pendaftar serta penerapan metode clustering dengan menggunakan algoritma k-means pada pengelompokkan data calon mahasiswa baru di Universitas Muhammadiyah Yogyakarta dengan studi kasus di Fakultas Kesehatan dan Ilmu Keperawatan dan Fakultas Ilmu Sosial dan Ilmu Politik. Dengan diketahui nilai kesenjangan tersebut akan menentukan kebijakan pimpinan dalam melakukan promosi pada masing-masing Fakultas

Tujuan Penelitian
Data selection
Pre-processing atau Cleaning
Data mining
Interpretation atau Evaluation
Cluster 0 dengan jurusan Ilmu
Full Text
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