共同价值拍卖
投标
后悔
实时竞价
汤普森抽样
在线广告
计算机科学
展示广告
推论
广告
订单(交换)
因果推理
数字广告
数学优化
经济
微观经济学
互联网
计量经济学
人工智能
机器学习
业务
数学
万维网
财务
作者
Caio Waisman,Harikesh S. Nair,Carlos Carrión
出处
期刊:Cornell University - arXiv
日期:2019-01-01
被引量:3
标识
DOI:10.48550/arxiv.1908.08600
摘要
Real-time bidding (RTB) systems, which utilize auctions to allocate user impressions to competing advertisers, continue to enjoy success in digital advertising. Assessing the effectiveness of such advertising remains a challenge in research and practice. This paper proposes a new approach to perform causal inference on advertising bought through such mechanisms. Leveraging the economic structure of first- and second-price auctions, we first show that the effects of advertising are identified by the optimal bids. Hence, since these optimal bids are the only objects that need to be recovered, we introduce an adapted Thompson sampling (TS) algorithm to solve a multi-armed bandit problem that succeeds in recovering such bids and, consequently, the effects of advertising while minimizing the costs of experimentation. We derive a regret bound for our algorithm which is order optimal and use data from RTB auctions to show that it outperforms commonly used methods that estimate the effects of advertising.
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