Predicting customer behavior with Activation Loyalty per Period. From RFM to RFMAP

Josep Alet Vilaginés
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引用次数: 2

Abstract

Objective:Identify a new model of predicting customer behavior based on new variables that can be used by marketing management and adapted to their business planning. Methodology: New model has been used, with the definition of new calculation systems of the traditional variables R, Recency, F, Frequency, and M, monetary value, (RFM), related to the business periods. Besides, activation in each period P becomes a key variable for constructing the purchase cohorts of customers and identifying their potential. A new variable, Activation Loyalty, is recognized as a good proxy of the likelihood of future customer purchases. The model builds a weighting through a multiple regression analysis obtaining β for each variable, including the periods of activation, presenting the relative effect of the variables, and the best global explanation of the model. Results: This new model, RFMAP, which includes Activation Periods and Activation Loyalty, presents a higher prediction accuracy and improvements over traditional models with a clear impact, useful and manageable lines of segmentation, and prioritization for marketing management in CRM systems. Limitations: The main limitation of this model consists that it is based on data of only one company, and it should show the value in other sectors and give a full insight through its transversal application. Practical implications: The involved advantages demonstrated better predictability and usefulness to decision-makers, not only to determine the best customers but also with lapsed ones. It gives a meaningful explanation of differences in customer behavior, which are present in the data and are being reflected in the model. Also, it provides a prescriptive prioritization of variables to be managed in the marketing plan and how to be implemented.
利用每一时期的激活忠诚度预测顾客行为。从RFM到RFMAP
目的:确定一个新的模型预测客户的行为基于新的变量,可以使用的营销管理和适应他们的业务规划。方法:采用了新的模型,定义了与商业周期相关的传统变量R、Recency、F、Frequency和M、货币价值(RFM)的新的计算系统。此外,每个时期P的激活成为构建客户购买队列和识别其潜力的关键变量。一个新的变量,激活忠诚度,被认为是未来客户购买可能性的一个很好的代理。该模型通过多元回归分析建立权重,得到每个变量的β,包括激活周期,表示变量的相对效应,以及模型的最佳全局解释。结果:这个新模型RFMAP,包括激活期和激活忠诚度,与传统模型相比,具有更高的预测准确性和改进,具有明确的影响,有用和可管理的细分线,以及CRM系统中营销管理的优先级。局限性:该模型的主要局限性在于仅基于一家公司的数据,需要通过横向应用来显示其他行业的价值,并给予充分的洞察。实际意义:所涉及的优势向决策者展示了更好的可预测性和有用性,不仅可以确定最佳客户,还可以确定失效客户。它对客户行为的差异给出了有意义的解释,这些差异存在于数据中,并反映在模型中。此外,它还提供了在营销计划中要管理的变量的说明性优先级以及如何实施。
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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