流媒体电子商务中客户细分的RFM方法和K-Means算法的实现

F. Alzami, Fikri Diva Sambasri, Mira Nabila, Rama Aria Megantara, Ahmad Akrom, R. A. Pramunendar, D. P. Prabowo, Puri Sulistiyawati
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引用次数: 0

摘要

电子商务是通过在线或在线系统销售和购买商品。消费者向其他消费者销售产品的商业模式之一是客户对客户(C2C)商业模式。在商业模式中需要考虑的一件事是了解客户忠诚度的水平。通过了解客户忠诚度的水平,公司可以为客户提供几种不同的待遇,以保持与客户的良好关系并增加产品购买收入。在这项研究中,作者希望使用K-Means聚类算法,使用RFM(Recency,Frequency,Monetary)功能,对巴西电子商务公司的客户数据进行细分,并使用Streamlight框架以仪表板的形式显示。必须进行几个阶段的研究。首先,从开放的公共数据站点(Kaggle)获取数据,然后合并数据以选择一些需要使用的数据,通过以图形形式显示数据来理解数据,并进行数据选择以选择特征/属性。该步骤遵循所提出的方法,执行数据预处理,创建一个模型以获得集群,并最终使用Streamlight将其显示为仪表板。根据已经完成的研究结果,聚类数量为4个聚类,使用剪影得分的模型的评估值为0.470。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of RFM Method and K-Means Algorithm for Customer Segmentation in E-Commerce with Streamlit
E-commerce is selling and buying goods through an online or online system. One of the business models in which consumers sell products to other consumers is the Customer to Customer (C2C) business model. One thing that needs to be considered in the business model is knowing the level of customer loyalty. By knowing the level of customer loyalty, the company can provide several different treatments to its customers to maintain good relationships with customers and increase product purchase revenue. In this study, the author wants to segment customers on data in E-commerce companies in Brazil using the K-Means clustering algorithm using the RFM (Recency, Frequency, Monetary) feature and display it in the form of a dashboard using the Streamlit framework. Several stages of research must be carried out. Firstly, taking data from the open public data site (Kaggle), then merging the data to select some data that needs to be used, understanding data by displaying it in graphic form, and conducting data selection to select features/attributes. The step follows the proposed method, performs data preprocessing, creates a model to get the cluster, and finally displays it as a dashboard using Streamlit. Based on the results of the research that has been done, the number of clusters is 4 clusters with the evaluation value of the model using the silhouette score is 0.470.
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