Abstract

Application of data grouping aims to group data unsupervised, in this study comparing the results of the grouping with the K mean clustering method, K Means ++ clustering method and the Scalable K Means ++ clustering method. Based on the test results by analyzing the iteration error value, the results of the analysis show that the K Means ++ clustering and Scalable K Means ++ clustering method will produce less error values when compared to the K Means Clustering method. The data used as the basis of analysis in this study is based on data from Posyandu Rajawali Singosari in Malang. The initial initialization value of the centroid can be determined or randomly and is very influential for the data grouping process. Calculation analysis program used scilab programming and the error results with the graph of the minimum value. Result in test data, error value test data 1 get Scalable K Means ++ clustering error minimum 0,07, test data 2 get error value minimum K Means ++ Clustering 0,15, test data 3 get error value minimum 0,005 at metode Scalable K Means Clustering, test data 4 get error value minimum 0,15 at K Means ++ Clustering.

Highlights

  • Based on the test results by analyzing the iteration error value, the results of the analysis show that the K Means ++ clustering and Scalable K Means ++ clustering method will produce less error values when compared to the K Means Clustering method

  • 4. Kesimpulan Hasil uji coba berdasarkan tabel pada tabel 1, 2 3 dan 4 maka metode K Means ++ Clustering dan metode Scalable K Means ++ Clustering memiliki kecenderungan memiliki jumlah kesalahan center yang lebih minimum dibandingkan metode K Means Clustering

Read more

Summary

Introduction

Metode clustering pada penelitian ini akan membandingkan metode Scalable K Means ++ untuk menentukan kecenderungan pengelompokkan berdasarkan pemeriksaan bulanan dari data posyandu. Pada penelitian ini menerapkan pada data Posyandu dengan harapan hasil inisiliasi dari cluster memiliki karakteristik dengan menghasilkan nilai kesalahan yang lebih rendah dengan menggunakan metode Scalable K Means ++ Clustering [1]. 2.2 K Means Clustering Pada penelitian ini menerapkan data posyandu untuk meneliti nilai kesalahan yang didapatkan dengan

Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.