Promotions and discounts are essential components of modern e-commerce platforms, where they are often used to incentivize customers towards purchase completion. Promotions also affect revenue and may incur a monetary loss that is often limited by a dedicated promotional budget. We study the Online Constrained Multiple-Choice Promotions Personalization Problem, where the optimization goal is to select for each customer which promotion to present in order to maximize purchase completions, while also complying with global budget limitations. Our work formalizes the problem as an Online Multiple Choice Knapsack Problem and extends the existent literature by addressing cases with negative weights and values. We provide a real-time adaptive method that guarantees budget constraints compliance and achieves above 99.7% of the optimal promotional impact on various datasets. Our method is evaluated on a large-scale experimental study at one of the leading online travel platforms in the world.
翻译:促销和折扣是现代电子商务平台的基本组成部分,常常用来激励客户完成购买。促销还影响到收入,并可能造成货币损失,往往受到专门的促销预算的限制。我们研究了在线限制的多张手机促销个人化问题,优化目标是为每个客户选择促销,以便最大限度地完成购买,同时遵守全球预算限制。我们的工作将这一问题正式确定为在线多重选择权包问题,并通过处理负重和负值案件扩展现有文献。我们提供了实时适应方法,保证预算限制得到遵守,实现对各种数据集超过99.7%的最佳促销影响。我们的方法是在世界上领先的在线旅行平台之一进行大规模实验性研究。