Practice on Long Behavior Sequence Modeling in Tencent Advertising
Xian Hu, Ming Yue, Zhixiang Feng, Junwei Pan, Junjie Zhai, Ximei Wang, Xinrui Miao, Qian Li, Xun Liu, Shangyu Zhang, Letian Wang, Hua Lu, Zijian Zeng, Chen Cai, Wei Wang, Fei Xiong, Pengfei Xiong, Jintao Zhang, Zhiyuan Wu, Chunhui Zhang, Anan Liu, Jiulong You, Chao Deng

TL;DR
This paper presents a comprehensive approach to long behavior sequence modeling across multiple advertising and content domains, addressing challenges like feature gaps and interference, with practical methods validated by significant performance improvements in Tencent's platforms.
Contribution
The paper introduces a two-stage framework with novel hierarchical search, decoupled embedding, and target-decoupled techniques for effective cross-domain long-sequence modeling in advertising.
Findings
4.22% GMV lift in WeChat Channels
1.96% GMV increase in WeChat Moments
Effective handling of feature gaps and interference in practice
Abstract
Long-sequence modeling has become an indispensable frontier in recommendation systems for capturing users' long-term preferences. However, user behaviors within advertising domains are inherently sparse, posing a significant barrier to constructing long behavioral sequences using data from a single advertising domain alone. This motivates us to collect users' behaviors not only across diverse advertising scenarios, but also beyond the boundaries of the advertising domain into content domains-thereby constructing unified commercial behavior trajectories. This cross-domain or cross-scenario integration gives rise to the following challenges: (1) feature taxonomy gaps between distinct scenarios and domains, (2) inter-field interference arising from irrelevant feature field pairs, and (3) target-wise interference in temporal and semantic patterns when optimizing for different advertising…
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