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Uplift modeling with value-driven evaluation metrics

机译:用价值驱动评估指标提升建模

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Measuring the success of targeted marketing actions is challenging. Research on prescriptive analytics recommends uplift models to guide targeting decisions. Uplift models predict how much a marketing action will change customers' behavior, known as the individual treatment effect (ITE). Marketers can then solicit customers in decreasing order of their estimated ITE. We argue that the ITE-based targeting policy is not fully consistent with a business value maximization objective. We propose business-centric evaluation metrics that integrate estimates of the ITE and the expected business value and validate their benefits relative to the ITE-based targeting baseline using real-world marketing data. The new metrics yield remarkably higher profit across different uplift models, targeting depths, profit functions, and data sets. They further contribute to the growing field of interpretable data science by uncovering interdependencies between covariates, ITE, and profit and by clarifying whether customers are worth targeting because of high responsiveness or high value.
机译:衡量有针对性的营销行为的成功是具有挑战性的。规定性分析研究推荐隆起模型来指导目标决策。隆起模型预测营销行动将如何改变客户的行为,称为个体治疗效果(ITE)。然后,营销人员可以征求客户的估计ite的令人贬值。我们认为,基于ITE的目标政策与企业价值最大化目标并不完全一致。我们提出以商业为中心的评估指标,整合ITE的估计和预期的业务价值,并使用现实世界营销数据验证相对于基于ITE的目标基线的益处。新的指标在不同隆起模型,定位深度,利润函数和数据集中的利润上更高。他们通过揭示协变量,ITE和盈利之间的相互依存性以及通过高响应性或高价值来澄清客户是否值得瞄准,进一步促进了可解释数据科学领域。

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