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Hauptverfasser: Ebrahimi, Saeed, Jiang, Weijie, Yang, Jaewon, Gudmundsson, Olafur, Tu, Yucheng, Duan, Huizhong
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2512.17277
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author Ebrahimi, Saeed
Jiang, Weijie
Yang, Jaewon
Gudmundsson, Olafur
Tu, Yucheng
Duan, Huizhong
author_facet Ebrahimi, Saeed
Jiang, Weijie
Yang, Jaewon
Gudmundsson, Olafur
Tu, Yucheng
Duan, Huizhong
contents Pinterest is a leading visual discovery platform where recommender systems (RecSys) are key to delivering relevant, engaging, and fresh content to our users. In this paper, we study the problem of improving RecSys model predictions for cold-start (CS) items, which appear infrequently in the training data. Although this problem is well-studied in academia, few studies have addressed its root causes effectively at the scale of a platform like Pinterest. By investigating live traffic data, we identified several challenges of the CS problem and developed a corresponding solution for each: First, industrial-scale RecSys models must operate under tight computational constraints. Since CS items are a minority, any related improvements must be highly cost-efficient. To address this, our solutions were designed to be lightweight, collectively increasing the total parameters by only 5%. Second, CS items are represented only by non-historical (e.g., content or attribute) features, which models often treat as less important. To elevate their significance, we introduce a residual connection for the non-historical features. Third, CS items tend to receive lower prediction scores compared to non-CS items, reducing their likelihood of being surfaced. We mitigate this by incorporating a score regularization term into the model. Fourth, the labels associated with CS items are sparse, making it difficult for the model to learn from them. We apply the manifold mixup technique to address this data sparsity. Implemented together, our methods increased fresh content engagement at Pinterest by 10% without negatively impacting overall engagement and cost, and have been deployed to serve over 570 million users on Pinterest.
format Preprint
id arxiv_https___arxiv_org_abs_2512_17277
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Warmer for Less: A Cost-Efficient Strategy for Cold-Start Recommendations at Pinterest
Ebrahimi, Saeed
Jiang, Weijie
Yang, Jaewon
Gudmundsson, Olafur
Tu, Yucheng
Duan, Huizhong
Information Retrieval
Machine Learning
Pinterest is a leading visual discovery platform where recommender systems (RecSys) are key to delivering relevant, engaging, and fresh content to our users. In this paper, we study the problem of improving RecSys model predictions for cold-start (CS) items, which appear infrequently in the training data. Although this problem is well-studied in academia, few studies have addressed its root causes effectively at the scale of a platform like Pinterest. By investigating live traffic data, we identified several challenges of the CS problem and developed a corresponding solution for each: First, industrial-scale RecSys models must operate under tight computational constraints. Since CS items are a minority, any related improvements must be highly cost-efficient. To address this, our solutions were designed to be lightweight, collectively increasing the total parameters by only 5%. Second, CS items are represented only by non-historical (e.g., content or attribute) features, which models often treat as less important. To elevate their significance, we introduce a residual connection for the non-historical features. Third, CS items tend to receive lower prediction scores compared to non-CS items, reducing their likelihood of being surfaced. We mitigate this by incorporating a score regularization term into the model. Fourth, the labels associated with CS items are sparse, making it difficult for the model to learn from them. We apply the manifold mixup technique to address this data sparsity. Implemented together, our methods increased fresh content engagement at Pinterest by 10% without negatively impacting overall engagement and cost, and have been deployed to serve over 570 million users on Pinterest.
title Warmer for Less: A Cost-Efficient Strategy for Cold-Start Recommendations at Pinterest
topic Information Retrieval
Machine Learning
url https://arxiv.org/abs/2512.17277