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首页> 外文期刊>Expert systems with applications >Benefits of quantile regression for the analysis of customer lifetime value in a contractual setting: An application in financial services
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Benefits of quantile regression for the analysis of customer lifetime value in a contractual setting: An application in financial services

机译:分位数回归在合同环境中分析客户生命周期价值的好处:金融服务中的应用

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摘要

The move towards a customer-centred approach to marketing, coupled with the increasing availability of customer transaction data, has led to an interest in understanding and estimating customer lifetime value (CLV). Several authors point out that, when evaluating customer profitability, profitable customers are rare compared to the unprofitable ones. In spite of this, most authors fail to recognize the implications of these skewed distributions on the performance of models they use. In this study, we propose analyzing CLV by means of quantile regression. In a financial services application, we show that this technique provides management more in-depth insights into the effects of the covariates that are missed with linear regression. Moreover, we show that in the common situation where interest is in a top-customer segment, quantile regression outperforms linear regression. The method also has the ability of constructing prediction intervals. Combining the CLV point estimate with the prediction intervals leads to a new segmentation scheme that is the first to account for uncertainty in the predictions. This segmentation is ideally suited for managing the portfolio of customers.
机译:朝着以客户为中心的市场营销方式发展,加上客户交易数据的可用性不断提高,引起了人们对了解和估算客户生命周期价值(CLV)的兴趣。几位作者指出,在评估客户获利能力时,与无利润客户相比,获利客户很少。尽管如此,大多数作者仍未意识到这些偏斜分布对他们使用模型的性能的影响。在这项研究中,我们建议通过分位数回归分析CLV。在金融服务应用程序中,我们证明了该技术为管理层提供了对线性回归所漏掉的协变量的影响的更深入的了解。此外,我们表明,在对顶级客户群感兴趣的常见情况下,分位数回归优于线性回归。该方法还具有构造预测间隔的能力。将CLV点估计与预测间隔相结合会导致一种新的分割方案,这是第一个考虑预测不确定性的方案。此细分非常适合管理客户组合。

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