Causal Inference on Stopped Random Walks in Online Advertising
AI 摘要
针对在线广告场景,提出了一种基于停止随机游走的因果推断方法,用于评估长期广告效果。
主要贡献
- 提出将在线广告收益建模为停止随机游走
- 结合预算分割实验设计、Anscombe定理和中心极限定理构建置信区间
- 解决了在线广告中用户行为轨迹和广告主竞价策略变化带来的因果推断挑战
方法论
采用预算分割实验设计,利用Anscombe定理、Wald方程和中心极限定理进行因果推断。
原文摘要
We consider a causal inference problem frequently encountered in online advertising systems, where a publisher (e.g., Instagram, TikTok) interacts repeatedly with human users and advertisers by sporadically displaying to each user an advertisement selected through an auction. Each treatment corresponds to a parameter value of the advertising mechanism (e.g., auction reserve-price), and we want to estimate through experiments the corresponding long-term treatment effect (e.g., annual advertising revenue). In our setting, the treatment affects not only the instantaneous revenue from showing an ad, but also changes each user's interaction-trajectory, and each advertiser's bidding policy -- as the latter is constrained by a finite budget. In particular, each a treatment may even affect the size of the population, since users interact longer with a tolerable advertising mechanism. We drop the classical i.i.d. assumption and model the experiment measurements (e.g., advertising revenue) as a stopped random walk, and use a budget-splitting experimental design, the Anscombe Theorem, a Wald-like equation, and a Central Limit Theorem to construct confidence intervals for the long-term treatment effect.