User behavior has been validated to be effective in revealing personalized preferences for commercial recommendations. However, few user-item interactions can be collected for new users, which results in a null space for their interests, i.e., the cold-start dilemma. In this paper, a two-tower framework, namely, the model-agnostic interest learning (MAIL) framework, is proposed to address the cold-start recommendation (CSR) problem for recommender systems. In MAIL, one unique tower is constructed to tackle the CSR from a zero-shot view, and the other tower focuses on the general ranking task. Specifically, the zero-shot tower first performs cross-modal reconstruction with dual auto-encoders to obtain virtual behavior data from highly aligned hidden features for new users; and the ranking tower can then output recommendations for users based on the completed data by the zero-shot tower. Practically, the ranking tower in MAIL is model-agnostic and can be implemented with any embedding-based deep models. Based on the co-training of the two towers, the MAIL presents an end-to-end method for recommender systems that shows an incremental performance improvement. The proposed method has been successfully deployed on the live recommendation system of NetEase Cloud Music to achieve a click-through rate improvement of 13% to 15% for millions of users. Offline experiments on real-world datasets also show its superior performance in CSR. Our code is available.
翻译:用户行为已被验证为能够有效揭示对商业建议的个人偏好。 但是,可以为新用户收集的用户-项目互动很少,这导致他们的利益没有空间,即冷启动进退两难。在本文中,提出了二塔框架,即模型-不可知利益学习(MAIL)框架,以解决推荐人系统的冷启动建议(CSR)问题。在MAIL,建造了一座独特的塔,从零发视图中解决CSR问题,而另一塔则侧重于一般排名任务。具体来说,零发塔首先与双自动编码公司进行跨模式重建,以便从高度一致的新用户隐藏的特性中获得虚拟行为数据;排名塔然后可以根据零发塔完成的数据为用户提供输出建议。实际上,MAIL的排名塔是模型,可以与任何嵌入的深线模型一起实施。根据两座塔的共同培训,MAIL首次与双向自动编码公司进行跨式重建,以便从高度一致的隐藏的功能中获取虚拟行为数据数据数据; 排名塔随后可根据零发塔为15百万个用户推出的升级的升级系统,从而成功显示我们升级的升级的升级的升级系统。 将成功进行升级到升级到升级到升级到升级的服务器系统。