Implementasi Metode K-Means pada Hasil Produksi Daging Jenis Ternak

  • Saragih S
  • Safii M
  • Suhendro D
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Abstract

Meat production results should have good quantity and quality. To increase meat production, of course it is necessary to look at healthy types of livestock. Meat continues to increase in line with the increase in population, community income, education, standard of living and awareness of the nutritional value of animal production. The need for livestock meat production is one of the driving factors for the economy in Indonesia. This research can provide and input to the local government which is the leading producer of meat for the type of livestock in North Sumatra province and as a basis for making policies to increase meat production for other provinces. The method used in this research is the K-Means Algorithm. Where K-Means is one of the Algorithms in Data Mining that can be used to group data clusters. So that the data from 33 districts / cities will be divided into 2 clusters where cluster 1 is the high group, while cluster 2 is the low group. The results obtained from the study show that the results of manual calculation Algorithms and Microsoft Excel data have the same value, namely high cluster 1 and low cluster 32, and entering Microsoft Excel calculations into rapidminer has the same value as well

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APA

Saragih, S. N., Safii, M., & Suhendro, D. (2021). Implementasi Metode K-Means pada Hasil Produksi Daging Jenis Ternak. Jurasik (Jurnal Riset Sistem Informasi Dan Teknik Informatika), 6(1), 235. https://doi.org/10.30645/jurasik.v6i1.288

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