Implementation of Data Mining Using K-Means Clustering Method to Determine Sales Strategy In S&R Baby Store

Q3 Engineering
T. Wahyudi, Titi Silfia
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引用次数: 1

Abstract

The S&R Baby Store store is a Small and Medium Enterprise (SME) that is engaged in baby equipment, but there is a lot of competition between small and medium enterprises (SMEs) who are engaged in the same field, so that many products sold are of course not all sold out, some are lacking. in demand. Therefore the S&R Baby Store store needs a good sales strategy in order to increase sales profit. This study discusses the application of data mining, using the K-Means Clustering algorithm with the CRISP-DM method. Implementation using RapidMiner 9.10 which is done by entering sales transaction data with a total of 4 attributes and forming 4 clusters consisting of very in demand, in demand, moderate in demand and less in demand. the second cluster with 944 products, the third cluster with 2 products, and the fourth cluster with 43 products. The results of the cluster above are the products sold are the best-selling product categories, then the results of the cluster are validated using the Davies-Bouldin Index with a DBI value generated from clustering of 0.560.
基于K-Means聚类方法的数据挖掘在S&R婴儿店销售策略确定中的应用
S&R婴童店店是一家从事婴童用品的中小企业(SME),但是从事同一领域的中小企业(SME)之间的竞争非常激烈,所以很多销售的产品当然不是全部售罄,有些是缺货。在需求。因此S&R Baby Store商店需要一个好的销售策略来增加销售利润。本研究讨论了数据挖掘的应用,使用K-Means聚类算法与CRISP-DM方法。使用RapidMiner 9.10实现,通过输入共有4个属性的销售交易数据,形成4个集群,包括非常需求、有需求、中等需求和较少需求。第二集群有944种产品,第三集群有2种产品,第四集群有43种产品。上述聚类的结果是销售的产品是最畅销的产品类别,然后使用Davies-Bouldin指数对聚类的结果进行验证,聚类产生的DBI值为0.560。
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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来源期刊
CiteScore
1.50
自引率
0.00%
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0
审稿时长
4 weeks
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