论文标题

以响应依赖性成本针对客户

Targeting customers under response-dependent costs

论文作者

Haupt, Johannes, Lessmann, Stefan

论文摘要

当营销行动的成本取决于客户响应并提出一个框架以估算竞选利润优化的决策变量时,这项研究对客户定位问题进行了正式分析。如果营销处理的影响和相关利润高于其成本,则针对客户是有利可图的。尽管越来越多的关于隆福模型的文献确定了最强的治疗响应者,但在靶向决策时未知治疗成本尚不清楚时,没有研究对最佳靶向进行研究。随机成本在直接营销和客户保留活动中无处不在,因为营销激励措施以积极的客户响应为条件。这项研究为文献做出了两项贡献,这些贡献是在电子商务优惠券目标运动中进行评估的。首先,我们在响应依赖性成本下正式分析了目标决策问题。利润最佳目标需要估计对客户的治疗效果,并估算出治疗中客户的响应概率。经验结果表明,考虑治疗成本的考虑可大大提高广告系列的利润,以与平均或客户级治疗效果的估计结合使用。其次,我们提出了一个框架,通过将因果推断与跨栏混合物模型相结合,共同估计治疗效果和响应概率。拟议中的因果障碍模型在简化模型建设的同时,可实现竞争性的运动利润。代码可在https://github.com/humboldt-wi/response-deppertent-costs上找到。

This study provides a formal analysis of the customer targeting problem when the cost for a marketing action depends on the customer response and proposes a framework to estimate the decision variables for campaign profit optimization. Targeting a customer is profitable if the impact and associated profit of the marketing treatment are higher than its cost. Despite the growing literature on uplift models to identify the strongest treatment-responders, no research has investigated optimal targeting when the costs of the treatment are unknown at the time of the targeting decision. Stochastic costs are ubiquitous in direct marketing and customer retention campaigns because marketing incentives are conditioned on a positive customer response. This study makes two contributions to the literature, which are evaluated on an e-commerce coupon targeting campaign. First, we formally analyze the targeting decision problem under response-dependent costs. Profit-optimal targeting requires an estimate of the treatment effect on the customer and an estimate of the customer response probability under treatment. The empirical results demonstrate that the consideration of treatment cost substantially increases campaign profit when used for customer targeting in combination with an estimate of the average or customer-level treatment effect. Second, we propose a framework to jointly estimate the treatment effect and the response probability by combining methods for causal inference with a hurdle mixture model. The proposed causal hurdle model achieves competitive campaign profit while streamlining model building. Code is available at https://github.com/Humboldt-WI/response-dependent-costs.

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