论文标题
营销中资源分配问题的直接异质因果学习
Direct Heterogeneous Causal Learning for Resource Allocation Problems in Marketing
论文作者
论文摘要
营销是增加用户参与并提高平台收入的重要机制,而异质因果学习可以帮助制定更有效的策略。营销中的大多数决策问题都可以作为资源分配问题提出,并且已经研究了数十年。现有作品通常将解决方案过程分为两个完全解耦的阶段,即机器学习(ML)和操作研究(OR) - 第一阶段预测了模型参数,并且在第二阶段将其馈入优化。但是,ML中预测参数的误差无法得到尊重,并且在累积误差中增加了一系列复杂的数学操作或导致增加的累加误差。本质上,由于脱钩设计的副作用,对预测参数的提高精度可能不会在最终解上具有正相关性。 在本文中,我们提出了一种解决资源分配问题以减轻副作用的新方法。我们的关键直觉是,我们引入了决策因素,以在ML和或或仅通过对决策因素进行分类或比较操作来直接获得解决方案之间的桥梁。此外,我们设计了一种定制的损失函数,可以对决策因素进行直接异质因果学习,当损失收敛时可以保证其无偏见的估计。作为案例研究,我们将方法应用于营销中的两个关键问题:二元治疗分配问题和多种治疗的预算分配问题。大型模拟和在线A/B测试都表明,与最先进的方法相比,我们的方法取得了重大改进。
Marketing is an important mechanism to increase user engagement and improve platform revenue, and heterogeneous causal learning can help develop more effective strategies. Most decision-making problems in marketing can be formulated as resource allocation problems and have been studied for decades. Existing works usually divide the solution procedure into two fully decoupled stages, i.e., machine learning (ML) and operation research (OR) -- the first stage predicts the model parameters and they are fed to the optimization in the second stage. However, the error of the predicted parameters in ML cannot be respected and a series of complex mathematical operations in OR lead to the increased accumulative errors. Essentially, the improved precision on the prediction parameters may not have a positive correlation on the final solution due to the side-effect from the decoupled design. In this paper, we propose a novel approach for solving resource allocation problems to mitigate the side-effects. Our key intuition is that we introduce the decision factor to establish a bridge between ML and OR such that the solution can be directly obtained in OR by only performing the sorting or comparison operations on the decision factor. Furthermore, we design a customized loss function that can conduct direct heterogeneous causal learning on the decision factor, an unbiased estimation of which can be guaranteed when the loss converges. As a case study, we apply our approach to two crucial problems in marketing: the binary treatment assignment problem and the budget allocation problem with multiple treatments. Both large-scale simulations and online A/B Tests demonstrate that our approach achieves significant improvement compared with state-of-the-art.