Customer Segmentation Based on Loyalty Level Using K-Means and LRFM Feature Selection in Retail Online Store

Tiara Lailatul Nikmah, Nur Hazimah Syani Harahap, Gina Cahya Utami, Muhammad Mirza Razzaq
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Abstract

Customer experience is a key component in increasing sales numbers. Customers are important assets that must be kept up for a corporation or firm. Prioritizing customer service is one way to protect client loyalty. To ensure that service priority is right on target, this research was conducted on groups of consumers who are anticipated to have high business prospects. The 2011 retail online shop sales dataset with 379,980 records and eight char-acteristics was used. The length, recency, frequency, and monetary (LRFM) feature selection approach was used in the study process to select features for further segmentation using the K-Means data mining method to define consumer types. Following the completion of the research, clients were divided into four categories: Premium Loyalty, Inertia Loyalty, Latent Loyalty, and No Loyalty. The correct clustering results are displayed in the vali-dation test using the Silhouette Score Index technique, which yielded a score value of 0.943898. Based on the outcomes of this segmentation, business actors may prioritize providing clients with the proper service.
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基于K-Means和LRFM特征选择的零售网店顾客忠诚度细分
客户体验是增加销售数量的关键组成部分。客户是公司或公司必须保留的重要资产。优先考虑客户服务是保护客户忠诚度的一种方法。为了确保服务优先级符合目标,本研究针对预期具有较高商业前景的消费者群体进行。使用了2011年零售网店销售数据集,其中有379980条记录和8个特征。在研究过程中,使用长度、最近度、频率和货币(LRFM)特征选择方法,使用K-Means数据挖掘方法选择特征进行进一步分割,以定义消费者类型。研究完成后,客户被分为四类:高级忠诚度、惯性忠诚度、潜在忠诚度和无忠诚度。正确的聚类结果在使用Silhouette Score Index技术的验证测试中显示,该技术的得分值为0.943898。根据这种细分的结果,业务参与者可以优先为客户提供适当的服务。
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