英国零售市场客户细分的聚类算法研究

Jeen Mary John, Olamilekan Shobayo, Bayode Ogunleye
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引用次数: 2

摘要

最近,人们对网上购物的意识显著提高。这导致了在线零售平台的兴起,以及对更好地了解客户购买行为的需求。零售公司迫切需要处理大量的客户购买,这需要复杂的方法来执行更准确和有效的客户细分。客户细分是一种营销分析工具,有助于以客户为中心的服务,从而提高盈利能力。在本文中,我们的目的是建立一个客户细分模型,以改善零售市场行业的决策过程。为了实现这一点,我们采用了从UCI机器学习存储库获得的基于英国的在线零售数据集。零售数据集由541,909条客户记录和8个特征组成。我们的研究采用了RFM(最近、频率和货币)框架来量化客户价值。随后,我们比较了几种最先进的(SOTA)聚类算法,即K-means聚类、高斯混合模型(GMM)、基于密度的带噪声空间聚类(DBSCAN)、聚集聚类以及使用层次结构的平衡迭代约简和聚类(BIRCH)。结果显示,GMM优于其他方法,剪影得分为0.80。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Exploration of Clustering Algorithms for Customer Segmentation in the UK Retail Market
Recently, peoples’ awareness of online purchases has significantly risen. This has given rise to online retail platforms and the need for a better understanding of customer purchasing behaviour. Retail companies are pressed with the need to deal with a high volume of customer purchases, which requires sophisticated approaches to perform more accurate and efficient customer segmentation. Customer segmentation is a marketing analytical tool that aids customer-centric service and thus enhances profitability. In this paper, we aim to develop a customer segmentation model to improve decision-making processes in the retail market industry. To achieve this, we employed a UK-based online retail dataset obtained from the UCI machine learning repository. The retail dataset consists of 541,909 customer records and eight features. Our study adopted the RFM (recency, frequency, and monetary) framework to quantify customer values. Thereafter, we compared several state-of-the-art (SOTA) clustering algorithms, namely, K-means clustering, the Gaussian mixture model (GMM), density-based spatial clustering of applications with noise (DBSCAN), agglomerative clustering, and balanced iterative reducing and clustering using hierarchies (BIRCH). The results showed the GMM outperformed other approaches, with a Silhouette Score of 0.80.
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