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Autori principali: Zheng, Zuowu, Wang, Ze, Yang, Fan, Ye, Wenqing, Huang, Weihua, He, Wenqiang, Zhang, Teng, Wang, Xingxing
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2506.05685
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author Zheng, Zuowu
Wang, Ze
Yang, Fan
Ye, Wenqing
Huang, Weihua
He, Wenqiang
Zhang, Teng
Wang, Xingxing
author_facet Zheng, Zuowu
Wang, Ze
Yang, Fan
Ye, Wenqing
Huang, Weihua
He, Wenqiang
Zhang, Teng
Wang, Xingxing
contents Online advertising auctions are fundamental to internet commerce, demanding solutions that not only maximize revenue but also ensure incentive compatibility, high-quality user experience, and real-time efficiency. While recent learning-based auction frameworks have improved context modeling by capturing intra-list dependencies among ads, they remain limited in addressing global externalities and often suffer from inefficiencies caused by sequential processing. In this work, we introduce the Non-autoregressive Generative Auction with global externalities (NGA), a novel end-to-end framework designed for industrial online advertising. NGA explicitly models global externalities by jointly capturing the relationships among ads as well as the effects of adjacent organic content. To further enhance efficiency, NGA utilizes a non-autoregressive, constraint-based decoding strategy and a parallel multi-tower evaluator for unified list-wise reward and payment computation. Extensive offline experiments and large-scale online A/B testing on commercial advertising platforms demonstrate that NGA consistently outperforms existing methods in both effectiveness and efficiency.
format Preprint
id arxiv_https___arxiv_org_abs_2506_05685
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NGA: Non-autoregressive Generative Auction with Global Externalities for Advertising Systems
Zheng, Zuowu
Wang, Ze
Yang, Fan
Ye, Wenqing
Huang, Weihua
He, Wenqiang
Zhang, Teng
Wang, Xingxing
Information Retrieval
Online advertising auctions are fundamental to internet commerce, demanding solutions that not only maximize revenue but also ensure incentive compatibility, high-quality user experience, and real-time efficiency. While recent learning-based auction frameworks have improved context modeling by capturing intra-list dependencies among ads, they remain limited in addressing global externalities and often suffer from inefficiencies caused by sequential processing. In this work, we introduce the Non-autoregressive Generative Auction with global externalities (NGA), a novel end-to-end framework designed for industrial online advertising. NGA explicitly models global externalities by jointly capturing the relationships among ads as well as the effects of adjacent organic content. To further enhance efficiency, NGA utilizes a non-autoregressive, constraint-based decoding strategy and a parallel multi-tower evaluator for unified list-wise reward and payment computation. Extensive offline experiments and large-scale online A/B testing on commercial advertising platforms demonstrate that NGA consistently outperforms existing methods in both effectiveness and efficiency.
title NGA: Non-autoregressive Generative Auction with Global Externalities for Advertising Systems
topic Information Retrieval
url https://arxiv.org/abs/2506.05685