arXiv Open Access 2025

EGA-V1: Unifying Online Advertising with End-to-End Learning

Junyan Qiu Ze Wang Fan Zhang Zuowu Zheng Jile Zhu +5 lainnya
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Abstrak

Modern industrial advertising systems commonly employ Multi-stage Cascading Architectures (MCA) to balance computational efficiency with ranking accuracy. However, this approach presents two fundamental challenges: (1) performance inconsistencies arising from divergent optimization targets and capability differences between stages, and (2) failure to account for advertisement externalities - the complex interactions between candidate ads during ranking. These limitations ultimately compromise system effectiveness and reduce platform profitability. In this paper, we present EGA-V1, an end-to-end generative architecture that unifies online advertising ranking as one model. EGA-V1 replaces cascaded stages with a single model to directly generate optimal ad sequences from the full candidate ad corpus in location-based services (LBS). The primary challenges associated with this approach stem from high costs of feature processing and computational bottlenecks in modeling externalities of large-scale candidate pools. To address these challenges, EGA-V1 introduces an algorithm and engine co-designed hybrid feature service to decouple user and ad feature processing, reducing latency while preserving expressiveness. To efficiently extract intra- and cross-sequence mutual information, we propose RecFormer with an innovative cluster-attention mechanism as its core architectural component. Furthermore, we propose a bi-stage training strategy that integrates pre-training with reinforcement learning-based post-training to meet sophisticated platform and advertising objectives. Extensive offline evaluations on public benchmarks and large-scale online A/B testing on industrial advertising platform have demonstrated the superior performance of EGA-V1 over state-of-the-art MCAs.

Topik & Kata Kunci

Penulis (10)

J

Junyan Qiu

Z

Ze Wang

F

Fan Zhang

Z

Zuowu Zheng

J

Jile Zhu

J

Jiangke Fan

T

Teng Zhang

H

Haitao Wang

Y

Yongkang Wang

X

Xingxing Wang

Format Sitasi

Qiu, J., Wang, Z., Zhang, F., Zheng, Z., Zhu, J., Fan, J. et al. (2025). EGA-V1: Unifying Online Advertising with End-to-End Learning. https://arxiv.org/abs/2505.19755

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