重新思考个性化排名在Pinterest:一个端到端的方法

Jiajing Xu, Andrew Zhai, Charles R. Rosenberg
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引用次数: 10

摘要

在这项工作中,我们展示了通过对原始用户行为的端到端学习来彻底改变个性化推荐引擎的旅程。我们在PinnerFormer中编码用户的长期兴趣,PinnerFormer是一种通过新的密集全动作损失来优化长期未来动作的用户嵌入,并通过直接从实时动作序列中学习来捕获用户的短期意图。我们进行了离线和在线实验来验证新模型架构的性能,并解决了在生产中使用混合CPU/GPU设置来服务如此复杂模型的挑战。提出的系统已经在Pinterest的生产中部署,并在有机和广告应用程序中提供了显着的在线收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rethinking Personalized Ranking at Pinterest: An End-to-End Approach
In this work, we present our journey to revolutionize the personalized recommendation engine through end-to-end learning from raw user actions. We encode user’s long-term interest in PinnerFormer, a user embedding optimized for long-term future actions via a new dense all-action loss, and capture user’s short-term intention by directly learning from the real-time action sequences. We conducted both offline and online experiments to validate the performance of the new model architecture, and also address the challenge of serving such a complex model using mixed CPU/GPU setup in production. The proposed system has been deployed in production at Pinterest and has delivered significant online gains across organic and Ads applications.
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