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A Unified Solution to Constrained Bidding in Online Display Advertising

Published: 14 August 2021 Publication History

Abstract

In online display advertising, advertisers usually participate in real-time bidding to acquire ad impression opportunities. In most advertising platforms, a typical impression acquiring demand of advertisers is to maximize the sum value of winning impressions under budget and some key performance indicators constraints, (e.g. maximizing clicks with the constraints of budget and cost per click upper bound). The demand can be various in value type (e.g. ad exposure/click), constraint type (e.g. cost per unit value) and constraint number. Existing works usually focus on a specific demand or hardly achieve the optimum. In this paper, we formulate the demand as a constrained bidding problem, and deduce a unified optimal bidding function on behalf of an advertiser. The optimal bidding function facilitates an advertiser calculating bids for all impressions with only m parameters, where m is the constraint number. However, in real application, it is non-trivial to determine the parameters due to the non-stationary auction environment. We further propose a reinforcement learning (RL) method to dynamically adjust parameters to achieve the optimum, whose converging efficiency is significantly boosted by the recursive optimization property in our formulation. We name the formulation and the RL method, together, as Unified Solution to Constrained Bidding (USCB). USCB is verified to be effective on industrial datasets and is deployed in Alibaba display advertising platform.

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MOV File (kdd2021_USCB_slide_video.mov)
KDD 2021 Presentation Video ''A Unified Solution to Constrained Bidding in Online Display Advertising.''

