Robust Budget Pacing with a Single Sample

Published: 24 Apr 2023, Last Modified: 15 Jun 2023ICML 2023 OralPosterEveryoneRevisions
Abstract: Major Internet advertising platforms offer budget pacing tools as a standard service for advertisers to manage their ad campaigns. Given the inherent non-stationarity in an advertiser's value and also competing advertisers' values over time, a commonly used approach is to learn a target expenditure plan that specifies a target spend as a function of time, and then run a controller that tracks this plan. This raises the question: *how many historical samples are required to learn a good expenditure plan*? We study this question by considering an advertiser repeatedly participating in $T$ second-price auctions, where the tuple of her value and the highest competing bid is drawn from an unknown time-varying distribution. The advertiser seeks to maximize her total utility subject to her budget constraint. Prior work has shown the sufficiency of *$T\log T$ samples per distribution* to achieve the optimal $O(\sqrt{T})$-regret. We dramatically improve this state-of-the-art and show that *just one sample per distribution* is enough to achieve the near-optimal $\tilde O(\sqrt{T})$-regret, while still being robust to noise in the sampling distributions.
Submission Number: 4624