零售业顾客行为与人口统计分析的扩展RFM模型

IF 1.2 Q4 BUSINESS Business Systems Research Journal Pub Date : 2023-09-01 DOI:10.2478/bsrj-2023-0002
Thanh Ho, Suong Nguyen, Huong Nguyen, Ngoc Nguyen, Dac-Sang Man, Thao-Giang Le
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引用次数: 0

摘要

客户细分已经成为最具创新性的方法之一,它可以帮助企业采取适当的营销活动,达到目标客户。RFM模型与机器学习的结合在各个领域得到了广泛的应用。随着交易数据的快速增长,RFM模型可以准确地细分客户,更深入地洞察客户的购买行为。然而,传统的RFM模型仅限于3个变量,即recent, Frequency和Monetary,而没有揭示基于人口特征的细分。同时,人口特征对营销策略的贡献是极其重要的。本文提出了一个结合行为变量和人口变量的扩展RFMD模型(D-Demographic)。使用RFMD模型、K-Means和K-Prototype算法可以有效地进行客户细分。结果将扩展模型应用于零售数据集,实验结果显示出5个具有不同特征的聚类。通过调整后的兰德指数和调整后的互信息来衡量新模型的有效性。此外,我们使用队列分析来分析客户保留率,并为每个细分市场推荐营销策略。经评价,所提出的RMFD模型部署效果良好,两种聚类算法产生的结果稳定。企业可以应用这个模型来深入了解客户的人口统计行为,并开展有效的营销活动。
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An Extended RFM Model for Customer Behaviour and Demographic Analysis in Retail Industry
Abstract Background Customer segmentation has become one of the most innovative ways which help businesses adopt appropriate marketing campaigns and reach targeted customers. The RFM model and machine learning combination have been widely applied in various areas. Motivations With the rapid increase of transactional data, the RFM model can accurately segment customers and provide deeper insights into customers’ purchasing behaviour. However, the traditional RFM model is limited to 3 variables, Recency, Frequency and Monetary, without revealing segments based on demographic features. Meanwhile, the contribution of demographic characteristics to marketing strategies is extremely important. Methods/Approach The article proposed an extended RFMD model (D-Demographic) with a combination of behavioural and demographic variables. Customer segmentation can be performed effectively using the RFMD model, K-Means, and K-Prototype algorithms. Results The extended model is applied to the retail dataset, and the experimental result shows 5 clusters with different features. The effectiveness of the new model is measured by the Adjusted Rand Index and Adjusted Mutual Information. Furthermore, we use Cohort analysis to analyse customer retention rates and recommend marketing strategies for each segment. Conclusions According to the evaluation, the proposed RMFD model was deployed with stable results created by two clustering algorithms. Businesses can apply this model to deeply understand customer behaviour with their demographics and launch efficient campaigns.
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来源期刊
CiteScore
3.00
自引率
6.70%
发文量
0
审稿时长
22 weeks
期刊最新文献
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