Implementation of Data Mining Using K-Means Algorithm for Bicycle Sales Prediction

Ivan Anggriawan, Wawan Gunawan
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Abstract

During the pandemic, to reduce the number of Covid-19 spreads,  the government imposed social distancing and work from home (WFH) to reduce community activities outside the home. This caused people to have irregular patterns or lifestyles which less any physical activity . It surely can lower immunity system in which can increase the risk of being infected by the virus. Therefore, during the pandemic, sports or exercises become one of the activities that regularly carried out by the community to increase their immunity. One of the sports activities that can be done to maintain their immunity is cycling. Cycling itself is a light activity that can be practiced by all ages. This occasion is certainly a good marketing target for bicycle selling companies, but the company sometimes experiences problems regarding bicycle stocks that do not match with the consumer market target. The purpose of this study is to find out what types of bicycles are on demand by predicting bicycle sales and looking at the desired interests of the community. This study uses the K-Means Clustering algorithm. The results of the K-Means Clustering research are divided into three clusters; Cluster 1 with 209 members with the most interest in mountain bikes, Cluster 2 with 787 members with the most interest in folding bicycles, and Cluster 3 with 540 members with bicycle interests. Most of them are city bicycles, from the clustering process above, the Dunn Index validation (Dunn Index) can be obtained with a value of 0.1324532.
基于K-Means算法的自行车销量预测数据挖掘的实现
在大流行期间,为了减少新冠肺炎的传播数量,政府实施了社交距离和在家工作(WFH),以减少家庭以外的社区活动。这导致人们的生活方式不规律,减少了任何体育活动。它肯定会降低免疫系统,从而增加被病毒感染的风险。因此,在疫情期间,运动或锻炼成为社区为提高免疫力而定期开展的活动之一。为了保持免疫力,可以做的运动之一是骑自行车。骑自行车本身是一项轻松的活动,所有年龄段的人都可以练习。对于自行车销售公司来说,这无疑是一个很好的营销目标,但该公司有时会遇到与消费者市场目标不匹配的自行车库存问题。这项研究的目的是通过预测自行车销售和关注社区的期望利益来了解需求的自行车类型。本研究采用K-Means聚类算法。将K-Means聚类研究的结果分为三个聚类;集群1有209名成员对山地自行车最感兴趣,集群2有787名成员对折叠自行车最感爱好,集群3有540名成员对自行车感兴趣。它们大多是城市自行车,从上面的聚类过程中,可以得到Dunn指数验证(Dunn指数),其值为0.1324532。
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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