论文标题
通过Meta控制器提出的设备云协作推荐
Device-Cloud Collaborative Recommendation via Meta Controller
论文作者
论文摘要
设备机器学习使当地客户的推荐模型的轻量级部署可以减轻基于云的推荐人的负担,并同时融合了更多的实时用户功能。然而,考虑到其强大的模型能力以及从十亿级项目库中产生的有效候选人产生的基于云的建议仍然非常重要。以前的尝试将这两种范式的优点集成为主要机制的优点,该机制在基于云的建议之上构建了在设备上的推荐人。但是,当用户兴趣发生巨大变化时,这种设计是不灵活的: 设备模型被有限的项目缓存粘住,而基于云的大型项目池的基于云的建议则在没有新的重新循环反馈的情况下无法做出响应。 为了克服这个问题,我们提出了一个元控制器,以动态管理推荐装置推荐人与基于云的推荐人之间的协作,并从因果角度引入一种新颖的有效样本构造,以解决元控制者的数据集缺失问题。在反事实样本和扩展培训的基础上,在工业推荐方案中进行的广泛实验显示了在设备云协作中元控制者的承诺。
On-device machine learning enables the lightweight deployment of recommendation models in local clients, which reduces the burden of the cloud-based recommenders and simultaneously incorporates more real-time user features. Nevertheless, the cloud-based recommendation in the industry is still very important considering its powerful model capacity and the efficient candidate generation from the billion-scale item pool. Previous attempts to integrate the merits of both paradigms mainly resort to a sequential mechanism, which builds the on-device recommender on top of the cloud-based recommendation. However, such a design is inflexible when user interests dramatically change: the on-device model is stuck by the limited item cache while the cloud-based recommendation based on the large item pool do not respond without the new re-fresh feedback. To overcome this issue, we propose a meta controller to dynamically manage the collaboration between the on-device recommender and the cloud-based recommender, and introduce a novel efficient sample construction from the causal perspective to solve the dataset absence issue of meta controller. On the basis of the counterfactual samples and the extended training, extensive experiments in the industrial recommendation scenarios show the promise of meta controller in the device-cloud collaboration.