用机器学习进行客户细分:目标行动的新策略

Lahcen Abidar, Dounia Zaidouni, Abdeslam Ennouaary
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引用次数: 5

摘要

客户细分一直是许多行业、学者和营销领导者感兴趣的话题。客户对公司的潜在价值可能是决策的核心因素。在以客户为基础的组织中,最大的挑战之一是客户认知,理解他们之间的差异,并对他们进行评分。但现在,凭借我们拥有的所有能力,使用机器学习算法和数据处理等新技术,我们可以创建一个非常强大的框架,使我们能够最好地了解客户的需求和行为,并采取适当的行动来满足他们的需求。本文提出了一种基于RFM模型(current, Frequency, Monetary)和k-mean算法的模型来解决这些问题。这个模型将允许我们使用聚类、评分和分布来清楚地了解我们应该采取什么行动来提高客户满意度。
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Customer Segmentation With Machine Learning: New Strategy For Targeted Actions
Customers Segmentation has been a topic of interest for a lot of industry, academics, and marketing leaders. The potential value of a customer to a company can be a core ingredient in decision-making. One of the big challenges in customer-based organizations is customer cognition, understanding the difference between them, and scoring them. But now with all capabilities we have, using new technologies like machine learning algorithm and data treatment we can create a very powerful framework that allow us to best understand customers needs and behaviors, and act appropriately to satisfy their needs. In the present paper, we propose a new model based on RFM model Recency, Frequency, and Monetary and k-mean algorithm to resolve those challenges. This model will allow us to use clustering, scoring, and distribution to have a clear idea about what action we should take to improve customer satisfaction.
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