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首页> 外文期刊>Journal of the Academy of Marketing Science >Improving customer profit predictions with customer mindset metrics through multiple overimputation
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Improving customer profit predictions with customer mindset metrics through multiple overimputation

机译:通过多次过度使用客户心态指标来改善客户利润预测

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摘要

Research and practice have called for the incorporation of customer mindset metrics (CMMs) to improve the accuracy of models that predict individual customer profits. However, as CMMs are self-reported data, collected through customer surveys, they are seldom available for a firm's entire customer database and in addition always measured with some degree of error. Their usage in models for individual-level predictions of customer profit has therefore proven challenging. We offer a solution through a new method called multiple overimputation (MO). MO treats missing data as an extreme form of measurement error and imputes the CMMs for both customers with observed, albeit with measurement error, as well as missing values, that are then included as predictors in a model of individual customer profits. Through a simulation study, empirical application in the pharmaceutical industry, and a customer selection exercise, we demonstrate the predictive and economic value of applying MO in the context of CRM.
机译:研究和实践要求将客户心态度量标准(CMM)合并以提高预测单个客户利润的模型的准确性。但是,由于CMM是通过客户调查收集的自我报告数据,因此很少可用于公司的整个客户数据库,此外,总是以一定程度的误差进行测量。因此,将其用于模型中用于个人级别的客户利润预测已被证明具有挑战性。我们通过一种称为多重过量输入(MO)的新方法提供了解决方案。 MO将缺失的数据视为极端的测量误差形式,并为具有观察误差(尽管有测量误差)和缺失值的两个客户估算CMM,然后将其作为预测变量包括在单个客户利润模型中。通过模拟研究,在制药行业的经验应用以及客户选择活动,我们证明了在CRM中应用MO的预测价值和经济价值。

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