通过集群选择和分析来细分和定位客户

I. Pranata, G. Skinner
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引用次数: 9

摘要

本文研究了利用机器学习聚类技术对批发经销商进行客户细分和目标客户定位的方法。它描述了用于评估客户在产品上的年度支出的集群的选择、分析和解释。我们通过查看六个基本产品类别的年度支出来展示循环统计如何对客户进行分类。使用k-means聚类算法创建了多个聚类,并使用多种技术对这些聚类进行了深入分析,以仔细选择最佳聚类。自动集群能够建议这些客户所属的组。对集群的评估和解释能够提供对各种购买行为的见解,并提名最佳的客户群作为目标。
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Segmenting and targeting customers through clusters selection & analysis
This paper investigates the use of machine learning clustering technique to segment and target customers of a wholesale distributor. It describes the selection, analysis, and interpretation of clusters for evaluating customers annual spending on the products. We show how circular statistics can categorize customers by looking at the annual spending on six essential product categories. Several clusters were created using k-means clustering algorithm and an in-depth analysis on these clusters were performed using several techniques to carefully select the best cluster. Automated clustering was able to suggest groups that these customers fall into. The evaluation and interpretation of clusters were able to provide insights into various purchase behaviors and to nominate the best customer group to target.
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