References

[1]
Shipra Agrawal, Zizhuo Wang, and Yinyu Ye. 2014. A dynamic near-optimal algorithm for online linear programming. Operations Research, Vol. 62, 4 (2014), 876--890.
[2]
alibaba. 2021. Alimama Super Diamond. https://zuanshi.taobao.com/.
[3]
Achim Bachem and Walter Kern. 1992. Linear programming duality. In Linear Programming Duality. Springer, 89--111.
[4]
Han Cai, Kan Ren, Weinan Zhang, Kleanthis Malialis, Jun Wang, Yong Yu, and Defeng Guo. 2017. Real-time bidding by reinforcement learning in display advertising. In Proceedings of the Tenth ACM International Conference on Web Search and Data Mining. 661--670.
[5]
Ye Chen, Pavel Berkhin, Bo Anderson, and Nikhil R Devanur. 2011. Real-time bidding algorithms for performance-based display ad allocation. In Proceedings of the 17th ACM SIGKDD international conference on Knowledge discovery and data mining. 1307--1315.
[6]
Vasek Chvatal, Vaclav Chvatal, et al. 1983. Linear programming. Macmillan.
[7]
A Ebrahimnejad and SH Nasseri. 2009. Using complementary slackness property to solve linear programming with fuzzy parameters. Fuzzy Information and Engineering, Vol. 1, 3 (2009), 233--245.
[8]
Benjamin Edelman, Michael Ostrovsky, and Michael Schwarz. 2007. Internet advertising and the generalized second-price auction: Selling billions of dollars worth of keywords. American economic review, Vol. 97, 1 (2007), 242--259.
[9]
facebook. 2021. Advertising on Facebook. https://www.facebook.com/business/ads.
[10]
Djordje Gligorijevic, Tian Zhou, Bharatbhushan Shetty, Brendan Kitts, Shengjun Pan, Junwei Pan, and Aaron Flores. 2020. Bid Shading in The Brave New World of First-Price Auctions. In Proceedings of the 29th ACM International Conference on Information & Knowledge Management. 2453--2460.
[11]
Google. 2021. Google Ads. https://ads.google.com/.
[12]
R Gummadi, Peter B Key, and Alexandre Proutiere. 2011. Optimal bidding strategies in dynamic auctions with budget constraints. In 2011 49th Annual Allerton Conference on Communication, Control, and Computing (Allerton). IEEE, 588--588.
[13]
IAB. 2020. Full-Year 2019 Internet Advertising Revenue Report and Coronavirus Impact on Ad Pricing Report in Q1 2020. https://www.iab.com/video/full-year-2019-internet-advertising-revenue-report-and-coronavirus-impact-on-ad-pricing-report-in-q1--2020/.
[14]
Junqi Jin, Chengru Song, Han Li, Kun Gai, Jun Wang, and Weinan Zhang. 2018. Real-time bidding with multi-agent reinforcement learning in display advertising. In Proceedings of the 27th ACM International Conference on Information and Knowledge Management. 2193--2201.
[15]
Leslie Pack Kaelbling, Michael L Littman, and Andrew W Moore. 1996. Reinforcement learning: A survey. Journal of artificial intelligence research, Vol. 4 (1996), 237--285.
[16]
Brendan Kitts, Michael Krishnan, Ishadutta Yadav, Yongbo Zeng, Garrett Badeau, Andrew Potter, Sergey Tolkachov, Ethan Thornburg, and Satyanarayana Reddy Janga. 2017. Ad Serving with Multiple KPIs. In Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. 1853--1861.
[17]
Timothy P Lillicrap, Jonathan J Hunt, Alexander Pritzel, Nicolas Heess, Tom Erez, Yuval Tassa, David Silver, and Daan Wierstra. 2015. Continuous control with deep reinforcement learning. arXiv preprint arXiv:1509.02971 (2015).
[18]
Richard S Sutton and Andrew G Barto. 2018. Reinforcement learning: An introduction. MIT press.
[19]
Jun Wang and Shuai Yuan. 2015. Real-time bidding: A new frontier of computational advertising research. In Proceedings of the Eighth ACM International Conference on Web Search and Data Mining. 415--416.
[20]
Christopher A Wilkens, Ruggiero Cavallo, Rad Niazadeh, and Samuel Taggart. 2016. Mechanism design for value maximizers. arXiv preprint arXiv:1607.04362 (2016).
[21]
Di Wu, Xiujun Chen, Xun Yang, Hao Wang, Qing Tan, Xiaoxun Zhang, Jian Xu, and Kun Gai. 2018. Budget constrained bidding by model-free reinforcement learning in display advertising. In Proceedings of the 27th ACM International Conference on Information and Knowledge Management. 1443--1451.
[22]
Jia-Qi Yang, Xiang Li, Shuguang Han, Tao Zhuang, De-Chuan Zhan, Xiaoyi Zeng, and Bin Tong. 2020. Capturing Delayed Feedback in Conversion Rate Prediction via Elapsed-Time Sampling. arXiv preprint arXiv:2012.03245 (2020).
[23]
Xun Yang, Yasong Li, Hao Wang, Di Wu, Qing Tan, Jian Xu, and Kun Gai. 2019. Bid optimization by multivariable control in display advertising. In Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining. 1966--1974.
[24]
Shuai Yuan, Jun Wang, and Xiaoxue Zhao. 2013. Real-time bidding for online advertising: measurement and analysis. In Proceedings of the Seventh International Workshop on Data Mining for Online Advertising. 1--8.
[25]
Weinan Zhang, Kan Ren, and Jun Wang. 2016. Optimal real-time bidding frameworks discussion. arXiv preprint arXiv:1602.01007 (2016).
[26]
Weinan Zhang, Shuai Yuan, and Jun Wang. 2014. Optimal real-time bidding for display advertising. In Proceedings of the 20th ACM SIGKDD international conference on Knowledge discovery and data mining. 1077--1086.
[27]
Guorui Zhou, Weijie Bian, Kailun Wu, Lejian Ren, Qi Pi, Yujing Zhang, Can Xiao, Xiang-Rong Sheng, Na Mou, Xinchen Luo, et al. 2020. CAN: Revisiting Feature Co-Action for Click-Through Rate Prediction. arXiv preprint arXiv:2011.05625 (2020).
[28]
Tian Zhou, Hao He, Shengjun Pan, Niklas Karlsson, Bharatbhushan Shetty, Brendan Kitts, Djordje Gligorijevic, San Gultekin, Tingyu Mao, Junwei Pan, Jianlong Zhang, and Aaron Flores. 2021. Efficient Deep Distribution Network for Bid Shading in First-Price Auctions. In Proceedings of the 27th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining.
[29]
Yunhong Zhou, Deeparnab Chakrabarty, and Rajan Lukose. 2008. Budget constrained bidding in keyword auctions and online knapsack problems. In International Workshop on Internet and Network Economics. Springer, 566--576.

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      cover image ACM Conferences
      KDD '21: Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining
      August 2021
      4259 pages
      ISBN:9781450383325
      DOI:10.1145/3447548
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      Published: 14 August 2021

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      Author Tags

      1. bid optimization
      2. display advertising
      3. real-time bidding

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