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arXiv 提交日期: 2026-02-05
📄 Abstract - Causal Inference on Stopped Random Walks in Online Advertising

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.

顶级标签: systems theory machine learning
详细标签: causal inference online advertising experimental design random walk budget constraints 或 搜索:

在线广告中关于停止随机游走的因果推断 / Causal Inference on Stopped Random Walks in Online Advertising


1️⃣ 一句话总结

这篇论文提出了一种新的方法,用于在在线广告系统中评估广告机制(如拍卖底价)的长期影响,该方法通过将实验数据建模为停止的随机游走,并结合预算分割设计和统计定理,来构建长期效果的可靠置信区间。

源自 arXiv: 2602.05997