多服务金融机构的客户行为预测:盈利能力视角

A. Audzeyeva, B. Summers, K. Schenk-Hoppé
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引用次数: 10

摘要

本文提出了一种新的客户生命周期价值估算方法。CLV指标显示了客户产生利润的潜力,并为客户管理过程提供了一个关键的业务工具。由于客户行为的高度异质性,现有方法在多服务金融环境中的表现并不理想。我们提出了一种自适应分割方法,该方法涉及使用在预测变量空间上定义的相似性度量来识别“邻居”。在交叉验证过程中,通过优化观察到的收入和预测收入之间的秩相关性来确定预测变量集。根据客户表现出与前一时期相似的行为特征,使用预测概率分布来预测每个客户的未来收入。该模型是为一家英国零售银行开发和实施的,与其他基准模型相比,该模型表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Customer Behaviour in a Multi-Service Financial Organisation: A Profitability Perspective
This paper proposes a novel approach to the estimation of Customer Lifetime Value (CLV). CLV measures give an indication of the profit-generating potential of customers, and provide a key business tool for the customer management process. The performances of existing approaches are unsatisfactory in multi-service financial environments because of the high degree of heterogeneity in customer behaviour. We propose an adaptive segmentation approach which involves the identification of “neighbourhoods” using a similarity measure defined over a predictive variable space. The set of predictive variables is determined during a cross-validation procedure through the optimisation of rank correlations between the observed and predicted revenues. The future revenue is forecast for each customer using a predictive probability distribution based on customers exhibiting behavioural characteristics similar to previous periods. The model is developed and implemented for a UK retail bank, and is shown to perform well in comparison to other benchmark models.
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