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Decoupled Entity Representation Learning for Pinterest Ads Ranking

ACM Conference on Recommender Systems (RecSys), 2025
4 September 2025
Jie Liu
Y. Li
Jiankai Sun
Kungang Li
Han Sun
Sihan Wang
Huasen Wu
Siyuan Gao
Paulo Soares
Nan Li
Zhifang Liu
Haoyang Li
Siping Ji
Ling Leng
Prathibha Deshikachar
ArXiv (abs)PDFHTML
Main:3 Pages
1 Figures
Bibliography:3 Pages
5 Tables
Appendix:1 Pages
Abstract

In this paper, we introduce a novel framework following an upstream-downstream paradigm to construct user and item (Pin) embeddings from diverse data sources, which are essential for Pinterest to deliver personalized Pins and ads effectively. Our upstream models are trained on extensive data sources featuring varied signals, utilizing complex architectures to capture intricate relationships between users and Pins on Pinterest. To ensure scalability of the upstream models, entity embeddings are learned, and regularly refreshed, rather than real-time computation, allowing for asynchronous interaction between the upstream and downstream models. These embeddings are then integrated as input features in numerous downstream tasks, including ad retrieval and ranking models for CTR and CVR predictions. We demonstrate that our framework achieves notable performance improvements in both offline and online settings across various downstream tasks. This framework has been deployed in Pinterest's production ad ranking systems, resulting in significant gains in online metrics.

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