Design and Application of K-Means Method to Predict Sales at Arya Elektrik Stores

bit-Tech Pub Date : 2022-12-14 DOI:10.32877/bt.v5i2.562
M. Setiawan, Rino
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Abstract

In a shop, the product is a staple that is sold and bought. There are products in the store between products that sell well and products that don't sell. Given this problem, it is necessary to create a system that can classify products that sell, products that sell well, and products that don't sell well, which was carried out at the Arya Elektrik Store and carried out from March to July 2022. The K-Means algorithm is not affected by the order of objects used. used, this is proven when the author tries to randomly determine the starting point of the cluster center of one of the objects at the start of the calculation. The number of cluster memberships generated is the same when using another object as the starting point for the cluster center. However, this only affects the number of iterations performed. The purpose is to create applications and analyze product sales at the Arya Elektrik Store using the K-Means method. With this system, it can provide convenience benefits for analyzing the grouping of product sales at the Arya Elektrik Store, determining and classifying product sales that are selling well, very selling, and less selling. The method used to collect data is observation and interviews. With this application, shop owners can see the results of grouping these products. So, if there are products that don't sell well, shop owners can look for other alternatives so that products that don't sell can be sold.
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k -均值法在Arya Elektrik门店销售预测中的设计与应用
在商店里,产品是被买卖的主要商品。商店里有卖得好的产品和卖得不好的产品。考虑到这个问题,有必要在2022年3月至7月期间,在Arya Elektrik商店进行分类,将销售产品、销售好产品和销售不好的产品分类。K-Means算法不受使用对象顺序的影响。当作者试图在计算开始时随机确定其中一个对象的聚类中心的起点时,证明了这一点。当使用另一个对象作为集群中心的起点时,生成的集群成员数量是相同的。然而,这只会影响执行的迭代次数。目的是使用K-Means方法创建应用程序并分析Arya Elektrik商店的产品销售情况。利用该系统,可以对Arya Elektrik商店的产品销售进行分组分析,确定销售情况良好、销售情况良好、销售情况不佳的产品进行分类,提供方便的好处。收集数据的方法是观察和访谈。使用此应用程序,店主可以看到对这些产品进行分组的结果。所以,如果有卖不好的产品,店主可以寻找其他替代品,这样卖不出去的产品就可以卖出去了。
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