Promotions have been trending in the e-commerce marketplace to build up customer relationships and guide customers towards the desired actions. Since incentives are effective to engage customers and customers have different preferences for different types of incentives, the demand for personalized promotion decision making is increasing over time. However, research on promotion decision making has focused specifically on purchase conversion during the promotion period (the direct effect), while generally disregarding the enduring effect in the post promotion period. To achieve a better lift return on investment (lift ROI) on the enduring effect of the promotion and improve customer retention and loyalty, we propose a framework of multiple treatment promotion decision making by modeling each customer's direct and enduring response. First, we propose a customer direct and enduring effect (CDEE) model which predicts the customer direct and enduring response. With the help of the predictions of the CDEE, we personalize incentive allocation to optimize the enduring effect while keeping the cost under the budget. To estimate the effect of decision making, we apply an unbiased evaluation approach of business metrics with randomized control trial (RCT) data. We compare our method with benchmarks using two promotions in Mercari and achieve significantly better results.
翻译:电子商务市场的促销趋势一直趋向于在电子商务市场中建立客户关系,引导客户采取预期行动;由于鼓励措施有效,使客户和客户对不同类型的奖励措施有不同的偏好,因此个人化的促销决策需求随着时间的流逝而增加;然而,关于促销决策的研究特别侧重于促销期间的购买转换(直接影响),同时一般无视促销后时期的持久影响;为了更好地提高投资收益(提升ROI)对促销的持久影响,并改进客户的留用和忠诚,我们提议了一个多种治疗促进决策框架,办法是模拟每个客户的直接和长期反应。首先,我们提出一种直接和持久的效果(CDEEE)模式,预测客户的直接和持久反应。在对促进增长的预测的帮助下,我们将奖励拨款个人化,优化持久效果,同时将成本保持在预算之下。为了估计决策的效果,我们采用了对商业衡量标准与随机化的控制试验数据进行公正的评价。我们用两种促销法将我们的方法与基准进行比较,在Mercari使用两种促销和取得更好的结果。