论文标题
储备价格优化初价拍卖
Reserve Price Optimization for First Price Auctions
论文作者
论文摘要
展示广告行业最近已从第二代价拍卖过渡为AD分配和定价的主要机制。鉴于此,出版商需要重新评估和优化其拍卖参数,尤其是储备价格。在本文中,我们提出了一种基于梯度的算法,以根据竞标者对储备中的实验冲击的响应能力的估计来自适应更新和优化储备价格。我们的关键创新是借鉴收入目标的固有结构,以减少梯度估计的差异并提高理论和实践中的收敛率。我们表明,第一价格拍卖中的收入可以有效地分解为\ emph {需求}组件和\ emph {bidding}组件,并引入技术以减少每个组件的方差。我们表征了这些技术的偏见变化权衡取舍,并通过实验合成数据和实际显示AD ADAUCTIONS数据来验证我们提出的算法的性能。
The display advertising industry has recently transitioned from second- to first-price auctions as its primary mechanism for ad allocation and pricing. In light of this, publishers need to re-evaluate and optimize their auction parameters, notably reserve prices. In this paper, we propose a gradient-based algorithm to adaptively update and optimize reserve prices based on estimates of bidders' responsiveness to experimental shocks in reserves. Our key innovation is to draw on the inherent structure of the revenue objective in order to reduce the variance of gradient estimates and improve convergence rates in both theory and practice. We show that revenue in a first-price auction can be usefully decomposed into a \emph{demand} component and a \emph{bidding} component, and introduce techniques to reduce the variance of each component. We characterize the bias-variance trade-offs of these techniques and validate the performance of our proposed algorithm through experiments on synthetic data and real display ad auctions data from Google ad exchange.