Online advertising driven by auctions brings billions of dollars in revenue for social networking services and e-commerce platforms. GSP auctions, which are simple and easy to understand for advertisers, have almost become the benchmark for ad auction mechanisms in the industry. However, most GSP-based industrial practices assume that the user click only relies on the ad itself, which overlook the effect of external items, referred to as externalities. Recently, DNA has attempted to upgrade GSP with deep neural networks and models local externalities to some extent. However, it only considers set-level contexts from auctions and ignores the order and displayed position of ads, which is still suboptimal. Although VCG-based multi-slot auctions (e.g., VCG, WVCG) make it theoretically possible to model global externalities (e.g., the order and positions of ads and so on), they lack an efficient balance of both revenue and social welfare. In this paper, we propose novel auction mechanisms named Neural Multi-slot Auctions (NMA) to tackle the above-mentioned challenges. Specifically, we model the global externalities effectively with a context-aware list-wise prediction module to achieve better performance. We design a list-wise deep rank module to guarantee incentive compatibility in end-to-end learning. Furthermore, we propose an auxiliary loss for social welfare to effectively reduce the decline of social welfare while maximizing revenue. Experiment results on both offline large-scale datasets and online A/B tests demonstrate that NMA obtains higher revenue with balanced social welfare than other existing auction mechanisms (i.e., GSP, DNA, WVCG) in industrial practice, and we have successfully deployed NMA on Meituan food delivery platform.
翻译:由拍卖驱动的在线广告为社交网络服务和电子商务平台带来了数十亿美元的收入。普惠制拍卖对广告商来说既简单又容易理解,几乎成为该行业拍卖机制的基准。然而,基于普惠制的大多数产业做法假定用户点击只依靠广告本身,而广告本身忽略了外部项目的影响,称为外部效应。最近,DNA试图以深厚的神经网络和地方外部效应模型来提升普惠制。然而,DNA只考虑拍卖的定级背景,忽视广告的顺序和显示位置,而广告仍然不够完美。尽管基于VCG的多价拍卖(例如VCG、WVCG、WVCG)在理论上可以模拟全球外差(例如,广告的秩序和立场等等),它们缺乏收入和社会福利的高效平衡。在本论文中,我们建议新的拍卖机制名为Neural-Mulate Aslot Austority(NMA), 忽视广告的顺序和显示广告的位置,这仍然是最优的。具体地说,我们用全球外观的外观来模拟全球外观的外观,从上推价-Bal-al-al-alal-al-lation Baleval-lation Blation Best lieval lieval lieval lial list lial listal lieval listal listal list list listal list listal listal listal list list list list lading ladings ladings