Large Foundation Model for Ads Recommendation
Shangyu Zhang, Shijie Quan, Zhongren Wang, Junwei Pan, Tianqu Zhuang, Bo Fu, Yilong Sun, Jieying Lin, Jushuo Chen, Xiaotian Li, Zhixiang Feng, Xian Hu, Huiting Deng, Hua Lu, Jinpeng Wang, Boqi Dai, Xiaoyu Chen, Bin Hu, Lili Huang, Yanwen Wu, Yeshou Cai, Qi Zhou, Huang Tang

TL;DR
LFM4Ads introduces a comprehensive transfer framework for large foundation models in ad recommendation, leveraging all representations and multi-granularity mechanisms to significantly improve platform revenue.
Contribution
It proposes a novel multi-granularity transfer framework that comprehensively utilizes user, item, and cross representations in foundation models for ads recommendation.
Findings
Achieved 2.45% GMV lift across Tencent's platform.
Successfully deployed in industrial-scale advertising scenarios.
Processed tens of billions of samples daily with large-scale models.
Abstract
Online advertising relies on accurate recommendation models, with recent advances using pre-trained large-scale foundation models (LFMs) to capture users' general interests across multiple scenarios and tasks. However, existing methods have critical limitations: they extract and transfer only user representations (URs), ignoring valuable item representations (IRs) and user-item cross representations (CRs); and they simply use a UR as a feature in downstream applications, which fails to bridge upstream-downstream gaps and overlooks more transfer granularities. In this paper, we propose LFM4Ads, an All-Representation Multi-Granularity transfer framework for ads recommendation. It first comprehensively transfers URs, IRs, and CRs, i.e., all available representations in the pre-trained foundation model. To effectively utilize the CRs, it identifies the optimal extraction layer and…
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Taxonomy
TopicsRecommender Systems and Techniques · Sentiment Analysis and Opinion Mining · Advanced Graph Neural Networks
