Identifying loyal customers and predicting customers purchase behavior using k-means and SOM algorithms

A. Ehsani, A. Hatamlou
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Abstract

Despite the importance of data mining techniques to customer relationship management (CRM) and measuring customers loyalty and profitability, there is a lack of resources and articles related to this topic. Data mining is a useful tool to help companies for mining patterns and discovering hidden information in customers' data. In this study we cluster customers using k-means and SOM clustering algorithms with respect to apply RFM analysis based on behavioral characteristics such as recency, frequency and monetary variables and identify loyal customers and determine degree of loyalty. Then we apply C5.0 model on the resulting clusters to predict future customer behavior. In the end, evaluate accuracy of classification and compare the results. Proposed model implemented on M&S clothing store's dataset. Results of this study provide a background for identifying valuable and key customers and analysis their characteristics and loyalty.
使用k-means和SOM算法识别忠诚客户并预测客户购买行为
尽管数据挖掘技术对客户关系管理(CRM)和衡量客户忠诚度和盈利能力很重要,但缺乏与此主题相关的资源和文章。数据挖掘是帮助公司挖掘模式和发现客户数据中隐藏信息的有用工具。在本研究中,我们使用k-means和SOM聚类算法对客户进行聚类,并基于诸如最近、频率和货币变量等行为特征应用RFM分析,识别忠诚客户并确定忠诚程度。然后,我们将C5.0模型应用于结果集群来预测未来的客户行为。最后对分类的准确性进行评价,并对分类结果进行比较。提出的模型在M&S服装店的数据集上实现。本研究的结果为识别有价值和关键客户并分析其特征和忠诚度提供了背景。
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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