MRFM-analysis for customer segmentation in the industrial equipment market

IF 0.5 Q4 MANAGEMENT Upravlenets-The Manager Pub Date : 2023-05-05 DOI:10.29141/2218-5003-2023-14-2-7
Marina E. Tsoy, V. Shchekoldin
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Abstract

It is of high importance for enterprises to identify, group and prioritize customers with similar needs in order to develop an individual approach to each of these groups. The article aims to segment B2B consumers based on the analysis of their purchasing behaviour. The theoretical framework of the study is the postulates of behavioural marketing. The research method involves МRFM-analysis (Modified Recency-Frequency-Monetary Analysis) that allows determining homogeneous groups of clients, examining the evolution of their behaviour, and formulating targeted interaction strategies for each group. The paper demonstrates the benefits of the Orange Data Mining machine learning and data mining complex, these are the capability to statistically correctly identify client clusters and the visual clarity of results analysis. The empirical evidence is industrial equipment sales data provided by a large Russian security systems manufacturer for the period of 2015–2022. A relationship is found between the segmentation performed in the study and the Reinartz–Kumar approach applied to decide on a strategy for forming customer loyalty. The authors distinguish between six groups of customers and establish those generating the greatest profit for the company and those having the minimum effects on its turnover. The group of trading firms (about 20% of all the clients) turned out to be the priority one, which, due to the specificity of their activities, have long-term relationships with the manufacturer and high client reliability. It is the client group for which devising targeted strategies stimulating an increase in their demand is most reasonable. For the rest of the consumer groups, it is expedient to use standard marketing strategies.
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mrfm -工业设备市场客户细分分析
对于企业来说,识别、分组和优先考虑具有相似需求的客户是非常重要的,以便为每个群体制定个性化的方法。这篇文章的目的是在分析B2B消费者的购买行为的基础上对他们进行细分。本研究的理论框架是行为营销的假设。研究方法涉及МRFM-analysis(修改后的近期-频率-货币分析),它允许确定同类客户群体,检查他们的行为演变,并为每个群体制定有针对性的互动策略。本文展示了Orange数据挖掘机器学习和数据挖掘综合体的好处,这些是统计正确识别客户集群的能力和结果分析的视觉清晰度。经验证据是俄罗斯一家大型安全系统制造商提供的2015-2022年期间的工业设备销售数据。在研究中进行的细分和Reinartz-Kumar方法之间发现了一种关系,这种方法用于决定形成客户忠诚度的策略。作者区分了六类客户,并确定了那些为公司带来最大利润的客户和那些对公司营业额影响最小的客户。贸易公司组(约占所有客户的20%)被证明是优先考虑的,由于其活动的特殊性,与制造商有长期关系,客户可靠性高。对于这个客户群体,制定有针对性的策略来刺激他们的需求增长是最合理的。对于其余的消费者群体,使用标准的营销策略是权宜之计。
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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来源期刊
自引率
40.00%
发文量
47
审稿时长
16 weeks
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