K-means algorithm for clustering system of plant seeds specialization areas in east Aceh

Rozzi Kesuma Dinata, N. Hasdyna, Sujacka Retno, Muhammad Nurfahmi
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引用次数: 2

Abstract

The number of regions and types of plants in East Aceh Regency requires a data clustering process in order to easily find out which areas are most in-demand based on the type of plants. This study applies the k-means algorithm to classify the data. The data used in this study were obtained from the Department of Agriculture, Food Crops and Horticulture, East Aceh Regency. Based on the test results with k-means, the average number of iterations in the 2015-2019 data is 8,7,6,4,3 iterations for each commodity. The test results can show areas of interest for plant seeds with clusters of high demand, attractive, and less desirable. The system in this study was built based on the web using the PHP programming language.
亚齐东部植物种子专用区聚类系统的K-means算法
东亚齐县的地区数量和植物类型需要数据聚类过程,以便根据植物类型轻松找出哪些地区的需求量最大。本研究应用k均值算法对数据进行分类。本研究中使用的数据来自东亚齐省农业、粮食作物和园艺部。根据k-means的测试结果,2015-2019年数据的平均迭代次数为每种商品8,7,6,4,3次。测试结果可以显示对具有高需求、有吸引力和不太理想的簇的植物种子感兴趣的区域。本研究中的系统是使用PHP编程语言基于web构建的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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