Abstract
We present a new encoder-decoder generative network dubbed EdgeNet, which introduces a novel encoder-decoder framework for data-driven auction design in online e-commerce advertising. We break the neural auction paradigm of Generalized-Second-Price (GSP) and improve the utilization efficiency of data while ensuring the economic characteristics of the auction mechanism. Specifically, EdgeNet introduces a transformer-based encoder to better capture the mutual influence among different candidate advertisements. In contrast to GSP based neural auction model, we design an auto-regressive decoder to better utilize the rich context information in online advertising auctions. EdgeNet is conceptually simple and easy to extend to the existing end-to-end neural auction framework. We validate the efficiency of EdgeNet on a wide range of e-commercial advertising auctions, demonstrating its potential in improving user experience and platform revenue.
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CITATION STYLE
Shen, G., Song, D., Sun, S., Yang, L., Gao, D., Wang, Z., … Ning, W. (2023). EdgeNet: Encoder decoder generative Network for Auction Design in E-commerce Online Advertising. In International Conference on Information and Knowledge Management, Proceedings (pp. 4274–4278). Association for Computing Machinery. https://doi.org/10.1145/3583780.3615192
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