Online advertising platforms typically use auction mechanisms to allocate ad placements. Advertisers participate in a series of repeated auctions, and must select bids that will maximize their overall rewards while adhering to certain constraints. We focus on the scenario in which the advertiser has budget and return-on-investment (ROI) constraints. We investigate the problem of budget- and ROI-constrained bidding in repeated non-truthful auctions, such as first-price auctions, and present a best-of-both-worlds framework with no-regret guarantees under both stochastic and adversarial inputs. By utilizing the notion of interval regret, we demonstrate that our framework does not require knowledge of specific parameters of the problem which could be difficult to determine in practice. Our proof techniques can be applied to both the adversarial and stochastic cases with minimal modifications, thereby providing a unified perspective on the two problems. In the adversarial setting, we also show that it is possible to loosen the traditional requirement of having a strictly feasible solution to the offline optimization problem at each round.
翻译:在线广告平台通常使用拍卖机制来分配广告。广告商参加一系列反复拍卖,必须选择能够最大限度地提高总体回报的出价,同时遵守某些限制条件。我们侧重于广告商有预算和投资回报限制的情景。我们调查在反复进行的非真实拍卖(如第一价格拍卖)中,预算限制和ROI限制的投标问题,并提供一个世界最佳框架,在随机和对抗性投入下提供无回报的保证。我们利用间隙遗憾的概念,表明我们的框架并不要求了解在实践中难以确定的问题的具体参数。我们的证据技术可以适用于对抗性和随机性案例,但只作极少的修改,从而对这两个问题提供统一的观点。在对抗性环境下,我们还表明可以放松对每轮离线优化问题有严格可行的解决办法的传统要求。