Pradnya Paramita Pramono, I. Surjandari, Enrico Laoh
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引用次数: 15
摘要
为了应对与印尼美容行业部门相关的竞争环境,公司需要通过加强客户关系管理(CRM)来管理和评估客户互动。本研究旨在通过聚类方法指定具有相似终身价值的客户细分市场,从而公司可以对正确的细分市场进行适当的策略。本文提出了一种两阶段聚类的客户细分方法。采用Ward方法选择初始聚类数,采用K-Means方法进行聚类分析。通过有效性指标比较了在聚类过程中使用LRFM (Length, Recency, Frequency, Monetary)模型和扩展模型(LRFM - Average Item (AI)变量)的两种方法,得到了客户细分的最佳结果。结果表明,在LRFM模型中加入新变量Average Item对聚类结果没有显著性影响或有更好的聚类效果。基于客户终身价值(CLV)评分的排序过程使用加权LRFM模型变量进行。采用模糊层次分析法得到各变量的最终权重得分。综上所述,公司还得到了高潜在客户和低潜在客户的客户特征等几点推论。它可以作为制定销售和营销策略的指导方针。
Estimating Customer Segmentation based on Customer Lifetime Value Using Two-Stage Clustering Method
In order to cope with the competitive environment related to beauty industry sector in Indonesia, companies need to manage and evaluate customer interactions by enhancing Customer Relationship Management (CRM). This study aims to specify customer segment that has similar lifetime value with clustering method, hence company can conduct appropriate strategies to the right segment. Two-stage clustering method for segmenting customers is proposed in this study. Ward's method is used for choosing an initial number of cluster and K-Means method to perform clustering analysis. Two approaches using LRFM (Length, Recency, Frequency, Monetary) model and extended model called LRFM - Average Item (AI) variables in clustering process are compared by validity index to obtain the best result for customer segmentation. The result shows that adding new variable Average Item in LRFM model have no significant difference or better results in clustering. The ranking process based on Customer Lifetime Value (CLV) score is conducted using weighted LRFM model variables. Final weight score for all variables are obtained from Fuzzy AHP method. In summary, company also get several inferences such as customer characteristics of high and less potential customers. It can be a guideline for making the sale and marketing strategies.