基于K-Means算法的观赏植物周转数据聚类

Faldza Fahrezy Arwy, Yaddarabullah, H. Permana
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引用次数: 1

摘要

观赏植物是印度尼西亚的高产商品,2018年增加了1761万株茎。(9.55%)。观赏植物在印尼同样具有能力企业的可能性。观赏植物周转量的增加和减少可归因于多种因素,如美容意识、旅游业的发展、观赏植物趋势以及住房和酒店综合体的建设。提到的一些因素可能对观赏植物业务的可持续性产生间接影响。为了解决这些问题,采用K-Means聚类的分组方法,确定了基于植物商品和月周转量的观赏植物周转量数据方程。本研究采用K-Means聚类算法对基于作物商品和成交价值的成交数据进行分组。WEKA应用程序利用K-Means聚类算法的分组结果从总共74个数据中得到两个值分别为11%(8个数据)和89%(66个数据)的聚类,其中两个聚类值在三次迭代后出现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Ornamental Plants Turnover Data using K-Means Algorithm
Ornamental plants are a commodity with high production in Indonesia, with a 17.61 million stalk increase recorded in 2018. (9.55%). Ornamental plants have capability enterprise possibilities in Indonesia as properly. The increase and decrease in ornamental plant turnover can be attributed to a variety of factors such as beauty awareness, the development of the tourism industry, ornamental plant trends, and the construction of housing and hotel complexes. A few of the factors mentioned can have an indirect impact on the sustainability of the ornamental plant business. To resolve these concerns, the grouping method was used with K-Means Clustering to determine the equation of ornamental plant turnover data based on plant commodities and monthly turnover values. Clustering with K-Means Algorithm is used in this study to group turnover data based on crop commodities and turnover value. The WEKA application's grouping results utilizing the K-Means Clustering Algorithm resulted in two clusters with values of 11% (8 data) and 89% (66 data) from a total of 74 data, where the two cluster values appeared after three time iterations.
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