某物流公司客户保留和客户关系管理的RFM和CLV分析

Lithiya Paul, T. R. Ramanan
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引用次数: 3

摘要

在物流行业留住客户是很困难的,因为它高度依赖于客户关系管理(CRM)和所提供服务的质量。现有客户将保留更长的时间,以获得最大的利润贡献。因此,重要的是对CRM数据进行数据分析,以确定要保留的客户的正确部分,以实现利润最大化。该研究根据最近、频率和货币价值等参数对客户进行细分,称为RFM分析。客户生命周期价值评估是在使用RFM分析获得的细分市场上进行的,以确定每个细分市场的利润贡献。进行的分析有助于管理层根据每个细分市场的RFM分数和CLV采取营销策略决策。公司还可以在保留合适客户的预算支出方面做出决策。
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An RFM and CLV analysis for customer retention and customer relationship management of a logistics firm
To retain a customer in a logistics industry is difficult as it highly depends on the customer relationship management (CRM) and the quality of the service delivered. The existing customers are to be retained for longer period of time for maximum profit contribution. Hence, it is important to perform a data analysis on the CRM data to identify the right segment of customers who are to be retained to maximise profit. This study segments the customers depending on the parameters recency, frequency, and the monetary value, known as RFM analysis. Customer lifetime value estimation is done on segments obtained using the RFM Analysis to identify the profit contribution of each of the segments. The analysis carried out aids the management to adopt decisions on marketing strategies based on the RFM scores and CLV of each segment. Company can also take decisions on budget spending in retaining the right customers.
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来源期刊
International Journal of Applied Management Science
International Journal of Applied Management Science Business, Management and Accounting-Strategy and Management
CiteScore
1.20
自引率
0.00%
发文量
21
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